Robust identification of common genomic biomarkers from multiple gene expression profiles for the prognosis, diagnosis, and therapies of pancreatic cancer

Pancreatic cancer (PC) is one of the leading causes of cancer-related death globally. So, identification of potential molecular signatures is required for diagnosis, prognosis, and therapies of PC. In this study, we detected 71 common differentially expressed genes (cDEGs) between PC and control sam...

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Veröffentlicht in:Computers in biology and medicine 2023-01, Vol.152, p.106411-106411, Article 106411
Hauptverfasser: Hossen, Md Bayazid, Islam, Md Ariful, Reza, Md Selim, Kibria, Md Kaderi, Horaira, Md Abu, Tuly, Khanis Farhana, Faruqe, Md Omar, Kabir, Firoz, Mollah, Md Nurul Haque
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Sprache:eng
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Zusammenfassung:Pancreatic cancer (PC) is one of the leading causes of cancer-related death globally. So, identification of potential molecular signatures is required for diagnosis, prognosis, and therapies of PC. In this study, we detected 71 common differentially expressed genes (cDEGs) between PC and control samples from four microarray gene-expression datasets (GSE15471, GSE16515, GSE71989, and GSE22780) by using robust statistical and machine learning approaches, since microarray gene-expression datasets are often contaminated by outliers due to several steps involved in the data generating processes. Then we detected 8 cDEGs (ADAM10, COL1A2, FN1, P4HB, ITGB1, ITGB5, ANXA2, and MYOF) as the PC-causing key genes (KGs) by the protein-protein interaction (PPI) network analysis. We validated the expression patterns of KGs between case and control samples by box plot analysis with the TCGA and GTEx databases. The proposed KGs showed high prognostic power with the random forest (RF) based prediction model and Kaplan-Meier-based survival probability curve. The KGs regulatory network analysis detected few transcriptional and post-transcriptional regulators for KGs. The cDEGs-set enrichment analysis revealed some crucial PC-causing molecular functions, biological processes, cellular components, and pathways that are associated with KGs. Finally, we suggested KGs-guided five repurposable drug molecules (Linsitinib, CX5461, Irinotecan, Timosaponin AIII, and Olaparib) and a new molecule (NVP-BHG712) against PC by molecular docking. The stability of the top three protein-ligand complexes was confirmed by molecular dynamic (MD) simulation studies. The cross-validation and some literature reviews also supported our findings. Therefore, the finding of this study might be useful resources to the researchers and medical doctors for diagnosis, prognosis and therapies of PC by the wet-lab validation. [Display omitted] •Robust identification of differentially expressed genes (DEGs) that drive the progression of pancreatic cancer.•Identification of PC causing key genes (KGs) by the PPI network and module analyses of DEGs.•Prognostic power investigation of KGs by the prediction model and survival probability curve.•Exploring PC-causing pathogenetic processes by the DEGs-set enrichment analysis highlighting KGs.•KGs-guided drug repurposing by molecular docking and MD simulation studies.
ISSN:0010-4825
1879-0534
DOI:10.1016/j.compbiomed.2022.106411