E-Cardiac Care: A Comprehensive Systematic Literature Review
Abstract
:1. Introduction
2. Related Works
- 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.
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.
4. Review Methodology
4.1. Defining Review Strategy
4.2. Defining Search Strategy
- 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.
4.3. Inclusion and Exclusion Criteria
4.4. Quality Assessment Criteria
4.5. Quantitative Analysis
5. Outcomes
5.1. RQ 1: What Are the Vital Hardware Components/Sensors Used in E-Cardiac Architecture for Different CCU Parameters?
- (i)
- Heart Rate Sensory Unit
- (ii)
- Temperature Sensory Unit
- (iii)
- Blood Pressure (BP) Sensory Unit
Heart Rate/ Pulse Rate Sensors | Features | |||||||
---|---|---|---|---|---|---|---|---|
Major Pins | INT | Type | Operating Voltage | BPM | Low Supply Current | Electrodes Configuration | Acc | |
Pulse Sensor [31] | GND, Vcc, Signal | N | IR LED (Analog) | 3.3 V to 5.0 V | Y | N/A | N | N/A |
AD8232 [32] | GND, 3.3 V, Output, LO+, LO−, SDN | Y | IR LED (Analog) | 3.6 V | Y | 170 µA (typical) | Y | N/A |
KY-039 [33] | GND, Vcc, Signal | N | IR LED (Analog) | 5 V | Y | N/A | N | N/A |
Holter Device [34] | 3/5/12 Electrodes | Y | Digital Device | N/A | Y | N/A | Y | N/A |
SpO2 Sensor device [35] | Fingertip Sensor | Y | IR LED (Analog) | N/A | Y | N/A | N | ±2% for SPO2, ±2 bpm for Pulse Rate |
MAX30100 Pulse Oximeter and Heart Sensor [36] | VIN, SCL, SDA, INTERRUPT, IRD, RD, GND | Y | Int IR LED, Photo Sensor | 1.8 V and 3.3 V | Y | 170 µA, (typical) | N | 98.84% for SPO2, 97.11% for Heart Rate |
- (iv)
- Oxygen Sensory Unit
- (v)
- ECG Unit
Temperature Sensor | Features | ||||||
---|---|---|---|---|---|---|---|
Type | C/F or Both | Acc | Operating Voltage Range | Alarm Signaling | Major Pins | Measurement Range | |
LM35 [42] | Analog | C | 0.5 C Acc guaranteeable at +25 C | 4 V to 30 V | N | VCC, VOUT, GND | Range is −55 to +150 C |
DS18B20 [43] | Digital | Both | ±0.5 °C Acc from −10 C to +85 C | 3.0 V to 5.5 V | Y | GND, DQ, VDD, NC | Range is 55 C to +125 °C and 67 F to +257 F |
MCP9700 [44] | Analog | C | ±4 C (max.), 0 C to +70 C | 2.3 V to 5.5 V | N | Vout, Vcc, GND, NC | Range 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 V | Y | ADD0, ADD1, ALERT, GND, SCL, SDA, V+ | Range is −55 and +125 C |
BP Sensors | Features | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
Freq | Range | Major Pins | Pressure Hysteresis | Lin | Supply Voltage | Full Scale Span | RT | Offset Stability | Acc | |
MPX10 Series Pressure Sensor [46] | N/A | 0–10 kPa | GND, Vs, +Vout, −Vout | ±0.1 typical | Min −1.0, Max 1.0 | 3.0–6.0 Vs | Min 20 mV, Max 50 mV | 1.0 ms | ±0.5% VFSS | N/A |
Omron HBP- 1300 digital Device [47,48] | 50/60 Hz | 0 to 300 mmHg | Start/Stop, Mode, Last Reading (buttons) | N/A | N/A | 100–240 V AC | N/A | N/A | N/A | Within ±3 mmHg |
Typical BP Monitor Sensor [49] | N/A | 0 to 258 mmHg | Tube, Pressure Cuff, Pressure Control Valve, Bulb | typical ±0.25% | typical ±0.25% | N/A | N/A | 1.0 ms | N/A | ±1 mmHg |
Oxygen Sensors (Oximeter) | Features | ||||||||
