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Matching methods to create paired survival data based on an exposure occurring over time: a simulation study with application to breast cancer

机译:匹配方法可根据一段时间内发生的暴露创建配对的生存数据:模拟研究及其在乳腺癌中的应用

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Background Paired survival data are often used in clinical research to assess the prognostic effect of an exposure. Matching generates correlated censored data expecting that the paired subjects just differ from the exposure. Creating pairs when the exposure is an event occurring over time could be tricky. We applied a commonly used method, Method 1, which creates pairs a posteriori and propose an alternative method, Method 2, which creates pairs in “real-time”. We used two semi-parametric models devoted to correlated censored data to estimate the average effect of the exposure : the Holt and Prentice (HP), and the Lee Wei and Amato (LWA) models. Contrary to the HP, the LWA allowed adjustment for the matching covariates (LWAa) and for an interaction (LWAi) between exposure and covariates (assimilated to prognostic profiles). The aim of our study was to compare the performances of each model according to the two matching methods. Methods Extensive simulations were conducted. We simulated cohort data sets on which we applied the two matching methods, the HP and the LWA. We used our conclusions to assess the prognostic effect of subsequent pregnancy after treatment for breast cancer in a female cohort treated and followed up in eight french hospitals. Results In terms of bias and RMSE, Method 2 performed better than Method 1 in designing the pairs, and LWAa was the best model for all the situations except when there was an interaction between exposure and covariates, for which LWAi was more appropriate. On our real data set, we found opposite effects of pregnancy according to the six prognostic profiles, but none were statistically significant. We probably lacked statistical power or reached the limits of our approach. The pairs’ censoring options chosen for combination Method 2 - LWA had to be compared with others. Conclusions Correlated censored data designing by Method 2 seemed to be the most pertinent method to create pairs, when the criterion, which characterized the pair, was an exposure occurring over time. In such a setting, the LWA was the most appropriate model.
机译:背景技术成对的生存数据通常用于临床研究中以评估暴露的预后效果。匹配会生成相关的审查数据,期望配对的对象与曝光量有所不同。当曝光是随着时间推移发生的事件时,创建对可能会很棘手。我们应用了一种常用方法Method 1,该方法创建后验对,并提出了另一种方法Method 2,该方法以“实时”创建对。我们使用了两个专用于相关审查数据的半参数模型来估计暴露的平均影响:Holt和Prentice(HP)模型以及Lee Wei和Amato(LWA)模型。与HP相反,LWA允许调整匹配的协变量(LWA a )以及暴露和协变量之间的相互作用(LWA i )(与预后相关)。我们研究的目的是根据两种匹配方法比较每种模型的性能。方法进行了广泛的模拟。我们模拟了队列数据集,并在该数据集上应用了两种匹配方法,即HP和LWA。我们使用我们的结论评估了在八家法国医院接受治疗和随访的女性队列中乳腺癌治疗后随后妊娠的预后效果。结果在偏倚和均方根误差方面,方法2在设计对时表现优于方法1,并且LWA a 是所有情况下的最佳模型,但当暴露和协变量之间存在交互作用时,哪种LWA i 更合适。在我们的真实数据集上,我们根据六种预后特征发现了相反的妊娠效应,但均无统计学意义。我们可能缺乏统计能力或达到了方法的极限。方法2-LWA组合选择的两对检查选项必须与其他方法进行比较。结论当表征对的标准是随着时间的推移而发生的暴露时,用方法2进行相关的检查数据设计似乎是创建对的最相关方法。在这种情况下,LWA是最合适的模型。

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