Department of Statistical Sciences, University of Padua, Via Cesare Battisti 241, 35121 Padua, Italy.
Stat Med. 2013 Aug 15;32(18):3089-101. doi: 10.1002/sim.5773. Epub 2013 Mar 13.
Prediction of cumulative incidences is often a primary goal in clinical studies with several endpoints. We compare predictions among competing risks models with time-dependent covariates. For a series of landmark time points, we study the predictive accuracy of a multi-state regression model, where the time-dependent covariate represents an intermediate state, and two alternative landmark approaches. At each landmark time point, the prediction performance is measured as the t-year expected Brier score where pseudovalues are constructed in order to deal with right-censored event times. We apply the methods to data from a bone marrow transplant study where graft versus host disease is considered a time-dependent covariate for predicting relapse and death in remission.
预测累积发生率通常是具有多个终点的临床研究中的主要目标。我们比较了具有时变协变量的竞争风险模型的预测结果。对于一系列标志性时间点,我们研究了多状态回归模型的预测准确性,其中时变协变量代表一个中间状态,以及两种替代的标志性方法。在每个标志性时间点,预测性能作为 t 年预期 Brier 得分来衡量,其中构建伪值以处理右删失事件时间。我们将这些方法应用于骨髓移植研究的数据中,其中移植物抗宿主病被视为预测缓解期复发和死亡的时变协变量。