---|---|---|---|---|---|---|---|---|---|
INT | Addressed Parameters | Power Supply Voltage | Type | Acc SpO2 | Acc PR | Major Pins | SpO2 Range | PR Range | |
MAX30100 [36] | Y | HR, SpO2 | 1.8 V to 3.3 V | IR LED | 99.62% | 97.55% | VIN, SCL, SDA, interrupt, IRD, RD, GND | N/A | N/A |
SpO2 Sensor Device [50] | Y | HR, SpO2 | D.C. 3.4 V ∼D.C.4.3 V | IR LED | ±2% (80–100%); ±3% (70–79%) | ±2% bpm | N/A | 35 to 100% | 25 to 250 bpm |
ECG Sensors/ Devices | Features | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
INT | Single/ Multi Lead | Low Supply Current | Elec | SR | Right Leg Drive Shut Down | Single Supply OPER | HPF | Out | OPER TEMP | Major Pins | |
AD8232 [32] | Y | Single Lead | 170 µA (typical) | 2 or 3 | 360 HZ | N | 2.0 V to 3.5 V | 2 Poles | Rail to Rail | 40 °C to +85 °C | GND, 3.3 V, OUT, LO−, LO+, ∼SDN, RA, LA, RL |
Holter Device [34] | Y | Multi Lead | N/A | 3, 5 or 12 | 125 HZ | N/A | one AAA battery | N/A | ECG Signal Rec on Monitor | +10 °C to +40 °C | Multiple Leads |
ADAS1000 [51] | Y | Multi Lead | N/A | 5 or 6 | 800 HZ | N/A | 3.15 V to 5.5 V | N/A | Monitor | −40 °C to +85 °C | 64 lead LQFP [52], 56 lead LFCSP (Both has diff. pins) |
AD8233 [53] | Y | Single Lead | 50 A typical | 2 or 3 | N/A | Y | 1.7 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] | Y | Multi Lead | T60 µA Maximum | 4 | 24 MHZ | N/A | 450 mAh battery | N/A | On Windows PC and SQL | N/A | 5 ECG pins, 5 EMG pins |
Year | Sensors Used | ||||||
---|---|---|---|---|---|---|---|
ECG Module | Temp Sensor | BP Sensor | Pulse/ HB Sensor | Oxygen Sensor | Other Sensor /Device | Integrated Sensor | |
2016 [17] | ✗ | MCP9700 | ✗ | Pulse 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] | ✗ | 18DS20 | ✗ | KY-093 | ✗ | ✗ | ✗ |
2017 [29] | ✗ | ✗ | OMRONH- -BP1300 | PPG Sensor | External Defibillator | ✗ | |
2017 [63] | (UB-MNNS) | (UB-MNNS) | (UB–MNNS) | HB Sensor | ✗ | Alchol 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 AD8232 | ✗ | ✗ | Pulse Sensor | ✗ | ✗ | ✗ |
2018 [20] | ECG Module AD8232 | ✗ | ✗ | MAX30100 | MAX30100 | ✗ | ✗ |
2018 [24] | ✗ | LM35 | (UB–MNNS) | HB Sensor | ✗ | ✗ | ✗ |
2018 [67] | ✗ | ✗ | ✗ | ✗ | ✗ | ✗ | WWSN for ECG, BP, Respiratory |
2019 [28] | ✗ | 18DS20 | ✗ | HB sensor | ✗ | ✗ | ✗ |
2019 [25] | Pulse Sensor | LM35 | ✗ | Pulse Sensor | ✗ | ✗ | ✗ |
2019 [26] | ✗ | LM35 | ✗ | Pulse 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 sensor | ✗ | Alchohal Sensor (MNNS) | ✗ |
2020 [75] | ✗ | ✗ | ✗ | ✗ | ✗ | ✗ | MD, AC, ENV Sensors (MNNS) |
2020 [27] | ECG Module AD8232 | LM35 | MPX10 | Pulse Sensor | Pulse Sensor | ✗ | ✗ |
2020 [76] | 3 Lead VCG signals (MNNS) | ✗ | ✗ | ✗ | ✗ | ✗ | ✗ |
2020 [22] | ECG Module AD8232 | ✗ | ✗ | ECG Module AD8232 | ✗ | ✗ | ✗ |
2020 [77] | ADAS1000 | TMP100 | ✗ | ✗ | ✗ | ✗ | ✗ |
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 | ✗ | ✗ | ✗ | ✗ | ✗ | ✗ |
5.2. RQ 2: What Are the Most Important Communication Technologies Used in E-Cardiac Care?
5.3. RQ 3: Which Pre-Processing Techniques Are Used in E-Cardiology, along with the Most Widely Used AI Classifiers/Models?
