Computational and Structural Biotechnology Journal (Jan 2022)

Research progress of reduced amino acid alphabets in protein analysis and prediction

  • Yuchao Liang,
  • Siqi Yang,
  • Lei Zheng,
  • Hao Wang,
  • Jian Zhou,
  • Shenghui Huang,
  • Lei Yang,
  • Yongchun Zuo

Journal volume & issue
Vol. 20
pp. 3503 – 3510

Abstract

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Proteins are the executors of cellular physiological activities, and accurate structural and function elucidation are crucial for the refined mapping of proteins. As a feature engineering method, the reduction of amino acid composition is not only an important method for protein structure and function analysis, but also opens a broad horizon for the complex field of machine learning. Representing sequences with fewer amino acid types greatly reduces the complexity and noise of traditional feature engineering in dimension, and provides more interpretable predictive models for machine learning to capture key features. In this paper, we systematically reviewed the strategy and method studies of the reduced amino acid (RAA) alphabets, and summarized its main research in protein sequence alignment, functional classification, and prediction of structural properties, respectively. In the end, we gave a comprehensive analysis of 672 RAA alphabets from 74 reduction methods.

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