Deep Learning Techniques to Characterize the RPS28P7 Pseudogene and the Metazoa - SRP Gene as Drug Potential Targets in Pancreatic Cancer Patients.
Ivan SalgadoErnesto Prado Montes de OcaIsaac ChairezLuis J Figueroa-YáñezAlejandro Pereira-SantanaAndrés Rivera ChávezJesús Bernardino Velázquez-FernandezTeresa Alvarado ParraAlba Adriana Vallejo-CardonaPublished in: Biomedicines (2024)
The molecular explanation about why some pancreatic cancer (PaCa) patients die early and others die later is poorly understood. This study aimed to discover potential novel markers and drug targets that could be useful to stratify and extend expected survival in prospective early-death patients. We deployed a deep learning algorithm and analyzed the gene copy number, gene expression, and protein expression data of death versus alive PaCa patients from the GDC cohort. The genes with higher relative amplification (copy number >4 times in the dead compared with the alive group) were EWSR1 , FLT3 , GPC3 , HIF1A , HLF , and MEN1 . The most highly up-regulated genes (>8.5-fold change) in the death group were RPL30 , RPL37 , RPS28P7 , RPS11 , Metazoa _ SRP , CAPNS1 , FN1 , H3 - 3B , LCN2 , and OAZ1 . None of their corresponding proteins were up or down-regulated in the death group. The mRNA of the RPS28P7 pseudogene could act as ceRNA sponging the miRNA that was originally directed to the parental gene RPS28 . We propose RPS28P7 mRNA as the most druggable target that can be modulated with small molecules or the RNA technology approach. These markers could be added as criteria to patient stratification in future PaCa drug trials, but further validation in the target populations is encouraged.
Keyphrases
- copy number
- genome wide
- end stage renal disease
- deep learning
- mitochondrial dna
- gene expression
- newly diagnosed
- ejection fraction
- chronic kidney disease
- dna methylation
- peritoneal dialysis
- prognostic factors
- machine learning
- acute myeloid leukemia
- genome wide identification
- risk assessment
- transcription factor
- artificial intelligence
- convolutional neural network
- free survival