5.3.1. AI Classifiers/Models and E-Cardiology
5.3.2. Data Preprocessing Techniques in E-Cardiology
5.4. RQ 4: What Are the Major Issues and Challenges in Current E-Cardiology?
5.4.1. Benefits of E-Cardiology
5.4.2. Challenges of E-Cardiology
6. Discussion
6.1. Gaps, Future Recommendations
6.2. Limitations of the Review Study
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Selected Literature
Sr.# | Ref# | Year | Paper Title |
---|---|---|---|
1 | [17] | 2016 | Smart Real-Time Healthcare Monitoring and Tracking System using GSM/GPS Technologies |
2 | [58] | 2016 | Internet of Medical Things for Cardiac Monitoring: Paving The Way to 5G Mobile Networks |
3 | [59] | 2016 | IOT on Heart Attack Detection and Heart Rate Monitoring |
4 | [85] | 2016 | Heart Rate Monitoring System Using Finger Tip Through Arduino and Processing Software |
5 | [60] | 2016 | iCarMa: Inexpensive Cardiac Arrhythmia Management—An IoT Healthcare Analytics Solution |
6 | [94] | 2016 | Efficient Heart Disease Prediction System |
7 | [96] | 2016 | A new personalized ECG Signal Classification Algorithm using Block-based Neural Network and Particle Swarm Optimization |
8 | [97] | 2016 | Arrhythmia Recognition and Classification using Combined Linear and Nonlinear Features of ECG Signals |
9 | [98] | 2016 | Cardiac Arrhythmia Beat Classification Using DOST and PSO Tuned SVM |
10 | [99] | 2016 | High Performance Personalized Heartbeat Classification Model for Long-Term ECG Signal |
11 | [100] | 2016 | ECG Classification Using Wavelet Packet Entropy and Random Forests |
12 | [101] | 2016 | Automatic Coronary Artery Calcium Scoring in Cardiac CT Angiography using paired Convolutional Neural Networks |
13 | [61] | 2016 | ECG Signal Analysis and Arrhythmia Detection on IoT Wearable Medical Devices |
14 | [122] | 2016 | Study of IoT: Understanding IoT Architecture, Applications, Issues and Challenges |
15 | [121] | 2016 | Always Connected: The Security Challenges of the Healthcare Internet of Things |
16 | [136] | 2016 | Exploratory Study of Artificial Intelligence in Healthcare |
17 | [37] | 2017 | The IoT-based Heart Disease Monitoring System for Pervasive Healthcare Service |
18 | [62] | 2017 | Heartbeat Sensing and Heart Attack Detection using Internet of Things: IoT |
19 | [19] | 2017 | A Novel Cardiac Arrest Alerting System using IOT |
20 | [29] | 2017 | A Wearable Multiparameter Medical Monitoring And Alert System With First Aid |
21 | [63] | 2017 | Design And Implementation Of Low Cost Web Based Human Health Monitoring System Using Raspberry Pi 2 |
22 | [64] | 2017 | Ultra-Low Power, Secure IoT Platform for Predicting Cardiovascular Diseases |
23 | [39] | 2017 | IOT Based Detection of Cardiac Arrythmia With Classification |
24 | [150] | 2017 | Student Research Abstract: A Novel IoT-based Wireless System to Monitor Heart Rate |
25 | [151] | 2017 | Cardiac Scan: A Non-contact and Continuous Heart-based User Authentication System |
26 | [102] | 2017 | Cardiac Arrhythmia Detection using Deep Learning |
27 | [103] | 2017 | Multiresolution Wavelet Transform based Feature Extraction and ECG Classification to Detect Cardiac Abnormalities |
28 | [104] | 2017 | ECG beat Classification using Empirical Mode Decomposition and Mixture of Features |
29 | [123] | 2017 | Internet of Medical Things (IOMT): Applications, Benefits and Future Challenges in Healthcare Domain |
30 | [152] | 2018 | Social Assistive Robot for Cardiac Rehabilitation: A Pilot Study with Patients with Angioplasty |
31 | [153] | 2018 | Impact of a Mobile Cycling Application on Cardiac Patients’ Cycling Behavior and Enjoyment |
32 | [65] | 2018 | Pulse Oximetry and IOT based Cardiac Monitoring Integrated Alert System |
33 | [66] | 2018 | Detection of Cardiac Arrest Using Internet of Things |
34 | [18] | 2018 | Heart Attack Detection and Heart Rate Monitoring Using IoT |
35 | [38] | 2018 | IoT Based Continuous Monitoring of Cardiac Patients using Raspberry Pi |
36 | [20] | 2018 | Healthcare Monitoring System Based on Wireless Sensor Network for Cardiac Patients |
37 | [24] | 2018 | Heart Attack Detection By Heartbeat Sensing using Internet Of Things: IoT |
