计算机科学
审查(临床试验)
范畴变量
预测建模
自举(财务)
回归
比例危险模型
回归分析
多元微积分
统计
数据挖掘
机器学习
计量经济学
人工智能
数学
控制工程
工程类
作者
Frank E. Harrell,Kerry L. Lee,Daniel B. Mark
标识
DOI:10.1002/(sici)1097-0258(19960229)15:4<361::aid-sim168>3.0.co;2-4
摘要
Multivariable regression models are powerful tools that are used frequently in studies of clinical outcomes. These models can use a mixture of categorical and continuous variables and can handle partially observed (censored) responses. However, uncritical application of modelling techniques can result in models that poorly fit the dataset at hand, or, even more likely, inaccurately predict outcomes on new subjects. One must know how to measure qualities of a model's fit in order to avoid poorly fitted or overfitted models. Measurement of predictive accuracy can be difficult for survival time data in the presence of censoring. We discuss an easily interpretable index of predictive discrimination as well as methods for assessing calibration of predicted survival probabilities. Both types of predictive accuracy should be unbiasedly validated using bootstrapping or cross-validation, before using predictions in a new data series. We discuss some of the hazards of poorly fitted and overfitted regression models and present one modelling strategy that avoids many of the problems discussed. The methods described are applicable to all regression models, but are particularly needed for binary, ordinal, and time-to-event outcomes. Methods are illustrated with a survival analysis in prostate cancer using Cox regression.
科研通智能强力驱动
Strongly Powered by AbleSci AI