Abstract

BackgroundAcute myeloid leukemia (AML) is biologically heterogeneous diseases with adverse prognosis. This study was conducted to find prognostic biomarkers that could effectively classify AML patients and provide guidance for treatment decision making.MethodsWeighted gene co-expression network analysis was applied to detect co-expression modules and analyze their relationship with clinicopathologic characteristics using RNA sequencing data from The Cancer Genome Atlas database. The associations of gene expression with patients’ mortality were investigated by a variety of statistical methods and validated in an independent dataset of 405 AML patients. A risk score formula was created based on a linear combination of five gene expression levels.ResultsThe weighted gene co-expression network analysis detected 63 co-expression modules. The pink and darkred modules were negatively significantly correlated with overall survival of AML patients. High expression of FNDC3B, VSTM1 and CALR was associated with favourable overall survival, while high expression of PLA2G4A was associated with adverse overall survival. Hierarchical clustering analysis of FNDC3B, VSTM1, PLA2G4A, GOLGA3 and CALR uncovered four subgroups of AML patients. The cluster1 AML patients showed younger age, lower cytogenetics risk, higher frequency of NPM1 mutations and more favourable overall survival than cluster3 patients. The risk score was demonstrated to be an indicator of adverse prognosis in AML patientsConclusionsThe FNDC3B, VSTM1, PLA2G4A, GOLGA3, CALR and risk score may serve as key prognostic biomarkers for the stratification and ultimately guide rational treatment of AML patients.

Highlights

  • Acute myeloid leukemia (AML) is biologically heterogeneous diseases with adverse prognosis

  • 114 AML patients were dead, 59 were alive and 10 patients were lost to contact

  • The scale-free fit index was greater than 0.8 and the mean connectivity of the weighted gene co-expression network analysis (WGCNA) network was stable at the soft-thresholding power value of six

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Summary

Introduction

Acute myeloid leukemia (AML) is biologically heterogeneous diseases with adverse prognosis. Acute myeloid leukemia (AML) is biologically heterogeneous diseases with a relatively adverse survival rate [1]. In addition to cytogenetic abnormalities, the 2017 ELN includes mutations in several genes for risk stratification. NPM1 and CEBPA mutations are indicative of favorable prognosis regardless of cytogenetic abnormalities. DNMT3A, NPM1 mutations and MLL translocations have been shown to ameliorate risk classification for patients showing normal karyotype [8]. These genes are not applied to those AML patients who didn’t have DNMT3A, NPM1 mutations and MLL translocations [8]. None of the current markers is entirely accurate, novel biomarkers are required to improve prognostic classification

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