38 | [67] | 2018 | Real-Time Monitoring and Detection of ‘‘Heart Attack’’ Using Wireless Sensors and IoT |
39 | [105] | 2018 | Diagnosis of Shockable Rhythms for Automated External Defibrillators using a Reliable Support Vector Machine Classifier |
40 | [106] | 2018 | Automatic Recognition of Arrhythmia based on Principal Component Analysis Network and Linear Support Vector Machine |
41 | [107] | 2018 | Automated Recognition of Cardiac Arrhythmias using Sparse Decomposition over Composite Dictionary |
42 | [108] | 2018 | A Novel Adaptive Feature Extraction for Detection of Cardiac Arrhythmias using Hybrid technique MRDWT & MPNN Classifier from ECG Big Data |
43 | [109] | 2018 | Automated Diagnosis of Arrhythmia using Combination of CNN and LSTM Techniques with Variable Length Heart Beats |
44 | [110] | 2018 | A Deep Learning Approach for ECG-based Heartbeat Classification for Arrhythmia Detection |
45 | [111] | 2018 | A Novel Application of Deep Learning for Single-Lead ECG Classification |
46 | [91] | 2018 | Deep Learning for Prediction of Obstructive Disease From Fast Myocardial Perfusion SPECT A Multicenter Study |
47 | [124] | 2018 | Deploying Internet of Things in Healthcare: Benefits, Requirements, Challenges and Applications |
48 | [28] | 2019 | A Study on Heart Attack Detection by Heartbeat Monitoring Using IoT |
49 | [25] | 2019 | An Energy Efficient Wearable Smart IoT System to Predict Cardiac Arrest |
50 | [26] | 2019 | IoT Based Heart Attack Detection, Heart Rate and Temperature Monitor |
51 | [40] | 2019 | IoT based Diagnosing Myocardial Infarction through Firebase Web Application |
52 | [21] | 2019 | A Real-time Cardiac Monitoring using a Multisensory Smart IoT System |
53 | [68] | 2019 | An IoT based Efficient Hybrid Recommender System for Cardiovascular Disease |
54 | [69] | 2019 | Utilizing IoT Wearable Medical Device for Heart Disease Prediction using Higher Order Boltzmann Model: A Classification Approach |
55 | [30] | 2019 | The Cardiac Disease Predictor: IoT and ML Driven Healthcare System |
56 | [70] | 2019 | Machine Learning and IoT-based Cardiac Arrhythmia Diagnosis using Statistical and Dynamic Features of ECG |
57 | [71] | 2019 | Artificial Intelligence of Things Wearable System for Cardiac Disease Detection |
58 | [112] | 2019 | Neural Network Based Intelligent System for Predicting Heart Disease |
59 | [93] | 2019 | Cardiologist-level Arrhythmia Detection and Classification in ambulatory Electrocardiograms using a Deep Neural Network |
60 | [126] | 2019 | IoT Healthcare: Benefits, Issues and Challenges |
61 | [127] | 2019 | IoT, an Emerging Technology for Next Generation Medical Devices in Support of Cardiac Health Care—A Comprehensive Review |
62 | [11] | 2019 | IoT Technology, Applications and Challenges: A Contemporary Survey |
63 | [128] | 2019 | Internet of Things applications: A Systematic Review |
64 | [125] | 2019 | Smart Healthcare in the Era of Internet-of-Things |
65 | [130] | 2019 | Challenges and opportunities in IoT Healthcare Systems: A Systematic Review |
66 | [138] | 2019 | AI in Healthcare: Ethical and Privacy Challenges |
67 | [137] | 2019 | Key Challenges for Delivering Clinical Impact with Artificial Intelligence |
68 | [139] | 2019 | Healthcare uses of Artificial Intelligence: Challenges and Opportunities for Growth |
69 | [149] | 2019 | Artificial Intelligence in Clinical Decision Support: Challenges for Evaluating AI and Practical Implications |
70 | [72] | 2020 | An Efficient IoT-Based Platform for Remote Real-Time Cardiac Activity Monitoring |
71 | [86] | 2020 | IOT Based Heart Attack Detection & Heart Rate Monitoring System |
72 | [73] | 2020 | Remote Health and Monitoring, Heart Attack Detection and Location Tracking System with IoT |
73 | [74] | 2020 | IOT Based Heart Attack and Alcohol Detection in Smart Transportation and Accident |
74 | [75] | 2020 | HealthFog: An Ensemble Deep Learning based Smart Healthcare System for Automatic Diagnosis of Heart Diseases in Integrated IoT and Fog Computing Environments |
