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使用贝叶斯决策理论确定间接量热法中人类的日常变化。

Determining day-to-day human variation in indirect calorimetry using Bayesian decision theory.

作者信息

Tenan Matthew S, Bohannon Addison W, Macfarlane Duncan J, Crouter Scott E

机构信息

US Army Research Laboratory, Research Triangle Park, NC, USA.

US Army Research Laboratory, Aberdeen Proving Ground, MD, USA.

出版信息

Exp Physiol. 2018 Dec;103(12):1579-1585. doi: 10.1113/EP087115. Epub 2018 Oct 17.

Abstract

NEW FINDINGS

What is the central question of this study? We sought to understand the day-to-day variability of human indirect calorimetry during rest and exercise. Previous work has been unable to separate human day-to-day variability from measurement error and within-trial human variability. We developed models accounting for different levels of human- and machine-level variance and compared the probability density functions using total variation distance. What is the main finding and its importance? After accounting for multiple levels of variance, the average human day-to-day variability of minute ventilation, CO output and O uptake is 4.0, 1.8 and 2.0%, respectively. This is a new method to understand human variability and directly enhances our understanding of human variance during indirect calorimetry.

ABSTRACT

One of the challenges of precision medicine is understanding when serial measurements taken across days are quantifiably different from each other. Previous work examining gas exchange measured by indirect calorimetry has been unable to separate differential measurement error, within-trial human variance and day-to-day human variance effectively in order to ascertain how variable humans are across testing sessions. We used previously published reliability data to construct models of indirect calorimetry variance and compare these models with methods arising from Bayesian decision theory. These models are conditional on the data upon which they are derived and assume that errors conform to a truncated normal distribution. A serial analysis of modelled probability density functions demonstrated that the average human day-to-day variance in minute ventilation ( ), carbon dioxide output ( ) and oxygen uptake ( ) was 4.0, 1.8 and 2.0%, respectively. However, the average day-to-day variability masked a wide range of non-linear variance across flow rates, particularly for . This is the first report isolating day-to-day human variability in indirect calorimetry gas exchange from other sources of variability. This method can be extended to other physiological tools, and an extension of this work facilitates a statistical tool to examine within-trial differences, available in a graphical user interface.

摘要

新发现

本研究的核心问题是什么?我们试图了解人类在休息和运动期间间接测热法的日常变异性。以往的研究无法将人类的日常变异性与测量误差以及试验内的个体变异性区分开来。我们开发了考虑不同水平的人体和机器水平方差的模型,并使用总变化距离比较概率密度函数。主要发现及其重要性是什么?在考虑了多个方差水平后,人类每分钟通气量、二氧化碳排出量和氧气摄入量的平均日常变异性分别为4.0%、1.8%和2.0%。这是一种了解人类变异性的新方法,直接增强了我们对间接测热法期间人类变异性的理解。

摘要

精准医学面临的挑战之一是理解跨日进行的系列测量在数量上何时彼此不同。先前研究间接测热法测量的气体交换时,无法有效区分差异测量误差、试验内个体方差和日常个体方差,以确定人类在不同测试期间的变异性。我们使用先前发表的可靠性数据构建间接测热法方差模型,并将这些模型与贝叶斯决策理论产生的方法进行比较。这些模型以推导它们的数据为条件,并假设误差符合截断正态分布。对建模概率密度函数的系列分析表明,人类每分钟通气量( )、二氧化碳排出量( )和氧气摄入量( )的平均日常方差分别为4.0%、1.8%和2.0%。然而,平均日常变异性掩盖了流速范围内广泛的非线性方差,特别是对于 。这是第一份将间接测热法气体交换中的日常个体变异性与其他变异性来源区分开来的报告。这种方法可以扩展到其他生理工具,这项工作的扩展有助于开发一种统计工具来检查试验内差异,该工具可在图形用户界面中使用。

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