Ciampi A, Negassa A, Lou Z
McGill University/Montreal Childrens Hospital Research Institute, Canada.
J Clin Epidemiol. 1995 May;48(5):675-89. doi: 10.1016/0895-4356(94)00164-l.
Prediction trees for the analysis of survival data are discussed. It is shown that trees are useful not only in summarizing the prognostic information contained in a set of covariates (prognostic classification), but also in detecting and displaying treatment-covariates interactions (subgroup analysis). The RECPAM approach to tree-growing is outlined; prognostic classification and subgroup analysis are then formulated within the RECPAM framework and on the basis of the Cox proportional hazards models with a priori strata. Two examples of data analysis are presented. The issue of cross-validation is discussed in relation to computationally cheaper model selection criteria.
讨论了用于生存数据分析的预测树。结果表明,树不仅有助于总结一组协变量中包含的预后信息(预后分类),还能检测和显示治疗与协变量的相互作用(亚组分析)。概述了用于构建树的RECPAM方法;然后在RECPAM框架内,并基于具有先验分层的Cox比例风险模型,制定预后分类和亚组分析。给出了两个数据分析示例。结合计算成本更低的模型选择标准讨论了交叉验证问题。