4.6 Article

Harnessing Wearable Devices for Emotional Intelligence: Therapeutic Applications in Digital Health

Journal

SENSORS
Volume 23, Issue 19, Pages -

Publisher

MDPI
DOI: 10.3390/s23198092

Keywords

digital health; electrocardiogram (ECG); electrodermal activity (EDA); emotion detection; heart rate variability (HRV); machine learning; mental well-being

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Emotional intelligence aims to bridge the gap between human and machine interactions, and its application in digital health has gained prominence. This study presents a system that utilizes physiological signal data, such as electrodermal activity and electrocardiogram, to identify and classify emotional reactions, as well as measure their arousal strength. The system demonstrates good performance in emotion detection and can be integrated into therapeutic settings to monitor and guide patients' emotional responses.
Emotional intelligence strives to bridge the gap between human and machine interactions. The application of such systems varies and is becoming more prominent as healthcare services seek to provide more efficient care by utilizing smart digital health apps. One application in digital health is the incorporation of emotion recognition systems as a tool for therapeutic interventions. To this end, a system is designed to collect and analyze physiological signal data, such as electrodermal activity (EDA) and electrocardiogram (ECG), from smart wearable devices. The data are collected from different subjects of varying ages taking part in a study on emotion induction methods. The obtained signals are processed to identify stimulus trigger instances and classify the different reaction stages, as well as arousal strength, using signal processing and machine learning techniques. The reaction stages are identified using a support vector machine algorithm, while the arousal strength is classified using the ResNet50 network architecture. The findings indicate that the EDA signal effectively identifies the emotional trigger, registering a root mean squared error (RMSE) of 0.9871. The features collected from the ECG signal show efficient emotion detection with 94.19% accuracy. However, arousal strength classification is only able to reach 60.37% accuracy on the given dataset. The proposed system effectively detects emotional reactions and can categorize their arousal strength in response to specific stimuli. Such a system could be integrated into therapeutic settings to monitor patients' emotional responses during therapy sessions. This real-time feedback can guide therapists in adjusting their strategies or interventions.

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