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micro-Stress EMA: A Passive Sensing Framework for Detecting in-the-wild Stress in Pregnant Mothers

Authors :
Zachary D. King
Shibo Zhang
Michael Bass
Laurie Wakschlag
Begum Egilmez
John A. Rogers
Roozbeh Ghaffari
Judith T. Moskowitz
Lida Zhang
Nabil Alshurafa
Source :
Proc ACM Interact Mob Wearable Ubiquitous Technol
Publication Year :
2020

Abstract

High levels of stress during pregnancy increase the chances of having a premature or low-birthweight baby. Perceived self-reported stress does not often capture or align with the physiological and behavioral response. But what if there was a self-report measure that could better capture the physiological response? Current perceived stress self-report assessments require users to answer multi-item scales at different time points of the day. Reducing it to one question, using microinteraction-based ecological momentary assessment (micro-EMA, collecting a single in situ self-report to assess behaviors) allows us to identify smaller or more subtle changes in physiology. It also allows for more frequent responses to capture perceived stress while at the same time reducing burden on the participant. We propose a framework for selecting the optimal micro-EMA that combines unbiased feature selection and unsupervised Agglomerative clustering. We test our framework in 18 women performing 16 activities in-lab wearing a Biostamp, a NeuLog, and a Polar chest strap. We validated our results in 17 pregnant women in real-world settings. Our framework shows that the question "How worried were you?" results in the highest accuracy when using a physiological model. Our results provide further in-depth exposure to the challenges of evaluating stress models in real-world situations.

Details

ISSN :
24749567
Volume :
3
Issue :
3
Database :
OpenAIRE
Journal :
Proceedings of the ACM on interactive, mobile, wearable and ubiquitous technologies
Accession number :
edsair.doi.dedup.....16bbd575e79cbd5f51dc8e894f77cd7b