MassIVE MSV000089986

Partial Public PXD035600

Data-Independent Acquisition and Quantification of Extracellular Matrix from Human Lung in Chronic Inflammation-Associated Carcinomas

Description

Early events associated with chronic inflammation and cancer involve significant remodeling of the extracellular matrix (ECM), which greatly affects its composition and functional properties. Using lung squamous cell carcinoma (LSCC), a chronic inflammation-associated cancer (CIAC), we optimized a robust proteomic pipeline to discover potential biomarker signatures and protein changes specifically in the stroma. We combined ECM enrichment from fresh human tissues, data-independent acquisition strategies, and stringent statistical processing to analyze Tumor and matched adjacent histologically normal (Matched Normal) tissues from patients with LSCC. Overall, 1,802 protein groups were quantified with at least two unique peptides, and 56% of those proteins were annotated as extracellular. Confirming dramatic ECM remodeling during CIAC progression, 529 proteins were significantly altered in the Tumor compared to Matched Normal tissues. The signature was typified by a coordinated loss of basement membrane proteins and small leucine-rich proteins. The dramatic increase in the stromal levels of SERPINH1/heat shock protein 47, that was discovered using our ECM proteomic pipeline, was validated by immunohistochemistry (IHC) of Tumor and Matched Normal tissues, obtained from an independent cohort of LSCC patients. This integrated workflow provided novel insights into ECM remodeling during CIAC progression, and identified potential biomarker signatures and future therapeutic targets. [doi:10.25345/C5833N30C] [dataset license: CC0 1.0 Universal (CC0 1.0)]

Keywords: Data-Independent Acquisition ; Extracellular Matrix ; Lung Squamous Cell Carcinoma ; Quantification ; Serpins

Contact

Principal Investigators:
(in alphabetical order)
Birgit Schilling, Buck Institute, USA
Submitting User: JoannaBons
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Originally identified proteins that were automatically remapped by MassIVE to proteins in the SwissProt human reference database.

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Distinct protein accessions are counted across all files submitted in the "Statistical Analysis of Quantified Analytes" category having a "Protein" column in this dataset.

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