Extracting time-oriented relationships of nutrients to losing body fat mass using inductive logic programming

Sho Ushikubo, K. Kanamori, H. Ohwada
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引用次数: 1

Abstract

This study was performed to extract rules for reducing body fat mass so as to prevent lifestyle-related diseases. Lifestyle-related diseases have been increasing in Japan, even among younger people. Body fat mass is related to lifestyle-related diseases. Hence, finding rules for reducing body fat mass is very meaningful. We obtained lifestyle time-series data on five male subjects who are in their 20s and not obese. The data includes the amount of body fat mass of each subject and a variety of features such as sleep, exercise, and nutrient intake. We used Inductive Logic Programming (ILP) to apply this data because ILP can more flexibly learn rules than other machine-learning methods. As a result of applying the data to ILP, our ILP system successfully extracted rules of time-oriented relationships of nutrients to decrease body fat mass based on limited data. Intake of various nutrients one day and two days prior was effective in reducing body fat mass. Moreover, we determined that nutrients related to losing body fat mass include vitamin B2, pantothenic acid, fat, vitamin B1, and biotin.
利用归纳逻辑程序设计提取营养素与减少体脂量的时间导向关系
本研究旨在提取减少体脂量的规律,从而预防与生活方式有关的疾病。在日本,与生活方式有关的疾病一直在增加,甚至在年轻人中也是如此。身体脂肪量与生活方式相关的疾病有关。因此,寻找减少身体脂肪量的规则是非常有意义的。我们获得了五名20多岁、不肥胖的男性受试者的生活方式时间序列数据。这些数据包括每个受试者的体脂量以及睡眠、运动和营养摄入等各种特征。我们使用归纳逻辑编程(ILP)来应用这些数据,因为ILP可以比其他机器学习方法更灵活地学习规则。将数据应用到ILP中,我们的ILP系统成功地在有限的数据基础上提取了营养素的时间导向关系规则,以减少体脂量。在一天前和两天前摄入各种营养物质对减少体脂量是有效的。此外,我们确定了与减少身体脂肪量相关的营养素包括维生素B2、泛酸、脂肪、维生素B1和生物素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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