PXD017673 is an
original dataset announced via ProteomeXchange.
Dataset Summary
Title | MealTime-MS: A Machine Learning-Guided Real-Time Mass Spectrometry Analysis for Proteomics |
Description | Mass spectrometry-based proteomics technologies are the prime methods for the high-throughput identification of proteins expressed in complex biological samples. Nevertheless, mass spectrometry’s technical limitations still hinder its ability to identify low abundance proteins in complex samples. Characterizing such proteins is essential to provide a comprehensive understanding of the biological processes taking place in a sample. Still today, a large part of the mass spectrometry-based proteomics performed use a data-dependent approach that favors the acquisition of mass spectra and detection of proteins of higher abundance. Combined to the fact that the computational identification of proteins from mass spectrometry data is typically performed after mass spectrometry data acquisition, large numbers of mass spectra are redundantly collected from the same abundant proteins and little to no mass spectra are acquired for proteins of lower abundance. To address this problem, we propose a novel supervised learning algorithm that identifies proteins in real-time as mass spectrometry data is acquired and prevents the further data acquisition related to confidently identified proteins to improve the identification sensitivity of low abundance proteins. We show in real-time simulations of a previously performed mass spectrometry analysis of a HEK293 cell lysates that our approach can identify 92.1% of the proteins using 66.2% of the MS2 spectra acquired in the experiment. We also demonstrate that our approach is fast enough for real-time mass spectrometry analysis, is flexible and that it outperforms previously proposed methods. Our method efficient usage of mass spectrometry resources will provide a more comprehensive characterization of proteomes in complex samples. |
HostingRepository | PRIDE |
AnnounceDate | 2020-10-27 |
AnnouncementXML | Submission_2020-10-27_00:16:23.xml |
DigitalObjectIdentifier | |
ReviewLevel | Peer-reviewed dataset |
DatasetOrigin | Original dataset |
RepositorySupport | Unsupported dataset by repository |
PrimarySubmitter | Mathieu Lavallée-Adam |
SpeciesList | scientific name: Homo sapiens (Human); NCBI TaxID: 9606; |
ModificationList | iodoacetamide derivatized residue |
Instrument | Q Exactive |
Dataset History
Revision | Datetime | Status | ChangeLog Entry |
0 | 2020-02-20 23:39:31 | ID requested | |
⏵ 1 | 2020-10-27 00:16:24 | announced | |
Publication List
Pelletier AR, Chung YE, Ning Z, Wong N, Figeys D, Lavall, é, e-Adam M, MealTime-MS: A Machine Learning-Guided Real-Time Mass Spectrometry Analysis for Protein Identification and Efficient Dynamic Exclusion. J Am Soc Mass Spectrom, 31(7):1459-1472(2020) [pubmed] |
Keyword List
submitter keyword: Human, Cell Line, HEK293, LC-MS/MS |
Contact List
Mathieu Lavallée-Adam |
contact affiliation | Department Biochemistry, Microbiology and Immunology, Ottawa Institute of Systems Biology, University of Ottawa |
contact email | mathieu.lavallee@uottawa.ca |
lab head | |
Mathieu Lavallée-Adam |
contact affiliation | University of Ottawa |
contact email | mathieu.lavallee@uottawa.ca |
dataset submitter | |
Full Dataset Link List
Dataset FTP location
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PRIDE project URI |
Repository Record List
[ + ]
[ - ]
- PRIDE
- PXD017673
- Label: PRIDE project
- Name: MealTime-MS: A Machine Learning-Guided Real-Time Mass Spectrometry Analysis for Proteomics