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Background:
Systematic Review

E-Cardiac Care: A Comprehensive Systematic Literature Review

1
School of Electrical Engineering and Computer Science (SEECS), National University of Sciences and Technology (NUST), Islamabad 44800, Pakistan
2
Department of Computer Sciences, Quaid i Azam University, Islamabad 45320, Pakistan
3
Department of Computational Sciences, The University of Faisalabad (TUF), Faisalabad 38000, Pakistan
*
Author to whom correspondence should be addressed.
Sensors 2022, 22(20), 8073; https://doi.org/10.3390/s22208073
Submission received: 30 August 2022 / Revised: 2 October 2022 / Accepted: 4 October 2022 / Published: 21 October 2022
(This article belongs to the Special Issue Artificial Neural Networks for IoT-Enabled Smart Applications)

Abstract

:
The Internet of Things (IoT) is a complete ecosystem encompassing various communication technologies, sensors, hardware, and software. IoT cutting-edge technologies and Artificial Intelligence (AI) have enhanced the traditional healthcare system considerably. The conventional healthcare system faces many challenges, including avoidable long wait times, high costs, a conventional method of payment, unnecessary long travel to medical centers, and mandatory periodic doctor visits. A Smart healthcare system, Internet of Things (IoT), and AI are arguably the best-suited tailor-made solutions for all the flaws related to traditional healthcare systems. The primary goal of this study is to determine the impact of IoT, AI, various communication technologies, sensor networks, and disease detection/diagnosis in Cardiac healthcare through a systematic analysis of scholarly articles. Hence, a total of 104 fundamental studies are analyzed for the research questions purposefully defined for this systematic study. The review results show that deep learning emerges as a promising technology along with the combination of IoT in the domain of E-Cardiac care with enhanced accuracy and real-time clinical monitoring. This study also pins down the key benefits and significant challenges for E-Cardiology in the domains of IoT and AI. It further identifies the gaps and future research directions related to E-Cardiology, monitoring various Cardiac parameters, and diagnosis patterns.

1. Introduction

Following the available information as confirmed by the World Health Organization (WHO) [1], cardiovascular disease claims a large number of causalities across the globe [2] and is responsible for approximately 80% of sudden deaths. Moreover, in more than 15% of the deaths, cardiac arrhythmia is considered the chief reason. Thus, promoting cardiovascular health is vital and requires an overhaul of healthcare systems [3].
The rapidly expanding Internet of Things (IoT) [4] technology has the capability to monitor and control the critical human functions, irrespective of where the individual is located or what they are doing. Medical IoT (MIoT) is a cutting-edge technology that functions by exploiting the advantages of the Internet at a very affordable cost with minimum effort. The MIoT-based cardiac system guarantees monitoring the physical symptoms [5] of cardiac patients, such as temperature, Blood Pressure (BP), Oxygen Saturation (SPO2), Electrocardiogram (ECG), Heart Rate (HR) [6], and linked environmental parameters effectively and without any failure. The MIoT cardiac care framework is a customized paradigm that meets the requisite medical and safety standards of pervasive cardiac healthcare, including serious heart-related issues.
Various cardiac (heart) abnormalities can be detected through an Electrocardiogram (ECG) which is a medical testing platform that keeps track of electrical activity the heart generates as it contracts. An electrocardiograph is a device that records patient’s ECG. An ECG is a valuable tool for identifying problems associated with heart rate or heart rhythm. It offers assistance to the physician in determining whether a patient is having a heart attack or has had one in the past. An ECG is usually the first option for a cardiac test because of its proven dependability. An ECG is helpful to determine if one’s pulse is difficult to feel (bradycardia), or it is too fast (tachycardia) to count accurately. An ECG can also show heart rhythm irregularities, i.e., arrhythmia. The main types of arrhythmia are mentioned in Table 1.
Similarly, atrial fibrillation, atrial flutter, and premature or extra beats are the other types of cardiac issues. Figure 1 shows waveforms for different arrhythmia types. Atrial fibrillation refers to a rapid, disorganized, and irregular heart rhythm., while atrial flutter is an atrial arrhythmia generated by a fast circuit in the atrium. Compared to atrial fibrillation, atrial flutter is typically more organized and regular.
A comprehensive review of E-Cardiology, which encompasses the Internet of Things, artificial intelligence, and cardiology could help understand the essential building blocks of an IoT-based cardiac care system and intelligent diagnosis of various cardiovascular diseases. It can also help to develop a complete picture of various hardware devices (sensors), AI techniques, and communication technologies adopted by the existing studies in the field of intelligent cardiac healthcare.
Following the introduction, Section 2 of this paper briefly discusses related works; Section 3 highlights the contributions made by this paper. Section 4 elaborates on the review methodology adopted for conducting the survey. Section 5 gives the outcomes of the selected studies with a detailed analysis of the research questions (RQs). This section is further divided into four subsections. Section 6 contains a discussion. Section 7 summarises the conclusions.

2. Related Works

This section presents a brief explanation of the related surveys in the field of IoT-based cardiac healthcare.
The primary goal of the study [7] was to collect the latest facts, figures, and evidence on the use of preprocessing techniques for heart disease classification. The review study also summarised the impact of the most frequently used preprocessing tasks and techniques and the performance in the field of cardiology. This review paper covered the literature from 2000 to June 2019.
A survey on IoT and AI in healthcare was presented by [8] for 2007 to February 2018. The paper highlighted the top application classifications, which included wearables, sensor networks, connectivity options, and disease detection and treatment. This review identified gaps and provided future research directions related to technology and design. However, this survey analysed only three online databases.
A review article on data mining techniques frequently used in the field of cardiology until 2015 was presented in [9]. The performance comparison of various data mining models in cardiology were also discussed in this review paper.
The authors in [10] presented a survey on the Internet of Things (IoT) for healthcare using mobile computing. This systematic study investigated how mobile computing assisted IoT in a healthcare environment. Moreover, the intention of this paper was to analyse the impact of mobile computing on IoT technology in Smart hospitals and the field of healthcare. This study covered the literature between 2011 and 2019.
Another study [11] proposed a substantial review of various IoT applications in a life-saving environment, as well as various other fields in Smart cities. It also contrasted IoT with M2M and highlighted some drawbacks of IoT technology. This review article covered 2013 to 2018 through the Scopus database.
Another study [12] presented literature on (IoT) technologies and several projects for healthcare in 2018. This paper provided a review of primary medical IoT sensors and an overview of state-of-the-art IoT infrastructure essential for healthcare. It focused on the latest IoT technologies for healthcare services, such as cloud computing, big data, RFID, WSN, Bluetooth, Wi-Fi, and other vital medical sensors. However, this study lacks a systematic review.
The study [13] highlighted various IoT applications and was presented in 2022. The study focused on IoT adoption in Pakistan and France in 2020. This systematic study highlighted the barriers and possibilities for the implementation of IoT applications. It also indicated the influence of COVID-19 on IoT adoption in the healthcare domain.
The [14] systematic review discussed telemedicine and healthcare IoT (HIoT). It covered 146 articles between 2015 and 2020. The articles were divided into five categories after a technical analysis. In addition to the benefits and limitations of the selected methods, a comprehensive comparison of evaluation techniques, tools, and metrics was also included. This study presented a summary of healthcare applications of IoT (HIoT).
The discussion so far is limited to only a particular aspect of Smart healthcare/E-Cardiology and does not genuinely attempt to cover the domain holistically. When we say “entire domain”, it means AI-based IoT, which encompasses preprocessing techniques and also various communication technologies. According to the deficiencies of the existing review papers, we provide a comprehensive systematic literature review for the following reasons:
  • The latest research articles need to be covered to assess the current state of the art.
  • The present studies do not cover all the aspects of E-Cardiology.
The following section highlights the contributions made by this review study, thus bringing novelty to this systematic review study.

3. Contributions

  • This review paper highlights the influence of IoT, communication technologies, AI models, and preprocessing techniques in cardiac healthcare using our review protocol. Moreover, this study covers the complete and latest infrastructure for E-Cardiology, including its benefits and challenges. Thus, this systematic review covers almost all aspects of E-Cardiology which have not been discussed before in such a comprehensive way under one umbrella.
  • The study presents the systematic analysis of the most recent studies (2016 to 2021) to investigate our formulated research questions.
  • This paper incorporates monitoring of vital CCU parameters, ECG analysis, and classification of various heart disorders, thus giving a thorough picture of E-Cardiology.
  • This review study provides recommendations and future guidelines for researchers and cardiologists as well.
The next section discusses the research methodology adopted for our SLR.

4. Review Methodology

A systematic literature review (SLR) paradigm is followed in this paper for reviewing papers from the most reliable resources, as shown in Figure 2. Principally, the research work, applications, and monitoring/detection techniques provided by AI-aided MIoT in cardiac care are considered. The primary studies have been then passed through a quality assessment process for the study analysis to produce the best fit results.
The following subsections briefly describe the detail of each step involved in our review protocol.

4.1. Defining Review Strategy

The application of medical IoT in cardiac care is a compelling field of study for the researchers, so the primary focus of this SLR was to formulate the research questions exploring how medical IoT is affecting cardiac care and the significance of artificial intelligence in the diagnosis and detection of various heart diseases.
The review questions in Table 2 indicate how MIoT and AI are contributing to cardiac healthcare systems in Smart hospitals.

