| Literature DB >> 26543926 |
Karen Hovsepian1, Mustafa al'Absi2, Emre Ertin3, Thomas Kamarck4, Motohiro Nakajima5, Santosh Kumar.
Abstract
Recent advances in mobile health have produced several new models for inferring stress from wearable sensors. But, the lack of a gold standard is a major hurdle in making clinical use of continuous stress measurements derived from wearable sensors. In this paper, we present a stress model (called cStress) that has been carefully developed with attention to every step of computational modeling including data collection, screening, cleaning, filtering, feature computation, normalization, and model training. More importantly, cStress was trained using data collected from a rigorous lab study with 21 participants and validated on two independently collected data sets - in a lab study on 26 participants and in a week-long field study with 20 participants. In testing, the model obtains a recall of 89% and a false positive rate of 5% on lab data. On field data, the model is able to predict each instantaneous self-report with an accuracy of 72%.Entities:
Keywords: Stress; mobile health (mHealth); modeling; wearable sensors
Year: 2015 PMID: 26543926 PMCID: PMC4631393 DOI: 10.1145/2750858.2807526
Source DB: PubMed Journal: Proc ACM Int Conf Ubiquitous Comput