CODA: a combined algorithm for predicting the structurally variable regions of protein models.
about
Advances in Homology Protein Structure ModelingTemplate-based protein structure modelingModeling large regions in proteins: applications to loops, termini, and foldingStructures of the two 3D domain-swapped RNase A trimersRPBS: a web resource for structural bioinformaticsLoopIng: a template-based tool for predicting the structure of protein loopsComparative protein structure modeling using ModellerMemoir: template-based structure prediction for membrane proteinsSequence-structure homology recognition by iterative alignment refinement and comparative modeling.Automated protein structure homology modeling: a progress report.Protein structure modeling in the proteomics era.ArchPRED: a template based loop structure prediction server.Comparative Protein Structure Modeling Using MODELLERAntibody humanization by structure-based computational protein design.ABodyBuilder: Automated antibody structure prediction with data-driven accuracy estimation.Antibody H3 Structure Prediction.A modular perspective of protein structures: application to fragment based loop modeling.LoopWeaver: loop modeling by the weighted scaling of verified proteins.Visualization of alpha-helices in a 6-angstrom resolution cryoelectron microscopy structure of adenovirus allows refinement of capsid protein assignments.Accurate and efficient loop selections by the DFIRE-based all-atom statistical potential.A supersecondary structure library and search algorithm for modeling loops in protein structures.Evaluating conformational free energies: the colony energy and its application to the problem of loop prediction.Structure prediction of loops with fixed and flexible stemsStructural biology and bioinformatics in drug design: opportunities and challenges for target identification and lead discovery.Prediction of protein loop structures using a local move Monte Carlo approach and a grid-based force fieldConformational sampling in template-free protein loop structure modeling: an overview.Molecular model of human heparanase with proposed binding mode of a heparan sulfate oligosaccharide and catalytic amino acids.Sphinx: merging knowledge-based and ab initio approaches to improve protein loop prediction.Fragment-based modeling of membrane protein loops: successes, failures, and prospects for the future.Comparative Protein Structure Modeling Using MODELLER.Antibodies as a model system for comparative model refinement.Cryoelectron microscopy map of Atadenovirus reveals cross-genus structural differences from human adenovirusSL2: an interactive webtool for modeling of missing segments in proteinsDevelopment of a new physics-based internal coordinate mechanics force field and its application to protein loop modeling.Toward better refinement of comparative models: predicting loops in inexact environments.Comparative Protein Structure Modeling Using MODELLER.How B-Cell Receptor Repertoire Sequencing Can Be Enriched with Structural Antibody Data.Predicting loop conformational ensembles.Predicting antibody complementarity determining region structures without classification.Large loop conformation sampling using the activation relaxation technique, ART-nouveau method.
P2860
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P2860
CODA: a combined algorithm for predicting the structurally variable regions of protein models.
description
2001 nî lūn-bûn
@nan
2001 թուականի Մարտին հրատարակուած գիտական յօդուած
@hyw
2001 թվականի մարտին հրատարակված գիտական հոդված
@hy
2001年の論文
@ja
2001年論文
@yue
2001年論文
@zh-hant
2001年論文
@zh-hk
2001年論文
@zh-mo
2001年論文
@zh-tw
2001年论文
@wuu
name
CODA: a combined algorithm for ...... ble regions of protein models.
@ast
CODA: a combined algorithm for ...... ble regions of protein models.
@en
type
label
CODA: a combined algorithm for ...... ble regions of protein models.
@ast
CODA: a combined algorithm for ...... ble regions of protein models.
@en
prefLabel
CODA: a combined algorithm for ...... ble regions of protein models.
@ast
CODA: a combined algorithm for ...... ble regions of protein models.
@en
P2860
P356
P1433
P1476
CODA: a combined algorithm for ...... able regions of protein models
@en
P2860
P304
P356
10.1110/PS.37601
P577
2001-03-01T00:00:00Z