Research School of Population Health, College of Health & Medicine, Australian National University, Canberra, Australia.
Faculty of Public Health, School of Health Sciences, University of Thessaly, Karditsa, Greece.
J Clin Epidemiol. 2021 Apr;132:51-58. doi: 10.1016/j.jclinepi.2020.12.015. Epub 2020 Dec 18.
This study outlines the development of a new method (split component synthesis; SCS) for meta-analysis of diagnostic accuracy studies and assesses its performance against the commonly used bivariate random effects model.
The SCS method summarizes the study-specific diagnostic odds ratio (on the ln(DOR) scale), which mainly reflects test discrimination rather than threshold effects, and then splits the summary ln(DOR) into its component parts, logit sensitivity (Se) and logit specificity (Sp). Performance of SCS estimator was assessed through simulation and compared against the bivariate random effects model estimator in terms of bias, mean squared error (MSE), and coverage probability across varying degrees of between-studies heterogeneity.
The SCS estimator for the DOR, Se, and Sp was less biased and had smaller MSE than the bivariate model estimator. Despite the wider width of the 95% confidence intervals under the bivariate model, the latter had a poorer coverage probability than that under the SCS method.
The SCS estimator outperforms the bivariate model estimator and thus represents an improvement in the approach to diagnostic meta-analyses. The SCS method is available to researchers through the diagma module in Stata and the SCSmeta function in R.
本研究提出了一种新的诊断准确性研究荟萃分析方法(拆分成分合成法;SCS),并评估了其相对于常用的双变量随机效应模型的性能。
SCS 方法总结了特定于研究的诊断比值比(ln(DOR) 尺度),主要反映测试的区分度而非阈值效应,然后将汇总的 ln(DOR) 拆分为其组成部分,即对数灵敏度(Se)和对数特异性(Sp)。通过模拟评估 SCS 估计量的性能,并根据偏倚、均方误差(MSE)和不同程度的研究间异质性下的覆盖率概率,将其与双变量随机效应模型估计量进行比较。
DOR、Se 和 Sp 的 SCS 估计量的偏差较小,MSE 也较小,优于双变量模型估计量。尽管双变量模型下的 95%置信区间更宽,但后者的覆盖率概率却不如 SCS 方法。
SCS 估计量优于双变量模型估计量,因此代表了诊断荟萃分析方法的改进。SCS 方法可通过 Stata 中的 diagma 模块和 R 中的 SCSmeta 函数供研究人员使用。