mokapot: Fast and Flexible Semisupervised Learning for Peptide Detection
William E. Fondrie, William Stafford Noble
Abstract
Proteomics studies rely on the accurate assignment of peptides to the acquired tandem mass spectra-a task where machine learning algorithms have proven invaluable. We describe mokapot, which provides a flexible semisupervised learning algorithm that allows for highly customized analyses. We demonstrate some of the unique features of mokapot by improving the detection of RNA-cross-linked peptides from an analysis of RNA-binding proteins and increasing the consistency of peptide detection in a single-cell proteomics study.
Topics & Concepts
ProteomicsPeptideComputer scienceComputational biologyTask (project management)Artificial intelligenceConsistency (knowledge bases)RNATandem mass spectrometryMachine learningBiologyMass spectrometryChemistryChromatographyBiochemistryGeneEngineeringSystems engineeringAdvanced Proteomics Techniques and ApplicationsMass Spectrometry Techniques and ApplicationsMachine Learning in Bioinformatics