4.2. Defining Search Strategy

Once the research questions were designed, the next step was to indicate and state the search strategy to be followed precisely. Therefore, the primary literature mentioned in Appendix A (Table A1) was identified using three search strings which were used in the five digital databases, namely IEEE Xplore, ACM Digital Library, SpringerLink, ScienceDirect, and Google Scholar. These are the most popular online data resources in the domain of computer science and information technology. Second, these digital libraries were used as sources for previous systematic literature reviews related to computer science and E-Cardiology [15].
Our search span included the period of 2016 to 2021. The criteria used for the selection of search terms or keywords is mentioned below [16]:
  • The important terms were extracted from the research questions.
  • Synonyms and alternate spellings were identified for the key terms.
  • Keywords were identified from various books and relevant research articles.
  • For synonyms or alternating spellings, the Boolean operator OR was used.
  • Boolean AND operator was used to interlink significant terms.
After the critical analysis of the key terms, three search strings were formed in order to extract the relevant information. These search strings were checked on each of the aforementioned databases by changing their patterns to retrieve the best relevant results. The three search strings are given in Table 3.

4.3. Inclusion and Exclusion Criteria

To identify and include studies relevant to answer the RQs, inclusion and exclusion criteria were developed as described in the section “Defining Review Strategy”. To find the most appropriate publications, we defined the inclusion and exclusion criteria as mentioned in Table 4.
The authors evaluated each forthcoming paper to decide whether it should be included or excluded. The selection of papers was accomplished by following the three steps mentioned below.
The first step included the removal of duplicated and redundant papers; perusing the keywords, abstracts, and titles of research articles was the next step. Reading of full length research papers was carried out in the last step. Accordingly, the inclusion and exclusion criteria were implemented to their full effect. The articles that attracted difference of opinion were discussed and reviewed again by the authors, either using the full text or the partial text, until a consensus was achieved on an agreed-upon draft.

4.4. Quality Assessment Criteria

In this step, based upon the coherence and relevancy, we analyzed all the collected studies to address the defined research questions. A deep analysis of each paper was made, and based on our research questions, 134 papers were selected. Out of those 134 research papers, the papers having considerable citation count, appearing in good impact factor journals, and being delivered at highly ranked conferences were finally selected, thus leaving a total of 104 papers for the review, shown in Appendix A (Table A1).

4.5. Quantitative Analysis

The last step of our review protocol design was conducted to execute necessary statistical analysis on quantitative data. In this step, we quantitatively summarised and analyzed the results extracted from various sources such as conferences, journals, and book sections. Then, we carried out some quantitative statistical analysis of the findings to explore more about our research questions (RQs) and trends.
Figure 3 gives a thorough overview of our screening and assessment method for the statistical analysis of our literature. Five databases were chosen for the review, as illustrated in this figure. A total of 502 documents were chosen for review and analysis. The majority of papers were discovered to be duplicates. Thus, 203 records were eliminated before screening. Papers were removed for a few different reasons. Articles were chosen in the screening process based on a planned inclusion and exclusion strategy. Following the screening, 104 papers were chosen based on inclusion and exclusion standards.
The next section highlights the “Outcomes” of this systematic review.

