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2018 | OriginalPaper | Buchkapitel

Feature Selection and Machine Learning Based Multilevel Stress Detection from ECG Signals

verfasst von : Isabelle Bichindaritz, Cassie Breen, Ekaterina Cole, Neha Keshan, Pat Parimi

Erschienen in: Innovation in Medicine and Healthcare 2017

Verlag: Springer International Publishing

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Abstract

Physiological sensor analytics aims at monitoring health as the availability of sensor-enabled portable, wearable, and implantable devices become ubiquitous in the growing Internet of Things (IoT). Physiological multi-sensor studies have been conducted previously to detect stress. In this study, we focus on electrocardiography (ECG) monitoring that can now be performed with minimally invasive wearable patches and sensors, to develop an efficient and robust mechanism for accurate stress identification, for example in automobile drivers. A unique aspect of our research is personalized individual stress analysis including three stress levels: low, medium and high. Using machine learning algorithms from the ECG signals alone, our system achieves up to 100% accuracy and area under ROC curve of 1 depending on the experimental setting in detecting three classes of stress using feature selection from a combination of fiducial points and multiscale entropy as a fine-grained indicator of stress level.

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Metadaten
Titel
Feature Selection and Machine Learning Based Multilevel Stress Detection from ECG Signals
verfasst von
Isabelle Bichindaritz
Cassie Breen
Ekaterina Cole
Neha Keshan
Pat Parimi
Copyright-Jahr
2018
DOI
https://doi.org/10.1007/978-3-319-59397-5_22