逻辑回归
列线图
章节(排版)
统计
多元统计
回归分析
数据挖掘
计算机科学
预测建模
比例危险模型
索引(排版)
回归
系列(地层学)
数学
医学
地质学
古生物学
万维网
内科学
操作系统
作者
Zhirui Zhou,Wei Wang,Yan Li,Kaizhou Jin,Xuanyi Wang,Ziwei Wang,Yi-Shan Chen,Shao-Jia Wang,Jing Hu,Huina Zhang,Po Huang,Guo-Zhen Zhao,Xing‐Xing Chen,Bo Li,Tiansong Zhang
出处
期刊:Annals of Translational Medicine
[AME Publishing Company]
日期:2019-12-01
卷期号:7 (23): 796-796
被引量:206
标识
DOI:10.21037/atm.2019.08.63
摘要
Abstract: This article is the series of methodology of clinical prediction model construction (total 16 sections of this methodology series). The first section mainly introduces the concept, current application status, construction methods and processes, classification of clinical prediction models, and the necessary conditions for conducting such researches and the problems currently faced. The second episode of these series mainly concentrates on the screening method in multivariate regression analysis. The third section mainly introduces the construction method of prediction models based on Logistic regression and Nomogram drawing. The fourth episode mainly concentrates on Cox proportional hazards regression model and Nomogram drawing. The fifth Section of the series mainly introduces the calculation method of C-Statistics in the logistic regression model. The sixth section mainly introduces two common calculation methods for C-Index in Cox regression based on R. The seventh section focuses on the principle and calculation methods of Net Reclassification Index (NRI) using R. The eighth section focuses on the principle and calculation methods of IDI (Integrated Discrimination Index) using R. The ninth section continues to explore the evaluation method of clinical utility after predictive model construction: Decision Curve Analysis. The tenth section is a supplement to the previous section and mainly introduces the Decision Curve Analysis of survival outcome data. The eleventh section mainly discusses the external validation method of Logistic regression model. The twelfth mainly discusses the in-depth evaluation of Cox regression model based on R, including calculating the concordance index of discrimination (C-index) in the validation data set and drawing the calibration curve. The thirteenth section mainly introduces how to deal with the survival data outcome using competitive risk model with R. The fourteenth section mainly introduces how to draw the nomogram of the competitive risk model with R. The fifteenth section of the series mainly discusses the identification of outliers and the interpolation of missing values. The sixteenth section of the series mainly introduced the advanced variable selection methods in linear model, such as Ridge regression and LASSO regression.
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