Improved AlphaFold modeling with implicit experimental information.

dc.contributor.author

Terwilliger, Thomas C

dc.contributor.author

Poon, Billy K

dc.contributor.author

Afonine, Pavel V

dc.contributor.author

Schlicksup, Christopher J

dc.contributor.author

Croll, Tristan I

dc.contributor.author

Millán, Claudia

dc.contributor.author

Richardson, Jane S

dc.contributor.author

Read, Randy J

dc.contributor.author

Adams, Paul D

dc.date.accessioned

2023-12-01T18:53:28Z

dc.date.available

2023-12-01T18:53:28Z

dc.date.issued

2022-11

dc.date.updated

2023-12-01T18:53:25Z

dc.description.abstract

Machine-learning prediction algorithms such as AlphaFold and RoseTTAFold can create remarkably accurate protein models, but these models usually have some regions that are predicted with low confidence or poor accuracy. We hypothesized that by implicitly including new experimental information such as a density map, a greater portion of a model could be predicted accurately, and that this might synergistically improve parts of the model that were not fully addressed by either machine learning or experiment alone. An iterative procedure was developed in which AlphaFold models are automatically rebuilt on the basis of experimental density maps and the rebuilt models are used as templates in new AlphaFold predictions. We show that including experimental information improves prediction beyond the improvement obtained with simple rebuilding guided by the experimental data. This procedure for AlphaFold modeling with density has been incorporated into an automated procedure for interpretation of crystallographic and electron cryo-microscopy maps.

dc.identifier

10.1038/s41592-022-01645-6

dc.identifier.issn

1548-7091

dc.identifier.issn

1548-7105

dc.identifier.uri

https://hdl.handle.net/10161/29457

dc.language

eng

dc.publisher

Springer Science and Business Media LLC

dc.relation.ispartof

Nature methods

dc.relation.isversionof

10.1038/s41592-022-01645-6

dc.subject

Proteins

dc.subject

Cryoelectron Microscopy

dc.subject

Protein Conformation

dc.subject

Algorithms

dc.subject

Models, Molecular

dc.subject

Machine Learning

dc.title

Improved AlphaFold modeling with implicit experimental information.

dc.type

Journal article

duke.contributor.orcid

Richardson, Jane S|0000-0002-3311-2944

pubs.begin-page

1376

pubs.end-page

1382

pubs.issue

11

pubs.organisational-group

Duke

pubs.organisational-group

School of Medicine

pubs.organisational-group

Basic Science Departments

pubs.organisational-group

Biochemistry

pubs.publication-status

Published

pubs.volume

19

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