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树状结构生存分析

Tree-structured survival analysis.

作者信息

Gordon L, Olshen R A

出版信息

Cancer Treat Rep. 1985 Oct;69(10):1065-9.

PMID:4042086
Abstract

In this note, tree-structured recursive partitioning schemes for classification, probability class estimation, and regression are adapted to cover censored survival analysis. The only assumptions required are those which guarantee identifiability of conditional distributions of lifetime given covariates. Thus, the techniques are applicable to more general situations than are those of the famous semi-parametric model of Cox.

摘要

在本笔记中,用于分类、概率类别估计和回归的树状递归划分方案被改编用于涵盖删失生存分析。唯一需要的假设是那些保证给定协变量时寿命条件分布可识别性的假设。因此,与著名的Cox半参数模型相比,这些技术适用于更一般的情况。

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