Guolo Annamaria
Department of Statistical Sciences, Via Cesare Battisti 241/243, Padova, Italy.
BMC Med Res Methodol. 2017 Jan 11;17(1):6. doi: 10.1186/s12874-016-0284-2.
Bivariate random-effects models represent a widely accepted and recommended approach for meta-analysis of test accuracy studies. Standard likelihood methods routinely used for inference are prone to several drawbacks. Small sample size can give rise to unreliable inferential conclusions and convergence issues make the approach unappealing. This paper suggests a different methodology to address such difficulties.
A SIMEX methodology is proposed. The method is a simulation-based technique originally developed as a correction strategy within the measurement error literature. It suits the meta-analysis framework as the diagnostic accuracy measures provided by each study are prone to measurement error. SIMEX can be straightforwardly adapted to cover different measurement error structures and to deal with covariates. The effortless implementation with standard software is an interesting feature of the method.
Extensive simulation studies highlight the improvement provided by SIMEX over likelihood approach in terms of empirical coverage probabilities of confidence intervals under different scenarios, independently of the sample size and the values of the correlation between sensitivity and specificity. A remarkable amelioration is obtained in case of deviations from the normality assumption for the random-effects distribution. From a computational point of view, the application of SIMEX is shown to be neither involved nor subject to the convergence issues affecting likelihood-based alternatives. Application of the method to a diagnostic review of the performance of transesophageal echocardiography for assessing ascending aorta atherosclerosis enables overcoming limitations of the likelihood procedure.
The SIMEX methodology represents an interesting alternative to likelihood-based procedures for inference in meta-analysis of diagnostic accuracy studies. The approach can provide more accurate inferential conclusions, while avoiding convergence failure and numerical instabilities. The application of the method in the R programming language is possible through the code which is made available and illustrated using the real data example.
双变量随机效应模型是检验准确性研究的荟萃分析中一种广泛接受和推荐的方法。常规用于推断的标准似然方法存在若干缺点。小样本量可能导致不可靠的推断结论,并且收敛问题使该方法缺乏吸引力。本文提出了一种不同的方法来解决此类困难。
提出了一种模拟外推法(SIMEX)。该方法是一种基于模拟的技术,最初是作为测量误差文献中的一种校正策略而开发的。它适用于荟萃分析框架,因为每项研究提供的诊断准确性测量值都容易出现测量误差。SIMEX可以直接调整以涵盖不同的测量误差结构并处理协变量。使用标准软件轻松实现是该方法的一个有趣特性。
广泛的模拟研究表明,在不同情况下,SIMEX在置信区间的经验覆盖概率方面比似然方法有改进,与样本量以及灵敏度和特异度之间的相关值无关。在随机效应分布偏离正态性假设的情况下,可获得显著改善。从计算角度来看,SIMEX的应用既不复杂,也不受影响基于似然法的替代方法的收敛问题的困扰。将该方法应用于经食管超声心动图评估升主动脉动脉粥样硬化性能的诊断综述,能够克服似然法的局限性。
对于诊断准确性研究的荟萃分析中的推断,模拟外推法(SIMEX)是基于似然法的程序的一种有趣替代方法。该方法可以提供更准确的推断结论,同时避免收敛失败和数值不稳定。通过提供的代码并使用实际数据示例进行说明,可以在R编程语言中应用该方法。