Author:
Khojasteh-Leylakoohi Fatemeh,Mohit Reza,Khalili-Tanha Nima,Asadnia Alireza,Naderi Hamid,Pourali Ghazaleh,Yousefli Zahra,Khalili-Tanha Ghazaleh,Khazaei Majid,Maftooh Mina,Nassiri Mohammadreza,Hassanian Seyed Mahdi,Ghayour-Mobarhan Majid,Ferns Gordon A.,Shahidsales Soodabeh,Lam Alfred King-yin,Giovannetti Elisa,Nazari Elham,Batra Jyotsna,Avan Amir
Abstract
AbstractPancreatic ductal adenocarcinoma (PDAC) is associated with a very poor prognosis. Therefore, there has been a focus on identifying new biomarkers for its early diagnosis and the prediction of patient survival. Genome-wide RNA and microRNA sequencing, bioinformatics and Machine Learning approaches to identify differentially expressed genes (DEGs), followed by validation in an additional cohort of PDAC patients has been undertaken. To identify DEGs, genome RNA sequencing and clinical data from pancreatic cancer patients were extracted from The Cancer Genome Atlas Database (TCGA). We used Kaplan–Meier analysis of survival curves was used to assess prognostic biomarkers. Ensemble learning, Random Forest (RF), Max Voting, Adaboost, Gradient boosting machines (GBM), and Extreme Gradient Boosting (XGB) techniques were used, and Gradient boosting machines (GBM) were selected with 100% accuracy for analysis. Moreover, protein–protein interaction (PPI), molecular pathways, concomitant expression of DEGs, and correlations between DEGs and clinical data were analyzed. We have evaluated candidate genes, miRNAs, and a combination of these obtained from machine learning algorithms and survival analysis. The results of Machine learning identified 23 genes with negative regulation, five genes with positive regulation, seven microRNAs with negative regulation, and 20 microRNAs with positive regulation in PDAC. Key genesBMF,FRMD4A,ADAP2,PPP1R17, andCACNG3had the highest coefficient in the advanced stages of the disease. In addition, the survival analysis showed decreased expression ofhsa.miR.642a,hsa.mir.363,CD22,BTNL9, andCTSWand overexpression ofhsa.miR.153.1,hsa.miR.539,hsa.miR.412reduced survival rate.CTSWwas identified as a novel genetic marker and this was validated using RT-PCR. Machine learning algorithms may be used to Identify key dysregulated genes/miRNAs involved in the disease pathogenesis can be used to detect patients in earlier stages. Our data also demonstrated the prognostic and diagnostic value ofCTSWin PDAC.
Funder
Mashhad University of Medical Sciences
Publisher
Springer Science and Business Media LLC
Cited by
5 articles.
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