Cargando…

Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study

BACKGROUND: 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 mo...

Descripción completa

Detalles Bibliográficos
Autores principales: Presseller, Emily K, Lampe, Elizabeth W, Zhang, Fengqing, Gable, Philip A, Guetterman, Timothy C, Forman, Evan M, Juarascio, Adrienne S
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10360009/
https://www.ncbi.nlm.nih.gov/pubmed/37410522
http://dx.doi.org/10.2196/47098
_version_ 1785076009173778432
author Presseller, Emily K
Lampe, Elizabeth W
Zhang, Fengqing
Gable, Philip A
Guetterman, Timothy C
Forman, Evan M
Juarascio, Adrienne S
author_facet Presseller, Emily K
Lampe, Elizabeth W
Zhang, Fengqing
Gable, Philip A
Guetterman, Timothy C
Forman, Evan M
Juarascio, Adrienne S
author_sort Presseller, Emily K
collection PubMed
description BACKGROUND: 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. OBJECTIVE: 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. METHODS: 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). RESULTS: 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. CONCLUSIONS: 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
format Online
Article
Text
id pubmed-10360009
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-103600092023-07-22 Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study Presseller, Emily K Lampe, Elizabeth W Zhang, Fengqing Gable, Philip A Guetterman, Timothy C Forman, Evan M Juarascio, Adrienne S JMIR Res Protoc Protocol BACKGROUND: 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. OBJECTIVE: 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. METHODS: 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). RESULTS: 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. CONCLUSIONS: 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 JMIR Publications 2023-07-06 /pmc/articles/PMC10360009/ /pubmed/37410522 http://dx.doi.org/10.2196/47098 Text en ©Emily K Presseller, Elizabeth W Lampe, Fengqing Zhang, Philip A Gable, Timothy C Guetterman, Evan M Forman, Adrienne S Juarascio. Originally published in JMIR Research Protocols (https://www.researchprotocols.org), 06.07.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Research Protocols, is properly cited. The complete bibliographic information, a link to the original publication on https://www.researchprotocols.org, as well as this copyright and license information must be included.
spellingShingle Protocol
Presseller, Emily K
Lampe, Elizabeth W
Zhang, Fengqing
Gable, Philip A
Guetterman, Timothy C
Forman, Evan M
Juarascio, Adrienne S
Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study
title Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study
title_full Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study
title_fullStr Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study
title_full_unstemmed Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study
title_short Using Wearable Passive Sensing to Predict Binge Eating in Response to Negative Affect Among Individuals With Transdiagnostic Binge Eating: Protocol for an Observational Study
title_sort using wearable passive sensing to predict binge eating in response to negative affect among individuals with transdiagnostic binge eating: protocol for an observational study
topic Protocol
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10360009/
https://www.ncbi.nlm.nih.gov/pubmed/37410522
http://dx.doi.org/10.2196/47098
work_keys_str_mv AT presselleremilyk usingwearablepassivesensingtopredictbingeeatinginresponsetonegativeaffectamongindividualswithtransdiagnosticbingeeatingprotocolforanobservationalstudy
AT lampeelizabethw usingwearablepassivesensingtopredictbingeeatinginresponsetonegativeaffectamongindividualswithtransdiagnosticbingeeatingprotocolforanobservationalstudy
AT zhangfengqing usingwearablepassivesensingtopredictbingeeatinginresponsetonegativeaffectamongindividualswithtransdiagnosticbingeeatingprotocolforanobservationalstudy
AT gablephilipa usingwearablepassivesensingtopredictbingeeatinginresponsetonegativeaffectamongindividualswithtransdiagnosticbingeeatingprotocolforanobservationalstudy
AT guettermantimothyc usingwearablepassivesensingtopredictbingeeatinginresponsetonegativeaffectamongindividualswithtransdiagnosticbingeeatingprotocolforanobservationalstudy
AT formanevanm usingwearablepassivesensingtopredictbingeeatinginresponsetonegativeaffectamongindividualswithtransdiagnosticbingeeatingprotocolforanobservationalstudy
AT juarascioadriennes usingwearablepassivesensingtopredictbingeeatinginresponsetonegativeaffectamongindividualswithtransdiagnosticbingeeatingprotocolforanobservationalstudy