Portable System for Real-Time Detection of Stress Level
Metadatos
Mostrar el registro completo del ítemAutor
Minguillón Campos, Jesús; Pérez Valero, Eduardo; López Gordo, Miguel Ángel; Pelayo Valle, Francisco José; Sanchez-Carrion, Maria JoseEditorial
MDPI
Materia
Biosignal EEG ECG EMG GSR Real-time Healthcare e-Health m-Health
Fecha
2018-08-01Referencia bibliográfica
Minguillon, J. [et al.]. Portable System for Real-Time Detection of Stress Level. Sensors 2018, 18, 2504
Patrocinador
This research was funded by [Ministry of Economy and Competitiveness (Spain)] grant number [TIN2015-67020P], [Ministry of Economy and Competitiveness (Spain)] grant number [DPI2015-69098-REDT], [Junta of Andalucia (Spain)] grant number [P11-TIC-7983], [Spanish National Youth Guarantee Implementation Plan] grant number [Research contract], [Nicolo Association for the R+D in neurotechnologies for disability] grant number [Research support], and [Orden Hospitalaria San Juan de Dios] grant number [Beca investigacion].Resumen
Currently, mental stress is a major problem in our society. It is related to a wide variety
of diseases and is mainly caused by daily-life factors. The use of mobile technology for healthcare
purposes has dramatically increased during the last few years. In particular, for out-of-lab stress
detection, a considerable number of biosignal-based methods and systems have been proposed.
However, these approaches have not matured yet into applications that are reliable and useful
enough to significantly improve people’s quality of life. Further research is needed. In this paper,
we propose a portable system for real-time detection of stress based on multiple biosignals such as
electroencephalography, electrocardiography, electromyography, and galvanic skin response. In order
to validate our system, we conducted a study using a previously published and well-established
methodology. In our study, ten subjects were stressed and then relaxed while their biosignals were
simultaneously recorded with the portable system. The results show that our system can classify
three levels of stress (stress, relax, and neutral) with a resolution of a few seconds and 86% accuracy.
This suggests that the proposed system could have a relevant impact on people’s lives. It can be used
to prevent stress episodes in many situations of everyday life such as work, school, and home.