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PXD015914-1

PXD015914 is an original dataset announced via ProteomeXchange.

Dataset Summary
TitleReproducible Workflow for Multiplexed Deep-Scale Proteome and Phosphoproteome Analysis of Tumor Tissues by Liquid Chromatography-Mass Spectrometry
Description

Mertins P, Tang LC, Krug K, Clark DJ, Gritsenko MA, Chen L, Clauser KR, Clauss TR, Shah P, Gillette MA, et al., Nat Protoc. 2018 Jul 9. doi: 10.1038/s41596-018-0006-9

Here we present an optimized workflow for global proteome and phosphoproteome analysis of tissues or cell lines that uses isobaric tags (TMT (tandem mass tags)10) for multiplexed analysis and relative quantification, and provides 3x higher throughput than iTRAQ (isobaric tags for absolute and relative quantification)-4-based methods with high intra and inter-laboratory reproducibility. The workflow was systematically characterized and benchmarked across three independent laboratories using two distinct breast cancer subtypes from patient-derived xenograft models to enable assessment of proteome and phosphoproteome depth and quantitative reproducibility. Each plex consisted of ten samples, each being 300 ug of peptide derived from <50 mg of wet-weight tissue. Of the 10,000 proteins quantified per sample, we could distinguish 7,700 human proteins derived from tumor cells and 3100 mouse proteins derived from the surrounding stroma and blood. The maximum deviation across replicates and laboratories was <7%, and the inter-laboratory correlation for TMT ratio-based comparison of the two breast cancer subtypes was r > 0.88. The maximum deviation for the phosphoproteome coverage was <24% across laboratories, with an average of >37,000 quantified phosphosites per sample and differential quantification correlations of r > 0.72. The full procedure, including sample processing and data generation, can be completed within 10 d for ten tissue samples, and 100 samples can be analyzed in ~4 months using a single LC-MS/MS instrument. The high quality, depth, and reproducibility of the data obtained both within and across laboratories should enable new biological insights to be obtained from mass spectrometry-based proteomics analyses of cells and tissues together with proteogenomic data integration.

HostingRepositoryMassIVE
AnnounceDate2024-04-09
AnnouncementXMLSubmission_2024-04-09_10:12:28.154.xml
DigitalObjectIdentifier
ReviewLevelPeer-reviewed dataset
DatasetOriginOriginal dataset
RepositorySupportSupported dataset by repository
PrimarySubmitterXu Zhang
SpeciesList scientific name: Homo sapiens; common name: human; NCBI TaxID: 9606; scientific name: Mus musculus; common name: house mouse; NCBI TaxID: 10090;
ModificationListCarbamidomethyl; TMT6plex
Instrumentinstrument model
Dataset History
RevisionDatetimeStatusChangeLog Entry
02019-10-18 09:03:59ID requested
12024-04-09 10:12:29announced
Publication List
Mertins P, Tang LC, Krug K, Clark DJ, Gritsenko MA, Chen L, Clauser KR, Clauss TR, Shah P, Gillette MA, Petyuk VA, Thomas SN, Mani DR, Mundt F, Moore RJ, Hu Y, Zhao R, Schnaubelt M, Keshishian H, Monroe ME, Zhang Z, Udeshi ND, Mani D, Davies SR, Townsend RR, Chan DW, Smith RD, Zhang H, Liu T, Carr SA, Reproducible workflow for multiplexed deep-scale proteome and phosphoproteome analysis of tumor tissues by liquid chromatography-mass spectrometry. Nat Protoc, 13(7):1632-1661(2018) [pubmed]
Keyword List
submitter keyword: CPTAC
Contact List
Steven A. Carr
contact affiliationBroad Institute of MIT and Harvard
contact emailscarr@broadinstitute.org
lab head
Hui Zhang
contact affiliationAssociate Prosfessor, Johns Hopkins University, Department of Pathology Baltimore USA
contact emailhzhang32@jhmi.edu
lab head
Tao Liu
contact affiliationPacific Northwest National Laboratory
contact emailtao.liu@pnnl.gov
lab head
Xu Zhang
contact affiliationNIH/NCI
contact emailxu.zhang@nih.gov
dataset submitter
Full Dataset Link List
MassIVE dataset URI
Dataset FTP location
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