Rapid, reliable, and reproducible molecular sub-grouping of clinical medulloblastoma samples

Paul A. Northcott(Hospital for Sick Children), David Shih(Hospital for Sick Children), Marc Remke(Heidelberg University), Yoon‐Jae Cho(Boston Children's Hospital), Marcel Kool(German Cancer Research Center), Cynthia Hawkins(Hospital for Sick Children), Charles G. Eberhart(Johns Hopkins Medicine), Adrian M. Dubuc(University of Toronto), Toumy Guettouche(Sylvester Comprehensive Cancer Center), Yoslayma Cardentey(Sylvester Comprehensive Cancer Center), Éric Bouffet(Hospital for Sick Children), Scott L. Pomeroy(Boston Children's Hospital), Marco A. Marra(Canada's Michael Smith Genome Sciences Centre), David Malkin(University of Toronto), James T. Rutka(SickKids Foundation), Andrey Korshunov(Heidelberg University), Stefan M. Pfister(Heidelberg University), Michael D. Taylor(University of Toronto)
Acta Neuropathologica
November 5, 2011
Cited by 387Open Access
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Abstract

The diagnosis of medulloblastoma likely encompasses several distinct entities, with recent evidence for the existence of at least four unique molecular subgroups that exhibit distinct genetic, transcriptional, demographic, and clinical features. Assignment of molecular subgroup through routine profiling of high-quality RNA on expression microarrays is likely impractical in the clinical setting. The planning and execution of medulloblastoma clinical trials that stratify by subgroup, or which are targeted to a specific subgroup requires technologies that can be economically, rapidly, reliably, and reproducibly applied to formalin-fixed paraffin embedded (FFPE) specimens. In the current study, we have developed an assay that accurately measures the expression level of 22 medulloblastoma subgroup-specific signature genes (CodeSet) using nanoString nCounter Technology. Comparison of the nanoString assay with Affymetrix expression array data on a training series of 101 medulloblastomas of known subgroup demonstrated a high concordance (Pearson correlation r = 0.86). The assay was validated on a second set of 130 non-overlapping medulloblastomas of known subgroup, correctly assigning 98% (127/130) of tumors to the appropriate subgroup. Reproducibility was demonstrated by repeating the assay in three independent laboratories in Canada, the United States, and Switzerland. Finally, the nanoString assay could confidently predict subgroup in 88% of recent FFPE cases, of which 100% had accurate subgroup assignment. We present an assay based on nanoString technology that is capable of rapidly, reliably, and reproducibly assigning clinical FFPE medulloblastoma samples to their molecular subgroup, and which is highly suited for future medulloblastoma clinical trials.


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