Molecular allelokaryotyping of pediatric acute lymphoblastic leukemias by high-resolution single nucleotide polymorphism oligonucleotide genomic microarray

Norihiko Kawamata(Cedars-Sinai Medical Center), Seishi Ogawa(The University of Tokyo), Martin Zimmermann(Medizinische Hochschule Hannover), Motohiro Kato(The University of Tokyo), Masashi Sanada(The University of Tokyo), Kari Hemminki(German Cancer Research Center), Go Yamatomo(The University of Tokyo), Yasuhito Nannya(The University of Tokyo), Rolf Koehler(Heidelberg University), Thomas Flohr(Heidelberg University), Carl W. Miller(Cedars-Sinai Medical Center), Jochen Harbott(Justus-Liebig-Universität Gießen), Wolf-Dieter Ludwig(Helios Hospital Berlin-Buch), Martin Stanulla(Medizinische Hochschule Hannover), Martin Schrappe(Christian-Albrechts-Universität zu Kiel), Claus R. Bartram(Heidelberg University), H. Phillip Koeffler(Cedars-Sinai Medical Center)
Blood
September 22, 2007
Cited by 199Open Access
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Abstract

Pediatric acute lymphoblastic leukemia (ALL) is a malignant disease resulting from accumulation of genetic alterations. A robust technology, single nucleotide polymorphism oligonucleotide genomic microarray (SNP-chip) in concert with bioinformatics offers the opportunity to discover the genetic lesions associated with ALL. We examined 399 pediatric ALL samples and their matched remission marrows at 50,000/250,000 SNP sites using an SNP-chip platform. Correlations between genetic abnormalities and clinical features were examined. Three common genetic alterations were found: deletion of ETV6, deletion of p16INK4A, and hyperdiploidy, as well as a number of novel recurrent genetic alterations. Uniparental disomy (UPD) was a frequent event, especially affecting chromosome 9. A cohort of children with hyperdiploid ALL without gain of chromosomes 17 and 18 had a poor prognosis. Molecular allelokaryotyping is a robust tool to define small genetic abnormalities including UPD, which is usually overlooked by standard methods. This technique was able to detect subgroups with a poor prognosis based on their genetic status.


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