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A large-scale evaluation of computational protein function predictionThe PMDB Protein Model DatabaseFFPred 3: feature-based function prediction for all Gene Ontology domains.Genome3D: exploiting structure to help users understand their sequencesAn expanded evaluation of protein function prediction methods shows an improvement in accuracyAn analysis of the Sargasso Sea resource and the consequences for database compositionEvaluation of template-based models in CASP8 with standard measuresRelationship between multiple sequence alignments and quality of protein comparative models.Evaluation of predictions in the CASP10 model refinement category.Assessment of predictions in the model quality assessment category.The evaluation of protein structure prediction results.The assessment of methods for protein structure prediction.Evaluation of CASP8 model quality predictions.PSICOV: precise structural contact prediction using sparse inverse covariance estimation on large multiple sequence alignments.Protein function prediction by massive integration of evolutionary analyses and multiple data sources.DISOPRED3: precise disordered region predictions with annotated protein-binding activityFFPred 2.0: improved homology-independent prediction of gene ontology terms for eukaryotic protein sequences.Computer-assisted protein domain boundary prediction using the DomPred server.The contribution of intrinsic disorder prediction to the elucidation of protein function.Computational Methods for Annotation Transfers from Sequence.Ten years of predictions ... and counting.Predicting human protein function with multi-task deep neural networks.The CAFA challenge reports improved protein function prediction and new functional annotations for hundreds of genes through experimental screensInterleukin-22 orchestrates a pathological endoplasmic reticulum stress response transcriptional programme in colonic epithelial cellsUsing deep maxout neural networks to improve the accuracy of function prediction from protein interaction networks
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P50
description
hulumtues
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researcher
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wetenschapper
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հետազոտող
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name
Domenico Cozzetto
@ast
Domenico Cozzetto
@en
Domenico Cozzetto
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Domenico Cozzetto
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Domenico Cozzetto
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type
label
Domenico Cozzetto
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Domenico Cozzetto
@en
Domenico Cozzetto
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Domenico Cozzetto
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Domenico Cozzetto
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prefLabel
Domenico Cozzetto
@ast
Domenico Cozzetto
@en
Domenico Cozzetto
@es
Domenico Cozzetto
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Domenico Cozzetto
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P106
P1960
0XW5e6QAAAAJ
P21
P2456
P31
P496
0000-0001-6752-5432
P569
2000-01-01T00:00:00Z