5. Outcomes

5.1. RQ 1: What Are the Vital Hardware Components/Sensors Used in E-Cardiac Architecture for Different CCU Parameters?

The cardiac healthcare monitoring system in an IoT sphere encompasses the various IoT sensory modules and technologies attached to the patient, receiving sensory data, and sending data to the cloud for further monitoring, processing, and decision making. In an IoT-based cardiac healthcare monitoring system, the sensors, such as heart rate/pulse sensor, temperature sensor, blood pressure sensor, blood oxygen sensor, and ECG sensor, obtain sensory parametric values from the patient, transmit data through specific communication technologies to the cloud, apply machine learning practices to the learned parametric values, and generate alerts to the specialist suggesting timely action when warranted.
(i) 
Heart Rate Sensory Unit
Heart rate monitoring plays a crucial role in patient cardiac abnormalities diagnosis, detection, and classification. Several cardiac ailments and disorders occur due to a patient’s high or low heart rate. Normal beats per minute (bpm) are 60–100. Less than 60 bpm is considered to be low and greater than 100 is considered to be high bpm. We discovered comprehensive studies that used several types of heart beat sensors for bpm monitoring. The studies [17,18] used heart beat pulse sensors to measure patient heart rates in a real-time environment. In this article [19], the KY 093 module was used to obtain heart rate values. Using a MAX30100 pulse oximeter, the authors in [20] collected heart beat information. The publications [21,22,23] utlized an ECG module AD8232 to obtain the patients heart rate data in real time for monitoring purposes. Table 5 mentions recent studies on heart rate sensors. Each heart rate sensor has its own set of properties. This table shows some important characteristics of several heart beat sensor variants such as pins, type, operating voltage, low current supply, accuracy, and so on.
(ii) 
Temperature Sensory Unit
Body temperature is an essential parameter for the development of cardiac healthcare monitoring. Various analog and digital temperature sensors are available for determining body temperature. Temperature can be measured in celsius or fahrenheit. Temperatures above 37.5 or 38.3 celsius are considered high. The temperature sensor LM35 is referenced in [24,25,26,27] for health monitoring. The authors in [18,28] used an 18DS20 sensor for temperature monitoring in a real-time environment. Table 6 shows several of the temperature sensors, along with descriptions. The LM35 and 18DS20 sensors are the most widely employed temperature sensors in the research studies that we analysed.
(iii) 
Blood Pressure (BP) Sensory Unit
BP monitoring is a fundamental biological measure for the detection and diagnosis of cardiac incongruities and anomalies. BP values can be obtained using various sensory units and devices. Systolic and diastolic values are captured by BP sensors or devices to be examined by a physician. Normal BP is less than 120/80 mmHg, while low BP, called “hypotension”, is below 90/60 mmHg, and high BP, called “hypertension”, is above 140/90 mmHg. Our research discovered a publication on E-Cardiology that dealt with cardiac patients’ BP. In 2017 [29], a digital BP monitor (OMRONHBP1300) was used to monitor and automatically detect cardiac arrhythmia. The paper published in 2019 [30] examined predicting cardiac ailments in E-Cardiology using ECG, cholesterol, and BP. The MPX10 BP sensor was utilised in the 2020 publication [27] for patient health monitoring. Table 7 shows lists of sensors and devices utilized in the past few years for BP monitoring of cardiac patients, along with their comparable attributes.
The multiple modules of BP sensors and devices used in past studies, as well as different sensors of other cardiac parameters, are shown in Table 7.
Table 5. Features of heart rate sensors/devices.
Table 5. Features of heart rate sensors/devices.
Heart Rate/
Pulse Rate
Sensors
Features
Major PinsINTTypeOperating
Voltage
BPMLow
Supply
Current
Electrodes
Configuration
Acc
Pulse Sensor [31]GND, Vcc, SignalNIR LED
(Analog)
3.3 V to 5.0 VYN/ANN/A
AD8232 [32]GND, 3.3 V, Output,
LO+, LO−, SDN
YIR LED
(Analog)
3.6 VY170 µA
(typical)
YN/A
KY-039 [33]GND, Vcc, SignalNIR LED
(Analog)
5 VYN/ANN/A
Holter Device [34]3/5/12 ElectrodesYDigital DeviceN/AYN/AYN/A
SpO2 Sensor
device [35]
Fingertip SensorYIR LED
(Analog)
N/AYN/AN±2%
for
SPO2,
±2 bpm
for
Pulse
Rate
MAX30100 Pulse
Oximeter and
Heart Sensor [36]
VIN, SCL, SDA,
INTERRUPT, IRD, RD,
GND
YInt IR
LED,
Photo Sensor
1.8 V and 3.3 VY170 µA,
(typical)
N98.84%
for SPO2,
97.11% for
Heart
Rate
Acc—accuracy; BPM—beats per minute; GND—ground; INT—integrated IR; LED—infrared light—emitting diode; IRD—IR LED to driver; LO—leads off; N/A—not applicable; N—no; RD—red LED to driver; SCL—serial clock; SDA—serial data; SDN—shutdown control input; V—voltage; VCC—voltage common collector; VIN—voltage input; Y—yes.
(iv) 
Oxygen Sensory Unit
Blood oxygen can be monitored using several IoT-based blood oxygen sensory units, such as pulse oximetry sensors, to obtain oxygen saturation levels along with a patient’s heart rate. Ready-made wearable devices are also available to measure blood oxygen saturation levels. Blood oxygen is measured in percentage. The normal blood oxygen saturation is 90 to 100%. The study [37] describes a pervasive healthcare monitoring service system that uses an SpO2 device to measure oxygen saturation. The MAX30100 pulse oximeter has proven to be useful in measuring blood oxygen levels in cardiac patients [20]. Our findings and the literature on IoT-based cardiovascular healthcare monitoring used the sensors mentioned in Table 8 to measure oxygen saturation. This table lists several important and common features of oxygen saturation sensors and devices, such as addressed parameters, voltage, type, accuracy, pins, range, and so on. Table 8 shows that blood oxygen sensors/devices are used for cardiac patients in very few studies.
(v) 
ECG Unit
ECG is the most crucial biological parameter for monitoring, detecting, predicting, and classifying cardiac irregularities and variations in the human heart. The ECG AD8232 module was used in the studies [21,22,38,39,40] to monitor ECG and detect cardiac anomalies in cardiovascular patients. Heart abnormalities were detected with the use of the ECG AD8233 module [41]. In Table 9, recent papers published on multiple ECG sensors and devices are mentioned along with their necessary and comparable features. Low supply current, electrodes, the sampling rate, right leg drive shut down, single supply operation, high pass filter, output, operating temperature, pins, and other features of various ECG modules are considered as the most notable attributes.
Table 10 shows detailed and comprehensive literature analysed to find IoT-based cardiovascular sensors and devices used in previous studies from 2016 to 2021. This table demonstrates that the majority of research on ECG has been conducted using the ECG AD8232 module to detect anomalies in cardiac patients.
Table 6. Features of temperature sensors/devices.
Table 6. Features of temperature sensors/devices.
Temperature
Sensor
Features
Type ° C/ ° F
or
Both
AccOperating
Voltage
Range
Alarm
Signaling
Major PinsMeasurement
Range
LM35 [42]Analog ° C0.5 ° C Acc
guaranteeable at +25 ° C
4 V to 30 VNVCC, VOUT,
GND
Range is −55 °
to +150 ° C
DS18B20 [43]DigitalBoth±0.5 °C Acc
from −10 ° C to +85 ° C
3.0 V to 5.5 VYGND, DQ, VDD, NCRange is 55 ° C to
+125 °C and 67 ° F
to +257 ° F
MCP9700 [44]Analog ° C±4 ° C (max.), 0 ° C to +70 ° C2.3 V to 5.5 VNVout, Vcc, GND, NCRange is −40 ° C to
+125 ° C
TMP100 [45]Digital ° C±1 ° C (Typical) from −55 ° C
to 125 ° C and ±2 ° C (Max)
from −55 ° C to 125 ° C
2.7 V to 5.5 VYADD0, ADD1,
ALERT, GND,
SCL, SDA, V+
Range is −55 and
+125 ° C
Acc—accuracy; ADD—address select; °C/°F—centigrade/fahrenheit; DQ—data in/out; GND—ground; N—no; NC—no connection; SDA—serial data; SDN—shutdown control; V—voltage; VCC—voltage common collector; VDD—power supply voltage; VOUT—output; Voltage Y—yes.
Table 7. Features of blood pressure sensors/devices.
Table 7. Features of blood pressure sensors/devices.
BP SensorsFeatures
FreqRangeMajor PinsPressure
Hysteresis
LinSupply
Voltage
Full
Scale
Span
RTOffset
Stability
Acc
MPX10
Series
Pressure
Sensor
[46]
N/A0–10 kPaGND, Vs,
+Vout, −Vout
±0.1
typical
Min −1.0,
Max 1.0
3.0–6.0 VsMin 20 mV,
Max 50 mV
1.0 ms±0.5%
VFSS
N/A
Omron
HBP-
1300
digital
Device
[47,48]
50/60 Hz0 to 300 mmHgStart/Stop,
Mode, Last
Reading
(buttons)
N/AN/A100–240 V
AC
N/AN/AN/AWithin
±3 mmHg
Typical
BP
Monitor
Sensor
[49]
N/A0 to 258 mmHgTube, Pressure
Cuff, Pressure
Control Valve,
Bulb
typical
±0.25%
typical
±0.25%
N/AN/A1.0 msN/A±1 mmHg
Acc—accuracy; BP—blood pressure IR; kPa—kiloPascal’s; LED—infrared light-emitting diode; mmHg—millimeters of mercury; ms—millisecond; N/A—not applicable; RT—response time; V—voltage; Vout—voltage output; Vs—power supply.
Table 8. Features of oxygen sensors/devices.
Table 8. Features of oxygen sensors/devices.
Oxygen
Sensors
(Oximeter)
Features
INTAddressed
Parameters
Power
Supply
Voltage
TypeAcc
SpO2
Acc
PR
Major PinsSpO2
Range
PR
Range
MAX30100 [36]YHR, SpO21.8 V to 3.3 VIR LED99.62%97.55%VIN, SCL,
SDA, interrupt,
IRD, RD,
GND
N/AN/A
SpO2 Sensor
Device [50]
YHR, SpO2D.C. 3.4 V
∼D.C.4.3 V
IR LED±2% (80–100%);
±3% (70–79%)
±2% bpmN/A35 to 100%25 to
250 bpm
Acc—accuracy; GND—ground; INT—integrated; IRD—IR led to driver; HR—heart rate; N/A—not applicable; PR—pulse rate; RD—red LED to driver; SDA—serial data; SDN—shutdown control; V—voltage; VIN—voltage input; Y—yes.
Table 9. Features of ECG sensor/devices.
Table 9. Features of ECG sensor/devices.
ECG
Sensors/
Devices
Features
INTSingle/
Multi
Lead
Low
Supply
Current
ElecSRRight
Leg
Drive
Shut
Down
Single
Supply
OPER
HPFOutOPER
TEMP
Major Pins
AD8232 [32]YSingle
Lead
170 µA
(typical)
2 or
3
360 HZN2.0 V to
3.5 V
2 PolesRail to
Rail
40 °C
to
+85 °C
GND,
3.3 V,
OUT,
LO−,
LO+,
∼SDN,
RA,
LA,
RL
Holter
Device [34]
YMulti
Lead
N/A3, 5 or
12
125 HZN/Aone AAA
battery
N/AECG
Signal
Rec
on
Monitor
+10 °C
to
+40 °C
Multiple
Leads
ADAS1000 [51]YMulti
Lead
N/A5 or 6800 HZN/A3.15 V to
5.5 V
N/AMonitor−40 °C
to
+85 °C
64 lead
LQFP
 [52],
56 lead
LFCSP
(Both
has
diff.
pins)
AD8233 [53]YSingle
Lead
50 A
typical
2 or 3N/AY1.7 V to
3.5 V
2 Poles
Adjustable
HPF
Rail to
Rail
−40 °C
to
+85 °C
20 pins
(GND,
VS+,
REFIN,
HP-
SENSE,
HP-
DRIVE,
SDN,
AC/
DC,
FR, etc.
Shimmer 3
 [54,55,56,57]
YMulti
Lead
T60 µA
Maximum
424 MHZN/A450 mAh
battery
N/AOn
Windows
PC and
SQL
N/A5 ECG
pins,
5 EMG
pins
AC/DC—alternating current/direct current; EMG—electromyography; FR—fast restore; GND—ground; HPF—high pass filter; HPSENSE—high pass sense; HPDRIVE—high-pass driver; HZ—hertz; INT—integrated; LA—left arm; LO—leads off; MHZ—megahertz; NA—not applicable; N—no; OPER TEMP—operation temperature; PC—personal computer; RA—right arm; REFIN—reference buffer input; RL—right leg; SDN—shutdown control input; SQL—structure query language sampling rate; V—voltage; Vs—power supply terminal; Y—yes.
Table 10. Sensors used in previous studies.
Table 10. Sensors used in previous studies.
YearSensors Used
ECG
Module
Temp
Sensor
BP
Sensor
Pulse/
HB
Sensor
Oxygen
Sensor
Other
Sensor
/Device
Integrated
Sensor
2016 [17]MCP9700Pulse
Sensor
2016 [58]PCG
Sensor
2016 [59]Wrist band
for HB & BP
(DNNS)
2016 [19]FingerTip-
Optical Sensor
for PPG
2016 [60]Wearable
Watch (PPG sensor)
2016 [61]Galilio Board
plateform for ECG
(UB-MMNS)
2017 [37]Holter
Devices
(UB-MNNS)Holter Device,
SpO2 Device
(UB-MNNS)
SpO2
Sensor Device
(DNNS)
2017 [62]Pulse Sensor
2017 [19]18DS20KY-093
2017 [29]OMRONH-
-BP1300
PPG Sensor External
Defibillator
2017 [63](UB-MNNS)(UB-MNNS)(UB–MNNS)HB SensorAlchol
Sensor, EMG
(MNNS)
2017 [64]Wearable
SOC
ECG
(MNNS)
2018 [65]MAX30100
(SpO2, HB)
2018 [66]Pulse
Sensor
2018 [18]Pulse
Sensor
2018 [38]ECG Module AD8232Pulse Sensor
2018 [20]ECG Module
AD8232
MAX30100MAX30100
2018 [24]LM35(UB–MNNS)HB Sensor
2018 [67]WWSN for
ECG, BP,
Respiratory
2019 [28]18DS20HB sensor
2019 [25]Pulse SensorLM35Pulse Sensor
2019 [26]LM35Pulse Sensor
2019 [40]ECG Module
AD8232
2019 [21]ECG Module
AD8232
ECG
Module
AD8232
2019 [68]Bio Sensors
of
hospital
2019 [69]Watch for
HB,
CL, bp,
(DNNS)
2019 [30]ECG AD8232
Module
BP Cuff
(UB-MNNS)
Heart Rate
Monitor
Near
Infrared
Sensor
for CL
2019 [70]ECG AD8232
Module
2019 [71](UB-MNNS)
2020 [72](UB-MNNS)
2020 [73](UB-MNNS)(UB-MNNS)Pulse Sensor
2020 [74]HB sensorAlchohal
Sensor
(MNNS)
2020 [75]MD, AC,
ENV
Sensors
(MNNS)
2020 [27]ECG Module
AD8232
LM35MPX10Pulse SensorPulse Sensor
2020 [76]3 Lead VCG
signals
(MNNS)
2020 [22]ECG Module
AD8232
ECG Module
AD8232
2020 [77]ADAS1000TMP100
2020 [78]Multiple ECG
devices (MNNS)
2020 [79]Shimmer3 ECG
Unit
2020 [23]ECG Module
AD8232
ECG Module
AD8232
2021 [80](UB-MNNS)(UB-MNNS)Glucose Sensor
(MNNS)
2021 [81]Wearabale Smart
ECG device
(UB-DNNS)
2021 [82]Self Made Device
for ECG (NNS)
2021 [83]Ready made
ECG Device
(UB-DNNS)
AllCheck Device
2021 [84]Multiscale ECG
from 3
Sensors
(UB-MNNS)
Wearable HB
Sensor
(MNNS)
Respiratory
Sensor
(MNNS)
Optical Sensor
(MNNS)
2021 [41]ECG Module
AD8283
BP/bp—blood pressure; CL—cholesterol; DNNS—device name not specified; ECG—electrocardiogram; HB—heartbeat; HR—heart rate; INT—integrated; MNNS—module number not specified; PCG—phonocardiograph; PR—pulse rate; PPG—photoplethysmography; UB-DNNS—used but device name not specified UB-MNNS—used but module number not specified; ✗—The specified parameter is not addressed.

