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一种用于诊断试验准确性荟萃分析中识别和处理异常值的双变量有限混合随机效应模型。

A Bivariate Finite Mixture Random Effects Model for Identifying and Accommodating Outliers in Diagnostic Test Accuracy Meta-Analyses.

作者信息

Negeri Zelalem F

机构信息

Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, Ontario, Canada.

出版信息

Biom J. 2025 Jun;67(3):e70062. doi: 10.1002/bimj.70062.

Abstract

Outlying studies are prevalent in meta-analyses of diagnostic test accuracy studies and may lead to misleading inferences and decision-making unless their negative effect is appropriately dealt with. Statistical methods for detecting and down-weighting the impact of such studies have recently gained the attention of many researchers. However, these methods dichotomize each study in the meta-analysis as outlying or non-outlying and focus on examining the effect of outlying studies on the summary sensitivity and specificity only. We developed and evaluated a robust and flexible random-effects bivariate finite mixture model for meta-analyzing diagnostic test accuracy studies. The proposed model accounts for both the within- and across-study heterogeneity in diagnostic test results, generates the probability that each study in a meta-analysis is outlying instead of dichotomizing the status of the studies, and allows assessing the impact of outlying studies on the pooled sensitivity, pooled specificity, and between-study heterogeneity. Our simulation study and real-life data examples demonstrated that the proposed model was robust to the existence of outlying studies, produced precise point and interval estimates of the pooled sensitivity and specificity, and yielded similar results to the standard models when there were no outliers. Extensive simulations demonstrated relatively better bias and confidence interval width, but comparable root mean squared error and lesser coverage probability of the proposed model. Practitioners can use our proposed model as a stand-alone model to conduct a meta-analysis of diagnostic test accuracy studies or as an alternative sensitivity analysis model when outlying studies are present in a meta-analysis.

摘要

在诊断试验准确性研究的荟萃分析中,离群研究很普遍,除非其负面影响得到妥善处理,否则可能会导致误导性的推断和决策。检测此类研究的影响并降低其权重的统计方法最近受到了许多研究人员的关注。然而,这些方法将荟萃分析中的每项研究二分法为离群或非离群,并仅关注检验离群研究对汇总敏感性和特异性的影响。我们开发并评估了一种用于荟萃分析诊断试验准确性研究的稳健且灵活的随机效应双变量有限混合模型。所提出的模型考虑了诊断试验结果中的研究内和研究间异质性,生成荟萃分析中每项研究为离群的概率而非将研究状态二分法,并且允许评估离群研究对合并敏感性、合并特异性和研究间异质性的影响。我们的模拟研究和实际数据示例表明,所提出的模型对离群研究的存在具有稳健性,产生了合并敏感性和特异性的精确点估计和区间估计,并且在没有离群值时产生的结果与标准模型相似。广泛的模拟表明,所提出的模型具有相对更好的偏差和置信区间宽度,但均方根误差相当,覆盖概率较小。从业者可以将我们提出的模型用作独立模型来进行诊断试验准确性研究的荟萃分析,或者在荟萃分析中存在离群研究时用作替代敏感性分析模型。

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