Scientific Reports (Apr 2023)

Machine learning algorithms reveal potential miRNAs biomarkers in gastric cancer

  • Hanieh Azari,
  • Elham Nazari,
  • Reza Mohit,
  • Alireza Asadnia,
  • Mina Maftooh,
  • Mohammadreza Nassiri,
  • Seyed Mahdi Hassanian,
  • Majid Ghayour-Mobarhan,
  • Soodabeh Shahidsales,
  • Majid Khazaei,
  • Gordon A. Ferns,
  • Amir Avan

DOI
https://doi.org/10.1038/s41598-023-32332-x
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 12

Abstract

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Abstract Gastric cancer is the high mortality rate cancers globally, and the current survival rate is 30% even with the use of combination therapies. Recently, mounting evidence indicates the potential role of miRNAs in the diagnosis and assessing the prognosis of cancers. In the state-of-art research in cancer, machine-learning (ML) has gained increasing attention to find clinically useful biomarkers. The present study aimed to identify potential diagnostic and prognostic miRNAs in GC with the application of ML. Using the TCGA database and ML algorithms such as Support Vector Machine (SVM), Random Forest, k-NN, etc., a panel of 29 was obtained. Among the ML algorithms, SVM was chosen (AUC:88.5%, Accuracy:93% in GC). To find common molecular mechanisms of the miRNAs, their common gene targets were predicted using online databases such as miRWalk, miRDB, and Targetscan. Functional and enrichment analyzes were performed using Gene Ontology (GO) and Kyoto Database of Genes and Genomes (KEGG), as well as identification of protein–protein interactions (PPI) using the STRING database. Pathway analysis of the target genes revealed the involvement of several cancer-related pathways including miRNA mediated inhibition of translation, regulation of gene expression by genetic imprinting, and the Wnt signaling pathway. Survival and ROC curve analysis showed that the expression levels of hsa-miR-21, hsa-miR-133a, hsa-miR-146b, and hsa-miR-29c were associated with higher mortality and potentially earlier detection of GC patients. A panel of dysregulated miRNAs that may serve as reliable biomarkers for gastric cancer were identified using machine learning, which represents a powerful tool in biomarker identification.