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SidechainNet: An all-atom protein structure dataset for machine learning.

Jonathan Edward KingDavid Ryan Koes
Published in: Proteins (2021)
Despite recent advancements in deep learning methods for protein structure prediction and representation, little focus has been directed at the simultaneous inclusion and prediction of protein backbone and sidechain structure information. We present SidechainNet, a new dataset that directly extends the ProteinNet dataset. SidechainNet includes angle and atomic coordinate information capable of describing all heavy atoms of each protein structure and can be extended by users to include new protein structures as they are released. In this article, we provide background information on the availability of protein structure data and the significance of ProteinNet. Thereafter, we argue for the potentially beneficial inclusion of sidechain information through SidechainNet, describe the process by which we organize SidechainNet, and provide a software package (https://github.com/jonathanking/sidechainnet) for data manipulation and training with machine learning models.
Keyphrases
  • machine learning
  • deep learning
  • protein protein
  • big data
  • health information
  • high resolution
  • artificial intelligence
  • healthcare
  • electronic health record
  • social media
  • mass spectrometry