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Accepted for/Published in: JMIR Biomedical Engineering

Date Submitted: Nov 19, 2019
Date Accepted: May 13, 2020

The final, peer-reviewed published version of this preprint can be found here:

Challenges and Opportunities in Collecting and Modeling Ambulatory Electrodermal Activity Data

Coffman DL, Cai X, Li R, Leonard NR

Challenges and Opportunities in Collecting and Modeling Ambulatory Electrodermal Activity Data

JMIR Biomed Eng 2020;5(1):e17106

DOI: 10.2196/17106

PMID: 34888487

PMCID: 8653913

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Challenges and Opportunities in Collecting and Modeling Ambulatory Electrodermal Activity Data as an Assessment of Stress

  • Donna L Coffman; 
  • Xizhen Cai; 
  • Runze Li; 
  • Noelle R Leonard

ABSTRACT

Background:

Ambulatory assessment of electrodermal activity (EDA) is an emerging technique for capturing individuals’ autonomic responses to real-life events. There is currently little guidance available for processing and analyzing such data in the ambulatory setting.

Objective:

The primary goal of this manuscript is to describe and implement several methods for pre-processing and constructing features for use in modeling ambulatory EDA data, particularly for measuring stress.

Methods:

We use data from a study examining the effects of stressful tasks on adolescent mothers’ EDA. A biosensor band recorded EDA 4 times/sec. and was worn during an approximately 2 hr. assessment that included a 10-min. mother-child videotaped interaction. Initial processing included filtering noise and motion artifacts.

Results:

We constructed features of the EDA data, including the number of peaks and their amplitude as well as EDA reactivity, quantified as the rate at which adolescent mothers returned to baseline EDA following an EDA peak. Although the pattern of EDA varied substantially across individuals, various features of EDA may be computed for all individuals enabling within- and between individual analysis and comparisons.

Conclusions:

The algorithms we developed can be used to construct features for dry-electrode, ambulatory EDA that can be used by other researchers to study stress and anxiety.


 Citation

Please cite as:

Coffman DL, Cai X, Li R, Leonard NR

Challenges and Opportunities in Collecting and Modeling Ambulatory Electrodermal Activity Data

JMIR Biomed Eng 2020;5(1):e17106

DOI: 10.2196/17106

PMID: 34888487

PMCID: 8653913

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