Seto Edmund, Hua Jenna, Wu Lemuel, Shia Victor, Eom Sue, Wang May, Li Yan
Environmental & Occupational Health Sciences, School of Public Health, University of Washington, Seattle, Washington, United States of America.
Environmental Health Sciences, School of Public Health, University of California, Berkeley, California, United States of America.
PLoS One. 2016 Apr 6;11(4):e0153085. doi: 10.1371/journal.pone.0153085. eCollection 2016.
Smartphone applications (apps) facilitate the collection of data on multiple aspects of behavior that are useful for characterizing baseline patterns and for monitoring progress in interventions aimed at promoting healthier lifestyles. Individual-based models can be used to examine whether behavior, such as diet, corresponds to certain typological patterns. The objectives of this paper are to demonstrate individual-based modeling methods relevant to a person's eating behavior, and the value of such approach compared to typical regression models.
Using a mobile app, 2 weeks of physical activity and ecological momentary assessment (EMA) data, and 6 days of diet data were collected from 12 university students recruited from a university in Kunming, a rapidly developing city in southwest China. Phone GPS data were collected for the entire 2-week period, from which exposure to various food environments along each subject's activity space was determined. Physical activity was measured using phone accelerometry. Mobile phone EMA was used to assess self-reported emotion/feelings. The portion size of meals and food groups was determined from voice-annotated videos of meals. Individual-based regression models were used to characterize subjects as following one of 4 diet typologies: those with a routine portion sizes determined by time of day, those with portion sizes that balance physical activity (energy balance), those with portion sizes influenced by emotion, and those with portion sizes associated with food environments.
Ample compliance with the phone-based behavioral assessment was observed for all participants. Across all individuals, 868 consumed food items were recorded, with fruits, grains and dairy foods dominating the portion sizes. On average, 218 hours of accelerometry and 35 EMA responses were recorded for each participant. For some subjects, the routine model was able to explain up to 47% of the variation in portion sizes, and the energy balance model was able to explain over 88% of the variation in portion sizes. Across all our subjects, the food environment was an important predictor of eating patterns. Generally, grouping all subjects into a pooled model performed worse than modeling each individual separately.
A typological modeling approach was useful in understanding individual dietary behaviors in our cohort. This approach may be applicable to the study of other human behaviors, particularly those that collect repeated measures on individuals, and those involving smartphone-based behavioral measurement.
智能手机应用程序(应用)有助于收集有关行为多个方面的数据,这些数据对于刻画基线模式以及监测旨在促进更健康生活方式的干预措施的进展非常有用。基于个体的模型可用于检验饮食等行为是否符合某些类型模式。本文的目的是展示与个人饮食行为相关的基于个体的建模方法,以及与典型回归模型相比这种方法的价值。
使用一款移动应用,从中国西南部快速发展的城市昆明的一所大学招募的12名大学生中收集了2周的身体活动和生态瞬时评估(EMA)数据以及6天的饮食数据。在整个2周期间收集手机GPS数据,据此确定每个受试者活动空间中接触各种食物环境的情况。使用手机加速度计测量身体活动。通过手机EMA评估自我报告的情绪/感受。根据餐食的语音注释视频确定餐食和食物组的份量大小。基于个体的回归模型用于将受试者刻画为以下4种饮食类型之一:份量大小由一天中的时间决定的常规型,份量大小与身体活动平衡(能量平衡)的类型,份量大小受情绪影响的类型,以及份量大小与食物环境相关的类型。
观察到所有参与者对基于手机的行为评估有很高的依从性。在所有个体中,记录了868份食用的食物项目,份量大小以水果、谷物和乳制品为主。每位参与者平均记录了218小时的加速度计数据和35次EMA反应。对于一些受试者,常规模型能够解释份量大小变化的47%,能量平衡模型能够解释份量大小变化的88%以上。在我们所有的受试者中,食物环境是饮食模式的一个重要预测因素。一般来说,将所有受试者分组到一个汇总模型中的表现比分别对每个个体进行建模更差。
类型建模方法有助于理解我们队列中的个体饮食行为。这种方法可能适用于其他人类行为的研究,特别是那些对个体进行重复测量的研究,以及那些涉及基于智能手机的行为测量的研究。