Objective Features Extracted from Motor Activity Time Series for Food Addiction Analysis Using Machine Learning

Mikhail Borisenkov, Andrei Velichko, Maksim Belyaev, Dmitry Korzun, Tatyana Tserne, Larisa Bakutova, Denis Gubin
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Abstract

This study investigates machine learning algorithms to identify objective features for diagnosing food addiction (FA) and assessing confirmed symptoms (SC). Data were collected from 81 participants (mean age: 21.5 years, range: 18-61 years, women: 77.8%) whose FA and SC were measured using the Yale Food Addiction Scale (YFAS). Participants provided demographic and anthropometric data, completed the YFAS, the Zung Self-Rating Depression Scale, and the Dutch Eating Behavior Questionnaire, and wore an actimeter on the non-dominant wrist for a week to record motor activity. Analysis of the actimetric data identified significant statistical and entropy-based features that accurately predicted FA and SC using ML. The Matthews correlation coefficient (MCC) was the primary metric. Activity-related features were more effective for FA prediction (MCC=0.88) than rest-related features (MCC=0.68). For SC, activity segments yielded MCC=0.47, rest segments MCC=0.38, and their combination MCC=0.51. Significant correlations were also found between actimetric features related to FA, emotional, and restrained eating behaviors, supporting the model's validity. Our results support the concept of a human bionic suite composed of IoT devices and ML sensors, which implements health digital assistance with real-time monitoring and analysis of physiological indicators related to FA and SC.
利用机器学习从运动活动时间序列中提取客观特征,用于食物成瘾分析
本研究调查了机器学习算法,以确定诊断食物成瘾(FA)和评估确诊症状(SC)的客观特征。研究收集了 81 名参与者(平均年龄:21.5 岁,年龄范围:18-61 岁,女性:77.8%)的数据,使用耶鲁食物成瘾量表(YFAS)测量了他们的 FA 和 SC。参与者提供了人口统计学和人体测量数据,填写了耶鲁食物成瘾量表、Zung 抑郁自评量表和荷兰饮食行为问卷,并在非惯用腕上佩戴运动计一周以记录运动量。通过对动作仪数据进行分析,发现了一些重要的统计特征和基于熵的特征,这些特征可以使用 ML 准确预测 FA 和 SC。马修斯相关系数(MCC)是最主要的指标。对于 FA 预测,活动相关特征(MCC=0.88)比静息相关特征(MCC=0.68)更有效。就 SC 而言,活动片段的 MCC=0.47, 休息片段的 MCC=0.38, 而它们的组合 MCC=0.51.我们的研究结果支持由物联网设备和 ML 传感器组成的人体仿生套件的概念,该套件通过实时监测和分析与 FA 和 SC 相关的生理指标来实现健康数字辅助。
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