about
A primer to frequent itemset mining for bioinformaticsjqcML: an open-source java API for mass spectrometry quality control data in the qcML format.A community proposal to integrate proteomics activities in ELIXIRMachine learning applications in proteomics research: how the past can boost the future.The Proteomics Standards Initiative: Fifteen Years of Progress and Future Work.qcML: an exchange format for quality control metrics from mass spectrometry experiments.On the feasibility of mining CD8+ T cell receptor patterns underlying immunogenic peptide recognition.Designing biomedical proteomics experiments: state-of-the-art and future perspectives.The Human Proteome Organization-Proteomics Standards Initiative Quality Control Working Group: Making Quality Control More Accessible for Biological Mass Spectrometry.Computational quality control tools for mass spectrometry proteomics.Mining the Enriched Subgraphs for Specific Vertices in a Biological Graph.iMonDB: Mass Spectrometry Quality Control through Instrument Monitoring.Efficient reduction of candidate matches in peptide spectrum library searching using the top k most intense peaks.Quality control in mass spectrometry-based proteomics.Unsupervised Quality Assessment of Mass Spectrometry Proteomics Experiments by Multivariate Quality Control Metrics.Fast Open Modification Spectral Library Searching through Approximate Nearest Neighbor IndexingGrasping frequent subgraph mining for bioinformatics applicationsProceedings of the EuBIC developer's meeting 2018TCRex: a webtool for the prediction of T-cell receptor sequence epitope specificityUsing Expert Driven Machine Learning to Enhance Dynamic Metabolomics Data Analysis2018 YPIC Challenge: A Case Study in Characterizing an Unknown Protein Samplespectrum_utils: A Python Package for Mass Spectrometry Data Processing and VisualizationMESSAR: Automated recommendation of metabolite substructures from tandem mass spectraExtremely Fast and Accurate Open Modification Spectral Library Searching of High-Resolution Mass Spectra Using Feature Hashing and Graphics Processing Units
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description
researcher
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wetenschapper
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հետազոտող
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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type
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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Wout Bittremieux
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P108
P106
P31
P496
0000-0002-3105-1359