Iterative Variable Selection For High-Dimensional Data: Prediction Of Pathological Response In Triple-Negative Breast Cancer

MATHEMATICS(2021)

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摘要
Over the last decade, regularized regression methods have offered alternatives for performing multi-marker analysis and feature selection in a whole genome context. The process of defining a list of genes that will characterize an expression profile remains unclear. It currently relies upon advanced statistics and can use an agnostic point of view or include some a priori knowledge, but overfitting remains a problem. This paper introduces a methodology to deal with the variable selection and model estimation problems in the high-dimensional set-up, which can be particularly useful in the whole genome context. Results are validated using simulated data and a real dataset from a triple-negative breast cancer study.
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关键词
variable selection, high dimension, regularization, classification, sparse-group lasso
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