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Dive into the research topics where Pavel V. Afonine is active.

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Featured researches published by Pavel V. Afonine.


Acta Crystallographica Section D-biological Crystallography | 2010

PHENIX: a comprehensive Python-based system for macromolecular structure solution

Paul D. Adams; Pavel V. Afonine; Gábor Bunkóczi; Vincent B. Chen; Ian W. Davis; Nathaniel Echols; Jeffrey J. Headd; Li-Wei Hung; Gary J. Kapral; Ralf W. Grosse-Kunstleve; Airlie J. McCoy; Nigel W. Moriarty; Robert D. Oeffner; Randy J. Read; David C. Richardson; Jane S. Richardson; Thomas C. Terwilliger; Peter H. Zwart

The PHENIX software for macromolecular structure determination is described.


Acta Crystallographica Section D-biological Crystallography | 2012

Towards automated crystallographic structure refinement with phenix.refine.

Pavel V. Afonine; Ralf W. Grosse-Kunstleve; Nathaniel Echols; Jeffrey J. Headd; Nigel W. Moriarty; Marat Mustyakimov; Thomas C. Terwilliger; Alexandre Urzhumtsev; Peter H. Zwart; Paul D. Adams

phenix.refine is a program within the PHENIX package that supports crystallographic structure refinement against experimental data with a wide range of upper resolution limits using a large repertoire of model parameterizations. This paper presents an overview of the major phenix.refine features, with extensive literature references for readers interested in more detailed discussions of the methods.


Acta Crystallographica Section D-biological Crystallography | 2008

Iterative model building, structure refinement and density modification with the PHENIX AutoBuild wizard

Thomas C. Terwilliger; Ralf W. Grosse-Kunstleve; Pavel V. Afonine; Nigel W. Moriarty; Peter H. Zwart; Li-Wei Hung; Randy J. Read; Paul D. Adams

The highly automated PHENIX AutoBuild wizard is described. The procedure can be applied equally well to phases derived from isomorphous/anomalous and molecular-replacement methods.


Acta Crystallographica Section D-biological Crystallography | 2009

Decision-making in structure solution using Bayesian estimates of map quality: the PHENIX AutoSol wizard

Thomas C. Terwilliger; Paul D. Adams; Randy J. Read; Airlie J. McCoy; Nigel W. Moriarty; Ralf W. Grosse-Kunstleve; Pavel V. Afonine; Peter H. Zwart; Li-Wei Hung

Ten measures of experimental electron-density-map quality are examined and the skewness of electron density is found to be the best indicator of actual map quality. A Bayesian approach to estimating map quality is developed and used in the PHENIX AutoSol wizard to make decisions during automated structure solution.


Methods | 2011

The Phenix software for automated determination of macromolecular structures.

Paul D. Adams; Pavel V. Afonine; Gábor Bunkóczi; Vincent B. Chen; Nathaniel Echols; Jeffrey J. Headd; Li-Wei Hung; Swati Jain; Gary J. Kapral; Ralf W. Grosse Kunstleve; Airlie J. McCoy; Nigel W. Moriarty; Robert D. Oeffner; Randy J. Read; David C. Richardson; Jane S. Richardson; Thomas C. Terwilliger; Peter H. Zwart

X-ray crystallography is a critical tool in the study of biological systems. It is able to provide information that has been a prerequisite to understanding the fundamentals of life. It is also a method that is central to the development of new therapeutics for human disease. Significant time and effort are required to determine and optimize many macromolecular structures because of the need for manual interpretation of complex numerical data, often using many different software packages, and the repeated use of interactive three-dimensional graphics. The Phenix software package has been developed to provide a comprehensive system for macromolecular crystallographic structure solution with an emphasis on automation. This has required the development of new algorithms that minimize or eliminate subjective input in favor of built-in expert-systems knowledge, the automation of procedures that are traditionally performed by hand, and the development of a computational framework that allows a tight integration between the algorithms. The application of automated methods is particularly appropriate in the field of structural proteomics, where high throughput is desired. Features in Phenix for the automation of experimental phasing with subsequent model building, molecular replacement, structure refinement and validation are described and examples given of running Phenix from both the command line and graphical user interface.


Methods of Molecular Biology | 2008

Automated Structure Solution with the PHENIX Suite

Peter H. Zwart; Pavel V. Afonine; Ralf W. Grosse-Kunstleve; Li-Wei Hung; Thomas R. Ioerger; Airlie J. McCoy; Erik McKee; Nigel W. Moriarty; Randy J. Read; James C. Sacchettini; Nicholas K. Sauter; Laurent C. Storoni; Thomas C. Terwilliger; Paul D. Adams

Significant time and effort are often required to solve and complete a macromolecular crystal structure. The development of automated computational methods for the analysis, solution, and completion of crystallographic structures has the potential to produce minimally biased models in a short time without the need for manual intervention. The PHENIX software suite is a highly automated system for macromolecular structure determination that can rapidly arrive at an initial partial model of a structure without significant human intervention, given moderate resolution, and good quality data. This achievement has been made possible by the development of new algorithms for structure determination, maximum-likelihood molecular replacement (PHASER), heavy-atom search (HySS), template- and pattern-based automated model-building (RESOLVE, TEXTAL), automated macromolecular refinement (phenix. refine), and iterative model-building, density modification and refinement that can operate at moderate resolution (RESOLVE, AutoBuild). These algorithms are based on a highly integrated and comprehensive set of crystallographic libraries that have been built and made available to the community. The algorithms are tightly linked and made easily accessible to users through the PHENIX Wizards and the PHENIX GUI.


Acta Crystallographica Section D-biological Crystallography | 2005

A robust bulk-solvent correction and anisotropic scaling procedure.