75 | [27] | 2020 | IoT based Health Care Monitoring Kit |
76 | [76] | 2020 | Automated Detection of Posterior Myocardial Infarction From VCG Signals Using Stationary Wavelet Transform Based Features |
77 | [22] | 2020 | IoT Based Real-Time Remote Patient Monitoring System |
78 | [77] | 2020 | Design, Fabrication, and Testing of an IoT Healthcare Cardiac Monitoring Device |
79 | [78] | 2020 | A Framework for Cardiac Arrhythmia Detection from IoT-based ECGs |
80 | [79] | 2020 | SAREF4health: Towards IoT Standard-based Ontology-Driven Cardiac E-health Systems |
81 | [23] | 2020 | An IoT Patient Monitoring Based on Fog Computing and Data Mining: Cardiac Arrhythmia Usecase |
82 | [113] | 2020 | CNN-KCL: Automatic Myocarditis Diagnosis using Convolutional Neural Network Combined with K-means Clustering |
83 | [114] | 2020 | Detection of Myocardial Infarction Based on Novel Deep Transfer Learning Methods for Urban Healthcare in Smart Cities |
84 | [115] | 2020 | Automatic Diagnosis of the 12-lead ECG using a Deep Neural Network |
85 | [129] | 2020 | Internet of Things Based Distributed Healthcare Systems: A Review |
86 | [131] | 2020 | IoT-Enabled Healthcare: Benefits, Issues and Challenges |
87 | [132] | 2020 | A Comprehensive Review on the Emerging IoT Cloud based Technologies for Smart Healthcare |
88 | [140] | 2020 | Ethical Challenges of Integrating AI into Healthcare |
89 | [80] | 2021 | Monitoring Patients to Prevent Myocardial Infarction using Internet of Things Technology |
90 | [81] | 2021 | Filtering the ECG Signal towards Heart Attack Detection using Motion Artifact Removal Technique |
91 | [82] | 2021 | Artificial-Intelligence-Enhanced Mobile System for Cardiovascular Health Management |
92 | [83] | 2021 | AMBtalk: A Cardiovascular IoT Device for Ambulance Applications |
93 | [84] | 2021 | Predicting Cardiovascular Events with Deep Learning Approach in the Context of the Internet of Things |
94 | [41] | 2021 | IoT Based Wearable Monitoring Structure for detecting Abnormal Heart |
95 | [154] | 2021 | An Advanced Patient Health Monitoring System |
96 | [155] | 2021 | Development of Smart Health Monitoring System using Internet of Things |
97 | [116] | 2021 | Early Detection of Myocardial Infarction in Low-Quality Echocardiography |
98 | [119] | 2021 | Prediction of Heart Disease Using Deep Convolutional Neural Networks |
99 | [117] | 2021 | AI-Based Smart Prediction of Clinical Disease Using Random Forest Classifier and Naive Bayes |
100 | [118] | 2021 | Artificial Intelligence Enhanced Electrocardiogram for the Early Detection of Cardiac Amyloidosis |
101 | [133] | 2021 | IOT in Healthcare: Challenges, Benefits, Applications and Opportunities |
102 | [134] | 2021 | A Survey on IoT Smart Healthcare: Emerging Technologies, Applications, Challenges, and Future Trends |
103 | [141] | 2021 | Secure and Robust Machine Learning for Healthcare: A Survey |
104 | [142] | 2021 | AI in Healthcare: Medical and Socio-Economic Benefits and Challenges |
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Types of Arrhythmia | Explanation |
---|---|
Tachyarrhythmias | A fast heart rhythm with a rate of more than 100 beats per minute. |
Bradyarrhythmias | Slow heart rhythms that may be caused by disease in the heart’s conduction system. |
Supraventricular arrhythmias | Arrhythmias 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 arrhythmias | Arrhythmias that begin in the ventricles (the heart’s lower chambers). |
No. | Review Question | Motivation |
---|---|---|
RQ 1 | What 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 2 | What 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 3 | Which 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 4 | What 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. |
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) |
Inclusion Criteria | Exclusion 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. |
Year | Communication Technologies Used | ||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
BT | ETH | GSM | GPS | GPRS | MQTT | SMS | SMPP | ZB | WIFI | TCP/ IP | Sc. P | Cloud | SP/ PC | Internet | |
