Investigator
National Institute Of Pharmaceutical Education And Research Niper Ahmedabad
Decoding Cervical Cancer Biomarkers: An Integrated Framework of Bioinformatics, Machine Learning, and Experimental Confirmation
Cervical cancer is the fourth most frequent cancer in females, with a high mortality rate globally. Persistent infection with high-risk, oncogenic human papillomavirus (HPV) types is a critical etiologic factor in the progression of the disease. Unfortunately, cervical cancer often remains undiagnosed until advanced stages, hence limiting treatment effectiveness. Therefore, identifying precise and significant biomarkers is crucial. High-throughput sequencing technologies have revolutionized targeted cancer therapy research by generating extensive data for analysis. This study employed bioinformatics and machine learning (ML) approaches to identify dysregulated genes with significant diagnostic value in cervical cancer, utilizing transcriptomics datasets. Seven potential diagnostic biomarker genes (