Fridge: Focused fine-tuning of ridge regression for personalized predictions

被引:16
|
作者
Hellton, Kristoffer H. [1 ]
Hjort, Nils Lid [1 ]
机构
[1] Univ Oslo, Dept Math, POB 1053 Blindern, N-0316 Oslo, Norway
关键词
focused information criterion; genomics; personalized medicine; ridge regression; tuning parameters; CROSS-VALIDATION; PARAMETER; CHOICE;
D O I
10.1002/sim.7576
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Statistical prediction methods typically require some form of fine-tuning of tuning parameter(s), with K-fold cross-validation as the canonical procedure. For ridge regression, there exist numerous procedures, but common for all, including cross-validation, is that one single parameter is chosen for all future predictions. We propose instead to calculate a unique tuning parameter for each individual for which we wish to predict an outcome. This generates an individualized prediction by focusing on the vector of covariates of a specific individual. The focused ridgefridgeprocedure is introduced with a 2-part contribution: First we define an oracle tuning parameter minimizing the mean squared prediction error of a specific covariate vector, and then we propose to estimate this tuning parameter by using plug-in estimates of the regression coefficients and error variance parameter. The procedure is extended to logistic ridge regression by using parametric bootstrap. For high-dimensional data, we propose to use ridge regression with cross-validation as the plug-in estimate, and simulations show that fridge gives smaller average prediction error than ridge with cross-validation for both simulated and real data. We illustrate the new concept for both linear and logistic regression models in 2 applications of personalized medicine: predicting individual risk and treatment response based on gene expression data. The method is implemented in the R package fridge.
引用
收藏
页码:1290 / 1303
页数:14
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