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High throughput digital quantification of mRNA abundance in primary human acute myeloid leukemia samples
Jacqueline E. Payton, … , Mark A. Watson, Timothy J. Ley
Jacqueline E. Payton, … , Mark A. Watson, Timothy J. Ley
Published May 18, 2009
Citation Information: J Clin Invest. 2009;119(6):1714-1726. https://doi.org/10.1172/JCI38248.
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Technical Advance Hematology

High throughput digital quantification of mRNA abundance in primary human acute myeloid leukemia samples

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Abstract

Acute promyelocytic leukemia (APL) is characterized by the t(15;17) chromosomal translocation, which results in fusion of the retinoic acid receptor α (RARA) gene to another gene, most commonly promyelocytic leukemia (PML). The resulting fusion protein, PML-RARA, initiates APL, which is a subtype (M3) of acute myeloid leukemia (AML). In this report, we identify a gene expression signature that is specific to M3 samples; it was not found in other AML subtypes and did not simply represent the normal gene expression pattern of primary promyelocytes. To validate this signature for a large number of genes, we tested a recently developed high throughput digital technology (NanoString nCounter). Nearly all of the genes tested demonstrated highly significant concordance with our microarray data (P < 0.05). The validated gene signature reliably identified M3 samples in 2 other AML datasets, and the validated genes were substantially enriched in our mouse model of APL, but not in a cell line that inducibly expressed PML-RARA. These results demonstrate that nCounter is a highly reproducible, customizable system for mRNA quantification using limited amounts of clinical material, which provides a valuable tool for biomarker measurement in low-abundance patient samples.

Authors

Jacqueline E. Payton, Nicole R. Grieselhuber, Li-Wei Chang, Mark Murakami, Gary K. Geiss, Daniel C. Link, Rakesh Nagarajan, Mark A. Watson, Timothy J. Ley

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