Protein secondary structure prediction using neural networks and deep learning: A review

Volume: 81, Pages: 1 - 8
Published: Aug 1, 2019
Abstract
Literature contains over fifty years of accumulated methods proposed by researchers for predicting the secondary structures of proteins in silico. A large part of this collection is comprised of artificial neural network-based approaches, a field of artificial intelligence and machine learning that is gaining increasing popularity in various application areas. The primary objective of this paper is to put together the summary of works that are...
Paper Details
Title
Protein secondary structure prediction using neural networks and deep learning: A review
Published Date
Aug 1, 2019
Volume
81
Pages
1 - 8
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