Advances in methods for characterising dietary patterns: a scoping review.

IF 3 3区 医学 Q2 NUTRITION & DIETETICS
Joy M Hutchinson, Amanda Raffoul, Alexandra Pepetone, Lesley Andrade, Tabitha E Williams, Sarah A McNaughton, Rebecca M Leech, Jill Reedy, Marissa M Shams-White, Jennifer E Vena, Kevin W Dodd, Lisa M Bodnar, Benoît Lamarche, Michael P Wallace, Megan Deitchler, Sanaa Hussain, Sharon I Kirkpatrick
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引用次数: 0

Abstract

There is a growing focus on understanding the complexity of dietary patterns and how they relate to health and other factors. Approaches that have not traditionally been applied to characterise dietary patterns, such as latent class analysis and machine learning algorithms, may offer opportunities to characterise dietary patterns in greater depth than previously considered. However, there has not been a formal examination of how this wide range of approaches has been applied to characterise dietary patterns. This scoping review synthesised literature from 2005 to 2022 applying methods not traditionally used to characterise dietary patterns, referred to as novel methods. MEDLINE, CINAHL and Scopus were searched using keywords including latent class analysis, machine learning and least absolute shrinkage and selection operator. Of 5274 records identified, 24 met the inclusion criteria. Twelve of twenty-four articles were published since 2020. Studies were conducted across seventeen countries. Nine studies used approaches with applications in machine learning, such as classification models, neural networks and probabilistic graphical models, to identify dietary patterns. The remaining studies applied methods such as latent class analysis, mutual information and treelet transform. Fourteen studies assessed associations between dietary patterns characterised using novel methods and health outcomes, including cancer, cardiovascular disease and asthma. There was wide variation in the methods applied to characterise dietary patterns and in how these methods were described. The extension of reporting guidelines and quality appraisal tools relevant to nutrition research to consider specific features of novel methods may facilitate consistent reporting and enable synthesis to inform policies and programs.

表征饮食模式方法的进展:范围综述。
人们越来越关注了解饮食模式的复杂性,以及它们与健康和其他因素的关系。传统上尚未应用于表征饮食模式的方法,如潜在类分析和机器学习算法,可能提供比以前考虑的更深入表征饮食模式的机会。然而,对于这些广泛的方法是如何应用于描述饮食模式的,还没有正式的研究。该范围综述综合了2005-2022年的文献,采用了传统上不用于表征饮食模式的方法,称为新方法。使用潜在类分析、机器学习、最小绝对收缩和选择算子等关键词对MEDLINE、CINAHL和Scopus进行检索。在确定的5274条记录中,有24条符合纳入标准。24篇文章中有12篇是2020年以后发表的。研究在17个国家进行。九项研究使用了机器学习中的应用方法,如分类模型、神经网络和概率图形模型,来识别饮食模式。其余的研究应用了潜在类分析、互信息和树波变换等方法。14项研究评估了使用新方法表征的饮食模式与健康结果(包括癌症、心血管疾病和哮喘)之间的关系。在描述饮食模式的方法以及如何描述这些方法方面存在很大差异。扩展与营养研究相关的报告指南和质量评估工具,以考虑新方法的具体特征,可能有助于一致的报告,并使综合为政策和计划提供信息。
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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来源期刊
British Journal of Nutrition
British Journal of Nutrition 医学-营养学
CiteScore
6.60
自引率
5.60%
发文量
740
审稿时长
3 months
期刊介绍: British Journal of Nutrition is a leading international peer-reviewed journal covering research on human and clinical nutrition, animal nutrition and basic science as applied to nutrition. The Journal recognises the multidisciplinary nature of nutritional science and includes material from all of the specialities involved in nutrition research, including molecular and cell biology and nutritional genomics.
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