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CryoFold: Determining protein structures and data-guided ensembles from cryo-EM density maps

  • Mrinal Shekhar
  • , Genki Terashi
  • , Chitrak Gupta
  • , Daipayan Sarkar
  • , Gaspard Debussche
  • , Nicholas J. Sisco
  • , Jonathan Nguyen
  • , Arup Mondal
  • , John Vant
  • , Petra Fromme
  • , Wade D. Van Horn
  • , Emad Tajkhorshid
  • , Daisuke Kihara
  • , Ken Dill
  • , Alberto Perez
  • , Abhishek Singharoy
  • University of Illinois at Urbana-Champaign
  • Purdue University
  • Arizona State University
  • Institut polytechnique de Grenoble
  • University of Florida

Research output: Contribution to journalArticlepeer-review

35 Scopus citations

Abstract

Cryoelectron microscopy requires molecular modeling for refinement of structures. Ensemble models arrive at low free-energy molecular structures, but are computationally expensive and limited to resolving only small proteins. We introduce CryoFold, a pipeline of molecular dynamics simulations that determines ensembles of protein structures by integrating density data of varying sparsity at 3–5 Å resolution with sequence information and coarse-grained topological knowledge of the protein folds. We present six examples, folding proteins between 72 and 2,000 residues, including large membrane and multi-domain systems, and results from two Electron Microscopy Data Bank (EMDB) competitions. Driven by data from a single state, CryoFold discovers ensembles of common low-energy models together with rare low-probability structures that capture the equilibrium distribution of proteins constrained by the density maps. Many of these conformations are experimentally validated and functionally relevant. We arrive at a set of best practices for data-guided protein folding that are controlled using a Python graphical user interface (GUI).

Original languageEnglish
Pages (from-to)3195-3216
Number of pages22
JournalMatter
Volume4
Issue number10
DOIs
StatePublished - Oct 6 2021

Keywords

  • ATP synthase
  • CryoEM modeling
  • MAP3: Understanding
  • computations
  • cryoelectron microscopy
  • ensemble refinement
  • integrative modeling
  • molecular dynamics simulations
  • protein folding ensemble

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