Large-scale wearable data reveal digital phenotypes for daily-life stress detection

Physiological signals have shown to be reliable indicators of stress in laboratory studies, yet large-scale ambulatory validation is lacking. We present a large-scale cross-sectional study for ambulatory stress detection, consisting of 1002 subjects, containing subjects’ demographics, baseline psych...

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Published inNPJ digital medicine Vol. 1; no. 1; p. 67
Main Authors Smets, Elena, Rios Velazquez, Emmanuel, Schiavone, Giuseppina, Chakroun, Imen, D’Hondt, Ellie, De Raedt, Walter, Cornelis, Jan, Janssens, Olivier, Van Hoecke, Sofie, Claes, Stephan, Van Diest, Ilse, Van Hoof, Chris
Format Journal Article
LanguageEnglish
Published London Nature Publishing Group UK 12.12.2018
Nature Publishing Group
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Summary:Physiological signals have shown to be reliable indicators of stress in laboratory studies, yet large-scale ambulatory validation is lacking. We present a large-scale cross-sectional study for ambulatory stress detection, consisting of 1002 subjects, containing subjects’ demographics, baseline psychological information, and five consecutive days of free-living physiological and contextual measurements, collected through wearable devices and smartphones. This dataset represents a healthy population, showing associations between wearable physiological signals and self-reported daily-life stress. Using a data-driven approach, we identified digital phenotypes characterized by self-reported poor health indicators and high depression, anxiety and stress scores that are associated with blunted physiological responses to stress. These results emphasize the need for large-scale collections of multi-sensor data, to build personalized stress models for precision medicine.
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ISSN:2398-6352
2398-6352
DOI:10.1038/s41746-018-0074-9