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A novel approach to determine two optimal cut-points of a continuous predictor with a U-shaped relationship to hazard ratio in survival data: simulation and application

机译:一种确定连续预测变量的两个最佳割点的新颖方法,该变量与生存数据中的危险比呈U形关系:模拟和应用

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In clinical and epidemiological researches, continuous predictors are often discretized into categorical variables for classification of patients. When the relationship between a continuous predictor and log relative hazards is U-shaped in survival data, there is a lack of a satisfying solution to find optimal cut-points to discretize the continuous predictor. In this study, we propose a novel approach named optimal equal-HR method to discretize a continuous variable that has a U-shaped relationship with log relative hazards in survival data. The main idea of the optimal equal-HR method is to find two optimal cut-points that have equal log relative hazard values and result in Cox models with minimum AIC value. An R package ‘CutpointsOEHR’ has been developed for easy implementation of the optimal equal-HR method. A Monte Carlo simulation study was carried out to investigate the performance of the optimal equal-HR method. In the simulation process, different censoring proportions, baseline hazard functions and asymmetry levels of U-shaped relationships were chosen. To compare the optimal equal-HR method with other common approaches, the predictive performance of Cox models with variables discretized by different cut-points was assessed. Simulation results showed that in asymmetric U-shape scenarios the optimal equal-HR method had better performance than the median split method, the upper and lower quantiles method, and the minimum p-value method regarding discrimination ability and overall performance of Cox models. The optimal equal-HR method was applied to a real dataset of small cell lung cancer. The real data example demonstrated that the optimal equal-HR method could provide clinical meaningful cut-points and had good predictive performance in Cox models. In general, the optimal equal-HR method is recommended to discretize a continuous predictor with right-censored outcomes if the predictor has an asymmetric U-shaped relationship with log relative hazards based on Cox regression models.
机译:在临床和流行病学研究中,连续预测变量通常离散化为用于对患者分类的分类变量。当连续预测变量与对数相对危险之间的关系在生存数据中呈U形时,缺乏令人满意的解决方案来找到最佳切点以离散化连续预测变量。在这项研究中,我们提出了一种称为最优等HR方法的新方法,以离散化与生存数据中的对数相对危险性具有U形关系的连续变量。最佳等HR方法的主要思想是找到两个具有相同对数相对危险值的最佳切点,并在AIC值最小的情况下得出Cox模型。已开发出R包“ CutpointsOEHR”,以轻松实施最佳等HR方法。进行了蒙特卡洛模拟研究,以研究最佳等HR方法的性能。在模拟过程中,选择了不同的检查比例,基线危险函数和U型关系的不对称水平。为了将最佳等HR方法与其他常用方法进行比较,评估了具有不同切点离散变量的Cox模型的预测性能。仿真结果表明,在非对称U型场景中,关于Cox模型的辨别能力和整体性能,最优的equal-HR方法的性能优于中值拆分方法,上下分位数方法和最小p值方法。最佳等HR方法被应用于小细胞肺癌的真实数据集。实际数据示例表明,最佳等HR方法可以提供临床上有意义的切入点,并且在Cox模型中具有良好的预测性能。通常,如果基于Cox回归模型的预测变量与对数相对危险具有不对称的U形关系,则建议使用最佳等HR方法来离散化具有连续右结果的连续预测变量。

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