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1.
J Am Chem Soc ; 144(6): 2535-2545, 2022 02 16.
Article in English | MEDLINE | ID: mdl-35108000

ABSTRACT

We report the measurement and analysis of sulfonium-π, thioether-π, and ammonium-π interactions in a ß-hairpin peptide model system, coupled with computational investigation and PDB analysis. These studies indicated that the sulfonium-π interaction is the strongest and that polarizability contributes to the stronger interaction with sulfonium relative to ammonium. Computational studies demonstrate that differences in solvation of the trimethylsulfonium versus the trimethylammonium group also contribute to the stronger sulfonium-π interaction. In comparing sulfonium-π versus sulfur-π interactions in proteins, analysis of SAM- and SAH-bound enzymes in the PDB suggests that aromatic residues are enriched in close proximity to the sulfur of both SAM and SAH, but the populations of aromatic interactions of the two cofactors are not significantly different, with the exception of the Me-π interactions in SAM, which are the most prevalent interaction in SAM but are not possible for SAH. This suggests that the weaker interaction energies due to loss of the cation-π interaction in going from SAM to SAH may contribute to turnover of the cofactor.


Subject(s)
Ammonium Compounds/metabolism , Peptides/metabolism , Sulfonium Compounds/metabolism , Ammonium Compounds/chemistry , Bacterial Proteins/chemistry , Bacterial Proteins/metabolism , Methylamines/chemistry , Methylamines/metabolism , Methyltransferases/chemistry , Methyltransferases/metabolism , Molecular Structure , Peptides/chemistry , Protein Binding , S-Adenosylhomocysteine/chemistry , S-Adenosylhomocysteine/metabolism , S-Adenosylmethionine/chemistry , S-Adenosylmethionine/metabolism , Static Electricity , Sulfonium Compounds/chemistry , Thermodynamics , Thermus thermophilus/enzymology
2.
PLoS Comput Biol ; 16(5): e1007507, 2020 05.
Article in English | MEDLINE | ID: mdl-32365137

ABSTRACT

Many scientific disciplines rely on computational methods for data analysis, model generation, and prediction. Implementing these methods is often accomplished by researchers with domain expertise but without formal training in software engineering or computer science. This arrangement has led to underappreciation of sustainability and maintainability of scientific software tools developed in academic environments. Some software tools have avoided this fate, including the scientific library Rosetta. We use this software and its community as a case study to show how modern software development can be accomplished successfully, irrespective of subject area. Rosetta is one of the largest software suites for macromolecular modeling, with 3.1 million lines of code and many state-of-the-art applications. Since the mid 1990s, the software has been developed collaboratively by the RosettaCommons, a community of academics from over 60 institutions worldwide with diverse backgrounds including chemistry, biology, physiology, physics, engineering, mathematics, and computer science. Developing this software suite has provided us with more than two decades of experience in how to effectively develop advanced scientific software in a global community with hundreds of contributors. Here we illustrate the functioning of this development community by addressing technical aspects (like version control, testing, and maintenance), community-building strategies, diversity efforts, software dissemination, and user support. We demonstrate how modern computational research can thrive in a distributed collaborative community. The practices described here are independent of subject area and can be readily adopted by other software development communities.


Subject(s)
Computational Biology/methods , Research/trends , Software/trends , Cooperative Behavior , Data Analysis , Engineering , Gene Library , Humans , Models, Molecular , Research Personnel , Social Behavior , User-Computer Interface
3.
Bioinformatics ; 33(17): 2765-2767, 2017 Sep 01.
Article in English | MEDLINE | ID: mdl-28481970

ABSTRACT

SUMMARY: Foldit Standalone is an interactive graphical interface to the Rosetta molecular modeling package. In contrast to most command-line or batch interactions with Rosetta, Foldit Standalone is designed to allow easy, real-time, direct manipulation of protein structures, while also giving access to the extensive power of Rosetta computations. Derived from the user interface of the scientific discovery game Foldit (itself based on Rosetta), Foldit Standalone has added more advanced features and removed the competitive game elements. Foldit Standalone was built from the ground up with a custom rendering and event engine, configurable visualizations and interactions driven by Rosetta. Foldit Standalone contains, among other features: electron density and contact map visualizations, multiple sequence alignment tools for template-based modeling, rigid body transformation controls, RosettaScripts support and an embedded Lua interpreter. AVAILABILITY AND IMPLEMENTATION: Foldit Standalone is available for download at https://fold.it/standalone , under the Rosetta license, which is free for academic and non-profit users. It is implemented in cross-platform C ++ and binary executables are available for Windows, macOS and Linux. CONTACT: scooper@ccs.neu.edu.


