Mathematical Biosciences and Engineering (Mar 2022)

GSEnet: feature extraction of gene expression data and its application to Leukemia classification

  • Kun Yu,
  • Mingxu Huang,
  • Shuaizheng Chen,
  • Chaolu Feng ,
  • Wei Li

DOI
https://doi.org/10.3934/mbe.2022228
Journal volume & issue
Vol. 19, no. 5
pp. 4881 – 4891

Abstract

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Gene expression data is highly dimensional. As disease-related genes account for only a tiny fraction, a deep learning model, namely GSEnet, is proposed to extract instructive features from gene expression data. This model consists of three modules, namely the pre-conv module, the SE-Resnet module, and the SE-conv module. Effectiveness of the proposed model on the performance improvement of 9 representative classifiers is evaluated. Seven evaluation metrics are used for this assessment on the GSE99095 dataset. Robustness and advantages of the proposed model compared with representative feature selection methods are also discussed. Results show superiority of the proposed model on the improvement of the classification precision and accuracy.

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