Wearable Flexible Electronics Based Cardiac Electrode for Researcher Mental Stress Detection System Using Machine Learning Models on Single Lead Electrocardiogram Signal.
Md Belal Bin HeyatFaijan AkhtarSyed Jafar AbbasMohammed Al-SaremAbdulrahman AlqarafiAntony StalinRashid AbbasiAbdullah Y MuaadDakun LaiKaishun WuPublished in: Biosensors (2022)
In the modern world, wearable smart devices are continuously used to monitor people's health. This study aims to develop an automatic mental stress detection system for researchers based on Electrocardiogram (ECG) signals from smart T-shirts using machine learning classifiers. We used 20 subjects, including 10 from mental stress (after twelve hours of continuous work in the laboratory) and 10 from normal (after completing the sleep or without any work). We also applied three scoring techniques: Chalder Fatigue Scale (CFS), Specific Fatigue Scale (SFS), Depression, Anxiety, and Stress Scale (DASS), to confirm the mental stress. The total duration of ECG recording was 1800 min, including 1200 min during mental stress and 600 min during normal. We calculated two types of features, such as demographic and extracted by ECG signal. In addition, we used Decision Tree (DT), Naive Bayes (NB), Random Forest (RF), and Logistic Regression (LR) to classify the intra-subject (mental stress and normal) and inter-subject classification. The DT leave-one-out model has better performance in terms of recall (93.30%), specificity (96.70%), precision (94.40%), accuracy (93.30%), and F1 (93.50%) in the intra-subject classification. Additionally, The classification accuracy of the system in classifying inter-subjects is 94.10% when using a DT classifier. However, our findings suggest that the wearable smart T-shirt based on the DT classifier may be used in big data applications and health monitoring. Mental stress can lead to mitochondrial dysfunction, oxidative stress, blood pressure, cardiovascular disease, and various health problems. Therefore, real-time ECG signals help assess cardiovascular and related risk factors in the initial stage based on machine learning techniques.
Keyphrases
- machine learning
- mental health
- big data
- heart rate
- oxidative stress
- healthcare
- cardiovascular disease
- blood pressure
- public health
- risk factors
- sleep quality
- stress induced
- artificial intelligence
- heart failure
- dna damage
- physical activity
- skeletal muscle
- adipose tissue
- left ventricular
- hiv infected
- social media
- blood glucose
- cardiovascular risk factors
- loop mediated isothermal amplification
- carbon nanotubes
- diabetic rats