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Published in: Cellular Oncology 1/2017

01-02-2017 | Original Paper

Network-based expression analysis reveals key genes related to glucocorticoid resistance in infant acute lymphoblastic leukemia

Authors: Zaynab Mousavian, Abbas Nowzari-Dalini, Ronald W. Stam, Yasir Rahmatallah, Ali Masoudi-Nejad

Published in: Cellular Oncology | Issue 1/2017

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Abstract

Purpose

Despite vast improvements that have been made in the treatment of children with acute lymphoblastic leukemia (ALL), the majority of infant ALL patients (~80 %, < 1 year of age) that carry a chromosomal translocation involving the mixed lineage leukemia (MLL) gene shows a poor response to chemotherapeutic drugs, especially glucocorticoids (GCs), which are essential components of all current treatment regimens. Although addressed in several studies, the mechanism(s) underlying this phenomenon have remained largely unknown. A major drawback of most previous studies is their primary focus on individual genes, thereby neglecting the putative significance of inter-gene correlations. Here, we aimed at studying GC resistance in MLL-rearranged infant ALL patients by inferring an associated module of genes using co-expression network analysis. The implications of newly identified candidate genes with associations to other well-known relevant genes from the same module, or with associations to known transcription factor or microRNA interactions, were substantiated using literature data.

Methods

A weighted gene co-expression network was constructed to identify gene modules associated with GC resistance in MLL-rearranged infant ALL patients. Significant gene ontology (GO) terms and signaling pathways enriched in relevant modules were used to provide guidance towards which module(s) consisted of promising candidates suitable for further analysis.

Results

Through gene co-expression network analysis a novel set of genes (module) related to GC-resistance was identified. The presence in this module of the S100 and ANXA genes, both well-known biomarkers for GC resistance in MLL-rearranged infant ALL, supports its validity. Subsequent gene set net correlation analyses of the novel module provided further support for its validity by showing that the S100 and ANXA genes act as ‘hub’ genes with potentially major regulatory roles in GC sensitivity, but having lost this role in the GC resistant phenotype. The detected module implicates new genes as being candidates for further analysis through associations with known GC resistance-related genes.

Conclusions

From our data we conclude that available systems biology approaches can be employed to detect new candidate genes that may provide further insights into drug resistance of MLL-rearranged infant ALL cases. Such approaches complement conventional gene-wise approaches by taking putative functional interactions between genes into account.
Appendix
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Metadata
Title
Network-based expression analysis reveals key genes related to glucocorticoid resistance in infant acute lymphoblastic leukemia
Authors
Zaynab Mousavian
Abbas Nowzari-Dalini
Ronald W. Stam
Yasir Rahmatallah
Ali Masoudi-Nejad
Publication date
01-02-2017
Publisher
Springer Netherlands
Published in
Cellular Oncology / Issue 1/2017
Print ISSN: 2211-3428
Electronic ISSN: 2211-3436
DOI
https://doi.org/10.1007/s13402-016-0303-7

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