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Gene expression profiling of pediatric acute myelogenous leukemia

Authors :
Der Cherng Liang
W. Kent Williams
James R. Downing
Mihaela Onciu
Raul C. Ribeiro
Stanley Pounds
Kevin Girtman
Mary E. Ross
Hsi Che Liu
Jeffrey E. Rubnitz
Xiaodong Zhou
Cheng Cheng
Jing Ma
Rami Mahfouz
Lee Yung Shih
Guangchun Song
Susana C. Raimondi
Ching-Hon Pui
Sheila A. Shurtleff
Source :
Blood. 104:3679-3687
Publication Year :
2004
Publisher :
American Society of Hematology, 2004.

Abstract

Contemporary treatment of pediatric acute myeloid leukemia (AML) requires the assignment of patients to specific risk groups. To explore whether expression profiling of leukemic blasts could accurately distinguish between the known risk groups of AML, we analyzed 130 pediatric and 20 adult AML diagnostic bone marrow or peripheral blood samples using the Affymetrix U133A microarray. Class discriminating genes were identified for each of the major prognostic subtypes of pediatric AML, including t(15;17)[PML-RARα], t(8;21)[AML1-ETO], inv16 [CBFβ-MYH11], MLL chimeric fusion genes, and cases classified as FAB-M7. When subsets of these genes were used in supervised learning algorithms, an overall classification accuracy of more than 93% was achieved. Moreover, we were able to use the expression signatures generated from the pediatric samples to accurately classify adult de novo AMLs with the same genetic lesions. The class discriminating genes also provided novel insights into the molecular pathobiology of these leukemias. Finally, using a combined pediatric data set of 130 AMLs and 137 acute lymphoblastic leukemias, we identified an expression signature for cases with MLL chimeric fusion genes irrespective of lineage. Surprisingly, AMLs containing partial tandem duplications of MLL failed to cluster with MLL chimeric fusion gene cases, suggesting a significant difference in their underlying mechanism of transformation.

Details

ISSN :
15280020 and 00064971
Volume :
104
Database :
OpenAIRE
Journal :
Blood
Accession number :
edsair.doi.dedup.....c71afffe5c552aebaefdcc3940d8790e