PyProteinInference provides a comprehensive suite of tools to guide researchers through the application of multiple protein inference algorithms and computation of protein-level, set-based false discovery rates (FDR) from tandem mass spectrometry (MS/MS) data using a single interface. Here, we use a benchmark K562 whole cell lysate to demonstrate that PyProteinInference is a reliable, easy-to-use inference tool that simplifies the often-difficult process of inferring protein identities from MS/MS data.
[doi:10.25345/C5KW57N8X]
[dataset license: CC0 1.0 Universal (CC0 1.0)]
Keywords: k562
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Principal Investigators: (in alphabetical order) |
Corey Bakalarski, Genentech, Inc, USA |
| Submitting User: | hinklet |
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Proteins (Human, Remapped):
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FTP Download Link (click to copy):
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