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Improving protein fold recognition and template-based modeling by employing probabilistic-based matching between predicted one-dimensional structural properties of query and corresponding native properties of templatesFast and accurate non-sequential protein structure alignment using a new asymmetric linear sum assignment heuristicHighly accurate sequence-based prediction of half-sphere exposures of amino acid residues in proteinsDirect prediction of profiles of sequences compatible with a protein structure by neural networks with fragment-based local and energy-based nonlocal profilesPredicting backbone Cα angles and dihedrals from protein sequences by stacked sparse auto-encoder deep neural network.Improving prediction of secondary structure, local backbone angles, and solvent accessible surface area of proteins by iterative deep learning.Effective protein conformational sampling based on predicted torsion angles.LRFragLib: an effective algorithm to identify fragments for de novo protein structure prediction.Sixty-five years of the long march in protein secondary structure prediction: the final stretch?Trends in template/fragment-free protein structure predictionCapturing Non-Local Interactions by Long Short Term Memory Bidirectional Recurrent Neural Networks for Improving Prediction of Protein Secondary Structure, Backbone Angles, Contact Numbers, and Solvent Accessibility.Community-wide assessment of protein-interface modeling suggests improvements to design methodology.DDIG-in: discriminating between disease-associated and neutral non-frameshifting micro-indelsStructural basis for SUMO-E2 interaction revealed by a complex model using docking approach in combination with NMR data.Improving the detection of pathways in genome-wide association studies by combined effects of SNPs from Linkage Disequilibrium blocks.Structure-based prediction of DNA-binding proteins by structural alignment and a volume-fraction corrected DFIRE-based energy functionStructure-based prediction of RNA-binding domains and RNA-binding sites and application to structural genomics targets.Predicting DNA-binding proteins and binding residues by complex structure prediction and application to human proteome.SPINE X: improving protein secondary structure prediction by multistep learning coupled with prediction of solvent accessible surface area and backbone torsion anglesInvestigation the Possibility of Using Peptides with a Helical Repeating Pattern of Hydro-Phobic and Hydrophilic Residues to Inhibit IL-10.SPOT-ligand 2: improving structure-based virtual screening by binding-homology search on an expanded structural template library.Natural protein sequences are more intrinsically disordered than random sequencesInfectivity of Plasmodium falciparum in Malaria-Naive Individuals Is Related to Knob Expression and Cytoadherence of the Parasite.Structural insights into the histone H1-nucleosome complexEnergy functions in de novo protein design: current challenges and future prospects.The role of semidisorder in temperature adaptation of bacterial FlgM proteins.Genome-scale characterization of RNA tertiary structures and their functional impact by RNA solvent accessibility prediction.SPOT-Seq-RNA: predicting protein-RNA complex structure and RNA-binding function by fold recognition and binding affinity prediction.Prediction and validation of the unexplored RNA-binding protein atlas of the human proteome.Systems-level understanding of ethanol-induced stresses and adaptation in E. coli.Prediction of RNA binding proteins comes of age from low resolution to high resolution.Improving protein disorder prediction by deep bidirectional long short-term memory recurrent neural networks.ExonImpact: Prioritizing Pathogenic Alternative Splicing Events.Predicting the errors of predicted local backbone angles and non-local solvent- accessibilities of proteins by deep neural networks.Ab initio folding of terminal segments with secondary structures reveals the fine difference between two closely related all-atom statistical energy functionsEnrichment of SNPs in Functional Categories Reveals Genes Affecting Complex Traits.Advancing the Accuracy of Protein Fold Recognition by Utilizing Profiles From Hidden Markov Models.Structural signatures of thermal adaptation of bacterial ribosomal RNA, transfer RNA, and messenger RNA.Template-based structure prediction and classification of transcription factors in Arabidopsis thalianaSequence and Structure Analysis of Biological Molecules Based on Computational Methods.
P50
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P50
description
researcher
@en
wetenschapper
@nl
հետազոտող
@hy
name
Yuedong Yang
@ast
Yuedong Yang
@en
Yuedong Yang
@es
Yuedong Yang
@nl
Yuedong Yang
@sl
type
label
Yuedong Yang
@ast
Yuedong Yang
@en
Yuedong Yang
@es
Yuedong Yang
@nl
Yuedong Yang
@sl
prefLabel
Yuedong Yang
@ast
Yuedong Yang
@en
Yuedong Yang
@es
Yuedong Yang
@nl
Yuedong Yang
@sl
P1053
C-9394-2009
P106
P1153
8439078900
P2798
P31
P3829
P496
0000-0002-6782-2813
P5008
P569
2000-01-01T00:00:00Z