Journal ArticleOpen Access
State-of-the-Art of Stress Prediction from Heart Rate Variability Using Artificial Intelligence
Author Affiliations
Bangladesh University of Professionals, United International University, Jahangirnagar University, Nottingham Trent University
Published InCognitive Computation
Year2023
Citations89
Abstract
Abstract Recent advancements in the manufacturing and commercialisation of miniaturised sensors and low-cost wearables have enabled an effortless monitoring of lifestyle by detecting and analysing physiological signals. Heart rate variability (HRV) denotes the time interval between consecutive heartbeats.The HRV signal, as detected by the sensors and devices, has been popularly used as an indicative measure to estimate the level of stress, depression, and anxiety. For years, artificial intelligence (AI)-based learning systems have been known for their predictive capabilities, and in recent years, AI models with deep learning (DL) architectures have been successfully applied to achieve unprecedented accuracy. In order to determine effective methodologies applied to the collection, processing, and prediction of stress from HRV data, this work presents an in…
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