Abstract

Pancreatic ductal adenocarcinoma (PDAC) is one of the leading causes of cancer-related death and has an extremely poor prognosis. Thus, identifying new disease-associated genes and targets for PDAC diagnosis and therapy is urgently needed. This requires investigations into the underlying molecular mechanisms of PDAC at both the systems and molecular levels. Herein, we developed a computational method of predicting cancer genes and anticancer drug targets that combined three independent expression microarray datasets of PDAC patients and protein-protein interaction data. First, Support Vector Machine–Recursive Feature Elimination was applied to the gene expression data to rank the differentially expressed genes (DEGs) between PDAC patients and controls. Then, protein-protein interaction networks were constructed based on the DEGs, and a new score comprising gene expression and network topological information was proposed to identify cancer genes. Finally, these genes were validated by “druggability” prediction, survival and common network analysis, and functional enrichment analysis. Furthermore, two integrins were screened to investigate their structures and dynamics as potential drug targets for PDAC. Collectively, 17 disease genes and some stroma-related pathways including extracellular matrix-receptor interactions were predicted to be potential drug targets and important pathways for treating PDAC. The protein-drug interactions and hinge sites predication of ITGAV and ITGA2 suggest potential drug binding residues in the Thigh domain. These findings provide new possibilities for targeted therapeutic interventions in PDAC, which may have further applications in other cancer types.

Highlights

  • Pancreatic ductal adenocarcinoma (PDAC) is one of the most malignant solid tumors (Bailey et al, 2016)

  • Our results indicated that ITGAV, ITGA2, and their interactions with COL1A1 and COL1A2 may play important roles in PDAC, suggesting they could serve as potential drug targets

  • We developed a computational framework that integrated machine learning (ML) (SVM-RFE), biomolecular networks (PPI network analysis), and structural modeling analysis to help future drug targets for PDAC

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Summary

Introduction

Pancreatic ductal adenocarcinoma (PDAC) is one of the most malignant solid tumors (Bailey et al, 2016). Most of research effort in PDAC has been directed at identifying the important disease-driving genes and pathways (Waddell et al, 2015). These studies have shown that KRAS, CDKN2A, TP53, and SMAD4 are the four most common driver genes in PDAC (Carr and Fernandez-Zapico, 2019). Integrated genomic analysis of 456 PDAC cases identified 32 recurrently mutated genes that aggregate into 10 pathways: KRAS, TGF-b, WNT, NOTCH, ROBO/SLIT signaling, G1/S transition, SWI-SNF, chromatin modification, DNA repair, and RNA processing (Bailey et al, 2016). A complete understanding of the molecular mechanism of PDAC is urgently needed

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