Presseller Emily K, Lampe Elizabeth W, Zhang Fengqing, Gable Philip A, Guetterman Timothy C, Forman Evan M, Juarascio Adrienne S
Department of Psychological and Brain Sciences, Drexel University, Philadelphia, PA, United States.
Center for Weight, Eating, and Lifestyle Science, Drexel University, Philadelphia, PA, United States.
JMIR Res Protoc. 2023 Jul 6;12:e47098. doi: 10.2196/47098.
Binge eating (BE), characterized by eating a large amount of food accompanied by a sense of loss of control over eating, is a public health crisis. Negative affect is a well-established antecedent for BE. The affect regulation model of BE posits that elevated negative affect increases momentary risk for BE, as engaging in BE alleviates negative affect and reinforces the behavior. The eating disorder field's capacity to identify moments of elevated negative affect, and thus BE risk, has exclusively relied on ecological momentary assessment (EMA). EMA involves the completion of surveys in real time on one's smartphone to report behavioral, cognitive, and emotional symptoms throughout the day. Although EMA provides ecologically valid information, EMA surveys are often delivered only 5-6 times per day, involve self-report of affect intensity only, and are unable to assess affect-related physiological arousal. Wearable, psychophysiological sensors that measure markers of affect arousal including heart rate, heart rate variability, and electrodermal activity may augment EMA surveys to improve accurate real-time prediction of BE. These sensors can objectively and continuously measure biomarkers of nervous system arousal that coincide with affect, thus allowing them to measure affective trajectories on a continuous timescale, detect changes in negative affect before the individual is consciously aware of them, and reduce user burden to improve data completeness. However, it is unknown whether sensor features can distinguish between positive and negative affect states, given that physiological arousal may occur during both negative and positive affect states.
The aims of this study are (1) to test the hypothesis that sensor features will distinguish positive and negative affect states in individuals with BE with >60% accuracy and (2) test the hypothesis that a machine learning algorithm using sensor data and EMA-reported negative affect to predict the occurrence of BE will predict BE with greater accuracy than an algorithm using EMA-reported negative affect alone.
This study will recruit 30 individuals with BE who will wear Fitbit Sense 2 wristbands to passively measure heart rate and electrodermal activity and report affect and BE on EMA surveys for 4 weeks. Machine learning algorithms will be developed using sensor data to distinguish instances of high positive and high negative affect (aim 1) and to predict engagement in BE (aim 2).
This project will be funded from November 2022 to October 2024. Recruitment efforts will be conducted from January 2023 through March 2024. Data collection is anticipated to be completed in May 2024.
This study is anticipated to provide new insight into the relationship between negative affect and BE by integrating wearable sensor data to measure affective arousal. The findings from this study may set the stage for future development of more effective digital ecological momentary interventions for BE.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): DERR1-10.2196/47098.
暴饮暴食(BE)是一种公共卫生危机,其特征是进食大量食物并伴有对进食失去控制的感觉。消极情绪是暴饮暴食的一个既定前提。暴饮暴食的情绪调节模型认为,消极情绪的升高会增加暴饮暴食的瞬间风险,因为进行暴饮暴食可以缓解消极情绪并强化这种行为。饮食失调领域识别消极情绪升高时刻以及由此产生的暴饮暴食风险的能力完全依赖于生态瞬时评估(EMA)。EMA包括通过智能手机实时完成调查问卷,以报告一整天的行为、认知和情绪症状。虽然EMA提供了生态有效信息,但EMA调查通常每天只进行5 - 6次,仅涉及自我报告的情绪强度,并且无法评估与情绪相关的生理唤醒。可穿戴的心理生理传感器可以测量包括心率、心率变异性和皮肤电活动在内的情绪唤醒指标,这可能会增强EMA调查,以改善对暴饮暴食的准确实时预测。这些传感器可以客观且持续地测量与情绪一致的神经系统唤醒生物标志物,从而使它们能够在连续的时间尺度上测量情绪轨迹,在个体有意识地意识到之前检测到消极情绪的变化,并减轻用户负担以提高数据完整性。然而,鉴于生理唤醒可能在消极和积极情绪状态下都出现,尚不清楚传感器特征是否能够区分积极和消极情绪状态。
本研究的目的是(1)检验传感器特征能够以>60%的准确率区分暴饮暴食个体的积极和消极情绪状态这一假设,以及(2)检验使用传感器数据和EMA报告的消极情绪来预测暴饮暴食发生的机器学习算法比仅使用EMA报告的消极情绪的算法能更准确地预测暴饮暴食这一假设。
本研究将招募30名暴饮暴食个体,他们将佩戴Fitbit Sense 2腕带以被动测量心率和皮肤电活动,并在EMA调查中报告情绪和暴饮暴食情况,为期4周。将使用传感器数据开发机器学习算法,以区分高积极和高消极情绪实例(目标1)并预测暴饮暴食行为(目标2)。
该项目将于2022年11月至2024年10月获得资助。招募工作将于2023年1月至2024年3月进行。预计数据收集将于2024年5月完成。
本研究预计通过整合可穿戴传感器数据来测量情绪唤醒,为消极情绪与暴饮暴食之间的关系提供新的见解。本研究的结果可能为未来开发更有效的暴饮暴食数字生态瞬时干预措施奠定基础。
国际注册报告标识符(IRRID):DERR1 - 10.2196/47098