Censoring Balancing Functions for Undetected Probably Significant Effects in Cox Regression

IF 1 Q1 MATHEMATICS
Ildephonse Nizeyimana, George Otieno Orwa, Michael Arthur Ofori, Samuel Musili Mwalili
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引用次数: 0

Abstract

Weighted Cox regression models were proposed as an alternative to the standard Cox proportional hazards models where consistent estimators can be obtained with more relative strength compared to unweighted cases. We proposed censoring balancing functions which can be built in a way that allows us to obtain the maximum possible significant treatment effects that may have gone undetected due to censoring. The harm caused by this is compensated and new weighted parameter estimates are found. These functions are constructed to be monotonic because even the hazard ratios are not exactly constant as in the ideal case, but are violated by monotonic deviations in time. For more than one covariate, even the interaction between covariates in addition to censoring can lead to the loss of significance for some covariates’ effects. Undetected significant effects of one covariate can be obtained, still keeping the significance and approximate size of the remaining one(s). This is performed by keeping the consistency of the parameter estimates. The results from both the simulated datasets and their application to real datasets supported the importance of the suggested censoring balancing functions in both one covariate and more than one covariate cases.
Cox回归中未检测到的可能显著效应的审查平衡函数
加权Cox回归模型被提出作为标准Cox比例风险模型的替代方案,与未加权的情况相比,可以获得相对强度更高的一致估计。我们提出了审查平衡功能,该功能可以通过一种方式构建,使我们能够获得最大可能的显著处理效果,这些效果可能由于审查而未被发现。对由此造成的危害进行了补偿,并找到了新的加权参数估计。这些函数被构造为单调的,因为即使是风险比也不像在理想情况下那样完全恒定,而是被时间上的单调偏差所违背。对于一个以上的协变量,即使是协变量之间的相互作用,除了审查之外,也会导致一些协变量的影响失去显著性。可以获得一个协变量未检测到的显著效应,但仍然保持其余协变量的显著性和近似大小。这是通过保持参数估计的一致性来实现的。模拟数据集的结果及其在实际数据集上的应用支持了所建议的审查平衡函数在单协变量和多协变量情况下的重要性。
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来源期刊
INTERNATIONAL JOURNAL OF MATHEMATICS AND MATHEMATICAL SCIENCES
INTERNATIONAL JOURNAL OF MATHEMATICS AND MATHEMATICAL SCIENCES Mathematics-Mathematics (miscellaneous)
CiteScore
2.30
自引率
8.30%
发文量
60
审稿时长
17 weeks
期刊介绍: The International Journal of Mathematics and Mathematical Sciences is a refereed math journal devoted to publication of original research articles, research notes, and review articles, with emphasis on contributions to unsolved problems and open questions in mathematics and mathematical sciences. All areas listed on the cover of Mathematical Reviews, such as pure and applied mathematics, mathematical physics, theoretical mechanics, probability and mathematical statistics, and theoretical biology, are included within the scope of the International Journal of Mathematics and Mathematical Sciences.
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