2016 [17] | N | N | Y | Y | Y | N | Y | Y | N | Y | N | N | Y | Y | N |
2016 [58] | Y | Y | N | N | N | N | N | N | N | Y | Y | Y | Y | Y | N |
2016 [59] | Y | N | N | N | N | N | Y | N | N | Y | N | Y | Y | N | N |
2016 [85] | N | N | N | N | N | N | Y | N | N | N | N | N | N | Y | N |
2016 [60] | N | N | N | N | N | N | N | N | N | N | N | N | N | Y | N |
2016 [61] | N | N | N | N | N | N | N | N | N | Y | N | N | N | Y | N |
2017 [37] | Y | N | Y | N | Y | N | N | N | N | Y | N | N | N | Y | Y |
2017 [62] | N | N | N | N | N | N | N | N | N | N | N | N | N | N | N |
2017 [19] | Y | N | Y | N | N | N | Y | N | N | Y | Y | N | Y | Y | N |
2017 [29] | N | N | Y | N | Y | N | N | N | N | Y | N | N | Y | Y | N |
2017 [63] | N | N | N | N | N | N | N | N | N | Y | Y | N | Y | Y | N |
2017 [64] | N | N | N | N | N | N | N | N | N | Y | N | Y | Y | Y | N |
2017 [39] | Y | N | N | Y | N | N | N | N | N | Y | N | N | N | Y | N |
2018 [65] | N | N | Y | Y | Y | N | Y | N | N | Y | N | N | Y | Y | N |
2018 [66] | Y | N | N | N | N | N | Y | N | N | Y | N | Y | Y | Y | N |
2018 [18] | N | N | N | N | N | N | N | N | N | Y | N | N | Y | Y | N |
2018 [38] | N | N | Y | N | N | N | Y | N | N | Y | Y | N | Y | Y | N |
2018 [20] | N | N | N | N | N | N | N | N | N | Y | Y | N | Y | Y | N |
2018 [24] | N | N | N | N | N | N | N | N | N | Y | Y | N | N | N | N |
2018 [67] | Y | N | Y | Y | Y | N | N | N | N | Y | N | N | N | Y | N |
2019 [28] | N | N | N | N | N | N | Y | N | N | N | N | N | N | Y | N |
2019 [25] | Y | N | N | N | N | N | N | N | N | N | N | N | N | Y | N |
2019 [26] | N | N | N | N | N | N | N | N | N | Y | Y | Y | Y | N | N |
2019 [40] | N | N | N | N | N | N | N | N | N | Y | N | Y | Y | Y | N |
2019 [21] | Y | N | N | Y | N | N | N | N | N | N | N | N | N | Y | N |
2019 [68] | N | N | N | N | N | N | N | N | N | Y | N | Y | Y | Y | N |
2019 [69] | Y | N | N | N | N | N | N | N | N | Y | N | N | Y | Y | N |
2019 [30] | Y | N | N | N | N | N | N | N | N | Y | N | Y | Y | Y | N |
2019 [70] | N | N | N | N | N | N | Y | N | N | N | N | N | N | Y | N |
2019 [71] | Y | N | N | N | N | N | N | N | N | N | N | N | Y | Y | N |
2020 [72] | N | N | N | N | N | N | N | N | N | Y | N | N | N | N | N |
2020 [86] | N | N | N | N | N | N | N | N | N | Y | N | N | N | Y | N |
2020 [73] | Y | N | Y | Y | Y | N | N | N | N | Y | N | N | Y | Y | N |
2020 [74] | N | N | Y | N | Y | N | Y | N | Y | N | N | N | N | N | N |
2020 [75] | Y | N | N | N | N | N | N | N | N | Y | Y | Y | Y | Y | N |
2020 [27] | N | N | N | N | N | N | N | N | Y | Y | N | N | N | Y | N |
2020 [76] | N | N | N | N | N | N | N | N | N | N | N | N | N | N | N |
2020 [22] | N | N | N | N | N | Y | N | N | N | Y | N | N | Y | Y | N |
2020 [77] | Y | N | Y | N | Y | N | Y | N | N | Y | Y | Y | Y | Y | N |
2020 [78] | N | N | N | N | N | N | N | N | N | Y | N | N | Y | Y | N |
2020 [79] | N | N | N | N | N | N | N | N | N | Y | N | N | Y | Y | N |
2020 [23] | Y | N | N | N | N | N | N | N | N | Y | Y | Y | Y | Y | N |
2021 [80] | Y | N | N | N | N | N | N | N | N | Y | N | Y | Y | Y | N |
2021 [81] | N | N | N | Y | N | N | N | N | N | N | N | N | N | N | N |
2021 [82] | Y | N | N | N | N | N | N | N | N | N | Y | N | Y | Y | N |
2021 [83] | N | Y | N | N | N | Y | N | N | N | Y | Y | Y | Y | Y | N |
2021 [84] | N | N | N | Y | N | N | N | N | N | Y | N | N | N | N | N |
2021 [41] | Y | N | N | N | N | N | N | N | N | Y | N | N | Y | Y | N |
No. | AI Algorithm | Description | Strengths | Limitations |
---|---|---|---|---|
1 | Principal 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. |
2 | K-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 |
3 | Decision 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 |
4 | K-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 |
5 | Naïve 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 |
6 | Random 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 |
7 | Support 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 |
8 | Logistic 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 |
9 | Backpropagation (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 |
