Predicting the individual risk of a clinical event using the complete patient history is still a major challenge for personalized medicine. Among the methods developed to compute individual dynamic predictions, the joint models have the assets of using all the available information while accounting for dropout. However, they are restricted to a very small number of longitudinal predictors. Our objective was to propose an innovative alternative solution to predict an event probability using a possibly large number of longitudinal predictors. We developed DynForest, an extension of random survival forests for competing risks that handles endogenous longitudinal predictors. At each node of the trees, the time-dependent predictors are translated into time-fixed features (using mixed models) to be used as candidates for splitting the subjects into two subgroups. The individual event probability is estimated in each tree by the Aalen-Johansen estimator of the leaf in which the subject is classified according to his/her history of predictors. The final individual prediction is given by the average of the tree-specific individual event probabilities. We carried out a simulation study to demonstrate the performances of DynForest both in a small dimensional context (in comparison with joint models) and in a large dimensional context (in comparison with a regression calibration method that ignores informative dropout). We also applied DynForest to (i) predict the individual probability of dementia in the elderly according to repeated measures of cognitive, functional, vascular and neuro-degeneration markers, and (ii) quantify the importance of each type of markers for the prediction of dementia. Implemented in the R package DynForest, our methodology provides a solution for the prediction of events from longitudinal endogenous predictors whatever their number.
翻译:使用完整的患者历史预测临床事件的个人风险仍然是个性化医学的一项重大挑战。在计算个人动态预测所开发的方法中,联合模型具有使用所有可用信息而计算辍学情况的资产。然而,它们仅限于极少数纵向预测器。我们的目标是提出一种创新的替代解决方案,利用可能大量的纵向预测器预测事件概率。我们开发了DynForest,随机生存森林的延伸,用于处理内向纵向预测器的相互竞争的风险。在树的每个节点,依赖时间的预测器被转化成时间固定的特性(使用混合模型),用作将主题分为两个分组的候选方。单项事件概率由Aalen-Johansen的叶子估计器根据他/她的预测器历史进行分类。我们开发了DynForest,最后个人预测由具体树本性个人事件概率的平均值提供。我们进行了模拟研究,以显示DynForest的直径直值特性特性(使用混合模型)作为时间固定的特性特性特性特性特征,同时用一种小的直径直径直径的直径比法(我们采用的直径直径直径直到直径直径直径直径直径直的每个模型),以及直径直判的直径直径直判的比,从每个直判的直判的每个直判的直判的直判法则提供了一种小直判法度的直径直判法系的比。