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Convolutional neural networks with image representation of amino acid sequences for protein function prediction

Author Affiliations
United International University, Tulane University, Japan Society for the Promotion of Science, Kyushu Institute of Technology
Published InComputational Biology and Chemistry
Year2021
Citations17

Abstract

Proteins are one of the most important molecules that govern the cellular processes in most of the living organisms. Various functions of the proteins are of paramount importance to understand the basics of life. Several supervised learning approaches are applied in this field to predict the functionality of proteins. In this paper, we propose a convolutional neural network based approach ProtConv to predict the functionality of proteins by converting the amino-acid sequences to a two dimensional image. We have used a protein embedding technique using transfer learning to generate the feature vector. Feature vector is then converted into a square sized single channel image to be fed into a convolutional network. The neural network architecture used here is a combination…
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