基于心率变异性的临床人群动态应激检测模型的开发。

IF 2.2 3区 心理学 Q2 PSYCHOLOGY, CLINICAL
Richard Fletcher, Katherine Zeng, Ming Ying Yang, Agata Pietrzak, David Eddie
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引用次数: 0

摘要

基于生物传感器的实时压力检测产生了临床兴趣,目的是推动及时干预,支持从精神障碍中恢复。然而,迄今为止,大多数压力检测模型都是用来自健康成人同质样本的实验室数据进行训练的,在临床人群中表现不佳。作为开发在临床人群中运行良好的压力检测算法的第一步,我们对从酒精使用障碍(AUD)早期恢复的个体样本中收集的动态心电图(ECG)和每日生态瞬间评估(EMA)数据进行了一系列压力检测机器学习模型的测试。44名年龄在18-65岁的患者在当前AUD恢复尝试的第一年佩戴了4天的心电图监护仪,同时完成了每日3次的压力EMA。数据被分割和归一化。使用无监督学习模型(例如,t-SNE,聚类分析)识别目标特征,并调整监督学习模型以优化模型性能。作为比较,我们还用来自健康年轻人样本的实验室导出的压力数据测试了这些模型。在考虑个体特征之前,我们在临床样本中实现了63%的适度准确性,而在实验室衍生的健康年轻成人样本中,这一准确性为94%。在考虑了年龄和身体质量指数(BMI)后,我们在临床样本中将模型准确率提高到了80%。压力检测在临床人群中具有挑战性;然而,考虑到年龄和BMI,数据规范化和分层可以更好地预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a Heart Rate Variability Based Ambulatory Stress Detection Model for Clinical Populations.

Biosensor-based, real-time stress detection has generated clinical interest for the purpose of driving just-in-time interventions that support recovery from mental disorders. Most stress detection models to date, however, have been trained with laboratory-based data from homogenous samples of healthy adults, and do not perform as well in clinical populations. As an initial step toward the development of a stress detection algorithm that functions well in clinical populations, we tested a series of stress-detection machine learning models on ambulatory electrocardiogram (ECG) and daily ecological momentary assessment (EMA) data collected from a sample of individuals in early recovery from alcohol use disorder (AUD). Forty-four individuals ages 18-65 in the first year of a current AUD recovery attempt wore an ECG monitor for 4 days, while concurrently completing 3-times-daily EMA of stress. Data were segmented and normalized. Target features were identified using unsupervised learning models (e.g., t-SNE, cluster analysis) and supervised learning models were tuned to optimize model performance. As a comparator, we also tested these models with laboratory-derived stress data from a sample of healthy young adults. Before accounting for individual characteristics, we achieved a modest accuracy of 63% in our clinical sample, which compared to 94% accuracy in the laboratory-derived healthy young adult sample. After accounting for age and body-mass-index (BMI) we increased model accuracy up to 80% in our clinical sample. Stress detection is challenging in clinical populations; however, better prediction is possible with data normalization and stratification considering age and BMI.

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来源期刊
CiteScore
5.30
自引率
13.30%
发文量
36
期刊介绍: Applied Psychophysiology and Biofeedback is an international, interdisciplinary journal devoted to study of the interrelationship of physiological systems, cognition, social and environmental parameters, and health. Priority is given to original research, basic and applied, which contributes to the theory, practice, and evaluation of applied psychophysiology and biofeedback. Submissions are also welcomed for consideration in several additional sections that appear in the journal. They consist of conceptual and theoretical articles; evaluative reviews; the Clinical Forum, which includes separate categories for innovative case studies, clinical replication series, extended treatment protocols, and clinical notes and observations; the Discussion Forum, which includes a series of papers centered around a topic of importance to the field; Innovations in Instrumentation; Letters to the Editor, commenting on issues raised in articles previously published in the journal; and select book reviews. Applied Psychophysiology and Biofeedback is the official publication of the Association for Applied Psychophysiology and Biofeedback.
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