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Evaluating Random Forests for Survival Analysis using Prediction Error Curves

机译:使用预测误差曲线评估随机林进行生存分析

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摘要

Prediction error curves are increasingly used to assess and compare predictions in survival analysis. This article surveys the R package >pec which provides a set of functions for efficient computation of prediction error curves. The software implements inverse probability of censoring weights to deal with right censored data and several variants of cross-validation to deal with the apparent error problem. In principle, all kinds of prediction models can be assessed, and the package readily supports most traditional regression modeling strategies, like Cox regression or additive hazard regression, as well as state of the art machine learning methods such as random forests, a nonparametric method which provides promising alternatives to traditional strategies in low and high-dimensional settings. We show how the functionality of >pec can be extended to yet unsupported prediction models. As an example, we implement support for random forest prediction models based on the R-packages >randomSurvivalForest and >party. Using data of the Copenhagen Stroke Study we use >pec to compare random forests to a Cox regression model derived from stepwise variable selection. Reproducible results on the user level are given for publicly available data from the German breast cancer study group.
机译:预测误差曲线越来越多地用于评估和比较生存分析中的预测。本文对R软件包> pec 进行了调查,该软件包提供了一组用于有效计算预测误差曲线的函数。该软件实现了权重检查的逆概率来处理正确的检查数据,并实现了交叉验证的多种变体来处理明显的错误问题。原则上,可以评估各种预测模型,并且该软件包轻松支持大多数传统的回归建模策略,例如Cox回归或加法危害回归,以及最先进的机器学习方法,例如随机森林(一种非参数方法),在低维度和高维度环境中为传统策略提供了有希望的替代方案。我们展示了如何将> pec 的功能扩展到尚不支持的预测模型。例如,我们基于R包> randomSurvivalForest 和> party 实现对随机森林预测模型的支持。使用哥本哈根中风研究的数据,我们使用> pec 将随机森林与由逐步变量选择得出的Cox回归模型进行比较。从德国乳腺癌研究小组获得的公开数据提供了用户级别的可重现结果。

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