Proteome Analysis of Pancreatic Tumors Implicates Extracellular Matrix in Patient Outcome

Author:

Silwal-Pandit Laxmi1,Stålberg Stina M.12,Johansson Henrik J.3,Mermelekas Georgios3,Lothe Inger Marie B.14,Skrede Martina L.1,Dalsgaard Astrid Marie1,Nebdal Daniel J. H.1ORCID,Helland Åslaug15ORCID,Lingjærde Ole Christian16ORCID,Labori Knut Jørgen57ORCID,Skålhegg Bjørn S.8,Lehtiö Janne3,Kure Elin H.12ORCID

Affiliation:

1. 1Department of Cancer Genetics, Institute for Cancer Research, Oslo University Hospital, Oslo, Norway.

2. 2Department of Natural Sciences and Environmental Health, University of South-Eastern Norway, Bø i Telemark, Norway.

3. 3Department of Oncology-Pathology, Karolinska Institutet, Science for Life Laboratory, Solna, Sweden.

4. 4Department of Pathology, Oslo University Hospital, Oslo, Norway.

5. 5Institute of Clinical Medicine, University of Oslo, Oslo, Norway.

6. 6Department of Computer Science, University of Oslo, Oslo, Norway.

7. 7Department of Hepato-Pancreato-Biliary Surgery, Oslo University Hospital, Oslo, Norway.

8. 8Division of Molecular Nutrition, University of Oslo, Oslo, Norway.

Abstract

Pancreatic cancer remains a disease with unmet clinical needs and inadequate diagnostic, prognostic, and predictive biomarkers. In-depth characterization of the disease proteome is limited. This study thus aims to define and describe protein networks underlying pancreatic cancer and identify protein centric subtypes with clinical relevance. Mass spectrometry–based proteomics was used to identify and quantify the proteome in tumor tissue, tumor-adjacent tissue, and patient-derived xenografts (PDX)-derived cell lines from patients with pancreatic cancer, and tissues from patients with chronic pancreatitis. We identified, quantified, and characterized 11,634 proteins from 72 pancreatic tissue samples. Network focused analysis of the proteomics data led to identification of a tumor epithelium–specific module and an extracellular matrix (ECM)-associated module that discriminated pancreatic tumor tissue from both tumor adjacent tissue and pancreatitis tissue. On the basis of the ECM module, we defined an ECM-high and an ECM-low subgroup, where the ECM-high subgroup was associated with poor prognosis (median survival months: 15.3 vs. 22.9 months; log-rank test, P = 0.02). The ECM-high tumors were characterized by elevated epithelial–mesenchymal transition and glycolytic activities, and low oxidative phosphorylation, E2F, and DNA repair pathway activities. This study offers novel insights into the protein network underlying pancreatic cancer opening up for proteome precision medicine development. Significance: Pancreatic cancer lacks reliable biomarkers for prognostication and treatment of patients. We analyzed the proteome of pancreatic tumors, nonmalignant tissues of the pancreas and PDX-derived cell lines, and identified proteins that discriminate between patients with good and poor survival. The proteomics data also unraveled potential novel drug targets.

Funder

Ministry of Health and Care Services | Helse Sør-Øst RHF

Kreftforeningen

Universitetet i Sørøst-Norge

Publisher

American Association for Cancer Research (AACR)

Reference42 articles.

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