DNA Methylation of PI3K/AKT Pathway-Related Genes Predicts Outcome in Patients with Pancreatic Cancer: A Comprehensive Bioinformatics-Based Study.
Inês FaleiroVânia Palma RobertoSeçil Demirkol CanlıNicolas A FraunhofferJuan IovannaAli Osmay GüreWolfgang LinkPedro Castelo-BrancoPublished in: Cancers (2021)
Pancreatic cancer (PCA) is one of the most lethal malignancies worldwide with a 5-year survival rate of 9%. Despite the advances in the field, the need for an earlier detection and effective therapies is paramount. PCA high heterogeneity suggests that epigenetic alterations play a key role in tumour development. However, only few epigenetic biomarkers or therapeutic targets have been identified so far. Here we explored the potential of distinct DNA methylation signatures as biomarkers for early detection and prognosis of PCA. PI3K/AKT-related genes differentially expressed in PCA were identified using the Pancreatic Expression Database ( n = 153). Methylation data from PCA patients was obtained from The Cancer Genome Atlas ( n = 183), crossed with clinical data to evaluate the biomarker potential of the epigenetic signatures identified and validated in independent cohorts. The majority of selected genes presented higher expression and hypomethylation in tumour tissue. The methylation signatures of specific genes in the PI3K/AKT pathway could distinguish normal from malignant tissue at initial disease stages with AUC > 0.8, revealing their potential as PCA diagnostic tools. ITGA4 , SFN , ITGA2 , and PIK3R1 methylation levels could be independent prognostic indicators of patients' survival. Methylation status of SFN and PIK3R1 were also associated with disease recurrence. Our study reveals that the methylation levels of PIK3/AKT genes involved in PCA could be used to diagnose and predict patients' clinical outcome with high sensitivity and specificity. These results provide new evidence of the potential of epigenetic alterations as biomarkers for disease screening and management and highlight possible therapeutic targets.
Keyphrases
- dna methylation
- genome wide
- end stage renal disease
- gene expression
- chronic kidney disease
- newly diagnosed
- ejection fraction
- peritoneal dialysis
- signaling pathway
- prognostic factors
- cell proliferation
- pi k akt
- emergency department
- poor prognosis
- single cell
- transcription factor
- big data
- deep learning
- young adults
- papillary thyroid
- human health
- patient reported
- cell cycle arrest