Mathematical and Machine Learning Approaches for Classification of Protein Secondary Structure Elements from Coordinates.

Journal: Biomolecules
Published Date:

Abstract

Determining Secondary Structure Elements (SSEs) for any protein is crucial as an intermediate step for experimental tertiary structure determination. SSEs are identified using popular tools such as DSSP and STRIDE. These tools use atomic information to locate hydrogen bonds to identify SSEs. When some spatial atomic details are missing, locating SSEs becomes a hinder. To address the problem, when some atomic information is missing, three approaches for classifying SSE types using Cα atoms in protein chains were developed: (1) a mathematical approach, (2) a deep learning approach, and (3) an ensemble of five machine learning models. The proposed methods were compared against each other and with a state-of-the-art approach, PCASSO.

Authors

  • Ali Sekmen
    Department of Computer Science, Tennessee State University, Nashville, TN 37209, USA.
  • Kamal Al Nasr
    Department of Computer Science, Tennessee State University, Nashville, TN 37209, USA.
  • Bahadir Bilgin
    Department of Computer Science, Tennessee State University, Nashville, TN 37209, USA.
  • Ahmet Bugra Koku
    Department of Mechanical Engineering, Middle East Technical University, Ankara 06800, Türkiye.
  • Christopher Jones
    National Heart Lung and Blood Institute Division of Intramural Research, Laboratory of Nucleic Acids, UNITED STATES OF AMERICA.