| Literature DB >> 31407580 |
John T Halloran1, Hantian Zhang2, Kaan Kara2, Cédric Renggli2, Matthew The3, Ce Zhang2, David M Rocke1, Lukas Käll3, William Stafford Noble.
Abstract
The processing of peptide tandem mass spectrometry data involves matching observed spectra against a sequence database. The ranking and calibration of these peptide-spectrum matches can be improved substantially using a machine learning postprocessor. Here, we describe our efforts to speed up one widely used postprocessor, Percolator. The improved software is dramatically faster than the previous version of Percolator, even when using relatively few processors. We tested the new version of Percolator on a data set containing over 215 million spectra and recorded an overall reduction to 23% of the running time as compared to the unoptimized code. We also show that the memory footprint required by these speedups is modest relative to that of the original version of Percolator.Entities:
Keywords: SVM; machine learning; percolator; support vector machine; tandem mass spectrometry
Mesh:
Substances:
Year: 2019 PMID: 31407580 PMCID: PMC6884961 DOI: 10.1021/acs.jproteome.9b00288
Source DB: PubMed Journal: J Proteome Res ISSN: 1535-3893 Impact factor: 4.466