Subject(s)
Computational Biology/methods , Models, Molecular , Protein Conformation , Sequence Analysis, Protein/methods , Software , Sequence Alignment , Video Games
4.
PLoS Comput Biol ; 13(12): e1005837, 2017 Dec.
Article in English | MEDLINE | ID: mdl-29216185

ABSTRACT

Computational biology is an interdisciplinary field, and many computational biology research projects involve distributed teams of scientists. To accomplish their work, these teams must overcome both disciplinary and geographic barriers. Introducing new training paradigms is one way to facilitate research progress in computational biology. Here, we describe a new undergraduate program in biomolecular structure prediction and design in which students conduct research at labs located at geographically-distributed institutions while remaining connected through an online community. This 10-week summer program begins with one week of training on computational biology methods development, transitions to eight weeks of research, and culminates in one week at the Rosetta annual conference. To date, two cohorts of students have participated, tackling research topics including vaccine design, enzyme design, protein-based materials, glycoprotein modeling, crowd-sourced science, RNA processing, hydrogen bond networks, and amyloid formation. Students in the program report outcomes comparable to students who participate in similar in-person programs. These outcomes include the development of a sense of community and increases in their scientific self-efficacy, scientific identity, and science values, all predictors of continuing in a science research career. Furthermore, the program attracted students from diverse backgrounds, which demonstrates the potential of this approach to broaden the participation of young scientists from backgrounds traditionally underrepresented in computational biology.


Subject(s)
Computational Biology , Molecular Conformation , Research/education , Students , Adult , Computational Biology/education , Computational Biology/organization & administration , Female , Humans , Internet , Male , Self Efficacy , Students/psychology , Students/statistics & numerical data , United States , Universities , Workforce
5.
Nucleic Acids Res ; 43(5): e34, 2015 Mar 11.
Article in English | MEDLINE | ID: mdl-25539925

ABSTRACT

Degenerate codon (DC) libraries efficiently address the experimental library-size limitations of directed evolution by focusing diversity toward the positions and toward the amino acids (AAs) that are most likely to generate hits; however, manually constructing DC libraries is challenging, error prone and time consuming. This paper provides a dynamic programming solution to the task of finding the best DCs while keeping the size of the library beneath some given limit, improving on the existing integer-linear programming formulation. It then extends the algorithm to consider multiple DCs at each position, a heretofore unsolved problem, while adhering to a constraint on the number of primers needed to synthesize the library. In the two library-design problems examined here, the use of multiple DCs produces libraries that very nearly cover the set of desired AAs while still staying within the experimental size limits. Surprisingly, the algorithm is able to find near-perfect libraries where the ratio of amino-acid sequences to nucleic-acid sequences approaches 1; it effectively side-steps the degeneracy of the genetic code. Our algorithm is freely available through our web server and solves most design problems in about a second.


Subject(s)
Algorithms , Codon/genetics , Computational Biology/methods , Gene Library , Software , Internet , Reproducibility of Results
6.
Nature ; 466(7307): 756-60, 2010 Aug 05.
Article in English | MEDLINE | ID: mdl-20686574

ABSTRACT

People exert large amounts of problem-solving effort playing computer games. Simple image- and text-recognition tasks have been successfully 'crowd-sourced' through games, but it is not clear if more complex scientific problems can be solved with human-directed computing. Protein structure prediction is one such problem: locating the biologically relevant native conformation of a protein is a formidable computational challenge given the very large size of the search space. Here we describe Foldit, a multiplayer online game that engages non-scientists in solving hard prediction problems. Foldit players interact with protein structures using direct manipulation tools and user-friendly versions of algorithms from the Rosetta structure prediction methodology, while they compete and collaborate to optimize the computed energy. We show that top-ranked Foldit players excel at solving challenging structure refinement problems in which substantial backbone rearrangements are necessary to achieve the burial of hydrophobic residues. Players working collaboratively develop a rich assortment of new strategies and algorithms; unlike computational approaches, they explore not only the conformational space but also the space of possible search strategies. The integration of human visual problem-solving and strategy development capabilities with traditional computational algorithms through interactive multiplayer games is a powerful new approach to solving computationally-limited scientific problems.