5.2. RQ 2: What Are the Most Important Communication Technologies Used in E-Cardiac Care?

Communication technologies and protocols can be defined as a set of rules, technologies, semantics, equipment, and programs used to transfer, process, communicate, and receive information. Communication technologies and protocols vary depending upon the technology and network type devised, developed, or utilized. Some of the protocols and communication technologies are discussed in this section. The publications mentioned in Table 11 address the communication technologies and protocols used in previous selected studies for the development of E-Cardiology, monitoring, detection, and classification. BL is a wireless technology for short-range communication and exchanging data between mobile and fixed devices. BL has a transmission power of 1 mw–100 mw and a 1 Mbps data rate. Its data transmission range is 30 feet. The wearable healthcare monitoring devices (wearable fitness watches and pulse oximeters) may have the BL features integrated. BL technology was also employed in previous research [19,39,41,58,66,73] for data transmission for E-Cardiology. In prior literature on E-Cardiology monitoring, BL technology was determined to be the most commonly used technology. Ethernet is a wired communication networking protocol that can be used in local area networks (LANs), metropolitan area networks (MANs), and wide area networks (WANs). Ethernet allows communication through data cables. The publications [58,83] used an Ethernet-wired technology for connectivity support between various hardware modules implemented for cardiovascular disease diagnosis. One existing research study found that Ethernet-wired communication is rarely used in E-Cardiology. GSM is a cell-based or mobile communication modem that works as a mobile communication system. GSM technology is also used in E-Cardiology to send SMS messages or dial calls. GPS, which helps people to find their position on Earth, consists of networks of satellites and receivers or devices that determine location.
The communication technologies and protocols used in E-Cardiology in previous research studies and findings are detailed in Table 11.

5.3. RQ 3: Which Pre-Processing Techniques Are Used in E-Cardiology, along with the Most Widely Used AI Classifiers/Models?

RQ 3 is divided into two subsections. The first subsection investigates and compares various AI Models for the classification and prediction of CVD. This part explores various studies that use different machine learning and deep learning models for CVD prediction. Our study also provides a comprehensive explanation about the algorithms and methodologies used for prediction and classification techniques and the different datasets and performance metrics that we used to evaluate the models. Furthermore, the data preprocessing techniques used with different classifiers are also indicated in the second subsection below.

5.3.1. AI Classifiers/Models and E-Cardiology

The prediction of CVD is a much discussed topic of research in the realm of healthcare. AI-based prediction systems can be of great help in detecting disease at an earlier stage which can reduce risk associated with disease progression. The concept of AI is not new in cardiac electrophysiology with automated ECG interpretation. It has existed in some form or other since the 1970s [87].
Artificial Intelligence (AI) is the reflection of human cognitive functions from the surroundings acquired by applying algorithms, pattern matching, cognitive computing, and deep learning to achieve specific objectives [88]. The ongoing progress in AI, primarily in the sub-domains of machine learning (ML) and deep learning (DL), have caught the attention of physicians hoping to develop newly integrated, dependable, and potent methods for ensuring standard healthcare in the critical field of cardiology.
Machine learning (ML) is a subset of AI to “teach” computers to analyze huge datasets in a quick, accurate, and efficient manner by using complex computing and statistical algorithms [89]. Supervised ML is more successful in predicting survival compared to the traditional clinical risk scores [90].
The study [91] proved that the accuracy of disease prediction can be increased by using an unsupervised type of ML for obstructive coronary artery disease in nuclear cardiology.
Deep learning (DL) is a supervised ML methodology that relies on neural networks and is known for the automated algorithms required to extract meaningful patterns from data collections [92]. In the medical context, the most widespread deep learning algorithms are artificial neural networks (ANN), multilayer perceptron (MLP), convolution neural networks (CNN/ConvNet), recurrent neural networks (RNN), radial basis function network (RBFN), deep belief networks, and deep neural networks (DNN) [88]. Compared with traditional supervised ML, the real strength of DL is that it is an effective, powerful, and flexible approach to representing complicated raw input data that does not demand manual feature engineering. For instance, while addressing the issue of automated ECG interpretation, early conventional supervised ML techniques depended on human-defined ECG features. In contrast, the modern DL model extracts patterns within raw ECGs to detect sinus rhythm and various other arrhythmias with a performance that equals the result of any cardiologist [93].
The significant areas of cardiac healthcare that can benefit from ML/DL techniques are prognosis, diagnosis, classification, treatment, and clinical workflow. Table 12 presents an overview of different AI algorithms extracted from the literature review on heart disease diagnosis/classification.
A comparative analysis of different AI techniques frequently used in Smart cardiology for the prognosis/diagnosis of various CVDs is given in Table 13.
As suggested by WHO, by 2030 almost 23.6 million individuals will die from heart-related causes [94]. CVDs are the main cause, but they can be cured and prevented. To reduce the risk involved, analysis is fundamental. The difficult part is accurate diagnosis [95].
Table 14 summarises the most recent work performed in the field of artificial intelligence related to CVDs.

5.3.2. Data Preprocessing Techniques in E-Cardiology

This section identifies and evaluates studies that applied data preprocessing techniques in cardiac disease classification. Data Preprocessing (DP) in AI is a critical stage that enhances the quality of data to achieve meaningful insights and is the initial step in the development of an AI model. Conventionally, real-world data is not in an appropriate format and contains errors or outliers. It usually lacks specific attribute values/trends, thus resulting in an inadequate AI model. Data preprocessing solves this problem by cleaning and organizing raw data to tailor it to the needs of building and training AI models. Hence, data preprocessing in AI is a data mining approach that reshapes raw data into a readable format that is readily available for an AI model to meet the high standards of performance [120]. Consequently, the algorithm can easily interpret the data’s features.There are four primary ways of data preprocessing, i.e., (1) data cleaning, (2) data integration and formatting, (3) data transformation, and (4) data reduction.
Different preporocessing techniques used in past studies for diagnosing heart disease and other types of arrhythmia are also mentioned in Table 14, along with AI models. This table also lists the task performed by the preprocessing technique.

5.4. RQ 4: What Are the Major Issues and Challenges in Current E-Cardiology?

After conducting comprehensive research, we identified some significant benefits and major challenges in the field of MIoT to answer our RQ 4. These challenges and benefits have been emphasized on the basis of studies conducted by different researchers in the domain of MIoT and E-Cardiology. Based upon selection and rejection criteria, only valid and reliable papers were selected, as mentioned earlier. We incorporated only the latest benefits and challenges that were found to be unique in the domain of IoT and AI regarding healthcare and cardiology. A pictorial representation of these benefits and challenges is shown in Figure 4.

5.4.1. Benefits of E-Cardiology

Internet of Things (IoT) develops a linkage between “things”, such as devices, gadgets, vehicles, and sensors. Likewise, the medical Internet of Things (MIoT)-based cardiovascular healthcare system monitors the physical symptoms [5] of cardiac patients at a very reasonable cost. These physical symptoms include temperature, blood pressure (BP), SPO2, and heartbeat, along with ECG [6] and associated numerical measurements. Significant benefits of IoT-based cardiology from various studies are noted in Table 15.
A comparison of some key factors in Smart cardiac care are shown in Table 16.
Artificial intelligence (AI) is another significant aspect of E-Cardiology. Until now, AI in cardiac electrophysiology has exhibited promising results. Primary advantages of AI-based cardiology are discussed in Table 17.

5.4.2. Challenges of E-Cardiology

Internet of Things (IoT) comes with various challenges as shown in Table 15. In addition to these challenges, ref. [129] proposed some other vital challenges, such as fixation of sensors, body impact on signal propagation, and synchronization, that may affect critical health services such as cardiac care. The MIoT-based healthcare systems are expected to produce a vast amount of data. Moreover, these sensors and devices are linked through networks, thus enabling real-time transmission of data. Therefore, hackers may attempt to target it. Moreover, the timely availability of medical data will affect the patient’s life. Consequently, it is crucial to have real-time information with lower latency over the network [124].
Artificial intelligence (AI) has brought a revolution in the field of healthcare. It has especially made a great contribution in the domain of cardiac care, such as timely prediction and diagnosis of cardiovascular diseases (CVDs), ECG analysis, and arrhythmia classification. However, despite all these milestones, it carries some challenges. Table 17 describes critical issues and challenges of AI-based cardiology from different past studies.
It is hoped that these challenges can be met and that through MIoT and AI we can achieve new levels of technical and medical standards in the field of cardiac healthcare.

