[HTML][HTML] Prognostically useful gene-expression profiles in acute myeloid leukemia

PJM Valk, RGW Verhaak, MA Beijen… - … England Journal of …, 2004 - Mass Medical Soc
PJM Valk, RGW Verhaak, MA Beijen, CAJ Erpelinck, SBW van Doorn-Khosrovani, JM Boer…
New England Journal of Medicine, 2004Mass Medical Soc
Background In patients with acute myeloid leukemia (AML) a combination of methods must
be used to classify the disease, make therapeutic decisions, and determine the prognosis.
However, this combined approach provides correct therapeutic and prognostic information
in only 50 percent of cases. Methods We determined the gene-expression profiles in
samples of peripheral blood or bone marrow from 285 patients with AML using Affymetrix
U133A GeneChips containing approximately 13,000 unique genes or expression-signature …
Background
In patients with acute myeloid leukemia (AML) a combination of methods must be used to classify the disease, make therapeutic decisions, and determine the prognosis. However, this combined approach provides correct therapeutic and prognostic information in only 50 percent of cases.
Methods
We determined the gene-expression profiles in samples of peripheral blood or bone marrow from 285 patients with AML using Affymetrix U133A GeneChips containing approximately 13,000 unique genes or expression-signature tags. Data analyses were carried out with Omniviz, significance analysis of microarrays, and prediction analysis of microarrays software. Statistical analyses were performed to determine the prognostic significance of cases of AML with specific molecular signatures.
Results
Unsupervised cluster analyses identified 16 groups of patients with AML on the basis of molecular signatures. We identified the genes that defined these clusters and determined the minimal numbers of genes needed to identify prognostically important clusters with a high degree of accuracy. The clustering was driven by the presence of chromosomal lesions (e.g., t(8;21), t(15;17), and inv(16)), particular genetic mutations (CEBPA), and abnormal oncogene expression (EVI1). We identified several novel clusters, some consisting of specimens with normal karyotypes. A unique cluster with a distinctive gene-expression signature included cases of AML with a poor treatment outcome.
Conclusions
Gene-expression profiling allows a comprehensive classification of AML that includes previously identified genetically defined subgroups and a novel cluster with an adverse prognosis.
The New England Journal Of Medicine