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PXD015909-1

PXD015909 is an original dataset announced via ProteomeXchange.

Dataset Summary
TitleIntegrated bottom-up and top-down proteomics of patient-derived breast tumor xenografts
Description

Ntai, I., LeDuc, R.D., Fellers, R.T., et al., (2015) Molecular and Cellular Proteomics, Manuscript M114.047480

Bottom-up proteomics relies on the use of proteases and is the method of choice for identifying thousands of protein groups in complex samples. Top-down proteomics has been shown to be robust for direct analysis of small proteins and offers a solution to the peptide-to- protein inference problem inherent with bottom-up approaches. Here, we describe the first large-scale integration of genomic, bottom-up and top-down proteomic data for the comparative analysis of patient-derived mouse xenograft models of basal and luminal B human breast cancer, WHIM2 and WHIM16, respectively. Using these well-characterized xenograft models established by the National Cancer Institute's Clinical Proteomic Tumor Analysis Consortium, we compared and contrasted the performance of bottom-up and top-down proteomics to detect cancer-specific aberrations at the peptide and proteoform levels, and to measure differential expression of proteins and proteoforms. Bottom-up proteomic analysis of the tumor xenografts detected almost 10 times as many coding nucleotide polymorphisms and peptides resulting from novel splice junctions than top-down. For proteins in the range of 0-30 kDa, where quantitation was performed using both approaches, bottom-up proteomics quantified 3,519 protein groups from 49,185 peptides, while top-down proteomics quantified 982 proteoforms mapping to 358 proteins. Examples of both concordant and discordant quantitation were found in an approximately 60:40 ratio, providing a unique opportunity for top-down to fill in missing information. The two techniques showed complementary performance, with bottom-up yielding 8 times more identifications of 0-30 kDa proteins in xenograft proteomes, but failing to detect differences in certain post-translational modifications (PTMs), such as phosphorylation pattern changes of alpha-endosulfine. This work illustrates the potency of a combined bottom-up and top-down proteomics approach to deepen our knowledge of cancer biology, especially when genomic data are available.

HostingRepositoryMassIVE
AnnounceDate2020-01-23
AnnouncementXMLSubmission_2020-01-23_16:38:36.xml
DigitalObjectIdentifier
ReviewLevelNon peer-reviewed dataset
DatasetOriginOriginal dataset
RepositorySupportUnsupported dataset by repository
PrimarySubmitterChristopher Kinsinger
SpeciesList scientific name: Homo sapiens; common name: human; NCBI TaxID: 9606; scientific name: Mus musculus; common name: house mouse; NCBI TaxID: 10090;
ModificationListCarbamidomethyl; Oxidation
InstrumentTripleTOF 5600; LTQ Orbitrap Elite
Dataset History
RevisionDatetimeStatusChangeLog Entry
02019-10-18 09:00:52ID requested
12020-01-23 16:38:37announced
Publication List
no publication
Keyword List
submitter keyword: CPTAC
Contact List
Neil L Kelleher
contact affiliationNorthwestern University
contact emailneil.kelleher@norwestern.edu
lab head
Christopher Kinsinger
contact affiliationNIH/NCI
contact emailChristopher.kinsinger@nih.gov
dataset submitter
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