Differential co-expression network analysis elucidated genes associated with sensitivity to farnesyltransferase inhibitor and prognosis of acute myeloid leukemia.
Nurdan KelesogluMedi KoriBetul Karademir YilmazOzlem Ates DuruKazım Yalçın ArğaPublished in: Cancer medicine (2023)
Acute myeloid leukemia (AML) is a heterogeneous disease and the most common form of acute leukemia with a poor prognosis. Due to its complexity, the disease requires the identification of biomarkers for reliable prognosis. To identify potential disease genes that regulate patient prognosis, we used differential co-expression network analysis and transcriptomics data from relapsed, refractory, and previously untreated AML patients based on their response to treatment in the present study. In addition, we combined functional genomics and transcriptomics data to identify novel and therapeutically potential systems biomarkers for patients who do or do not respond to treatment. As a result, we constructed co-expression networks for response and non-response cases and identified a highly interconnected group of genes consisting of SECISBP2L, MAN1A2, PRPF31, VASP, and SNAPC1 in the response network and a group consisting of PHTF2, SLC11A2, PDLIM5, OTUB1, and KLRD1 in the non-response network, both of which showed high prognostic performance with hazard ratios of 4.12 and 3.66, respectively. Remarkably, ETS1, GATA2, AR, YBX1, and FOXP3 were found to be important transcription factors in both networks. The prognostic indicators reported here could be considered as a resource for identifying tumorigenesis and chemoresistance to farnesyltransferase inhibitor. They could help identify important research directions for the development of new prognostic and therapeutic techniques for AML.
Keyphrases
- acute myeloid leukemia
- poor prognosis
- network analysis
- long non coding rna
- transcription factor
- allogeneic hematopoietic stem cell transplantation
- single cell
- genome wide
- acute lymphoblastic leukemia
- electronic health record
- big data
- ejection fraction
- newly diagnosed
- gene expression
- prognostic factors
- machine learning
- genome wide identification
- case report
- climate change
- dendritic cells
- multiple myeloma