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A random forest approach for competing risks based on pseudo-values

机译:基于伪值的随机森林竞争风险方法

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摘要

Random forest is a supervised learning method that combines many classification or regression trees for prediction. Here we describe an extension of the random forest method for building event risk prediction models in survival analysis with competing risks. In case of right-censored data, the event status at the prediction horizon is unknown for some subjects. We propose to replace the censored event status by a jackknife pseudo-value, and then to apply an implementation of random forests for uncensored data. Because the pseudo-responses take on values on a continuous scale, the node variance is chosen as split criterion for growing regression trees. In a simulation study, the pseudo split criterion is compared with the Gini split criterion when the latter is applied to the uncensored event status. To investigate the resulting pseudo random forest method for building risk prediction models, we analyze it in a simulation study of predictive performance where we compare it to Cox regression and random survival forest. The method is further illustrated in two real data sets.
机译:随机森林是一种监督学习方法,它结合了许多分类树或回归树以进行预测。在这里,我们描述了随机森林方法的扩展,用于在具有竞争风险的生存分析中构建事件风险预测模型。对于右删失的数据,某些对象在预测范围内的事件状态未知。我们建议用折刀伪值替换受审查的事件状态,然后对未经审查的数据应用随机森林的实现。因为伪响应采用连续规模的值,所以选择节点方差作为用于增长回归树的拆分标准。在模拟研究中,将伪分裂准则与基尼分裂准则(当吉尼分裂准则应用于未经审查的事件状态时)进行比较。为了研究生成的用于构建风险预测模型的伪随机森林方法,我们在预测性能的模拟研究中对其进行了分析,将其与Cox回归和随机生存森林进行了比较。在两个真实数据集中进一步说明了该方法。

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