Food, Mood, Context: Examining College Students’ Eating Context and Mental Well-being

M. B. Morshed, S. S. Kulkarni, Koustuv Saha, Richard Li, L. G. Roper, L. Nachman, Hong Lu, Lucia Mirabella, Sanjeev Srivastava, K. de Barbaro, M. de Choudhury, T. Plötz, G. Abowd
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引用次数: 8

Abstract

Deviant eating behavior such as skipping meals and consuming unhealthy meals has a significant association with mental well-being in college students. However, there is more to what an individual eats. While eating patterns form a critical component of their mental well-being, insights and assessments related to the interplay of eating patterns and mental well-being remain under-explored in theory and practice. To bridge this gap, we use an existing real-time eating detection system that captures context during meals to examine how college students’ eating context associates with their mental well-being, particularly their affect, anxiety, depression, and stress. Our findings suggest that students’ irregularity or skipping meals negatively correlates with their mental well-being, whereas eating with family and friends positively correlates with improved mental well-being. We discuss the implications of our study in designing dietary intervention technologies and guiding student-centric well-being technologies.
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食物、情绪、情境:大学生饮食情境与心理健康的关系
不规律的饮食行为,如不吃饭和吃不健康的饭,与大学生的心理健康有着显著的联系。然而,一个人吃的东西还有更多。虽然饮食模式是他们心理健康的重要组成部分,但与饮食模式和心理健康相互作用相关的见解和评估在理论和实践中仍有待深入探讨。为了弥补这一差距,我们使用了一个现有的实时饮食检测系统,该系统可以捕捉用餐过程中的环境,来研究大学生的饮食环境如何与他们的心理健康相关,特别是他们的情绪、焦虑、抑郁和压力。我们的研究结果表明,学生的不规律或不吃饭与他们的心理健康呈负相关,而与家人和朋友一起吃饭与心理健康的改善呈正相关。我们讨论了我们的研究在设计饮食干预技术和指导以学生为中心的幸福技术方面的意义。
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