Skip to main content
bioRxiv
  • Home
  • About
  • Submit
  • ALERTS / RSS
Advanced Search
New Results

Protein Structure Prediction Using a Maximum Likelihood Formulation of a Recurrent Geometric Network

View ORCID ProfileGuowei Qi, View ORCID ProfileMallory R. Tollefson, View ORCID ProfileRose A. Gogal, View ORCID ProfileRichard J. H. Smith, View ORCID ProfileMohammed AlQuraishi, View ORCID ProfileMichael J. Schnieders
doi: https://doi.org/10.1101/2021.09.03.458873
Guowei Qi
1Department of Biochemistry and Molecular Biology, University of Iowa, Iowa City, IA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Guowei Qi
Mallory R. Tollefson
2Roy J. Carver Department of Biomedical Engineering, University of Iowa, Iowa City, IA
3Molecular Otolaryngology & Renal Research Laboratories, Department of Otolaryngology, University of Iowa Hospitals and Clinics, Iowa City, IA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Mallory R. Tollefson
Rose A. Gogal
2Roy J. Carver Department of Biomedical Engineering, University of Iowa, Iowa City, IA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Rose A. Gogal
Richard J. H. Smith
3Molecular Otolaryngology & Renal Research Laboratories, Department of Otolaryngology, University of Iowa Hospitals and Clinics, Iowa City, IA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Richard J. H. Smith
Mohammed AlQuraishi
4Department of Systems Biology, Columbia University, New York City, NY
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Mohammed AlQuraishi
Michael J. Schnieders
1Department of Biochemistry and Molecular Biology, University of Iowa, Iowa City, IA
2Roy J. Carver Department of Biomedical Engineering, University of Iowa, Iowa City, IA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Michael J. Schnieders
  • For correspondence: michael-schnieders@uiowa.edu
  • Abstract
  • Full Text
  • Info/History
  • Metrics
  • Supplementary material
  • Data/Code
  • Preview PDF
Loading

Abstract

Only ∼40% of the human proteome has structural coordinates available from experiment (i.e., X-ray crystallography, NMR spectroscopy, or cryo-EM) or homology modeling with quality templates (i.e., 30% sequence identity or greater), leaving most of the proteome structurally unsolved. Deep learning (DL) methods for predicting protein structure can help close knowledge gaps where experimental and homology models are difficult to obtain. Recent advances in these DL methods have shown promising results in expanding structural coverage to the scale of the entire human proteome, providing researchers with more complete protein structural information. Here, we improve upon an existing DL algorithm for protein structure prediction, the Recurrent Geometric Network (RGN). We first expand the training dataset to include experimental uncertainty data in the form of atomic displacement parameters, then derive a maximum likelihood loss function that incorporates this uncertainty data into model training. Compared to the original RGN, our novel maximum likelihood model improves the rate of convergence of initial model training and ultimately results in more accurate structure prediction according to the root mean square deviation (RMSD) of backbone atoms, the Global Distance Test (GDT), the Global Distance Test High Accuracy (GDT-HA), and the Template-Modeling Score (TM-Score). Our model also predicts structures with more favorable backbone torsions, which provide more accurate starting coordinates for downstream physics-based simulations. Based on these results, our maximum likelihood reformulation provides a framework for improving existing or future machine learning algorithms for protein structure prediction. The augmented dataset, data collection scripts, reformulated RGN source code, and a series of trained models are publicly available at https://github.com/SchniedersLab/likelihood-rgn.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • https://github.com/SchniedersLab/likelihood-rgn

  • https://ffx.biochem.uiowa.edu

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
Back to top
PreviousNext
Posted September 04, 2021.
Download PDF

Supplementary Material

Data/Code
Email

Thank you for your interest in spreading the word about bioRxiv.

NOTE: Your email address is requested solely to identify you as the sender of this article.

Enter multiple addresses on separate lines or separate them with commas.
Protein Structure Prediction Using a Maximum Likelihood Formulation of a Recurrent Geometric Network
(Your Name) has forwarded a page to you from bioRxiv
(Your Name) thought you would like to see this page from the bioRxiv website.
CAPTCHA
This question is for testing whether or not you are a human visitor and to prevent automated spam submissions.
Share
Protein Structure Prediction Using a Maximum Likelihood Formulation of a Recurrent Geometric Network
Guowei Qi, Mallory R. Tollefson, Rose A. Gogal, Richard J. H. Smith, Mohammed AlQuraishi, Michael J. Schnieders
bioRxiv 2021.09.03.458873; doi: https://doi.org/10.1101/2021.09.03.458873
Reddit logo Twitter logo Facebook logo LinkedIn logo Mendeley logo
Citation Tools
Protein Structure Prediction Using a Maximum Likelihood Formulation of a Recurrent Geometric Network
Guowei Qi, Mallory R. Tollefson, Rose A. Gogal, Richard J. H. Smith, Mohammed AlQuraishi, Michael J. Schnieders
bioRxiv 2021.09.03.458873; doi: https://doi.org/10.1101/2021.09.03.458873

Citation Manager Formats

  • BibTeX
  • Bookends
  • EasyBib
  • EndNote (tagged)
  • EndNote 8 (xml)
  • Medlars
  • Mendeley
  • Papers
  • RefWorks Tagged
  • Ref Manager
  • RIS
  • Zotero
  • Tweet Widget
  • Facebook Like
  • Google Plus One

Subject Area

  • Biophysics
Subject Areas
All Articles
  • Animal Behavior and Cognition (4384)
  • Biochemistry (9602)
  • Bioengineering (7100)
  • Bioinformatics (24885)
  • Biophysics (12625)
  • Cancer Biology (9968)
  • Cell Biology (14364)
  • Clinical Trials (138)
  • Developmental Biology (7966)
  • Ecology (12115)
  • Epidemiology (2067)
  • Evolutionary Biology (15997)
  • Genetics (10932)
  • Genomics (14746)
  • Immunology (9875)
  • Microbiology (23683)
  • Molecular Biology (9486)
  • Neuroscience (50907)
  • Paleontology (370)
  • Pathology (1540)
  • Pharmacology and Toxicology (2684)
  • Physiology (4022)
  • Plant Biology (8669)
  • Scientific Communication and Education (1510)
  • Synthetic Biology (2397)
  • Systems Biology (6442)
  • Zoology (1346)