Subject(s)
Computational Biology/methods , Games, Experimental , Group Processes , Internet , Problem Solving , Protein Folding , Proteins/chemistry , Algorithms , Computer Graphics , Computer Simulation , Cooperative Behavior , Cues , Humans , Hydrogen Bonding , Hydrophobic and Hydrophilic Interactions , Imaging, Three-Dimensional , Leisure Activities , Models, Molecular , Nuclear Magnetic Resonance, Biomolecular , Photic Stimulation , Protein Conformation , Proteins/metabolism , Stochastic Processes , Thermodynamics
7.
Proteins ; 80(3): 825-38, 2012 Mar.
Article in English | MEDLINE | ID: mdl-22223219

ABSTRACT

De novo protein design requires the identification of amino-acid sequences that favor the target-folded conformation and are soluble in water. One strategy for promoting solubility is to disallow hydrophobic residues on the protein surface during design. However, naturally occurring proteins often have hydrophobic amino acids on their surface that contribute to protein stability via the partial burial of hydrophobic surface area or play a key role in the formation of protein-protein interactions. A less restrictive approach for surface design that is used by the modeling program Rosetta is to parameterize the energy function so that the number of hydrophobic amino acids designed on the protein surface is similar to what is observed in naturally occurring monomeric proteins. Previous studies with Rosetta have shown that this limits surface hydrophobics to the naturally occurring frequency (∼28%), but that it does not prevent the formation of hydrophobic patches that are considerably larger than those observed in naturally occurring proteins. Here, we describe a new score term that explicitly detects and penalizes the formation of hydrophobic patches during computational protein design. With the new term, we are able to design protein surfaces that include hydrophobic amino acids at naturally occurring frequencies, but do not have large hydrophobic patches. By adjusting the strength of the new score term, the emphasis of surface redesigns can be switched between maintaining solubility and maximizing folding free energy.


Subject(s)
Proteins/chemistry , Databases, Protein , Hydrophobic and Hydrophilic Interactions , Models, Molecular , Protein Stability , Protein Unfolding , Solubility , Thermodynamics
8.
Protein Sci ; 31(10): e4428, 2022 10.
Article in English | MEDLINE | ID: mdl-36173174

ABSTRACT

Many proteins have low thermodynamic stability, which can lead to low expression yields and limit functionality in research, industrial and clinical settings. This article introduces two, web-based tools that use the high-resolution structure of a protein along with the Rosetta molecular modeling program to predict stabilizing mutations. The protocols were recently applied to three genetically and structurally distinct proteins and successfully predicted mutations that improved thermal stability and/or protein yield. In all three cases, combining the stabilizing mutations raised the protein unfolding temperatures by more than 20°C. The first protocol evaluates point mutations and can generate a site saturation mutagenesis heatmap. The second identifies mutation clusters around user-defined positions. Both applications only require a protein structure and are particularly valuable when a deep multiple sequence alignment is not available. These tools were created to simplify protein engineering and enable research that would otherwise be infeasible due to poor expression and stability of the native molecule.


Subject(s)
Protein Engineering , Proteins , Models, Molecular , Mutation , Protein Engineering/methods , Proteins/chemistry , Proteins/genetics , Thermodynamics
9.
Proteins ; 79(3): 830-8, 2011 Mar.
Article in English | MEDLINE | ID: mdl-21287615

ABSTRACT

The prediction of changes in protein stability and structure resulting from single amino acid substitutions is both a fundamental test of macromolecular modeling methodology and an important current problem as high throughput sequencing reveals sequence polymorphisms at an increasing rate. In principle, given the structure of a wild-type protein and a point mutation whose effects are to be predicted, an accurate method should recapitulate both the structural changes and the change in the folding-free energy. Here, we explore the performance of protocols which sample an increasing diversity of conformations. We find that surprisingly similar performances in predicting changes in stability are achieved using protocols that involve very different amounts of conformational sampling, provided that the resolution of the force field is matched to the resolution of the sampling method. Methods involving backbone sampling can in some cases closely recapitulate the structural changes accompanying mutations but not surprisingly tend to do more harm than good in cases where structural changes are negligible. Analysis of the outliers in the stability change calculations suggests areas needing particular improvement; these include the balance between desolvation and the formation of favorable buried polar interactions, and unfolded state modeling.


