Identification of a 24-Gene Prognostic Signature That Improves the European LeukemiaNet Risk Classification of Acute Myeloid Leukemia: An International Collaborative Study

Author:

Li Zejuan1,Herold Tobias1,He Chunjiang1,Valk Peter J.M.1,Chen Ping1,Jurinovic Vindi1,Mansmann Ulrich1,Radmacher Michael D.1,Maharry Kati S.1,Sun Miao1,Yang Xinan1,Huang Hao1,Jiang Xi1,Sauerland Maria-Cristina1,Büchner Thomas1,Hiddemann Wolfgang1,Elkahloun Abdel1,Neilly Mary Beth1,Zhang Yanming1,Larson Richard A.1,Le Beau Michelle M.1,Caligiuri Michael A.1,Döhner Konstanze1,Bullinger Lars1,Liu Paul P.1,Delwel Ruud1,Marcucci Guido1,Lowenberg Bob1,Bloomfield Clara D.1,Rowley Janet D.1,Bohlander Stefan K.1,Chen Jianjun1

Affiliation:

1. Zejuan Li, Chunjiang He, Ping Chen, Miao Sun, Xinan Yang, Hao Huang, Xi Jiang, Mary Beth Neilly, Richard A. Larson, Michelle M. Le Beau, Janet D. Rowley, and Jianjun Chen, University of Chicago; Yanming Zhang, Northwestern University, Chicago, IL; Tobias Herold, Wolfgang Hiddemann, and Stefan K. Bohlander, University Hospital Grosshadern and Helmholtz Center; Tobias Herold, Vindi Jurinovic, Ulrich Mansmann, Wolfgang Hiddemann, and Stefan K. Bohlander, Ludwig-Maximilians-University, Munich; Maria-Cristina...

Abstract

Purpose To identify a robust prognostic gene expression signature as an independent predictor of survival of patients with acute myeloid leukemia (AML) and use it to improve established risk classification. Patients and Methods Four independent sets totaling 499 patients with AML carrying various cytogenetic and molecular abnormalities were used as training sets. Two independent patient sets composed of 825 patients were used as validation sets. Notably, patients from different sets were treated with different protocols, and their gene expression profiles were derived using different microarray platforms. Cox regression and Kaplan-Meier methods were used for survival analyses. Results A prognostic signature composed of 24 genes was derived from a meta-analysis of Cox regression values of each gene across the four training sets. In multivariable models, a higher sum value of the 24-gene signature was an independent predictor of shorter overall (OS) and event-free survival (EFS) in both training and validation sets (P < .01). Moreover, this signature could substantially improve the European LeukemiaNet (ELN) risk classification of AML, and patients in three new risk groups classified by the integrated risk classification showed significantly (P < .001) distinct OS and EFS. Conclusion Despite different treatment protocols applied to patients and use of different microarray platforms for expression profiling, a common prognostic gene signature was identified as an independent predictor of survival of patients with AML. The integrated risk classification incorporating this gene signature provides a better framework for risk stratification and outcome prediction than the ELN classification.

Publisher

American Society of Clinical Oncology (ASCO)

Subject

Cancer Research,Oncology

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