6. Discussion

Figure 5 shows the distribution of the selected studies (104 papers) according to our four research questions (RQs). The pie chart shows that 47 studies overlap RQ1 and RQ2, whereas 33 studies address RQ3 and 24 address RQ4.
The outcomes of this systematic literature review suggest a noticeable increase in the research conducted in IoT using artificial intelligence in E-Cardiology. The research activities also incorporate monitoring CCU parameters, ECG analysis, and diagnosis/classification of various heart diseases. This extensive review study reveals that IoT sensors utilized for E-Cardiology are based upon analog sensors, digital sensors, and different wearable sensors or device modules. For fitness tracking and health monitoring activities, a variety of ready-made and wearable watches are also available. E-Cardiology patients can use a variety of wearable gadgets to track various cardiac healthcare characteristics. To establish expert E-Cardiology systems, several communication technologies and protocols for transmissions over a defined range need to be instituted and maintained. Our findings on communication technologies and protocols for the implementation of IoT-based cardiovascular healthcare monitoring and detection systems show that the following technologies provide viable tools to use in MIoT systems: Bluetooth (BL/BLE), ethernet, global system for mobile (GSM), global positioning system (GPS), global packet radio service (GPRS), message queuing telemetry transport (MQTT), short message service (SMS), email, zigbee, transmission control protocol/Internet protocol (TCP/IP), wireless fidelity (Wifi), security protocols, broadband/Internet, cloud, Smart cars, Smart phones/computers, etc. Our findings show that deep learning is often used in cardiac imaging procedures, particularly in echocardiography [88]. Furthermore, CNNs have been evaluated and found useful in calculating coronary artery calcium in cardiac CT angiography [101]. Though deep learning techniques are garnering attention in the field of Smart cardiology, we may infer that instead of depending on a particular AI model, hybrid techniques are expected to produce better results. From the results of our study, it may also be inferred that SVM was more frequently used in cardiac care than was deep learning. However, in recent years, deep learning has emerged as a more powerful and reliable tool for the detection and diagnosis of various heart diseases. It was also noted that data reduction appears to be a major concern of researchers when applying data mining/data preprocessing approaches to predict CVD. This literature review includes 24 studies devoted to major issues and challenges in E-Cardiology. These studies conclude that a major benefit of MIoT in cardiac healthcare is that it generates timely and accurate data, which results in better healthcare outcomes. One vital advantage of using ML techniques is the ability to fuse various types of data [143]. We also assessed the results and noted that mIoT devices do not possess the requisite data protocols and standards [131]. Therefore, many issues must be addressed to ensure IoT privacy and security [144,145], which is one of the major challenges of the IoT era. Moreover, the continuous monitoring of critical indicators requires reduced energy consumption and a longer battery life [146] to prevent a break of communication. This is also one of the significant challenges of MIoT. The medical data gathered using MIoT is seldom standardized and often fragmented. The data in legacy IT systems are usually generated with incompatible formats. Thus, the great challenge of interoperability needs to be addressed as well [124,147]. However, to move forward in the field of MIoT, fearing AI is no option.
Instead, we should work toward the smooth digitization of healthcare infrastructure [148]. Obviously, various benefits of AI cannot be implemented and utilized correctly without integrating AI into clinical decision making effectively and responsibly [149].
Figure 6 refers to the research work conducted based on the number of papers per annum. It shows the year-wise trends in publications in the field of E-Cardiology. It also indicates that the maximum number of papers selected for this survey was from 2019.

6.1. Gaps, Future Recommendations

In a future work, all the vital cardiac parameters can be combined with an intelligent cardiac care unit (CCU) to develop a complete picture of E-Cardiology. These parameters/indicators may be comprised of temperature, blood pressure, oxygen saturation, heart rate, and ECG analysis. In addition, in differentiating between normal and abnormal heartbeats, a Smart CCU can also be used to detect QRS complexes in electrocardiographic (ECG) signals to determine the presence of a cardiac malady and different arrhythmias. Integrated and wearable IoT solutions, which address all the necessary cardiac parameters of a heart patient, need to be implemented. The results and accuracy of the devices/sensors used in the development of an IOT-based cardiac system cannot be compromised. The implemented system must be tested, evaluated, and approved under the supervision of cardiologists. Advanced communication technologies, including secure network protocols, must be implemented. Data accessibility features, such as widespread data access, must be possible in a secure environment so that the data confidentiality and integrity are maintained. Ubiquitous access is also an important factor and can be achieved by storing the digital data on a cloud server.

6.2. Limitations of the Review Study

This review of literature has some limitations. First, many papers were conference proceedings; therefore some parameters remained inaccessible since their authors did not mention them in detail. Second, some of the studies on AI-based IoT architecture in cardiac healthcare could not be located even after following a comprehensive search protocol, such as gray literature and reports that were not published in the databases which we selected for review. Therefore, we suggest that an additional systematic study be conducted to cover the related literature from other important databases.

7. Conclusions

This review study outlines a total of 104 primary studies from 2016 to 2021 based on our filtering process for supporting the proposed research. Quality assessment of the selected studies was conducted for the formulated research questions after a rigorous analysis.
This work mentions different sensors and communication technologies being used in cardiology. Moreover, this review study also describes various preprocessing techniques and AI algorithms used in the existing studies to diagnose and classify CVD and ECG analysis. This systematic review also provides comparative analysis of various existing techniques in the field of AI, medical sensors, and communication technologies. Finally, this study targets various advantages and issues indicated in the existing literature in the field of E-Cardiology. The interaction of MIoT and artificial intelligence makes cardiac healthcare more manageable by making various applications, services, communication protocols, third party APIs, and IoT sensors available. E-Cardiology guarantees more privacy and security to the IoT devices which are prone to hackers. Furthermore, AI-based diagnosis of various cardiovascular diseases in E-Cardiology helps save time, enabling cardiologists to focus more on treatment. This systematic work presents a review protocol to analyse how IoT applications assist cardiac healthcare and how various artificial intelligence (AI) models contribute to present and prospective research work of IoT in E-Cardiology. This study also indicates how different communication technologies bring privacy and security to IoT devices related to cardiac healthcare. The purpose of this paper is to highlight the influence of IoT, communication technologies, and AI techniques in cardiac healthcare in light of our systematic literature review protocol. Therefore, one can say that this systematic review covers the complete and latest infrastructure of E-Cardiology, along with its benefits and challenges which have not been examined before in such a comprehensive way.

Author Contributions

Conceptualization, R.I. and M.A.K.; methodology, R.I. and U.U.; validation, U.U. and S.N.; formal analysis, U.U. and S.N.; investigation, U.U. and S.N.; resources, R.I., U.U. and S.N.; writing—original draft preparation, U.U., S.N. and A.U.; writing—review and editing, R.I., U.U. and S.N.; visualization, A.U. and S.N.; supervision, R.I. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Selected Literature