Subject(s)
Mutation , Protein Conformation , Proteins/chemistry , Models, Molecular , Proteins/genetics , Thermodynamics
10.
Proteins ; 79(6): 1898-909, 2011 Jun.
Article in English | MEDLINE | ID: mdl-21488100

ABSTRACT

Accurate modeling of biomolecular systems requires accurate forcefields. Widely used molecular mechanics (MM) forcefields obtain parameters from experimental data and quantum chemistry calculations on small molecules but do not have a clear way to take advantage of the information in high-resolution macromolecular structures. In contrast, knowledge-based methods largely ignore the physical chemistry of interatomic interactions, and instead derive parameters almost exclusively from macromolecular structures. This can involve considerable double counting of the same physical interactions. Here, we describe a method for forcefield improvement that combines the strengths of the two approaches. We use this method to improve the Rosetta all-atom forcefield, in which the total energy is expressed as the sum of terms representing different physical interactions as in MM forcefields and the parameters are tuned to reproduce the properties of macromolecular structures. To resolve inaccuracies resulting from possible double counting of interactions, we compare distribution functions from low-energy modeled structures to those from crystal structures. The structural and physical bases of the deviations between the modeled and reference structures are identified and used to guide forcefield improvements. We describe improvements resolving double counting between backbone hydrogen bond interactions and Lennard-Jones interactions in helices; between sidechain-backbone hydrogen bonds and the backbone torsion potential; and between the sidechain torsion potential and Lennard-Jones interactions. Discrepancies between computed and observed distributions are also used to guide the incorporation of an explicit Cα-hydrogen bond in ß sheets. The method can be used generally to integrate different sources of information for forcefield improvement.


Subject(s)
Proteins/chemistry , Databases, Protein , Hydrogen Bonding , Models, Molecular , Protein Structure, Secondary , Thermodynamics
11.
Biophysicist (Rockv) ; 2(1): 108-122, 2021 Apr.
Article in English | MEDLINE | ID: mdl-35128343

ABSTRACT

Biomolecular structure drives function, and computational capabilities have progressed such that the prediction and computational design of biomolecular structures is increasingly feasible. Because computational biophysics attracts students from many different backgrounds and with different levels of resources, teaching the subject can be challenging. One strategy to teach diverse learners is with interactive multimedia material that promotes self-paced, active learning. We have created a hands-on education strategy with a set of sixteen modules that teach topics in biomolecular structure and design, from fundamentals of conformational sampling and energy evaluation to applications like protein docking, antibody design, and RNA structure prediction. Our modules are based on PyRosetta, a Python library that encapsulates all computational modules and methods in the Rosetta software package. The workshop-style modules are implemented as Jupyter Notebooks that can be executed in the Google Colaboratory, allowing learners access with just a web browser. The digital format of Jupyter Notebooks allows us to embed images, molecular visualization movies, and interactive coding exercises. This multimodal approach may better reach students from different disciplines and experience levels as well as attract more researchers from smaller labs and cognate backgrounds to leverage PyRosetta in their science and engineering research. All materials are freely available at https://github.com/RosettaCommons/PyRosetta.notebooks.

12.
Nat Commun ; 12(1): 6947, 2021 11 29.
Article in English | MEDLINE | ID: mdl-34845212

ABSTRACT

Each 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.


Subject(s)
Macromolecular Substances/chemistry , Molecular Docking Simulation , Proteins/chemistry , Software/standards , Benchmarking , Binding Sites , Humans , Ligands , Macromolecular Substances/metabolism , Protein Binding , Proteins/metabolism , Reproducibility of Results
13.
Nucleic Acids Res ; 35(Web Server issue): W375-83, 2007 Jul.
Article in English | MEDLINE | ID: mdl-17452350

