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识别超重和肥胖个体的饮食触发因素:一项生态瞬时评估研究。

Identifying Dietary Triggers Among Individuals with Overweight and Obesity: An Ecological Momentary Assessment Study.

作者信息

Chew Han Shi Jocelyn, Vashishtha Rakhi, Du Ruochen, Liaw Yan Xin, Gneezy Ayelet

机构信息

Alice Lee Centre for Nursing Studies, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 117597, Singapore.

Behaviour and Implementation Science Interventions, Yong Loo Lin School of Medicine, National University of Singapore, Singapore 117597, Singapore.

出版信息

Nutrients. 2025 Jan 29;17(3):481. doi: 10.3390/nu17030481.

Abstract

BACKGROUND/OBJECTIVES: Excess adiposity, affecting 43% of the global adult population, is a major contributor to cardiometabolic diseases. Lifestyle behaviours, specifically dietary habits, play a key role in weight management. Real-time assessment methods such as Ecological Momentary Assessment (EMA) provide context-rich data that reduce recall bias and offer insights into dietary triggers and lapses. This study examines dietary triggers among adults with excess adiposity in Singapore using EMA, focusing on factors influencing dietary adherence and lapses.

METHODS

A total of 250 participants with a BMI ≥ 23 kg/m were recruited to track dietary habits for one week, at least three times a day, using the Eating Behaviour Lapse Inventory Survey Singapore (eBLISS) embedded within the Eating Trigger Response Inhibition Program (eTRIP© V.1) smartphone app. Logistic regression analysis was used to identify predictors of dietary adherence.

RESULTS

Of the 4708 responses, 76.4% of the responses were indicative of adherence to dietary plans. Non-adherence was primarily associated with food accessibility and negative emotions (stress, nervousness, and sadness). Factors such as meals prepared by domestic helpers and self-preparation were significantly associated with adherence. Negative emotions and premenstrual syndrome were identified as significant predictors of dietary lapses.

CONCLUSIONS

EMA offers valuable insights into dietary behaviours by identifying real-time triggers for dietary lapses. Future interventions can utilise technology-driven approaches to predict and prevent lapses, potentially improving adherence and weight management outcomes.

摘要

背景/目的:肥胖影响着全球43%的成年人口,是导致心脏代谢疾病的主要因素。生活方式行为,特别是饮食习惯,在体重管理中起着关键作用。诸如生态瞬时评估(EMA)等实时评估方法能提供丰富的背景数据,减少回忆偏差,并深入了解饮食触发因素和失误情况。本研究使用EMA调查新加坡肥胖成年人的饮食触发因素,重点关注影响饮食依从性和失误的因素。

方法

共招募了250名BMI≥23kg/m的参与者,使用嵌入在饮食触发反应抑制程序(eTRIP©V.1)智能手机应用中的新加坡饮食行为失误量表调查(eBLISS),连续一周每天至少三次跟踪饮食习惯。采用逻辑回归分析确定饮食依从性的预测因素。

结果

在4708份回复中,76.4%的回复表明遵守了饮食计划。不依从主要与食物可及性和负面情绪(压力、紧张和悲伤)有关。由家庭佣工准备饭菜和自己准备饭菜等因素与依从性显著相关。负面情绪和经前综合征被确定为饮食失误的重要预测因素。

结论

EMA通过识别饮食失误的实时触发因素,为饮食行为提供了有价值的见解。未来的干预措施可以利用技术驱动的方法来预测和预防失误,有可能提高依从性和体重管理效果。

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