10 | Deep 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 |
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 | ||
1 | DT | L | Y | Y | Y | Y | L | H | N | S | N |
2 | RF | H | - | - | Y | - | L | L | Y | F | N |
3 | NB | L | Y | - | Y | Y | L | H | Y | F | Y |
4 | PCA-KNN | H | Y | Y | - | - | - | L | - | F | N |
5 | SVM | H | Y | Y | Y | Y | H | L | N | S | N |
6 | LR | L | - | - | Y | Y | L | H | Y | F | N |
7 | BP | H | Y | Y | Y | - | - | H | Y | - | N |
8 | DL (ANN) | H | Y | Y | Y | Y | H | L | Y | S | Y |
Ref # | Year | Findings | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
AI Methodology | Prognosis/ Diagnosis Task | Types of CVDs | Cardiac Parameter/s | Cardiac Dataset | Preprocessing Task | Data Preprocessing Techniques | Accuracy % | Complexity | ||
[94] | 2016 | DT | Coronary Heart Disease | N/A | N/A | UCI | N/A | N/A | 86.7 | M |
[96] | 2016 | BBNN | Arrhythmia | 5 | ECG | MIT-BIH | Feature Extraction | Hermit Basis Function | 97 | H |
[97] | 2016 | NN | Arrhythmia | 5 | ECG | MIT-BIH | Denoising Feature Extraction | DWT DWT + PCA DWT + ICA | 98.91 | H |
[98] | 2016 | PSO tuned SVM | Arrhythmia | 12 | ECG | MIT-BIH | Feature Extraction | DOST | 99.18 | H |
[99] | 2016 | NN | Arrhythmia | 5 | ECG | MITBIH | Feature Extraction | DOM | 95 | M |
[100] | 2016 | RF | Arrhythmia | 5 | ECG | MIT-BIH | Feature Extraction | WPE | 94.61 | M |
[61] | 2016 | SVM | Arrhythmia | 2 | ECG | CT | Feature Extraction | DWT | 98.9 | M |
[101] | 2016 | Paired-CNN | Coronary Artery Calcification | N/A | CCTA | CT | Feature Extraction | ConvNet | Sens. = 71 | H |
[102] | 2017 | DL | Arrhythmia | N/A | ECG | MIT-BIH | Feature Extraction | AlexNet (DNN) | 92 | H |
[103] | 2017 | SVM | Arrhythmia | 4 | ECG | MIT-BIH | Denoising Feature Extraction | Multiresolution DWT | 98.39 | M |
[104] | 2017 | RBF-NN | Arrhythmia | 6 | ECG | MIT-BIH | Denoising Feature Extraction | DWT EMD Features | 99.89 | H |
[102] | 2017 | DL | Arrhythmia | 3 | ECG | MIT-BIH | Feature Extraction | Transferred Deep Learning | 92 | H |
[105] | 2018 | SVM | Arrhythmia | 3 | ECG | CUDB VFDB | Feature Extraction | FFT | 95.9 | M |
[106] | 2018 | SVM | Arrhythmia | 5 | ECG | MIT-BIH | Denoising Normalization Feature Extraction | Daubechies wavelets min-max Normalization PCANet | 97.77 | M |
[107] | 2018 | Twin LS-SVM | Arrhythmia | 16 | ECG | MIT-BIH | Feature Extraction | Composite Dictionary (DOST + DST + DCT) | 99.21 | H |
[108] | 2018 | MPNN | Arrhythmia | 3 | ECG | MIT-BIH | Denoising Feature Extraction | Daubechies wavelet Multiresolution DWT MPNN | 99.07 | H |
[109] | 2018 | DL | Arrhythmia | 5 | ECG | MIT-BIH | Normalization Feature Extraction | Z-score normalization CNN and LSTM | 98.10 | H |
[110] | 2018 | DL | Arrhythmia | 2 | ECG | MIT-BIH | Feature Extraction | DNN | 99.68 | M |
[111] | 2018 | DBN | Arrhythmia | 5 | ECG | MIT-BIH | N/A | N/A | 95.57 | H |
[91] | 2018 | DNN | Arrhythmia | N/A | CCTA | CT | Feature Extraction | DNN | Sens. = 82.3 | H |
[71] | 2019 | CNN | Arrhythmia | 4 | ECG | CT MIT-BIH | Feature Extraction | CNN | 94.96 95.73 | M |
[112] | 2019 | MPNN-BP | Heart Disease | 5 | ECG | UCI | N/A | N/A | 97.5 | H |
[93] | 2019 | DNN | Arrhythmia | 12 | ECG | CT | Denoising Feature Extraction | DNN | ROC = 97 F1 = 83.7 | H |
[68] | 2019 | Hybrid Model | Heart Disease | 8 | ECG, HR, BP | CT | Data Cleaning Denoising Feature Selection | Numerical Cleaner Filter SFS | 98 | H |
[113] | 2020 | CNN-KCL | Myocarditis | N/A | ECG | ZAS | Outlier Anomaly K-means clustering | K-means clustering CNN | 92.3 | H |
[114] | 2020 | CNN | Myocardial Infarction | N/A | ECG | PTB | Data Augmentation Segmentation Feature Extraction | CNN | 99.02 | H |
[115] | 2020 | DNN | Arrhythmia | 6 | ECG | TNMG | N/A | N/A | F1 = 80 Spec. = 99 | H |
[72] | 2020 | TWSVM | Arrhythmia | 16 | ECG | CT MIT-BIH | Feature Extraction | DWT | 95.68 | H |
[78] | 2020 | DHCAF MCHCNN | Arrhythmia | 5 | ECG, HR | CT MIT-BIH | Denoising Feature Extraction | Daubechies wavelet-4 HWT | 91.4 93 | H |