ABSTRACT

MolProbity is a general-purpose web server offering quality validation for 3D structures of proteins, nucleic acids and complexes. It provides detailed all-atom contact analysis of any steric problems within the molecules as well as updated dihedral-angle diagnostics, and it can calculate and display the H-bond and van der Waals contacts in the interfaces between components. An integral step in the process is the addition and full optimization of all hydrogen atoms, both polar and nonpolar. New analysis functions have been added for RNA, for interfaces, and for NMR ensembles. Additionally, both the web site and major component programs have been rewritten to improve speed, convenience, clarity and integration with other resources. MolProbity results are reported in multiple forms: as overall numeric scores, as lists or charts of local problems, as downloadable PDB and graphics files, and most notably as informative, manipulable 3D kinemage graphics shown online in the KiNG viewer. This service is available free to all users at http://molprobity.biochem.duke.edu.


Subject(s)
Computational Biology/methods , Nucleic Acid Conformation , Nucleic Acids/chemistry , Protein Conformation , Software , Hydrogen Bonding , Internet , Macromolecular Substances , Models, Molecular , Molecular Structure , Proteins/chemistry , Reproducibility of Results , User-Computer Interface
14.
J Chem Theory Comput ; 13(6): 3031-3048, 2017 Jun 13.
Article in English | MEDLINE | ID: mdl-28430426

ABSTRACT

Over 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: a model parametrized 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, called the Rosetta Energy Function 2015 (REF15). 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 its capabilities from soluble proteins to also include membrane proteins, peptides containing noncanonical amino acids, small molecules, carbohydrates, nucleic acids, and other macromolecules.


Subject(s)
Macromolecular Substances/chemistry , Molecular Dynamics Simulation , HIV Protease/chemistry , HIV Protease/genetics , HIV Protease/metabolism , Macromolecular Substances/metabolism , Mutation , Protein Conformation , Static Electricity , Thermodynamics
16.
Structure ; 24(4): 641-651, 2016 Apr 05.
Article in English | MEDLINE | ID: mdl-26996964

ABSTRACT

A challenge in the structure-based design of specificity is modeling the negative states, i.e., the complexes that you do not want to form. This is a difficult problem because mutations predicted to destabilize the negative state might be accommodated by small conformational rearrangements. To overcome this challenge, we employ an iterative strategy that cycles between sequence design and protein docking in order to build up an ensemble of alternative negative state conformations for use in specificity prediction. We have applied our technique to the design of heterodimeric CH3 interfaces in the Fc region of antibodies. Combining computationally and rationally designed mutations produced unique designs with heterodimer purities greater than 90%. Asymmetric Fc crystallization was able to resolve the interface mutations; the heterodimer structures confirmed that the interfaces formed as designed. With these CH3 mutations, and those made at the heavy-/light-chain interface, we demonstrate one-step synthesis of four fully IgG-bispecific antibodies.


Subject(s)
Antibodies, Bispecific/chemistry , Immunoglobulin Fc Fragments/genetics , Immunoglobulin G/chemistry , Immunoglobulin Heavy Chains/chemistry , Protein Engineering/methods , Computational Biology/methods , Crystallography, X-Ray , Immunoglobulin Fc Fragments/chemistry , Immunoglobulin G/genetics , Immunoglobulin Heavy Chains/genetics , Models, Molecular , Molecular Docking Simulation , Mutation , Protein Domains , Protein Multimerization
17.
J Chem Theory Comput ; 11(2): 609-22, 2015 Feb 10.
Article in English | MEDLINE | ID: mdl-25866491

ABSTRACT

Interactions between polar atoms are challenging to model because at very short ranges they form hydrogen bonds (H-bonds) that are partially covalent in character and exhibit strong orientation preferences; at longer ranges the orientation preferences are lost, but significant electrostatic interactions between charged and partially charged atoms remain. To simultaneously model these two types of behavior, we refined an orientation dependent model of hydrogen bonds [Kortemme et al. J. Mol. Biol. 2003, 326, 1239] used by the molecular modeling program Rosetta and then combined it with a distance-dependent Coulomb model of electrostatics. The functional form of the H-bond potential is physically motivated and parameters are fit so that H-bond geometries that Rosetta generates closely resemble H-bond geometries in high-resolution crystal structures. The combined potentials improve performance in a variety of scientific benchmarks including decoy discrimination, side chain prediction, and native sequence recovery in protein design simulations and establishes a new standard energy function for Rosetta.


