4.7 Article

A dynamic recursive feature elimination framework (dRFE) to further refine a set of OMIC biomarkers

Journal

BIOINFORMATICS
Volume 37, Issue 15, Pages 2183-2189

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btab055

Keywords

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Funding

  1. Jilin Provincial Key Laboratory of Big Data Intelligent Computing [20180622002JC]
  2. Education Department of Jilin Province [JJKH20180145KJ]
  3. Bioknow MedAI Institute [BMCPP-2018-001]
  4. High Performance Computing Center of Jilin University
  5. Fundamental Research Funds for the Central Universities, JLU

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This study introduced a new dynamic Recursive Feature Elimination (dRFE) framework, which outperformed existing feature selection algorithms on multiple biological datasets and showed excellent performance in methylome data.
Motivation: A feature selection algorithm may select the subset of features with the best associations with the class labels. The recursive feature elimination (RFE) is a heuristic feature screening framework and has been widely used to select the biological OMIC biomarkers. This study proposed a dynamic recursive feature elimination (dRFE) framework with more flexible feature elimination operations. The proposed dRFE was comprehensively compared with 11 existing feature selection algorithms and five classifiers on the eight difficult transcriptome datasets from a previous study, the ten newly collected transcriptome datasets and the five methylome datasets. Results: The experimental data suggested that the regular RFE framework did not perform well, and dRFE outperformed the existing feature selection algorithms in most cases. The dRFE-detected features achieved Acc= 1.0000 for the two methylome datasets GSE53045 and GSE66695. The best prediction accuracies of the dRFE-detected features were 0.9259, 0.9424 and 0.8601 for the other three methylome datasets GSE74845, GSE103186 and GSE80970, respectively. Four transcriptome datasets received Acc= 1.0000 using the dRFE-detected features, and the prediction accuracies for the other six newly collected transcriptome datasets were between 0.6301 and 0.9917.

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