Summary of the selected literature consisting of 104 papers used in this systematic literature review is given in the Table A1.
Table A1. Selected Literature.
Table A1. Selected Literature.
Sr.#Ref#YearPaper Title
1[17]2016Smart Real-Time Healthcare Monitoring and Tracking System using GSM/GPS Technologies
2[58]2016Internet of Medical Things for Cardiac Monitoring: Paving The Way to 5G Mobile Networks
3[59]2016IOT on Heart Attack Detection and Heart Rate Monitoring
4[85]2016Heart Rate Monitoring System Using Finger Tip Through Arduino and Processing Software
5[60]2016iCarMa: Inexpensive Cardiac Arrhythmia Management—An IoT Healthcare Analytics Solution
6[94]2016Efficient Heart Disease Prediction System
7[96]2016A new personalized ECG Signal Classification Algorithm using Block-based Neural Network
and Particle Swarm Optimization
8[97]2016Arrhythmia Recognition and Classification using Combined Linear and Nonlinear Features of ECG Signals
9[98]2016Cardiac Arrhythmia Beat Classification Using DOST and PSO Tuned SVM
10[99]2016High Performance Personalized Heartbeat Classification Model for Long-Term ECG Signal
11[100]2016ECG Classification Using Wavelet Packet Entropy and Random Forests
12[101]2016Automatic Coronary Artery Calcium Scoring in Cardiac CT Angiography using paired
Convolutional Neural Networks
13[61]2016ECG Signal Analysis and Arrhythmia Detection on IoT Wearable Medical Devices
14[122]2016Study of IoT: Understanding IoT Architecture, Applications, Issues and Challenges
15[121]2016Always Connected: The Security Challenges of the Healthcare Internet of Things
16[136]2016Exploratory Study of Artificial Intelligence in Healthcare
17[37]2017The IoT-based Heart Disease Monitoring System for Pervasive Healthcare Service
18[62]2017Heartbeat Sensing and Heart Attack Detection using Internet of Things: IoT
19[19]2017A Novel Cardiac Arrest Alerting System using IOT
20[29]2017A Wearable Multiparameter Medical Monitoring And Alert System With First Aid
21[63]2017Design And Implementation Of Low Cost Web Based Human Health Monitoring System Using Raspberry Pi 2
22[64]2017Ultra-Low Power, Secure IoT Platform for Predicting Cardiovascular Diseases
23[39]2017IOT Based Detection of Cardiac Arrythmia With Classification
24[150]2017Student Research Abstract: A Novel IoT-based Wireless System to Monitor Heart Rate
25[151]2017Cardiac Scan: A Non-contact and Continuous Heart-based User Authentication System
26[102]2017Cardiac Arrhythmia Detection using Deep Learning
27[103]2017Multiresolution Wavelet Transform based Feature Extraction and ECG Classification to Detect Cardiac
Abnormalities
28[104]2017ECG beat Classification using Empirical Mode Decomposition and Mixture of Features
29[123]2017Internet of Medical Things (IOMT): Applications, Benefits and Future Challenges in Healthcare Domain
30[152]2018Social Assistive Robot for Cardiac Rehabilitation: A Pilot Study with Patients with Angioplasty
31[153]2018Impact of a Mobile Cycling Application on Cardiac Patients’ Cycling Behavior and Enjoyment
32[65]2018Pulse Oximetry and IOT based Cardiac Monitoring Integrated Alert System
33[66]2018Detection of Cardiac Arrest Using Internet of Things
34[18]2018Heart Attack Detection and Heart Rate Monitoring Using IoT
35[38]2018IoT Based Continuous Monitoring of Cardiac Patients using Raspberry Pi
36[20]2018Healthcare Monitoring System Based on Wireless Sensor Network for Cardiac Patients
37[24]2018Heart Attack Detection By Heartbeat Sensing using Internet Of Things: IoT
38[67]2018Real-Time Monitoring and Detection of ‘‘Heart Attack’’ Using Wireless Sensors and IoT
39[105]2018Diagnosis of Shockable Rhythms for Automated External Defibrillators using a Reliable Support Vector
Machine Classifier
40[106]2018Automatic Recognition of Arrhythmia based on Principal Component Analysis Network and Linear Support
Vector Machine
41[107]2018Automated Recognition of Cardiac Arrhythmias using Sparse Decomposition over Composite Dictionary
42[108]2018A Novel Adaptive Feature Extraction for Detection of Cardiac Arrhythmias using Hybrid technique MRDWT &
MPNN Classifier from ECG Big Data
43[109]2018Automated Diagnosis of Arrhythmia using Combination of CNN and LSTM Techniques with Variable Length
Heart Beats
44[110]2018A Deep Learning Approach for ECG-based Heartbeat Classification for Arrhythmia Detection
45[111]2018A Novel Application of Deep Learning for Single-Lead ECG Classification
46[91]2018Deep Learning for Prediction of Obstructive Disease From Fast Myocardial Perfusion SPECT A Multicenter
Study
47[124]2018Deploying Internet of Things in Healthcare: Benefits, Requirements, Challenges and Applications
48[28]2019A Study on Heart Attack Detection by Heartbeat Monitoring Using IoT
49[25]2019An Energy Efficient Wearable Smart IoT System to Predict Cardiac Arrest
50[26]2019IoT Based Heart Attack Detection, Heart Rate and Temperature Monitor
51[40]2019IoT based Diagnosing Myocardial Infarction through Firebase Web Application
52[21]2019A Real-time Cardiac Monitoring using a Multisensory Smart IoT System
53[68]2019An IoT based Efficient Hybrid Recommender System for Cardiovascular Disease
54[69]2019Utilizing IoT Wearable Medical Device for Heart Disease Prediction using Higher Order Boltzmann Model: A
Classification Approach
55[30]2019The Cardiac Disease Predictor: IoT and ML Driven Healthcare System
56[70]2019Machine Learning and IoT-based Cardiac Arrhythmia Diagnosis using Statistical and Dynamic Features of ECG
57[71]2019Artificial Intelligence of Things Wearable System for Cardiac Disease Detection
58[112]2019Neural Network Based Intelligent System for Predicting Heart Disease
59[93]2019Cardiologist-level Arrhythmia Detection and Classification in ambulatory Electrocardiograms using a Deep
Neural Network
60[126]2019IoT Healthcare: Benefits, Issues and Challenges
61[127]2019IoT, an Emerging Technology for Next Generation Medical Devices in Support of Cardiac Health Care—A
Comprehensive Review
62[11]2019IoT Technology, Applications and Challenges: A Contemporary Survey
63[128]2019Internet of Things applications: A Systematic Review
64[125]2019Smart Healthcare in the Era of Internet-of-Things
65[130]2019Challenges and opportunities in IoT Healthcare Systems: A Systematic Review
66[138]2019AI in Healthcare: Ethical and Privacy Challenges
67[137]2019Key Challenges for Delivering Clinical Impact with Artificial Intelligence
68[139]2019Healthcare uses of Artificial Intelligence: Challenges and Opportunities for Growth
69[149]2019Artificial Intelligence in Clinical Decision Support: Challenges for Evaluating AI and Practical Implications
70[72]2020An Efficient IoT-Based Platform for Remote Real-Time Cardiac Activity Monitoring
71[86]2020IOT Based Heart Attack Detection & Heart Rate Monitoring System
72[73]2020Remote Health and Monitoring, Heart Attack Detection and Location Tracking System with IoT
73[74]2020IOT Based Heart Attack and Alcohol Detection in Smart Transportation and Accident
74[75]2020HealthFog: An Ensemble Deep Learning based Smart Healthcare System for Automatic Diagnosis of Heart
Diseases in Integrated IoT and Fog Computing Environments
75[27]2020IoT based Health Care Monitoring Kit
76[76]2020Automated Detection of Posterior Myocardial Infarction From VCG Signals Using Stationary Wavelet
Transform Based Features
77[22]2020IoT Based Real-Time Remote Patient Monitoring System
78[77]2020Design, Fabrication, and Testing of an IoT Healthcare Cardiac Monitoring Device
79[78]2020A Framework for Cardiac Arrhythmia Detection from IoT-based ECGs
80[79]2020SAREF4health: Towards IoT Standard-based Ontology-Driven Cardiac E-health Systems
81[23]2020An IoT Patient Monitoring Based on Fog Computing and Data Mining: Cardiac Arrhythmia Usecase
82[113]2020CNN-KCL: Automatic Myocarditis Diagnosis using Convolutional Neural Network Combined with K-means
Clustering
83[114]2020Detection of Myocardial Infarction Based on Novel Deep Transfer Learning Methods for Urban Healthcare in
Smart Cities
84[115]2020Automatic Diagnosis of the 12-lead ECG using a Deep Neural Network
85[129]2020Internet of Things Based Distributed Healthcare Systems: A Review
86[131]2020IoT-Enabled Healthcare: Benefits, Issues and Challenges
87[132]2020A Comprehensive Review on the Emerging IoT Cloud based Technologies for Smart Healthcare
88[140]2020Ethical Challenges of Integrating AI into Healthcare
89[80]2021Monitoring Patients to Prevent Myocardial Infarction using Internet of Things Technology
90[81]2021Filtering the ECG Signal towards Heart Attack Detection using Motion Artifact Removal Technique
91[82]2021Artificial-Intelligence-Enhanced Mobile System for Cardiovascular Health Management
92[83]2021AMBtalk: A Cardiovascular IoT Device for Ambulance Applications
93[84]2021Predicting Cardiovascular Events with Deep Learning Approach in the Context of the Internet of Things
94[41]2021IoT Based Wearable Monitoring Structure for detecting Abnormal Heart
95[154]2021An Advanced Patient Health Monitoring System
96[155]2021Development of Smart Health Monitoring System using Internet of Things
97[116]2021Early Detection of Myocardial Infarction in Low-Quality Echocardiography
98[119]2021Prediction of Heart Disease Using Deep Convolutional Neural Networks
99[117]2021AI-Based Smart Prediction of Clinical Disease Using Random Forest Classifier and Naive Bayes
100[118]2021Artificial Intelligence Enhanced Electrocardiogram for the Early Detection of Cardiac Amyloidosis
101[133]2021IOT in Healthcare: Challenges, Benefits, Applications and Opportunities
102[134]2021A Survey on IoT Smart Healthcare: Emerging Technologies, Applications, Challenges, and Future Trends
103[141]2021Secure and Robust Machine Learning for Healthcare: A Survey
104[142]2021AI in Healthcare: Medical and Socio-Economic Benefits and Challenges

