A diagnostic miRNA panel to detect recurrence of ovarian cancer through artificial intelligence approaches

Background Ovarian Cancer (OC) is the deadliest gynecology malignancy, whose high recurrence rate in OC patients is a challenging object. Therefore, having deep insights into the genetic and molecular mechanisms of OC recurrence can improve the target therapeutic procedures. This study aimed to disc...

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Veröffentlicht in:Journal of cancer research and clinical oncology 2023, Vol.149 (1), p.325-341
Hauptverfasser: Aghayousefi, Reyhaneh, Hosseiniyan Khatibi, Seyed Mahdi, Zununi Vahed, Sepideh, Bastami, Milad, Pirmoradi, Saeed, Teshnehlab, Mohammad
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Sprache:eng
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Zusammenfassung:Background Ovarian Cancer (OC) is the deadliest gynecology malignancy, whose high recurrence rate in OC patients is a challenging object. Therefore, having deep insights into the genetic and molecular mechanisms of OC recurrence can improve the target therapeutic procedures. This study aimed to discover crucial miRNAs for the detection of tumor recurrence in OC by artificial intelligence approaches. Method Through the ANOVA feature selection method, we selected 100 candidate miRNAs among 588 miRNAs. For their classification, a deep-learning model was employed to validate the significance of the candidate miRNAs. The accuracy, F1-score (high-risk), and AUC–ROC of classification test data based on the 100 miRNAs were 73%, 0.81, and 0.65, respectively. Association rule mining was used to discover hidden relations among the selected miRNAs. Result Five miRNAs, including miR-1914, miR-203, miR-135a-2, miR-149, and miR-9–1, were identified as the most frequent items among high-risk association rules. The identified miRNAs may target genes/proteins involved in epithelial–mesenchymal transition (EMT), resistance to therapy, and cancer stem cells; being responsible for the heterogeneity and plasticity of the tumor. Our conclusion presents mir-1914 as the significant candidate miRNA and the most frequent item. Current knowledge indicates that the dysregulated miR-1914 may function as a tumor suppressor or oncogene in the development of cancer. Conclusion These candidate miRNAs can be considered a powerful tool in the diagnosis of OC recurrence. We hypothesize that mir-1914 might open a new line of research in the realm of managing the recurrence of OC and could be a significant factor in triggering OC recurrence.
ISSN:0171-5216
1432-1335
DOI:10.1007/s00432-022-04468-2