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A Statistical Framework to Interpret Individual Response to Intervention: Paving the Way for Personalized Nutrition and Exercise Prescription

机译:解释个体对干预措施反应的统计框架:为个性化营养和运动处方铺平道路

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The concept of personalised nutrition and exercise prescription represents a topical and exciting progression for the discipline given the large inter-individual variability that exists in response to virtually all performance and health related interventions. Appropriate interpretation of intervention-based data from an individual or group of individuals requires practitioners and researchers to consider a range of concepts including the confounding influence of measurement error and biological variability. In addition, the means to quantify likely statistical and practical improvements are facilitated by concepts such as confidence intervals (CIs) and smallest worthwhile change (SWC). The purpose of this review is to provide accessible and applicable recommendations for practitioners and researchers that interpret, and report personalised data. To achieve this, the review is structured in three sections that progressively develop a statistical framework. Section 1 explores fundamental concepts related to measurement error and describes how typical error and CIs can be used to express uncertainty in baseline measurements. Section 2 builds upon these concepts and demonstrates how CIs can be combined with the concept of SWC to assess whether meaningful improvements occur post-intervention. Finally, Section 3 introduces the concept of biological variability and discusses the subsequent challenges in identifying individual response and non-response to an intervention. Worked numerical examples and interactive supplementary material are incorporated to solidify concepts and assist with implementation in practice.
机译:鉴于几乎所有与表现和健康相关的干预措施都存在很大的个体间差异,个性化营养和运动处方的概念代表了该学科的主题性和令人振奋的进步。对来自个人或个人的基于干预的数据的正确解释要求从业人员和研究人员考虑一系列概念,包括测量误差和生物学变异性的混杂影响。此外,诸如置信区间(CI)和最小价值变化(SWC)之类的概念有助于量化可能的统计和实际改进。本文的目的是为解释和报告个性化数据的从业人员和研究人员提供可访问的适用建议。为了实现这一目标,该审查分为三个部分,逐步开发了统计框架。第1部分探讨了与测量误差有关的基本概念,并描述了如何使用典型误差和CI来表示基线测量中的不确定性。第2节以这些概念为基础,展示了CI如何与SWC的概念结合起来以评估干预后是否发生了有意义的改进。最后,第3节介绍了生物变异性的概念,并讨论了识别干预措施的个体反应和无反应时的后续挑战。结合了工作的数值示例和交互式补充材料来巩固概念并在实践中协助实施。

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