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Journal ArticleDOI

A hierarchical approach to all-atom protein loop prediction.

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TLDR
The overall results are the best reported to date, and the combination of an accurate all‐atom energy function, efficient methods for loop buildup and side‐chain optimization, and, especially for the longer loops, the hierarchical refinement protocol is attributed.
Abstract
The application of all-atom force fields (and explicit or implicit solvent models) to protein homology-modeling tasks such as side-chain and loop prediction remains challenging both because of the expense of the individual energy calculations and because of the difficulty of sampling the rugged all-atom energy surface. Here we address this challenge for the problem of loop prediction through the development of numerous new algorithms, with an emphasis on multiscale and hierarchical techniques. As a first step in evaluating the performance of our loop prediction algorithm, we have applied it to the problem of reconstructing loops in native structures; we also explicitly include crystal packing to provide a fair comparison with crystal structures. In brief, large numbers of loops are generated by using a dihedral angle-based buildup procedure followed by iterative cycles of clustering, side-chain optimization, and complete energy minimization of selected loop structures. We evaluate this method by using the largest test set yet used for validation of a loop prediction method, with a total of 833 loops ranging from 4 to 12 residues in length. Average/median backbone root-mean-square deviations (RMSDs) to the native structures (superimposing the body of the protein, not the loop itself) are 0.42/0.24 A for 5 residue loops, 1.00/0.44 A for 8 residue loops, and 2.47/1.83 A for 11 residue loops. Median RMSDs are substantially lower than the averages because of a small number of outliers; the causes of these failures are examined in some detail, and many can be attributed to errors in assignment of protonation states of titratable residues, omission of ligands from the simulation, and, in a few cases, probable errors in the experimentally determined structures. When these obvious problems in the data sets are filtered out, average RMSDs to the native structures improve to 0.43 A for 5 residue loops, 0.84 A for 8 residue loops, and 1.63 A for 11 residue loops. In the vast majority of cases, the method locates energy minima that are lower than or equal to that of the minimized native loop, thus indicating that sampling rarely limits prediction accuracy. The overall results are, to our knowledge, the best reported to date, and we attribute this success to the combination of an accurate all-atom energy function, efficient methods for loop buildup and side-chain optimization, and, especially for the longer loops, the hierarchical refinement protocol.

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Citations
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Journal ArticleDOI

Comparative Protein Structure Modeling Using MODELLER

TL;DR: This unit describes how to calculate comparative models using the program MODELLER and discusses all four steps of comparative modeling, frequently observed errors, and some applications.
Journal ArticleDOI

Comparative protein structure modeling using Modeller.

TL;DR: This unit describes how to calculate comparative models using the program MODELLER and discusses all four steps of comparative modeling, frequently observed errors, and some applications.
Book ChapterDOI

Protein structure modeling with MODELLER.

TL;DR: This chapter presents an example that illustrates the use of MODELLER to construct a comparative model for a protein with unknown structure, and shows the potential for this technique to bridge the sequence-structure gap in protein structure modeling.
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Novel procedure for modeling ligand/receptor induced fit effects.

TL;DR: A novel protein-ligand docking method that accurately accounts for both ligand and receptor flexibility by iteratively combining rigid receptor docking (Glide) with protein structure prediction (Prime) techniques is presented.
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Benchmarking sets for molecular docking.

TL;DR: A directory of useful decoys (DUD), with 2950 ligands for 40 different targets, leading to a database of 98,266 compounds, which allowed 40x40 cross-docking, where the enrichments of each ligand set could be compared for all 40 targets, enabling a specificity metric for the docking screens.
References
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Journal ArticleDOI

Development and Testing of the OPLS All-Atom Force Field on Conformational Energetics and Properties of Organic Liquids

TL;DR: In this article, the parametrization and testing of the OPLS all-atom force field for organic molecules and peptides are described, and the parameters for both torsional and non-bonded energy properties have been derived, while the bond stretching and angle bending parameters have been adopted mostly from the AMBER force field.
Book

Clustering Algorithms

Journal ArticleDOI

Evaluation and Reparametrization of the OPLS-AA Force Field for Proteins via Comparison with Accurate Quantum Chemical Calculations on Peptides†

TL;DR: In this article, a fitting technique combines using accurate ab initio data as the target, choosing an efficient fitting subspace of the whole potential energy surface, and determining weights for each of the fitting points based on magnitudes of the potential energy gradient.
Journal ArticleDOI

Modeling of loops in protein structures.

TL;DR: A new automated modeling technique that significantly improves the accuracy of loop predictions in protein structures by predicting loops of known structure in only approximately correct environments with errors typical of comparative modeling without misalignment is described.
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