Intrator O, Kooperberg C
Department of Statistics, Hebrew University, Jerusalem, Israel.
Stat Methods Med Res. 1995 Sep;4(3):237-61. doi: 10.1177/096228029500400305.
During the past few years several nonparametric alternatives to the Cox proportional hazards model have appeared in the literature. These methods extend techniques that are well known from regression analysis to the analysis of censored survival data. In this paper we discuss methods based on (partition) trees and (polynomial) splines, analyse two datasets using both Survival Trees and HARE, and compare the strengths and weaknesses of the two methods. One of the strengths of HARE is that its model fitting procedure has an implicit check for proportionality of the underlying hazards model. It also provides an explicit model for the conditional hazards function, which makes it very convenient to obtain graphical summaries. On the other hand, the tree-based methods automatically partition a dataset into groups of cases that are similar in survival history. Results obtained by survival trees and HARE are often complementary. Trees and splines in survival analysis should provide the data analyst with two useful tools when analysing survival data.
在过去几年中,文献中出现了几种Cox比例风险模型的非参数替代方法。这些方法将回归分析中熟知的技术扩展到截尾生存数据的分析。在本文中,我们讨论基于(划分)树和(多项式)样条的方法,使用生存树和HARE分析两个数据集,并比较这两种方法的优缺点。HARE的优点之一是其模型拟合过程对潜在风险模型的比例性有隐式检验。它还为条件风险函数提供了一个显式模型,这使得获取图形汇总非常方便。另一方面,基于树的方法会自动将数据集划分为生存历史相似的病例组。生存树和HARE得到的结果往往是互补的。在分析生存数据时,生存分析中的树和样条应该为数据分析师提供两个有用的工具。