Dataset size and composition impact the reliability of performance benchmarks for peptide-MHC binding predictions
about
An open-source computational and data resource to analyze digital maps of immunopeptidomesThe Immune Epitope Database and Analysis Resource in Epitope Discovery and Synthetic Vaccine DesignImproved pan-specific prediction of MHC class I peptide binding using a novel receptor clustering data partitioning strategy.PSSMHCpan: a novel PSSM-based software for predicting class I peptide-HLA binding affinityAutomated benchmarking of peptide-MHC class I binding predictions.NetMHCpan-3.0; improved prediction of binding to MHC class I molecules integrating information from multiple receptor and peptide length datasets.MHC class I-associated peptides derive from selective regions of the human genome.High-order neural networks and kernel methods for peptide-MHC binding prediction.Transmembrane Helices Are an Overlooked Source of Major Histocompatibility Complex Class I Epitopes.Genome-Wide Prediction of Potential Vaccine Candidates for Campylobacter jejuni Using Reverse Vaccinology.Machine learning reveals a non-canonical mode of peptide binding to MHC class II molecules.Deep convolutional neural networks for pan-specific peptide-MHC class I binding prediction.Improved methods for predicting peptide binding affinity to MHC class II molecules.An automated benchmarking platform for MHC class II binding prediction methods.Pan-cancer analysis of neoepitopes
P2860
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P2860
Dataset size and composition impact the reliability of performance benchmarks for peptide-MHC binding predictions
description
2014 nî lūn-bûn
@nan
2014 թուականի Յուլիսին հրատարակուած գիտական յօդուած
@hyw
2014 թվականի հուլիսին հրատարակված գիտական հոդված
@hy
2014年の論文
@ja
2014年論文
@yue
2014年論文
@zh-hant
2014年論文
@zh-hk
2014年論文
@zh-mo
2014年論文
@zh-tw
2014年论文
@wuu
name
Dataset size and composition i ...... eptide-MHC binding predictions
@ast
Dataset size and composition i ...... eptide-MHC binding predictions
@en
type
label
Dataset size and composition i ...... eptide-MHC binding predictions
@ast
Dataset size and composition i ...... eptide-MHC binding predictions
@en
prefLabel
Dataset size and composition i ...... eptide-MHC binding predictions
@ast
Dataset size and composition i ...... eptide-MHC binding predictions
@en
P2093
P2860
P50
P356
P1433
P1476
Dataset size and composition i ...... eptide-MHC binding predictions
@en
P2093
John Sidney
Søren Buus
P2860
P2888
P356
10.1186/1471-2105-15-241
P577
2014-07-14T00:00:00Z
P5875
P6179
1003789687