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How to regress and predict in a Bland-Altman plot? Review and contribution based on tolerance intervals and correlated-errors-in-variables models

机译:如何在Bland-Altman图中进行回归和预测?基于公差区间和相关误差变量模型进行评估和贡献

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摘要

Two main methodologies for assessing equivalence in method-comparison studies are presented separately in the literature. The first one is the well-known and widely applied Bland-Altman approach with its agreement intervals, where two methods are considered interchangeable if their differences are not clinically significant. The second approach is based on errors-in-variables regression in a classical (X,Y) plot and focuses on confidence intervals, whereby two methods are considered equivalent when providing similar measures notwithstanding the random measurement errors. This paper reconciles these two methodologies and shows their similarities and differences using both real data and simulations. A new consistent correlated-errors-in-variables regression is introduced as the errors are shown to be correlated in the Bland-Altman plot. Indeed, the coverage probabilities collapse and the biases soar when this correlation is ignored. Novel tolerance intervals are compared with agreement intervals with or without replicated data, and novel predictive intervals are introduced to predict a single measure in an (X,Y) plot or in a Bland-Atman plot with excellent coverage probabilities. We conclude that the (correlated)-errors-in-variables regressions should not be avoided in method comparison studies, although the Bland-Altman approach is usually applied to avert their complexity. We argue that tolerance or predictive intervals are better alternatives than agreement intervals, and we provide guidelines for practitioners regarding method comparison studies. Copyright (C) 2016 John Wiley & Sons, Ltd.
机译:文献中分别介绍了两种用于评估方法比较研究中等效性的主要方法。第一种是众所周知的且广泛使用的Bland-Altman方法及其协议间隔,如果两种方法的临床差异不大,则认为这两种方法是可互换的。第二种方法基于经典(X,Y)图中的变量误差回归,并着重于置信区间,从而尽管提供​​了随机测量误差,但在提供相似度量时,两种方法被认为是等效的。本文调和了这两种方法,并使用实际数据和模拟显示了它们的异同。由于在Bland-Altman图中显示误差是相关的,因此引入了新的一致的变量相关误差回归。确实,当忽略此相关性时,覆盖率概率会崩溃并且偏差会飙升。将新的公差区间与有或没有复制数据的协议区间进行比较,并引入新颖的预测区间,以预测具有出色覆盖率的(X,Y)图或Bland-Atman图中的单个度量。我们得出的结论是,尽管通常采用Bland-Altman方法来避免其复杂性,但在方法比较研究中不应避免(相关的)变量误差回归。我们认为宽容或预测间隔比协议间隔更好,我们为从业者提供了方法比较研究的指南。版权所有(C)2016 John Wiley&Sons,Ltd.

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