Improving feature selection performance for classification of gene expression data using Harris Hawks optimizer with variable neighborhood learning.

Journal: Briefings in bioinformatics
Published Date:

Abstract

Gene expression profiling has played a significant role in the identification and classification of tumor molecules. In gene expression data, only a few feature genes are closely related to tumors. It is a challenging task to select highly discriminative feature genes, and existing methods fail to deal with this problem efficiently. This article proposes a novel metaheuristic approach for gene feature extraction, called variable neighborhood learning Harris Hawks optimizer (VNLHHO). First, the F-score is used for a primary selection of the genes in gene expression data to narrow down the selection range of the feature genes. Subsequently, a variable neighborhood learning strategy is constructed to balance the global exploration and local exploitation of the Harris Hawks optimization. Finally, mutation operations are employed to increase the diversity of the population, so as to prevent the algorithm from falling into a local optimum. In addition, a novel activation function is used to convert the continuous solution of the VNLHHO into binary values, and a naive Bayesian classifier is utilized as a fitness function to select feature genes that can help classify biological tissues of binary and multi-class cancers. An experiment is conducted on gene expression profile data of eight types of tumors. The results show that the classification accuracy of the VNLHHO is greater than 96.128% for tumors in the colon, nervous system and lungs and 100% for the rest. We compare seven other algorithms and demonstrate the superiority of the VNLHHO in terms of the classification accuracy, fitness value and AUC value in feature selection for gene expression data.

Authors

  • Chiwen Qu
    College of Mathematics and Statistics, Hunan Normal University, China.
  • Lupeng Zhang
    Department of Pathology and Pathophysiology, Jishou University School of Medicine, Jishou University, China.
  • Jinlong Li
    Information Technology Research Center, Beijing Academy of Agriculture and Forestry Sciences, Beijing, China.
  • Fang Deng
    School of Automation, Beijing Institute of Technology, Beijing, 100081, China. Electronic address: dengfang@bit.edu.cn.
  • Yifan Tang
    Department of Pathology and Pathophysiology, Hunan Normal University School of Medicine, Hunan Normal University, China.
  • Xiaomin Zeng
    Guangdong Eye Institute, Department of Ophthalmology, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, the Second School of Clinical Medicine, Southern Medical University, Guangzhou, China.
  • Xiaoning Peng
    Department of Pathology and Pathophysiology, Hunan Normal University School of Medicine, Hunan Normal University, China.