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Figure 1. Types of arrhythmia.
Figure 1. Types of arrhythmia.
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Figure 2. SLR protocol outline.
Figure 2. SLR protocol outline.
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Figure 3. Flow diagram showing the screening process for the systematic review.
Figure 3. Flow diagram showing the screening process for the systematic review.
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Figure 4. Benefits and challenges of E-Cardiology.
Figure 4. Benefits and challenges of E-Cardiology.
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Figure 5. Statistical analysis of reviewed papers in terms of formulated RQs.
Figure 5. Statistical analysis of reviewed papers in terms of formulated RQs.
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Figure 6. Year-wise trends in publications in the field of E-Cardiology.
Figure 6. Year-wise trends in publications in the field of E-Cardiology.
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Table 1. Various Types of Arrhythmias.
Table 1. Various Types of Arrhythmias.
Types of ArrhythmiaExplanation
TachyarrhythmiasA fast heart rhythm with a rate of more than 100 beats per
minute.
BradyarrhythmiasSlow heart rhythms that may be caused by disease in the heart’s
conduction system.
Supraventricular arrhythmiasArrhythmias that begin in the atria (the heart’s upper chambers).
“Supra” means above; “ventricular” refers to the lower chambers
of the heart, or ventricles.
Ventricular arrhythmiasArrhythmias that begin in the ventricles (the heart’s lower
chambers).
Table 2. Review questions and their motivation.
Table 2. Review questions and their motivation.
No.Review QuestionMotivation
RQ 1What are the vital hardware components/sensors used in
E-Cardiac architecture for different CCU parameters?
The main focus of this question is to identify different types
of sensors and their features most often used in IoT-based
Cardiac Healthcare.
RQ 2What are the most important communication technologies
used in E-Cardiac Care?
The question aims to find the most commonly used
communication technologies in MIoT-based Cardiology.
RQ 3Which pre-processing techniques are used in E-Cardiology
along with the most widely used AI classifiers/models?
This question is designed to explore the current work in
the field of medical IoT accompanied by artificial intelligence
in cardiac healthcare and to identify various classification
and preprocessing techniques used for predicting
cardiovascular diseases.
RQ 4What are the significant issues and challenges in the current
E-Cardiology?
This question investigates major benefits, and current
challenges of IoT-based cardiac healthcare system.
Table 3. Search strings used for data retrieval.
Table 3. Search strings used for data retrieval.
No.Search String
1(internet of things OR IoT OR IoT-based OR smart health) AND (cardiac OR heart OR CCU) AND (monitoring OR detection
OR diagnosis OR disease OR parameters)
2(intelligent OR artificial intelligence OR AI OR machine learning OR deep learning OR preprocessing OR reduction OR
cleaning OR data mining) AND (cardiac OR heart OR ECG OR arrhythmia OR cardiovascular OR smart health OR healthcare
OR smart healthcare OR cardiology) AND (technique OR methods OR classification OR algorithm)
3(internet of things OR IoT OR IoT-based) AND (cardiac OR heart OR CCU OR smart health OR smart healthcare) AND
(benefits OR advantages OR challenges OR issues OR disadvantages)
Table 4. Inclusion and exclusion criteria.
Table 4. Inclusion and exclusion criteria.
Inclusion CriteriaExclusion Criteria
The papers published in English were chosen on priority.The papers published in other languages were
not selected.
The most recently published research papers, i.e., 2016 to 2021, were
singled out for studies.
Gray literature was excluded from the study list.
Papers describing an overview of current approaches that
implement modern tools and techniques in E-Cardiology
were selected.
Papers not defining the topic appropriately
were excluded.
The main aim was to target the primary studies such as original research papers.Duplicated material was removed.
Table 11. Communication technologies used in previous studies.
Table 11. Communication technologies used in previous studies.
YearCommunication Technologies Used
BTETHGSMGPSGPRSMQTTSMSSMPPZBWIFITCP/
IP
Sc.
P
CloudSP/
PC
Internet
2016 [17]NNYYYNYYNYNNYYN
2016 [58]YYNNNNNNNYYYYYN
2016 [59]YNNNNNYNNYNYYNN
2016 [85]NNNNNNYNNNNNNYN
2016 [60]NNNNNNNNNNNNNYN
2016 [61]NNNNNNNNNYNNNYN
2017 [37]YNYNYNNNNYNNNYY
2017 [62]NNNNNNNNNNNNNNN
2017 [19]YNYNNNYNNYYNYYN
2017 [29]NNYNYNNNNYNNYYN
2017 [63]NNNNNNNNNYYNYYN
2017 [64]NNNNNNNNNYNYYYN
2017 [39]YNNYNNNNNYNNNYN
2018 [65]NNYYYNYNNYNNYYN
2018 [66]YNNNNNYNNYNYYYN
2018 [18]NNNNNNNNNYNNYYN
2018 [38]NNYNNNYNNYYNYYN
2018 [20]NNNNNNNNNYYNYYN
2018 [24]NNNNNNNNNYYNNNN
2018 [67]YNYYYNNNNYNNNYN
2019 [28]NNNNNNYNNNNNNYN
2019 [25]YNNNNNNNNNNNNYN
2019 [26]NNNNNNNNNYYYYNN
2019 [40]NNNNNNNNNYNYYYN
2019 [21]YNNYNNNNNNNNNYN
2019 [68]NNNNNNNNNYNYYYN
2019 [69]YNNNNNNNNYNNYYN
2019 [30]YNNNNNNNNYNYYYN
2019 [70]NNNNNNYNNNNNNYN
2019 [71]YNNNNNNNNNNNYYN
2020 [72]NNNNNNNNNYNNNNN
2020 [86]NNNNNNNNNYNNNYN
2020 [73]YNYYYNNNNYNNYYN
2020 [74]NNYNYNYNYNNNNNN
2020 [75]YNNNNNNNNYYYYYN
2020 [27]NNNNNNNNYYNNNYN
2020 [76]NNNNNNNNNNNNNNN
2020 [22]NNNNNYNNNYNNYYN
2020 [77]YNYNYNYNNYYYYYN
2020 [78]NNNNNNNNNYNNYYN
2020 [79]NNNNNNNNNYNNYYN
2020 [23]YNNNNNNNNYYYYYN
2021 [80]YNNNNNNNNYNYYYN
2021 [81]NNNYNNNNNNNNNNN
2021 [82]YNNNNNNNNNYNYYN
2021 [83]NYNNNYNNNYYYYYN
2021 [84]NNNYNNNNNYNNNNN
2021 [41]YNNNNNNNNYNNYYN
BT—Bluetooth; GSM—global system for mobile communications; GPS—global positioning system; GPRS—general packet radio service; MQTT—message queuing telemetry transport; N—No; Sc.P—security protocols; SMS—short message service; SMPP—short message peer-to-peer; SP/PC—Smart phone/personal computer; TCP/IP—transmission control protocol/Internet protocol; WIFI—wireless fidelity; Y—yes.
Table 12. Overview of common ai techniques used in E-Cardiology.
Table 12. Overview of common ai techniques used in E-Cardiology.
No.AI AlgorithmDescriptionStrengthsLimitations
1Principal Component Analysis
(Unsupervised)
A method of dimensionality reduction which aims to compute
principal components and makes data more compressible.
1. Compute principal components
2. Avoids data overfitting
3. High variance, improved visualization
4. Reduce Complexity
1. Low interpretability of principal
components.
2. Dimensionality reduction may
result in information loss.
2K-Means Clustering
(Unsupervised)
Generates k number of centroids that help to define
clusters of data.
1. Ensures convergence
2. Can warm-start the positions of centroids
3. Easily adjusts to new examples
4. Assists the doctors in making more accurate
diagnosis
1. Not suitable for data varying
in size and density
2. Noise sensitive
3Decision Tree
(Supervised)
For classifying examples, a decision tree is an easy and simple
representation.
1. Easy to interpret
2. Avoids over-fitting by pruning
3. Less sensitive to outliers
4. Requires less data cleaning
1. Instability
2. Relatively inaccurate
4K-Nearest Neighbor
(Supervised)
Saves all available cases and allocates new cases based
on a similarity measure.
1. Easy to implement & understand
2. Used for both classification &
regression problems
1. Significantly slow as the data
size increase
2. Computationally expensive
3. Requires high memory
5Naïve Bayes
(Supervised)
An easy probabilistic classifiers based on Bayes’ theorem.1. Scalable
2. Fast
3. Used for real-time predictions
4. Not requires large amounts of data
1. Assumes attributes are mutually
independent
2. Zero Frequency limitation
6Random Forest
(Supervised)
A set of decision trees, usually trained with the “bagging”
technique. It performs classification as well as regression
tasks.
1. Used for prediction
2. Resistant to noise and overfitting
3. Flexible, can handle large datasets easily
1. Can take up lots of memory
2. Not that interpretable
7Support Vector Machine
(Supervised)
Indicates hyperplane which separates classes, based on a
similarity measure, can be used as a linear or nonlinear kernel.
1. Fast
2. Relatively memory efficient
3. Works well with clear margin of
separation between classes
1. Difficult to interpret
2. Not suitable for large datasets
3. May need normalization &
scaling
8Logistic Regression
(Supervised)
The logistic paradigm can be used to model the probability
of a certain class or event happening.
1. Easy to implement and interpret
2. Efficient to train
1. Performs poorly with large no.
of variables
2. Used to predict only discrete
functions
3. Not capture interactions auto-
matically
9Backpropagation
(Supervised)
Backpropagation is a widely used algorithm for training
feedforward neural networks. It is a reliable tool for
increasing the accuracy of predictions.
1. Fast
2. Simple
3. Easy to analyze
4. Flexible
1. Sensitive to noisy/complex data
2. Performance of backpropagation
depends on input data
10Deep Learning (ANN)
(Supervised)
Multilayered processing technique that mimics human
neuronal structure. Different types of ANN are CNN or
ConvNet, MLP, RBFN, RNN, etc.
1. No feature engineering
2. Learn complex functions
3. Enhanced Accuracy
4. Scalabale Model
1. Requires extremely large datasets
2. Intensive computational power
3. Difficult to interpret
4. Significant processing time
Table 13. Comparative analysis of various AI techniques used for prognosis/diagnosis of CVDs.
Table 13. Comparative analysis of various AI techniques used for prognosis/diagnosis of CVDs.
No. AI Techniques
Used in Smart
Cardiology
Performance Metrics
Cl. Acc Sensitivity Specificity Flexibility Efficiency Com.
CPLX
Interpretability Large
Dataset
Handling
Training
Time
Noise
Tolerance
1DTLYYYYLHNSN
2RFH--Y-LLYFN
3NBLY-YYLHYFY
4PCA-KNNHYY---L-FN
5SVMHYYYYHLNSN
6LRL--YYLHYFN
7BPHYYY--HY-N
8DL (ANN)HYYYYHLYSY
PCA-KNN—principal component analysis with K-nearest neighbor; NB—naïve Bayes; RF—random forest; SVM—support vector machine; LR—logistic regression; DL—deep learning; ANN—artificial neural networks; BP—backpropagation; Y—yes; S—slow; F—fast; L—low; H—high; N—no.
