A Survey on Wearable Sensors for Mental Health Monitoring
Abstract
:1. Introduction
- (1)
- Tracking physiological parameters: Wearable sensors can continuously track physiological parameters, such as heart rate (HR) and breathing patterns, which can provide valuable insight into an individual’s mental health. For instance, changes in HR may indicate the presence of stress or anxiety [5].
- (2)
- Tracking behavioral parameters: Wearable sensors can track behavioral parameters, such as sleep quality, physical activity, and social interactions, which can provide valuable insight into an individual’s mental health [6,7]. For example, changes in sleep patterns or social interactions may indicate the presence of depression or anxiety.
- (3)
- Providing real-time feedback: Wearable sensors can provide real-time feedback to individuals about their mental health, helping them identify patterns and trends that may indicate the need for intervention [8,9]. As an example, a wearable sensor is capable of alerting an individual to an increase in their HR, which may indicate the presence of stress or anxiety.
- (4)
- Providing personalized interventions: Wearable sensors can be used to deliver personalized interventions based on the data they collect. For example, a wearable sensor that tracks sleep quality may provide individuals with recommendations so they can improve their sleep habits [6]. A wearable sensor that tracks physical activity may provide an individual with personalized exercise recommendations [10].
- (5)
- (1)
- Wearable devices for mental health monitoring;
- (2)
- Commercial wearable sensors designed for mental health monitoring;
- (3)
- Value in monitoring stress and anxiety;
- (4)
- Detection and prediction of acute symptoms.
- (1)
- Studies whose primary focus was not on detecting anxiety disorders, such as stress or depression; and
- (2)
- Studies investigating children, since their bodies are still developing, and the data are not inherently applicable to adults.
2. Literature Review
3. Methodology
3.1. Eligibility Criteria
- “anxiety disorder”,
- “panic disorder”, or
- “panic attack”.
- (1)
- Common wrist wearable sensors, such as photoplethysmography (PPG), electrocardiogram (ECG), accelerometer (ACC), electrodermal activity (EDA), breath rate (BR), and skin temperature (TMP);
- (2)
- Metrics related to mental disorders;
- (3)
- Methodology and result objectives (clear);
- (4)
- User testing on people over 18 years old; and
- (5)
- ML processing.
3.2. Data Collection Process
- (1)
- Google Scholar (),
- (2)
- Springer Link (),
- (3)
- IEEEXplore (),
- (4)
- MDPI (), and
- (5)
- ACM Digital Library ().
4. Results and Discussion
4.1. Wearables for Mental Health Monitoring
- (1)
- ECG;
- (2)
- HR;
- (3)
- Respiratory inductance plethysmography;
- (4)
- Calorific expenditure;
- (5)
- Posture/activity;
- (6)
- Skin/core temperature; and
- (7)
- Oxygen consumption [36].
- (1)
- Palpitations (increased or irregular heart rate (HR));
- (2)
- Sweating;
- (3)
- Tremors;
- (4)
- Muscle tension;
- (5)
- Dizziness;
- (6)
- Nausea; and
- (7)
4.2. Off-the-Shelf Wearables for Mental Health
- (1)
- EQ02 LifeMonitor belt (Equivital, Cambridge, UK);
- (2)
- BioPatch™ HP (Zephyr Technology, Annapolis, MD, USA);
- (3)
- Hexoskin Smart Garment (Carré Technologies Inc., Montreal, QC, Canada).
- (1)
- Empatica embracePlus and empaticaCARE (Empatica Inc., Boston, MA, USA);
- (2)
- Inspire 3 and Sense 2 (Fitbit, San Francisco, CA, USA);
- (3)
- Venu® Sq2 (Garmin, Ltd., Schaffhausen, Switzerland); and
- (4)
- Mi Band (Xiaomi Corp., Beijing, China).
4.3. Value in Monitoring Stress and Anxiety
- (1)
- ECG;
- (2)
- electromyogram (EMG);
- (3)
- Skin conductivity (also known as EDA or galvanic skin response (GSR)); and
- (4)
- Respiration (through chest cavity expansion).
