macromolecular modeling
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2021 ◽  
Vol 12 (1) ◽  
Author(s):  
Julia Koehler Leman ◽  
Sergey Lyskov ◽  
Steven M. Lewis ◽  
Jared Adolf-Bryfogle ◽  
Rebecca F. Alford ◽  
...  

AbstractEach year vast international resources are wasted on irreproducible research. The scientific community has been slow to adopt standard software engineering practices, despite the increases in high-dimensional data, complexities of workflows, and computational environments. Here we show how scientific software applications can be created in a reproducible manner when simple design goals for reproducibility are met. We describe the implementation of a test server framework and 40 scientific benchmarks, covering numerous applications in Rosetta bio-macromolecular modeling. High performance computing cluster integration allows these benchmarks to run continuously and automatically. Detailed protocol captures are useful for developers and users of Rosetta and other macromolecular modeling tools. The framework and design concepts presented here are valuable for developers and users of any type of scientific software and for the scientific community to create reproducible methods. Specific examples highlight the utility of this framework, and the comprehensive documentation illustrates the ease of adding new tests in a matter of hours.


Author(s):  
Julia Koehler Leman ◽  
Sergey Lyskov ◽  
Steven Lewis ◽  
Jared Adolf-Bryfogle ◽  
Rebecca F. Alford ◽  
...  

AbstractEach year vast international resources are wasted on irreproducible research. The scientific community has been slow to adopt standard software engineering practices, despite the increases in high-dimensional data, complexities of workflows, and computational environments. Here we show how scientific software applications can be created in a reproducible manner when simple design goals for reproducibility are met. We describe the implementation of a test server framework and 40 scientific benchmarks, covering numerous applications in Rosetta bio-macromolecular modeling. High performance computing cluster integration allows these benchmarks to run continuously and automatically. Detailed protocol captures are useful for developers and users of Rosetta and other macromolecular modeling tools. The framework and design concepts presented here are valuable for developers and users of any type of scientific software and for the scientific community to create reproducible methods. Specific examples highlight the utility of this framework and the comprehensive documentation illustrates the ease of adding new tests in a matter of hours.


2020 ◽  
Vol 17 (7) ◽  
pp. 665-680 ◽  
Author(s):  
Julia Koehler Leman ◽  
Brian D. Weitzner ◽  
Steven M. Lewis ◽  
Jared Adolf-Bryfogle ◽  
Nawsad Alam ◽  
...  

Author(s):  
Julia Koehler Leman ◽  
Brian D Weitzner ◽  
Steven M Lewis ◽  
RosettaCommons Consortium ◽  
Richard Bonneau

The Rosetta software suite for macromolecular modeling, docking, and design is widely used in pharmaceutical, industrial, academic, non-profit, and government laboratories. Despite its broad modeling capabilities, Rosetta remains consistently among leading software suites when compared to other methods created for highly specialized protein modeling and design tasks. Developed for over two decades by a global community of over 60 laboratories, Rosetta has undergone multiple refactorings, and now comprises over three million lines of code. Here we discuss methods developed in the last five years in Rosetta, involving the latest protocols for structure prediction; protein–protein and protein–small molecule docking; protein structure and interface design; loop modeling; the incorporation of various types of experimental data; modeling of peptides, antibodies and proteins in the immune system, nucleic acids, non-standard chemistries, carbohydrates, and membrane proteins. We briefly discuss improvements to the energy function, user interfaces, and usability of the ­­software. Rosetta is available at www.rosettacommons.org.


2017 ◽  
Author(s):  
Kyle A. Barlow ◽  
Shane O Conchúir ◽  
Samuel Thompson ◽  
Pooja Suresh ◽  
James E. Lucas ◽  
...  

AbstractComputationally modeling changes in binding free energies upon mutation (interface ΔΔG) allows large-scale prediction and perturbation of protein-protein interactions. Additionally, methods that consider and sample relevant conformational plasticity should be able to achieve higher prediction accuracy over methods that do not. To test this hypothesis, we developed a method within the Rosetta macromolecular modeling suite (flex ddG) that samples conformational diversity using “backrub” to generate an ensemble of models, then applying torsion minimization, side chain repacking and averaging across this ensemble to estimate interface ΔΔG values. We tested our method on a curated benchmark set of 1240 mutants, and found the method outperformed existing methods that sampled conformational space to a lesser degree. We observed considerable improvements with flex ddG over existing methods on the subset of small side chain to large side chain mutations, as well as for multiple simultaneous non-alanine mutations, stabilizing mutations, and mutations in antibody-antigen interfaces. Finally, we applied a generalized additive model (GAM) approach to the Rosetta energy function; the resulting non-linear reweighting model improved agreement with experimentally determined interface DDG values, but also highlights the necessity of future energy function improvements.


2017 ◽  
Vol 13 (6) ◽  
pp. 3031-3048 ◽  
Author(s):  
Rebecca F. Alford ◽  
Andrew Leaver-Fay ◽  
Jeliazko R. Jeliazkov ◽  
Matthew J. O’Meara ◽  
Frank P. DiMaio ◽  
...  

2017 ◽  
Author(s):  
Rebecca F. Alford ◽  
Andrew Leaver-Fay ◽  
Jeliazko R. Jeliazkov ◽  
Matthew J. O'Meara ◽  
Frank P. DiMaio ◽  
...  

AbstractOver the past decade, the Rosetta biomolecular modeling suite has informed diverse biological questions and engineering challenges ranging from interpretation of low-resolution structural data to design of nanomaterials, protein therapeutics, and vaccines. Central to Rosetta’s success is the energy function: amodel parameterized from small molecule and X-ray crystal structure data used to approximate the energy associated with each biomolecule conformation. This paper describes the mathematical models and physical concepts that underlie the latest Rosetta energy function, beta_nov15. Applying these concepts,we explain how to use Rosetta energies to identify and analyze the features of biomolecular models.Finally, we discuss the latest advances in the energy function that extend capabilities from soluble proteins to also include membrane proteins, peptides containing non-canonical amino acids, carbohydrates, nucleic acids, and other macromolecules.


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