Table 14. Summary of AI-methodologies and data preprocessing techniques identified for E-Cardiology, from different studies.
Table 14. Summary of AI-methodologies and data preprocessing techniques identified for E-Cardiology, from different studies.
Ref #YearFindings
AI MethodologyPrognosis/
Diagnosis Task
Types of
CVDs
Cardiac
Parameter/s
Cardiac
Dataset
Preprocessing TaskData Preprocessing
Techniques
Accuracy
%
Complexity
[94]2016DTCoronary Heart
Disease
N/AN/AUCIN/AN/A86.7M
[96]2016BBNNArrhythmia5ECGMIT-BIHFeature ExtractionHermit Basis Function97H
[97]2016NNArrhythmia5ECGMIT-BIHDenoising
Feature Extraction
DWT
DWT + PCA
DWT + ICA
98.91H
[98]2016PSO tuned SVMArrhythmia12ECGMIT-BIHFeature ExtractionDOST99.18H
[99]2016NNArrhythmia5ECGMITBIHFeature ExtractionDOM95M
[100]2016RFArrhythmia5ECGMIT-BIHFeature ExtractionWPE94.61M
[61]2016SVMArrhythmia2ECGCTFeature ExtractionDWT98.9M
[101]2016Paired-CNNCoronary Artery
Calcification
N/ACCTACTFeature ExtractionConvNetSens. = 71H
[102]2017DLArrhythmiaN/AECGMIT-BIHFeature ExtractionAlexNet (DNN)92H
[103]2017SVMArrhythmia4ECGMIT-BIHDenoising
Feature Extraction
Multiresolution DWT98.39M
[104]2017RBF-NNArrhythmia6ECGMIT-BIHDenoising
Feature Extraction
DWT
EMD Features
99.89H
[102]2017DLArrhythmia3ECGMIT-BIHFeature ExtractionTransferred Deep Learning92H
[105]2018SVMArrhythmia3ECGCUDB
VFDB
Feature ExtractionFFT95.9M
[106]2018SVMArrhythmia5ECGMIT-BIHDenoising
Normalization
Feature Extraction
Daubechies wavelets
min-max Normalization
PCANet
97.77M
[107]2018Twin LS-SVMArrhythmia16ECGMIT-BIHFeature ExtractionComposite Dictionary
(DOST + DST + DCT)
99.21H
[108]2018MPNNArrhythmia3ECGMIT-BIHDenoising
Feature Extraction
Daubechies wavelet
Multiresolution DWT
MPNN
99.07H
[109]2018DLArrhythmia5ECGMIT-BIHNormalization
Feature Extraction
Z-score normalization
CNN and LSTM
98.10H
[110]2018DLArrhythmia2ECGMIT-BIHFeature ExtractionDNN99.68M
[111]2018DBNArrhythmia5ECGMIT-BIHN/AN/A95.57H
[91]2018DNNArrhythmiaN/ACCTACTFeature ExtractionDNNSens. = 82.3H
[71]2019CNNArrhythmia4ECGCT
MIT-BIH
Feature ExtractionCNN94.96
95.73
M
[112]2019MPNN-BPHeart Disease5ECGUCIN/AN/A97.5H
[93]2019DNNArrhythmia12ECGCTDenoising
Feature Extraction
DNNROC = 97
F1 = 83.7
H
[68]2019Hybrid ModelHeart Disease8ECG, HR, BPCTData Cleaning
Denoising
Feature Selection
Numerical Cleaner Filter
SFS
98H
[113]2020CNN-KCLMyocarditisN/AECGZASOutlier Anomaly
K-means clustering
K-means clustering
CNN
92.3H
[114]2020CNNMyocardial InfarctionN/AECGPTBData Augmentation
Segmentation
Feature Extraction
CNN99.02H
[115]2020DNNArrhythmia6ECGTNMGN/AN/AF1 = 80
Spec. = 99
H
[72]2020TWSVMArrhythmia16ECGCT
MIT-BIH
Feature ExtractionDWT95.68H
[78]2020DHCAF
MCHCNN
Arrhythmia5ECG, HRCT
MIT-BIH
Denoising
Feature Extraction
Daubechies wavelet-4
HWT
91.4
93
H
[116]2021E-D CNN-SVMMyocardial InfarctionN/AECHOHMC-QUFeaturing EngineeringCNN80.24H
[117]2021RF, NBCoronary Heart
Disease
N/AN/AORN/AN/A83.85 (RF)
82.35 (NB)
M
[118]2021AICardiac AmyloidosisN/AECGMCFeature ExtractionDNN90N/A
[119]2021CNNHeart FailureN/AN/ACTFeature SelectionLASSO Regression97H
H—high; M—medium; N/A—not available; DL—deep learning; MPNN-BP—multilayer perceptron neural network-backpropagation; RF—random forest; WPE—wavelet packet entropy; CNN—convolutional neural network; CL—K means clustering; ZAS—Z alizadeh; PTB—physikalisch technische bundesanstalt; NB—naive Bayes; FFT—fast fourier transform; DNN—deep neural network; SVM—support vector machine; NN—neural networks; BBNN—block-based neural network; MC—Mayo Clinic; HWT—haar wavelet transform; EMD—empirical mode decomposition; RBNN—radial basis function neural network; OCAD—obstructive coronary artery disease; DBN—deep belief networks; ROC—receiver operating characteristic curve; DHCAF—dynamic heartbeat classification; SFS—sequential forward transform; DOST—discrete orthogonal stockwell transform; DOM—difference operation method; CCTA—cardiac CT angiography; PSO—particle swarm optimization; CUDB—Creighton University database; VFDB—ventricular fibrillation database; LS—SVM-least square SVM; OR—online repository; DBN—deep belief networks; ROC—receiver operating characteristic curve; DWT—discrete wavelet transform; DHCAF—dynamic heartbeat classification with adjusted features; MCHCNN—multi-channel heartbeat convolutional neural network.
Table 15. Key issues and major benefits of IoT-based cardiology.
Table 15. Key issues and major benefits of IoT-based cardiology.
Ref #YearFindings
Key Challenges and Barriers
of E-Cardiology with IoT
Data Related IssuesBenefits of IoT-Based
E-Cardiology
[121]2016Security, Interoperability
Unintended Behavior,
Device Vulnerability
Privacy
Consistency
Integration
Cost Reduction
Clinical Continuity
Quality Life, Telemedicine
[122]2016Security, Interoperability
Complexity, Scalability
Device Vulnerability
PrivacyCost Reduction
Clinical Continuity
Automation, Time Saving
[123]2017Security
Energy Consumption
Network Latency
Intelligence in Medical Care
System Predictability
Privacy
Real-Time Processing
Cost Reduction
Clinical Continuity,
Automation,
Time Saving,
Quality Life, Telemedicine
[124]2018Security, Interoperability
Energy Consumption
Network Latency
PrivacyUbiquitous Access, Quality Life
Cost Reduction, Time Saving
Reduced Hospital Visits
[11]2019Security, Interoperability
Energy Consumption
Internet Bandwidth
PrivacyN/A
[125]2019Security
Heterogeneity
Privacy, Reliability, Utility
Validity, Generalizability
Integrity, Objectivity,
Data Overload,
Completeness, Relevance
Personalized, Predictive,
Participatory, Preventative,
Persuasive, Perpetual,
Programmable (7P)
[126]2019Security
Unintended Behavior
Privacy,
Confidentiality
Ubiquitous Access
Cost Reduction
Clinical Continuity
Improved Accuracy
Quality Life, Telemedicine
[127]2019Security
Scalability
Privacy
Data Overload
Ubiquitous Access
Cost Reduction,
Clinical Continuity
Automation, Time Saving
Quality Life Telemedicine
[128]2019Security
Context-aware Computing
Interoperability
Energy Consumption
PrivacyN/A
[129]2020Unobtrusiveness
Energy Consumption
Quality of Service
Scalabilty, Fixation
Patient Indentification
Body Impact on Signal Propagation
Reliability
Integrity
Data Protection
Data Representation
Accuracy
N/A
[130]2020Energy Consumption, Storage
Patient’s discomfort caused
by Sensors
Privacy
Data Overload
Noise
Flexibility
Clinical Continuity
Remote Monitoring
[131]2020SecurityPrivacy
Confidentiality
Integrity, Data Loss
Aval1abilty Compromise
Remote Monitoring
Cost Reduction, Time Saving
Better Diagnostics
Improved Clinical Infrastructure
[132]2020Security
Mobility
Heterogeneity
Legal Aspects
PrivacyN/A
[133]2021Security, ScalabilityN/AEfficient, Cost Effective
[134]2021Security
Scalability
Interoperability,
Energy Consumption,
Low Latency Tolerance
Privacy
Computational Intensity
Ubiquitous Access
Time Saving, Cost Reduction
Telemedicine, Quality Life
Clinical Continuity
Easy Usge
Table 16. Comparison of the existing evaluation factors in the Smart cardiac care.
Table 16. Comparison of the existing evaluation factors in the Smart cardiac care.
Ref # Year Security Privacy Complexity Integration Reliability System
Predictability
Interoperability Scalability Heterogeneity Energy
Consumption
Network
Latency
[122]2016
[121]2016
[135]2017
[123]2017
[124]2018
[11]2019
[126]2019
[127]2019
[125]2019
[128]2019
[129]2020
[130]2020
[131]2020
[132]2020
[133]2021
[134]2021
✓—parameter mentioned; ✗—parameter not mentioned.
Table 17. Key challenges and primary benefits of AI-based cardiology.
Table 17. Key challenges and primary benefits of AI-based cardiology.
Ref #YearFindings
Key Challenges and Barriers for E-Cardiology with AIBenefits of AI in E-Cardiology
[136]2016Safety and transparency
Algorithmic fairness and biases, Complexity
Data privacy and information security
Need for infrastructure, High quality data
Public perceptions about AI, Informed consent
Better diagnosis, better services
Improves quality of services
Time saving
Reduced treatment cost
[137]2019Fitting confounders accidentally versus actual signal,
Generalizability, Algorithmic bias
Possibility of adversarial attack
Logistical challenges in deploying AI systems
Robust and rigorous quality assurance
Traditional reluctance to switch from existing model
to AI model in healthcare
Algorithmic accountability
To develop a relation between physicians and human-centered AI tools
N/A
[138]2019Data privacy, Accountability
Algorithmic bias
Adaptability, Complexity
Improved healthcare
Better diagnosis
High accuracy
[139]2019Privacy and discrimination
Dynamic information and consent
Transparency and ownership
Speedy imaging, Increased efficiency
Greater insight into predictive screening
Decreased healthcare cost
[140]2020Respect for autonomy
Beneficence
Non-maleficence and justice
Lower cost
Improved diagnosis and treatment
[141]2021Safety, Privacy and security threats
Ethical challenges
Regulatory and policy challenges
Availability of quality data and Lack of data standardization
Distribution shifts
Upgrading hospital infrastructure
Disease prediction and diagnosis
Better image interpretation
Real-time monitoring
[142]2021Sometimes data reflects inherent biases and disparities
Huge dataset requirement
Patient’s confidentiality
Potential to be detrimental
Improved decision making
Improved precision and predictability
Intraoperative guidance via video
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Umar, U.; Nayab, S.; Irfan, R.; Khan, M.A.; Umer, A. E-Cardiac Care: A Comprehensive Systematic Literature Review. Sensors 2022, 22, 8073. https://doi.org/10.3390/s22208073

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Umar U, Nayab S, Irfan R, Khan MA, Umer A. E-Cardiac Care: A Comprehensive Systematic Literature Review. Sensors. 2022; 22(20):8073. https://doi.org/10.3390/s22208073

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Umar, Umara, Sanam Nayab, Rabia Irfan, Muazzam A. Khan, and Amna Umer. 2022. "E-Cardiac Care: A Comprehensive Systematic Literature Review" Sensors 22, no. 20: 8073. https://doi.org/10.3390/s22208073

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Umar, U., Nayab, S., Irfan, R., Khan, M. A., & Umer, A. (2022). E-Cardiac Care: A Comprehensive Systematic Literature Review. Sensors, 22(20), 8073. https://doi.org/10.3390/s22208073

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