Pavel V. Afonine; Ralf W. Grosse-Kunstleve; Paul D. Adams

A robust method for determining bulk-solvent and anisotropic scaling parameters for macromolecular refinement is described. A maximum-likelihood target function for determination of flat bulk-solvent model parameters and overall anisotropic scale factor is also proposed.


Acta Crystallographica Section D-biological Crystallography | 2010

Joint X-ray and neutron refinement with phenix.refine

Pavel V. Afonine; Marat Mustyakimov; Ralf W. Grosse-Kunstleve; Nigel W. Moriarty; Paul Langan; Paul D. Adams

Approximately 85% of the structures deposited in the Protein Data Bank have been solved using X-ray crystallography, making it the leading method for three-dimensional structure determination of macromolecules. One of the limitations of the method is that the typical data quality (resolution) does not allow the direct determination of H-atom positions. Most hydrogen positions can be inferred from the positions of other atoms and therefore can be readily included into the structure model as a priori knowledge. However, this may not be the case in biologically active sites of macromolecules, where the presence and position of hydrogen is crucial to the enzymatic mechanism. This makes the application of neutron crystallography in biology particularly important, as H atoms can be clearly located in experimental neutron scattering density maps. Without exception, when a neutron structure is determined the corresponding X-ray structure is also known, making it possible to derive the complete structure using both data sets. Here, the implementation of crystallographic structure-refinement procedures that include both X-ray and neutron data (separate or jointly) in the PHENIX system is described.


eLife | 2012

Modelling dynamics in protein crystal structures by ensemble refinement

B Tom Burnley; Pavel V. Afonine; Paul D. Adams; Piet Gros

Single-structure models derived from X-ray data do not adequately account for the inherent, functionally important dynamics of protein molecules. We generated ensembles of structures by time-averaged refinement, where local molecular vibrations were sampled by molecular-dynamics (MD) simulation whilst global disorder was partitioned into an underlying overall translation–libration–screw (TLS) model. Modeling of 20 protein datasets at 1.1–3.1 Å resolution reduced cross-validated Rfree values by 0.3–4.9%, indicating that ensemble models fit the X-ray data better than single structures. The ensembles revealed that, while most proteins display a well-ordered core, some proteins exhibit a ‘molten core’ likely supporting functionally important dynamics in ligand binding, enzyme activity and protomer assembly. Order–disorder changes in HIV protease indicate a mechanism of entropy compensation for ordering the catalytic residues upon ligand binding by disordering specific core residues. Thus, ensemble refinement extracts dynamical details from the X-ray data that allow a more comprehensive understanding of structure–dynamics–function relationships. DOI: http://dx.doi.org/10.7554/eLife.00311.001


Nature | 2016

Structure of photosystem II and substrate binding at room temperature.

Iris D. Young; Mohamed Ibrahim; Ruchira Chatterjee; Sheraz Gul; Franklin Fuller; Sergey Koroidov; Aaron S. Brewster; Rosalie Tran; Roberto Alonso-Mori; Thomas Kroll; Tara Michels-Clark; Hartawan Laksmono; Raymond G. Sierra; Claudiu A. Stan; Rana Hussein; Miao Zhang; Lacey Douthit; Markus Kubin; Casper de Lichtenberg; Long Vo Pham; Håkan Nilsson; Mun Hon Cheah; Dmitriy Shevela; Claudio Saracini; Mackenzie A. Bean; Ina Seuffert; Dimosthenis Sokaras; Tsu-Chien Weng; Ernest Pastor; Clemens Weninger

Light-induced oxidation of water by photosystem II (PS II) in plants, algae and cyanobacteria has generated most of the dioxygen in the atmosphere. PS II, a membrane-bound multi-subunit pigment protein complex, couples the one-electron photochemistry at the reaction centre with the four-electron redox chemistry of water oxidation at the Mn4CaO5 cluster in the oxygen-evolving complex (OEC). Under illumination, the OEC cycles through five intermediate S-states (S0 to S4), in which S1 is the dark-stable state and S3 is the last semi-stable state before O–O bond formation and O2 evolution. A detailed understanding of the O–O bond formation mechanism remains a challenge, and will require elucidation of both the structures of the OEC in the different S-states and the binding of the two substrate waters to the catalytic site. Here we report the use of femtosecond pulses from an X-ray free electron laser (XFEL) to obtain damage-free, room temperature structures of dark-adapted (S1), two-flash illuminated (2F; S3-enriched), and ammonia-bound two-flash illuminated (2F-NH3; S3-enriched) PS II. Although the recent 1.95 Å resolution structure of PS II at cryogenic temperature using an XFEL provided a damage-free view of the S1 state, measurements at room temperature are required to study the structural landscape of proteins under functional conditions, and also for in situ advancement of the S-states. To investigate the water-binding site(s), ammonia, a water analogue, has been used as a marker, as it binds to the Mn4CaO5 cluster in the S2 and S3 states. Since the ammonia-bound OEC is active, the ammonia-binding Mn site is not a substrate water site. This approach, together with a comparison of the native dark and 2F states, is used to discriminate between proposed O–O bond formation mechanisms.

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Paul D. Adams

Lawrence Berkeley National Laboratory

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Thomas C. Terwilliger

Los Alamos National Laboratory

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Nigel W. Moriarty

Lawrence Berkeley National Laboratory

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Ralf W. Grosse-Kunstleve

Lawrence Berkeley National Laboratory

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Li-Wei Hung

Los Alamos National Laboratory

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Nathaniel Echols

Lawrence Berkeley National Laboratory

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Peter H. Zwart

Lawrence Berkeley National Laboratory

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Alexandre Urzhumtsev

Centre national de la recherche scientifique

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