[116] | 2021 | E-D CNN-SVM | Myocardial Infarction | N/A | ECHO | HMC-QU | Featuring Engineering | CNN | 80.24 | H |
[117] | 2021 | RF, NB | Coronary Heart Disease | N/A | N/A | OR | N/A | N/A | 83.85 (RF) 82.35 (NB) | M |
[118] | 2021 | AI | Cardiac Amyloidosis | N/A | ECG | MC | Feature Extraction | DNN | 90 | N/A |
[119] | 2021 | CNN | Heart Failure | N/A | N/A | CT | Feature Selection | LASSO Regression | 97 | H |
Ref # | Year | Findings | ||
---|---|---|---|---|
Key Challenges and Barriers of E-Cardiology with IoT | Data Related Issues | Benefits of IoT-Based E-Cardiology | ||
[121] | 2016 | Security, Interoperability Unintended Behavior, Device Vulnerability | Privacy Consistency Integration | Cost Reduction Clinical Continuity Quality Life, Telemedicine |
[122] | 2016 | Security, Interoperability Complexity, Scalability Device Vulnerability | Privacy | Cost Reduction Clinical Continuity Automation, Time Saving |
[123] | 2017 | Security 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] | 2018 | Security, Interoperability Energy Consumption Network Latency | Privacy | Ubiquitous Access, Quality Life Cost Reduction, Time Saving Reduced Hospital Visits |
[11] | 2019 | Security, Interoperability Energy Consumption Internet Bandwidth | Privacy | N/A |
[125] | 2019 | Security Heterogeneity | Privacy, Reliability, Utility Validity, Generalizability Integrity, Objectivity, Data Overload, Completeness, Relevance | Personalized, Predictive, Participatory, Preventative, Persuasive, Perpetual, Programmable (7P) |
[126] | 2019 | Security Unintended Behavior | Privacy, Confidentiality | Ubiquitous Access Cost Reduction Clinical Continuity Improved Accuracy Quality Life, Telemedicine |
[127] | 2019 | Security Scalability | Privacy Data Overload | Ubiquitous Access Cost Reduction, Clinical Continuity Automation, Time Saving Quality Life Telemedicine |
[128] | 2019 | Security Context-aware Computing Interoperability Energy Consumption | Privacy | N/A |
[129] | 2020 | Unobtrusiveness Energy Consumption Quality of Service Scalabilty, Fixation Patient Indentification Body Impact on Signal Propagation | Reliability Integrity Data Protection Data Representation Accuracy | N/A |
[130] | 2020 | Energy Consumption, Storage Patient’s discomfort caused by Sensors | Privacy Data Overload Noise | Flexibility Clinical Continuity Remote Monitoring |
[131] | 2020 | Security | Privacy Confidentiality Integrity, Data Loss Aval1abilty Compromise | Remote Monitoring Cost Reduction, Time Saving Better Diagnostics Improved Clinical Infrastructure |
[132] | 2020 | Security Mobility Heterogeneity Legal Aspects | Privacy | N/A |
[133] | 2021 | Security, Scalability | N/A | Efficient, Cost Effective |
[134] | 2021 | Security Scalability Interoperability, Energy Consumption, Low Latency Tolerance | Privacy Computational Intensity | Ubiquitous Access Time Saving, Cost Reduction Telemedicine, Quality Life Clinical Continuity Easy Usge |
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 | ✓ | ✓ | ✓ | ✗ | ✗ | ✗ | ✓ | ✓ | ✗ | ✓ | ✓ |
Ref # | Year | Findings | |
---|---|---|---|
Key Challenges and Barriers for E-Cardiology with AI | Benefits of AI in E-Cardiology | ||
[136] | 2016 | Safety 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] | 2019 | Fitting 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] | 2019 | Data privacy, Accountability Algorithmic bias Adaptability, Complexity | Improved healthcare Better diagnosis High accuracy |
[139] | 2019 | Privacy and discrimination Dynamic information and consent Transparency and ownership | Speedy imaging, Increased efficiency Greater insight into predictive screening Decreased healthcare cost |
[140] | 2020 | Respect for autonomy Beneficence Non-maleficence and justice | Lower cost Improved diagnosis and treatment |
[141] | 2021 | Safety, 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] | 2021 | Sometimes 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
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
Chicago/Turabian StyleUmar, 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
APA StyleUmar, 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