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DeepECA: an end-to-end learning framework for protein contact prediction from a multiple sequence alignment.

Hiroyuki FukudaKentaro Tomii
Published in: BMC bioinformatics (2020)
The end-to-end learning framework we built can use information derived from either deep or shallow MSAs for contact prediction. Recently, an increasing number of protein sequences have become accessible, including metagenomic sequences, which might degrade contact prediction results. Under such circumstances, our model can provide a means to reduce noise automatically. According to results of tertiary structure prediction based on contacts and secondary structures predicted by our model, more accurate three-dimensional models of a target protein are obtainable than those from existing ECA methods, starting from its MSA. DeepECA is available from https://github.com/tomiilab/DeepECA.
Keyphrases
  • amino acid
  • high resolution
  • binding protein
  • healthcare
  • air pollution
  • mass spectrometry
  • microbial community