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通过观察永久性支持性住房居民来识别预测清晨情绪的行为:一项生态瞬时评估。

Identifying Behaviors Predicting Early Morning Emotions by Observing Permanent Supportive Housing Residents: An Ecological Momentary Assessment.

作者信息

Nandy Rajesh R, Nandy Karabi, Hébert Emily T, Businelle Michael S, Walters Scott T

机构信息

Department of Biostatistics and Epidemiology, School of Public Health, University of North Texas Health Science Center, Fort Worth, TX, United States.

Oklahoma Tobacco Research Center, The University of Oklahoma Health Sciences Center, Oklahoma City, OK, United States.

出版信息

JMIR Ment Health. 2019 Feb 7;6(2):e10186. doi: 10.2196/10186.

Abstract

BACKGROUND

Behavior and emotions are closely intertwined. The relationship between behavior and emotions might be particularly important in populations of underserved people, such as people with physical or mental health issues. We used ecological momentary assessment (EMA) to examine the relationship between emotional state and other characteristics among people with a history of chronic homelessness who were participating in a health coaching program.

OBJECTIVE

The goal of this study was to identify relationships between daily emotional states (valence and arousal) shortly after waking and behavioral variables such as physical activity, diet, social interaction, medication compliance, and tobacco usage the prior day, controlling for demographic characteristics.

METHODS

Participants in m.chat, a technology-assisted health coaching program, were recruited from housing agencies in Fort Worth, Texas, United States. All participants had a history of chronic homelessness and reported at least one mental health condition. We asked a subset of participants to complete daily EMAs of emotions and other behaviors. From the circumplex model of affect, the EMA included 9 questions related to the current emotional state of the participant (happy, frustrated, sad, worried, restless, excited, calm, bored, and sluggish). The responses were used to calculate two composite scores for valence and arousal.

RESULTS

Nonwhites reported higher scores for both valence and arousal, but not at a statistically significant level after correcting for multiple testing. Among momentary predictors, greater time spent in one-on-one interactions, greater time spent in physical activities, a greater number of servings of fruits and vegetables, greater time spent interacting in a one-on-one setting as well as adherence to prescribed medication the previous day were generally associated with higher scores for both valence and arousal, and statistical significance was achieved in most cases. Number of cigarettes smoked the previous day was generally associated with lower scores on both valence and arousal, although statistical significance was achieved for valence only when correcting for multiple testing.

CONCLUSIONS

This study provides an important glimpse into factors that predict morning emotions among people with mental health issues and a history of chronic homelessness. Behaviors considered to be positive (eg, physical activity and consumption of fruits and vegetables) generally enhanced positive affect and restrained negative affect the following morning. The opposite was true for behaviors such as smoking, which are considered to be negative.

摘要

背景

行为与情绪紧密相连。行为与情绪之间的关系在弱势群体中可能尤为重要,比如有身心健康问题的人群。我们运用生态瞬时评估(EMA)来研究参与健康指导项目的有长期无家可归史的人群的情绪状态与其他特征之间的关系。

目的

本研究的目的是确定醒来后不久的日常情绪状态(效价和唤醒度)与前一天的行为变量(如身体活动、饮食、社交互动、药物依从性和烟草使用)之间的关系,并控制人口统计学特征。

方法

从美国得克萨斯州沃思堡的住房机构招募参与m.chat(一个技术辅助的健康指导项目)的参与者。所有参与者都有长期无家可归史且报告至少有一种心理健康状况。我们要求一部分参与者完成情绪和其他行为的每日EMA。根据情感环形模型,EMA包括9个与参与者当前情绪状态相关的问题(开心、沮丧、悲伤、担忧、不安、兴奋、平静、无聊和慵懒)。这些回答被用于计算效价和唤醒度的两个综合得分。

结果

非白人在效价和唤醒度上的得分都更高,但在进行多重检验校正后未达到统计学显著水平。在瞬时预测因素中,前一天一对一互动时间更长、身体活动时间更长、水果和蔬菜摄入量更多、一对一环境中互动时间更长以及坚持服药通常与效价和唤醒度得分更高相关,且在大多数情况下达到统计学显著水平。前一天吸烟数量通常与效价和唤醒度得分更低相关,不过仅在进行多重检验校正后效价达到统计学显著水平。

结论

本研究为预测有心理健康问题和长期无家可归史的人群早晨情绪的因素提供了重要见解。被认为是积极的行为(如身体活动和食用水果和蔬菜)通常会增强次日早晨的积极情绪并抑制消极情绪。而吸烟等被认为是消极的行为则相反。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f0a9/6385519/c5b6d5c2f05d/mental_v6i2e10186_fig1.jpg

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