Challenges and Opportunities in Collecting and Modeling Ambulatory Electrodermal Activity Data.

JMIR biomedical engineering Pub Date : 2020-01-01 Epub Date: 2019-11-19 DOI:10.2196/17106
Donna L Coffman, Xizhen Cai, Runze Li, Noelle R Leonard
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引用次数: 5

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 an ambulatory setting.

Objective: This study aimed to describe and implement several methods for preprocessing and constructing features for use in modeling ambulatory EDA data, particularly for measuring stress.

Methods: We used data from a study examining the effects of stressful tasks on EDA of adolescent mothers (AMs). A biosensor band recorded EDA 4 times per second and was worn during an approximately 2-hour assessment that included a 10-min mother-child videotaped interaction. The initial processing included filtering noise and motion artifacts.

Results: We constructed the features of the EDA data, including the number of peaks and their amplitude as well as EDA reactivity, quantified as the rate at which AMs 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 analyses and comparisons.

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

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收集和模拟动态皮肤电活动数据的挑战和机遇。
背景:动态评估皮肤电活动(EDA)是一种新兴的技术,用于捕捉个体对现实生活事件的自主反应。目前,在门诊环境中处理和分析此类数据的指导很少。目的:本研究旨在描述和实现几种用于动态EDA数据建模的预处理和构造特征的方法,特别是用于测量应力。方法:我们使用来自一项研究的数据,研究压力任务对青春期母亲EDA的影响。生物传感器带每秒记录4次EDA,并在大约2小时的评估期间佩戴,其中包括10分钟的母子互动录像。初始处理包括滤波噪声和运动伪影。结果:我们构建了EDA数据的特征,包括峰的数量和振幅以及EDA反应性,量化为AMs在EDA峰后返回基线EDA的速率。虽然EDA的模式在个体之间有很大的差异,但EDA的各种特征可以计算所有个体,从而实现个体内部和个体之间的分析和比较。结论:我们开发的算法可用于构建干电极动态EDA特征,可为其他研究人员用于研究压力和焦虑。
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