Identification of diagnostic markers of pancreatic ductal adenocarcinoma using transcriptomic tumour and blood sample data

Author:

Sionakidis Aristeidis1ORCID,Lalagkas Panagiotis Nikolaos2ORCID,Malousi Andigoni3ORCID,Vizirianakis Ioannis S.45ORCID

Affiliation:

1. Institute of Genetics and Cancer University of Edinburgh Scotland UK

2. Department of Biological Sciences University of Massachusetts Lowell Lowell Massachusetts USA

3. Laboratory of Biological Chemistry School of Medicine Aristotle University of Thessaloniki Thessaloniki Greece

4. Laboratory of Pharmacology School of Pharmacy Aristotle University of Thessaloniki Thessaloniki Greece

5. Department of Health Sciences School of Life and Health Sciences University of Nicosia Nicosia Cyprus

Abstract

AbstractBackgroundPancreatic ductal adenocarcinoma (PDAC) is the most frequently diagnosed form of pancreatic cancer worldwide. PDAC is associated with a poor survival rate mainly due to the disease being usually diagnosed at late stages.MethodsPublicly available gene expression data from 10 studies with tumour tissue (448 samples) and/or blood samples (128 samples) from PDAC patients were pooled together and analyzed for the identification of stage‐specific and global diagnostic markers using differential gene expression analysis. The list of statistically significant () differentially expressed genes were used to carry out enrichment analysis via active subnetworks and miRNA enrichment analysis. We then used the results from these analyses to identify the most significant genes and pathways and map these to marketed drugs’ pharmacological targets. The same process was replicated for studies with blood samples and results were compared to those from the tissue analysis. A set of consistently deregulated genes (pancreatic tumour signature, PTS) in both tissue and blood samples was derived and validated in external cohorts and The Cancer Genome Atlas (TCGA) data.ResultsNotable gene expression deregulation was found in all tumour stages with significant overlap. We identified 820 consistently deregulated genes (PTS) in tissue samples of all stages and blood samples. Active subnetwork analysis revealed enriched ribosome, proteasome, adherens junction and cell cycle pathways across all stages and blood samples. Our findings suggest that microRNA (miRNA) contribution to PDAC pathology plays a significant role and is probably mediated by distinct miRNAs across stages of PDAC. Stage‐specific enriched miRNAs with diagnostic potential included miR‐21, miR‐29, miR‐124 and miR‐30, for stages 1–4, respectively. By investigating the pharmacogenetic interactions of the identified targets with clinically approved drugs, we outline potential paths for personalized interventions. Importantly, the PTS showed a significant association with survival in TCGA data.ConclusionThus, we present a compilation of protein‐coding markers and miRNAs that hold potential as a diagnostic tool for the early detection of PDAC, as well as for designing novel therapeutic strategies aimed at improving patient outcomes.

Funder

Medical Research Council

Bodossaki Foundation

Alexander S. Onassis Public Benefit Foundation

Aristotle University of Thessaloniki

Publisher

Wiley

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