4.4. Detection and Prediction of Acute Symptoms
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
ACC | Accelerometer |
ANN | Artificial Neural Network |
AI | Artificial Intelligence |
BN | Bayesian Network |
BP | Blood Pressure |
BR | Breath Rate |
DR | Decision Trees |
ECG | Electrocardiogram |
EDA | Electrodermal Activity |
EEG | Electroencephalogram |
EMA | Ecological Momentary Assessment |
EMG | Electromyogram |
EMR | Electronic Medical Record |
GAD | Generalized Anxiety Disorder |
GLM | Generalized Linear Model |
GSR | Galvanic Skin Response |
HR | Heart Rate |
HRV | Heart Rate Variability |
IBI | Interbeat Interval |
KNN | K-Nearest Neighbor |
LDA | Linear Discriminant Analysis |
LR | Logistic Regression |
ML | Machine Learning |
PA | Panic Attack |
PD | Panic Disorder |
PNS | Parasympathetic Nervous System |
PPG | Photoplethysmography |
RF | Random Forest |
RPM | Remote Patient Monitoring |
RR | Respiratory Rate |
SNS | Sympathetic Nervous System |
SpO2 | Oxygen Blood Saturation |
SVM | Support Vector Machine |
TMP | Skin temperature |
XGBoost | Extreme Gradient Boosting |
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Paper | Data | Devices | Questionnaires | Setup | Objective | Results |
---|---|---|---|---|---|---|
Cruz et al. [25] | TMP, BR, HRV & HR | Zephyr Biopatch & Smartphone. | N.A. | Smartphone, wearable & data center. | Mobile and wearable system to detect PAs as they occur, with the option to self-report. | PAs can be detected as they occur, via the used measurements. The physiological signs from a PA can manifest until an hour before the attack. |
Rubin et al. [26] | HRV & HR | From a dataset, multiple devices. | N.A. | N.A. | Create models to distinguish between panic states, as PA, pre-PA, and non panic. | Combining time, frequency, and nonlinear domain parameters, models can achieve > 90% accuracy when distinguishing between panic states in physiologic time-series data. |
McGinnis et al. [12] | HR, HRV & BR | Smartphone Camera | One, proprietary. | Mobile and wearable system to detect PAs. | Provides in vivo biofeedback therapy for PAs, shown on the smartphone screen. | The modality of measurement is feasible with a smartphone camera. There is an apparent placebo effect with the measurement procedure since it acts to stop the attack. |
Puli et al. [27] | ACC & HR | Shimmer 2r. | N.A. | Wearable used to capture data and models applied post-capture. | Proposing and testing an approach for real-time detection of anxiety arousal in autism spectrum disorder patients, taking movement into account. | Evaluation using data from afflicted children showed an overall arousal detection accuracy of 93%. This method showed promising results regarding the avoidance of false positives. |
Perpetuini et al. [28] | BP & HR | Custom device using PPG. | STAI. | Custom-wearable used to capture data to be analyzed post-recording. | Possibility of using a non-invasive technique (PPG) to encode information about emotional conditions, namely estimating the state anxiety of healthy participants. | The results proved that data from PPG is a good indicator of state anxiety. The results provided a correlation of 81% between the ML algorithm and state anxiety. |
Chung et al. [29] | HRV & HR | Lief Smart Patch. | GAD-2 & PHQ-2. | Device that captures data and provides biofeedback. | The feasibility of using this system to decrease overall levels of anxiety disorders, including PD in patients. | This research involves the self-reported anxiety of 3 points (range 0–8) and 1 point in depression (0–8). This paper was conducted over 56 days. |
Nath et al. [30] | EDA, HR & BP | Non-specified wearable wristband. | STAI. | Wearable used to capture data to be analyzed post-recording. | The viability of anxiety detection in older adults, using low-cost wearables to capture physiological data. | An accuracy of 92% was accomplished using EDA features and context, without context, this accuracy dropped to 89%. This work showed potential in using EDA to detect anxious states. |
Shaukat-Jali et al. [31] | HR, EDA & TMP | E4 Empatica. | LSAS-SR. | Wearable used to capture data and models applied post-capture. | The aim of the paper was to detect if subclinical social anxiety could be detected using physiological data obtained from wearable sensors. | The models presented accuracy values between 97.54% and 99.48% when differentiating between baseline and socially anxious states. EDA is identified as the most effective feature to differentiate between states. |
Tsai et al. [32] | Sleep rate, HR & Activity | Garmin Vivosmart 4. | BDI, BAI, STAI-S, STAI-T, and PDSS-SR. | Wearable used to capture data and mobile app to collect data. | Viability of predicting PAs up to seven days in advance. | Up to seven days of prediction; the best presented accuracy was 81.3% using physiological data and questionnaires. |
Sensors | EQ02 LifeMonitor | BioPatch HP | Hexoskin Smart Garment | Embrace Plus & Empatica CARE | Inspire 3 & Sense 2 (Fitbit) | VenuSq2 (Garmin) | Mi Band (Xiaomi) |
---|---|---|---|---|---|---|---|
ACC | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | |
Activity | ✓ | ✓ | ✓ | ✓ | |||
BP | ✓ | ||||||
ECG | ✓ | ✓ | ✓ | ✓ | |||
EDA | ✓ | ||||||
HR | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | |
HRV | ✓ | ✓ | ✓ | ✓ | |||
Body position/movement | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | |
PPG | ✓ | ✓ | ✓ | ||||
RR | ✓ | ✓ | ✓ | ✓ | ✓ | ||
Sleep tracking | ✓ | ✓ | ✓ | ✓ | ✓ | ✓ | |
TMP | ✓ | ✓ | ✓ | ✓ | ✓ | ||
SpO2 | ✓ | ✓ | ✓ | ✓ | ✓ |
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Gomes, N.; Pato, M.; Lourenço, A.R.; Datia, N. A Survey on Wearable Sensors for Mental Health Monitoring. Sensors 2023, 23, 1330. https://doi.org/10.3390/s23031330
Gomes N, Pato M, Lourenço AR, Datia N. A Survey on Wearable Sensors for Mental Health Monitoring. Sensors. 2023; 23(3):1330. https://doi.org/10.3390/s23031330
Chicago/Turabian StyleGomes, Nuno, Matilde Pato, André Ribeiro Lourenço, and Nuno Datia. 2023. "A Survey on Wearable Sensors for Mental Health Monitoring" Sensors 23, no. 3: 1330. https://doi.org/10.3390/s23031330
APA StyleGomes, N., Pato, M., Lourenço, A. R., & Datia, N. (2023). A Survey on Wearable Sensors for Mental Health Monitoring. Sensors, 23(3), 1330. https://doi.org/10.3390/s23031330