过度拟合
协变量
统计
比例危险模型
回归分析
回归
特征选择
样本量测定
回归诊断
线性回归
分段回归
主成分回归
计算机科学
数学
计量经济学
人工智能
多项式回归
人工神经网络
作者
Frank E. Harrell,Kerry L. Lee,Robert M. Califf,David B. Pryor,Robert A. Rosati
标识
DOI:10.1002/sim.4780030207
摘要
Abstract Regression models such as the Cox proportional hazards model have had increasing use in modelling and estimating the prognosis of patients with a variety of diseases. Many applications involve a large number of variables to be modelled using a relatively small patient sample. Problems of overfitting and of identifying important covariates are exacerbated in analysing prognosis because the accuracy of a model is more a function of the number of events than of the sample size. We used a general index of predictive discrimination to measure the ability of a model developed on training samples of varying sizes to predict survival in an independent test sample of patients suspected of having coronary artery disease. We compared three methods of model fitting: (1) standard ‘step‐up’ variable selection, (2) incomplete principal components regression, and (3) Cox model regression after developing clinical indices from variable clusters. We found regression using principal components to offer superior predictions in the test sample, whereas regression using indices offers easily interpretable models nearly as good as the principal components models. Standard variable selection has a number of deficiencies.
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