Accurately identifying positive and negative regulation of apoptosis using fusion features and machine learning methods.

Journal: Computational biology and chemistry
Published Date:

Abstract

Apoptotic proteins play a crucial role in the apoptosis process, ensuring a balance between cell proliferation and death. Thus, further elucidating the regulatory mechanisms of apoptosis will enhance our understanding of their functions. However, the development of computational methods to accurately identify positive and negative regulation of apoptosis remains a significant challenge. This work proposes a machine learning model based on multi-feature fusion to effectively identify the roles of positive and negative regulation of apoptosis. Initially, we constructed a reliable benchmark dataset containing 200 positive regulation of apoptosis and 241 negative regulation of apoptosis proteins. Subsequently, we developed a classifier that combines the support vector machine (SVM) with pseudo composition of k-spaced amino acid pairs (PseCKSAAP), composition transition distribution (CTD), dipeptide deviation from expected mean (DDE), and PSSM-composition to identify these proteins. Analysis of variance (ANOVA) was employed to select optimized features that could yield the maximum prediction performance. Evaluating the proposed model on independent data revealed and achieved an accuracy of 0.781 with an AUROC of 0.837, demonstrating our model's potent capabilities.

Authors

  • Cheng-Yan Wu
    Laboratory of Theoretical Biophysics, School of Physical Science and Technology, Inner Mongolia University, Hohhot 010021, China.
  • Zhi-Xue Xu
    Key Laboratory of Magnetism and Magnetic Materials at Universities of Inner Mongolia Autonomous Region, Baotou Teacher's College, Baotou 014010, China. Electronic address: 462121969@qq.com.
  • Nan Li
    School of Basic Medical Sciences, Jiamusi University No. 258, Xuefu Street, Xiangyang District, Jiamusi 154007, Heilongjiang, China.
  • Dan-Yang Qi
    Key Laboratory of Magnetism and Magnetic Materials at Universities of Inner Mongolia Autonomous Region, Baotou Teacher's College, Baotou 014010, China. Electronic address: 1826393373@qq.com.
  • Zhi-Hong Hao
    Key Laboratory of Magnetism and Magnetic Materials at Universities of Inner Mongolia Autonomous Region, Baotou Teacher's College, Baotou 014010, China. Electronic address: 1832051573@qq.com.
  • Hong-Ye Wu
    Key Laboratory of Magnetism and Magnetic Materials at Universities of Inner Mongolia Autonomous Region, Baotou Teacher's College, Baotou 014010, China. Electronic address: wuhongyewhy@qq.com.
  • Ru Gao
    The People's Hospital of Ya 'an, Ya'an 625000, Sichuan, China; The People's Hospital of Wenjiang Chengdu, Chengdu 611130, Sichuan, China.
  • Yan-Ting Jin
    School of Life Science and Technology, University of Electronic Science and Technology of China, Chengdu 611731, China. Electronic address: jinyanting@uestc.edu.cn.