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Optimal clustering for quantum refinement of biomolecular structures: Q|R#4

Yaru Wang, View ORCID ProfileHolger Kruse, View ORCID ProfileNigel W. Moriarty, View ORCID ProfileMark P. Waller, View ORCID ProfilePavel V. Afonine, View ORCID ProfileMalgorzata Biczysko
doi: https://doi.org/10.1101/2022.11.24.517825
Yaru Wang
1International Center for Quantum and Molecular Structures, Physics Department, College of Sciences, Shanghai University, Shanghai 200444, People’s Republic of China
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Holger Kruse
2Institute of Biophysics of the Czech Academy of Sciences, Brno, Czech Republic
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  • For correspondence: kruse@ibp.cz pafonine@lbl.gov biczysko@shu.edu.cn
Nigel W. Moriarty
3Molecular Biosciences and Integrated Bioimaging, Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USA
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Mark P. Waller
4Pending AI Pty Ltd., iAccelerate, Innovation Campus, North Wollongong, 2500, Australia
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Pavel V. Afonine
3Molecular Biosciences and Integrated Bioimaging, Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USA
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  • For correspondence: kruse@ibp.cz pafonine@lbl.gov biczysko@shu.edu.cn
Malgorzata Biczysko
1International Center for Quantum and Molecular Structures, Physics Department, College of Sciences, Shanghai University, Shanghai 200444, People’s Republic of China
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  • For correspondence: kruse@ibp.cz pafonine@lbl.gov biczysko@shu.edu.cn
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Abstract

Quantum refinement (Q|R) of crystallographic or cryo-EM derived structures of biomolecules within the Q|R project aims at using ab initio computations instead of library-based chemical restraints. An atomic model refinement requires the calculation of the gradient of the objective function. While it is not a computational bottleneck in classic refinement it is a roadblock if the objective function requires ab initio calculations. A solution to this problem adopted in Q|R is to divide the molecular system into manageable parts and do computations for these parts rather than using the whole macromolecule. This work focuses on the validation and optimization of the automatic divide-and-conquer procedure developed within the Q|R project. Also, we propose an atomic gradient error score that can be easily examined with common molecular visualization programs. While the tool is designed to work within the Q|R setting the error score can be adapted to similar fragmentation methods. The gradient testing tool presented here allows a priori determination of the computationally efficient strategy given available resources for the potentially time-expensive refinement process. The procedure is illustrated using a peptide and small protein models considering different quantum mechanical (QM) methodologies from Hartree-Fock, including basis set and dispersion corrections, to the modern semi-empirical method from the GFN-xTB family. The results obtained provide some general recommendations for the reliable and effective quantum refinement of larger peptides and proteins.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • https://github.com/qrefine/QR4-Gtest

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. All rights reserved. No reuse allowed without permission.
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Posted November 24, 2022.
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Optimal clustering for quantum refinement of biomolecular structures: Q|R#4
Yaru Wang, Holger Kruse, Nigel W. Moriarty, Mark P. Waller, Pavel V. Afonine, Malgorzata Biczysko
bioRxiv 2022.11.24.517825; doi: https://doi.org/10.1101/2022.11.24.517825
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Optimal clustering for quantum refinement of biomolecular structures: Q|R#4
Yaru Wang, Holger Kruse, Nigel W. Moriarty, Mark P. Waller, Pavel V. Afonine, Malgorzata Biczysko
bioRxiv 2022.11.24.517825; doi: https://doi.org/10.1101/2022.11.24.517825

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