机器学习在成人肥胖研究中的应用综述

M. Alkhalaf, Ping Yu, Jun Shen, Chao Deng
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引用次数: 3

摘要

在肥胖研究中,一些研究人员一直在应用机器学习工具来识别影响人体体重的因素。然而,缺乏对肥胖机器学习算法的强度、局限性和评估指标的适当审查。本研究综述了机器学习算法在肥胖研究中的应用现状,并确定了这些方法的优缺点。对以肥胖为重点的论文进行了范围审查。使用不同的关键词在PubMed和Scopus数据库中搜索机器学习在肥胖症中的应用。仅纳入了2014年至2019年期间有关成人肥胖的英文论文。此外,仅对关注可控因素(如营养摄入、饮食模式和/或身体活动)的论文进行了深入的综述。关于遗传或儿童肥胖的论文被排除在外。20篇综述论文使用机器学习算法来确定影响因素与肥胖之间的关系。回归算法得到了广泛应用。其他算法,如神经网络、随机森林和深度学习的利用较少。讨论了数据先验假设、过拟合和超参数优化的局限性。确定了性能度量标准和验证技术。机器学习应用正在对肥胖研究产生积极影响。在选择合适的算法时,研究的性质和目标以及可用的数据是要考虑的关键因素。未来的研究方向是进一步探索和利用现代方法,如神经网络和深度学习在肥胖研究中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review of the application of machine learning in adult obesity studies
In obesity studies, several researchers have been applying machine learning tools to identify factors affecting human body weight. However, a proper review of strength, limitations and evaluation metrics of machine learning algorithms in obesity is lacking. This study reviews the status of application of machine learning algorithms in obesity studies and to identify strength and weaknesses of these methods. A scoping review of paper focusing on obesity was conducted. PubMed and Scopus databases were searched for the application of machine learning in obesity using different keywords. Only English papers in adult obesity between 2014 and 2019 were included. Also, only papers that focused on controllable factors (e.g., nutrition intake, dietary pattern and/or physical activity) were reviewed in depth. Papers on genetic or childhood obesity were excluded. Twenty reviewed papers used machine learning algorithms to identify the relationship between the contributing factors and obesity. Regression algorithms were widely applied. Other algorithms such as neural network, random forest and deep learning were less exploited. Limitations regarding data priori assumptions, overfitting and hyperparameter optimization were discussed. Performance metrics and validation techniques were identified. Machine learning applications are positively impacting obesity research. The nature and objective of a study and available data are key factors to consider in selecting the appropriate algorithms. The future research direction is to further explore and take advantage of the modern methods, i.e., neural network and deep learning, in obesity studies.
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