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Statistical methods for elimination of guarantee-time bias in cohort studies: a simulation study

机译:消除队列研究中保证时间偏差的统计方法:模拟研究

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Background Aspirin has been considered to be beneficial in preventing cardiovascular diseases and cancer. Several pharmaco-epidemiology cohort studies have shown protective effects of aspirin on diseases using various statistical methods, with the Cox regression model being the most commonly used approach. However, there are some inherent limitations to the conventional Cox regression approach such as guarantee-time bias, resulting in an overestimation of the drug effect. To overcome such limitations, alternative approaches, such as the time-dependent Cox model and landmark methods have been proposed. This study aimed to compare the performance of three methods: Cox regression, time-dependent Cox model and landmark method with different landmark times in order to address the problem of guarantee-time bias. Methods Through statistical modeling and simulation studies, the performance of the above three methods were assessed in terms of type I error, bias, power, and mean squared error (MSE). In addition, the three statistical approaches were applied to a real data example from the Korean National Health Insurance Database. Effect of cumulative rosiglitazone dose on the risk of hepatocellular carcinoma was used as an example for illustration. Results In the simulated data, time-dependent Cox regression outperformed the landmark method in terms of bias and mean squared error but the type I error rates were similar. The results from real-data example showed the same patterns as the simulation findings. Conclusions While both time-dependent Cox regression model and landmark analysis are useful in resolving the problem of guarantee-time bias, time-dependent Cox regression is the most appropriate method for analyzing cumulative dose effects in pharmaco-epidemiological studies.
机译:背景技术阿司匹林被认为对预防心血管疾病和癌症有益。多项药物流行病学队列研究显示,阿司匹林使用多种统计方法对疾病具有保护作用,其中Cox回归模型是最常用的方法。但是,传统的Cox回归方法存在一些固有的局限性,例如保证时间偏差,导致对药物作用的高估。为了克服这些限制,已经提出了替代方法,例如与时间有关的Cox模型和界标方法。本研究旨在比较三种方法的性能:Cox回归,时间相关的Cox模型和具有不同界标时间的界标方法,以解决保证时间偏差问题。方法通过统计建模和仿真研究,根据I型误差,偏差,功效和均方误差(MSE)评估了上述三种方法的性能。此外,这三种统计方法已应用于韩国国民健康保险数据库中的真实数据示例。以罗格列酮累积剂量对肝细胞癌风险的影响为例进行说明。结果在模拟数据中,与时间有关的Cox回归在偏倚和均方误差方面优于界标方法,但I型错误率相似。实际数据示例的结果显示出与仿真结果相同的模式。结论虽然时变Cox回归模型和界标分析都可用于解决保证时间偏差问题,但时变Cox回归是分析药物流行病学研究中累积剂量效应的最合适方法。

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