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使用基于树的方法进行具有时变回归效应的生存分析。

Survival analysis with time-varying regression effects using a tree-based approach.

作者信息

Xu Ronghui, Adak Sudeshna

机构信息

Department of Biostatistics, Harvard School of Public Health and Dana-Farber Cancer Institute, Boston, Massachusetts 02115, USA.

出版信息

Biometrics. 2002 Jun;58(2):305-15. doi: 10.1111/j.0006-341x.2002.00305.x.

Abstract

Nonproportional hazards often arise in survival analysis, as is evident in the data from the International Non-Hodgkin's Lymphoma Prognostic Factors Project. A tree-based method to handle such survival data is developed for the assessment and estimation of time-dependent regression effects under a Cox-type model. The tree method approximates the time-varying regression effects as piecewise constants and is designed to estimate change points in the regression parameters. A fast algorithm that relies on maximized score statistics is used in recursive segmentation of the time axis. Following the segmentation, a pruning algorithm with optimal properties similar to those of classification and regression trees (CART) is used to determine a sparse segmentation. Bootstrap resampling is used in correcting for overoptimism due to split point optimization. The piecewise constant model is often more suitable for clinical interpretation of the regression parameters than the more flexible spline models. The utility of the algorithm is shown on the lymphoma data, where we further develop the published International Risk Index into a time-varying risk index for non-Hodgkin's lymphoma.

摘要

非比例风险在生存分析中经常出现,国际非霍奇金淋巴瘤预后因素项目的数据就明显体现了这一点。针对此类生存数据,开发了一种基于树的方法,用于在Cox型模型下评估和估计随时间变化的回归效应。该树方法将随时间变化的回归效应近似为分段常数,并旨在估计回归参数中的变化点。在时间轴的递归分割中使用了一种基于最大化得分统计量的快速算法。分割之后,使用一种具有与分类回归树(CART)相似最优性质的剪枝算法来确定稀疏分割。自举重采样用于校正由于分割点优化导致的过度乐观。与更灵活的样条模型相比,分段常数模型通常更适合对回归参数进行临床解释。该算法的实用性在淋巴瘤数据上得到了展示,我们在其中进一步将已发表的国际风险指数发展为非霍奇金淋巴瘤的随时间变化的风险指数。

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