about
Protein structure prediction servers at University College LondonProteins and Their Interacting Partners: An Introduction to Protein-Ligand Binding Site Prediction MethodsDisorder Prediction Methods, Their Applicability to Different Protein Targets and Their Usefulness for Guiding Experimental StudiesFunFOLDQA: a quality assessment tool for protein-ligand binding site residue predictionsPredicting metal-binding site residues in low-resolution structural models.Prediction of novel and analogous folds using fragment assembly and fold recognition.Assessing the quality of modelled 3D protein structures using the ModFOLD server.Benchmarking consensus model quality assessment for protein fold recognition.IntFOLD: an integrated server for modelling protein structures and functions from amino acid sequences.Toolbox for Protein Structure Prediction.Rapid model quality assessment for protein structure predictions using the comparison of multiple models without structural alignments.In silico Identification and Characterization of Protein-Ligand Binding Sites.The IntFOLD server: an integrated web resource for protein fold recognition, 3D model quality assessment, intrinsic disorder prediction, domain prediction and ligand binding site prediction.The FunFOLD2 server for the prediction of protein-ligand interactions.Dominant β-catenin mutations cause intellectual disability with recognizable syndromic features.Targeting novel folds for structural genomics.High throughput profile-profile based fold recognition for the entire human proteome.FunFOLD: an improved automated method for the prediction of ligand binding residues using 3D models of proteins.The DISOPRED server for the prediction of protein disorder.GRID and docking analyses reveal a molecular basis for flavonoid inhibition of Src family kinase activity.A novel non-canonical mechanism of regulation of MST3 (mammalian Sterile20-related kinase 3).Genetic diversity at the Dhn3 locus in Turkish Hordeum spontaneum populations with comparative structural analyses.The ModFOLD4 server for the quality assessment of 3D protein modelsSOcK, MiSTs, MASK and STicKs: the GCKIII (germinal centre kinase III) kinases and their heterologous protein-protein interactions.Rapid protein domain assignment from amino acid sequence using predicted secondary structure.RAPIDSNPs: A new computational pipeline for rapidly identifying key genetic variants reveals previously unidentified SNPs that are significantly associated with individual platelet responsesAutomated tertiary structure prediction with accurate local model quality assessment using the IntFOLD-TS method.The binding site distance test score: a robust method for the assessment of predicted protein binding sites.The Genomic Threading Database: a comprehensive resource for structural annotations of the genomes from key organismsReFOLD: a server for the refinement of 3D protein models guided by accurate quality estimates.ModFOLD6: an accurate web server for the global and local quality estimation of 3D protein models.The mysterious presence of a 5-methylcytosine oxidase in the Drosophila genome: possible explanations.Structure and evolution of barley powdery mildew effector candidates.Improvement of the GenTHREADER method for genomic fold recognition.Methods for estimation of model accuracy in CASP12.Prediction of global and local model quality in CASP8 using the ModFOLD server.Predictive and Experimental Approaches for Elucidating Protein-Protein Interactions and Quaternary Structures.Improvement of 3D protein models using multiple templates guided by single-template model quality assessment.Accurate template-based modeling in CASP12 using the IntFOLD4-TS, ModFOLD6, and ReFOLD methods.Improving sequence-based fold recognition by using 3D model quality assessment.
P50
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description
hulumtues
@sq
onderzoeker
@nl
researcher
@en
հետազոտող
@hy
name
Liam J. McGuffin
@ast
Liam J. McGuffin
@en
Liam J. McGuffin
@es
Liam J. McGuffin
@sl
type
label
Liam J. McGuffin
@ast
Liam J. McGuffin
@en
Liam J. McGuffin
@es
Liam J. McGuffin
@sl
prefLabel
Liam J. McGuffin
@ast
Liam J. McGuffin
@en
Liam J. McGuffin
@es
Liam J. McGuffin
@sl
P1053
A-5598-2008
P106
P1153
6602167211
P21
P2456
P31
P3829
P496
0000-0003-4501-4767