首页> 美国卫生研究院文献>Computational and Mathematical Methods in Medicine >The Covariance Adjustment Approaches for Combining Incomparable Cox Regressions Caused by Unbalanced Covariates Adjustment: A Multivariate Meta-Analysis Study
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The Covariance Adjustment Approaches for Combining Incomparable Cox Regressions Caused by Unbalanced Covariates Adjustment: A Multivariate Meta-Analysis Study

机译:协方差调整方法结合不平衡协变量调整导致的不可比Cox回归:多元荟萃分析研究

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摘要

Background. Univariate meta-analysis (UM) procedure, as a technique that provides a single overall result, has become increasingly popular. Neglecting the existence of other concomitant covariates in the models leads to loss of treatment efficiency. Our aim was proposing four new approximation approaches for the covariance matrix of the coefficients, which is not readily available for the multivariate generalized least square (MGLS) method as a multivariate meta-analysis approach. Methods. We evaluated the efficiency of four new approaches including zero correlation (ZC), common correlation (CC), estimated correlation (EC), and multivariate multilevel correlation (MMC) on the estimation bias, mean square error (MSE), and 95% probability coverage of the confidence interval (CI) in the synthesis of Cox proportional hazard models coefficients in a simulation study. Result. Comparing the results of the simulation study on the MSE, bias, and CI of the estimated coefficients indicated that MMC approach was the most accurate procedure compared to EC, CC, and ZC procedures. The precision ranking of the four approaches according to all above settings was MMC ≥ EC ≥ CC ≥ ZC. Conclusion. This study highlights advantages of MGLS meta-analysis on UM approach. The results suggested the use of MMC procedure to overcome the lack of information for having a complete covariance matrix of the coefficients.
机译:背景。作为提供单个整体结果的技术,单变量荟萃分析(UM)程序已变得越来越流行。忽略模型中其他伴随协变量的存在会导致治疗效率下降。我们的目标是为系数的协方差矩阵提出四种新的近似方法,这些方法对于多元广义最小二乘(MGLS)方法作为多元荟萃分析方法不易获得。方法。我们评估了四种新方法的效率,包括零相关(ZC),公共相关(CC),估计相关(EC)和多元多级相关(MMC)的估计偏差,均方误差(MSE)和95%概率模拟研究中Cox比例风险模型系数综合中置信区间(CI)的覆盖范围。结果。比较关于估计系数的MSE,偏差和CI的仿真研究结果,表明与EC,CC和ZC方法相比,MMC方法是最准确的方法。根据上述所有设置,这四种方法的精度等级为MMC≥EC≥CC≥ZC。结论。这项研究突出了在UM方法上进行MGLS荟萃分析的优势。结果表明,使用MMC程序可以克服缺乏完整系数协方差矩阵的信息的问题。

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