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Protein model quality assessment using rotation-equivariant, hierarchical neural networks (2011.13557v1)

Published 27 Nov 2020 in q-bio.QM and cs.LG

Abstract: Proteins are miniature machines whose function depends on their three-dimensional (3D) structure. Determining this structure computationally remains an unsolved grand challenge. A major bottleneck involves selecting the most accurate structural model among a large pool of candidates, a task addressed in model quality assessment. Here, we present a novel deep learning approach to assess the quality of a protein model. Our network builds on a point-based representation of the atomic structure and rotation-equivariant convolutions at different levels of structural resolution. These combined aspects allow the network to learn end-to-end from entire protein structures. Our method achieves state-of-the-art results in scoring protein models submitted to recent rounds of CASP, a blind prediction community experiment. Particularly striking is that our method does not use physics-inspired energy terms and does not rely on the availability of additional information (beyond the atomic structure of the individual protein model), such as sequence alignments of multiple proteins.

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Authors (5)
  1. Stephan Eismann (10 papers)
  2. Patricia Suriana (7 papers)
  3. Bowen Jing (27 papers)
  4. Raphael J. L. Townshend (6 papers)
  5. Ron O. Dror (10 papers)
Citations (13)

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