Subject(s)
Models, Chemical , Models, Molecular , Software , Static Electricity , Hydrogen Bonding , Molecular Structure
18.
Nat Biotechnol ; 32(2): 191-8, 2014 Feb.
Article in English | MEDLINE | ID: mdl-24463572

ABSTRACT

Robust generation of IgG bispecific antibodies has been a long-standing challenge. Existing methods require extensive engineering of each individual antibody, discovery of common light chains, or complex and laborious biochemical processing. Here we combine computational and rational design approaches with experimental structural validation to generate antibody heavy and light chains with orthogonal Fab interfaces. Parental monoclonal antibodies incorporating these interfaces, when simultaneously co-expressed, assemble into bispecific IgG with improved heavy chain-light chain pairing. Bispecific IgGs generated with this approach exhibit pharmacokinetic and other desirable properties of native IgG, but bind target antigens monovalently. As such, these bispecific reagents may be useful in many biotechnological applications.


Subject(s)
Antibodies, Bispecific/chemistry , Immunoglobulin Fab Fragments/chemistry , Immunoglobulin G/chemistry , Protein Engineering/methods , Animals , Antibodies, Bispecific/metabolism , Biotechnology , Humans , Immunoglobulin Fab Fragments/metabolism , Immunoglobulin G/metabolism , Male , Mice , Models, Biological , Models, Molecular , Protein Binding , Protein Conformation
19.
Methods Enzymol ; 523: 109-43, 2013.
Article in English | MEDLINE | ID: mdl-23422428

ABSTRACT

Accurate energy functions are critical to macromolecular modeling and design. We describe new tools for identifying inaccuracies in energy functions and guiding their improvement, and illustrate the application of these tools to the improvement of the Rosetta energy function. The feature analysis tool identifies discrepancies between structures deposited in the PDB and low-energy structures generated by Rosetta; these likely arise from inaccuracies in the energy function. The optE tool optimizes the weights on the different components of the energy function by maximizing the recapitulation of a wide range of experimental observations. We use the tools to examine three proposed modifications to the Rosetta energy function: improving the unfolded state energy model (reference energies), using bicubic spline interpolation to generate knowledge-based torisonal potentials, and incorporating the recently developed Dunbrack 2010 rotamer library (Shapovalov & Dunbrack, 2011).


Subject(s)
Macromolecular Substances/chemistry , Algorithms , Protein Conformation , Software
20.
PLoS One ; 8(7): e67051, 2013.
Article in English | MEDLINE | ID: mdl-23869206

ABSTRACT

Peptidomimetics are classes of molecules that mimic structural and functional attributes of polypeptides. Peptidomimetic oligomers can frequently be synthesized using efficient solid phase synthesis procedures similar to peptide synthesis. Conformationally ordered peptidomimetic oligomers are finding broad applications for molecular recognition and for inhibiting protein-protein interactions. One critical limitation is the limited set of design tools for identifying oligomer sequences that can adopt desired conformations. Here, we present expansions to the ROSETTA platform that enable structure prediction and design of five non-peptidic oligomer scaffolds (noncanonical backbones), oligooxopiperazines, oligo-peptoids, [Formula: see text]-peptides, hydrogen bond surrogate helices and oligosaccharides. This work is complementary to prior additions to model noncanonical protein side chains in ROSETTA. The main purpose of our manuscript is to give a detailed description to current and future developers of how each of these noncanonical backbones was implemented. Furthermore, we provide a general outline for implementation of new backbone types not discussed here. To illustrate the utility of this approach, we describe the first tests of the ROSETTA molecular mechanics energy function in the context of oligooxopiperazines, using quantum mechanical calculations as comparison points, scanning through backbone and side chain torsion angles for a model peptidomimetic. Finally, as an example of a novel design application, we describe the automated design of an oligooxopiperazine that inhibits the p53-MDM2 protein-protein interaction. For the general biological and bioengineering community, several noncanonical backbones have been incorporated into web applications that allow users to freely and rapidly test the presented protocols (http://rosie.rosettacommons.org). This work helps address the peptidomimetic community's need for an automated and expandable modeling tool for noncanonical backbones.


Subject(s)
Computational Biology/methods , Peptidomimetics/chemistry , Software , Algorithms , Protein Engineering , Protein Structure, Tertiary
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