The spectrum of somatic mutations in monoclonal gammopathy of undetermined significance indicates a less complex genomic landscape than that in multiple myeloma

Aneta Mikulášová(Masaryk University), Christopher P. Wardell(University of Arkansas for Medical Sciences), Alexander Murison(Institute of Cancer Research), Eileen M. Boyle(Institute of Cancer Research), Graham Jackson(Newcastle University), Jan Smetana(Masaryk University), Zuzana Chyra(University of Ostrava), Luděk Pour(University Hospital Brno), Viera Sandecká(University Hospital Brno), Martina Almáši(University Hospital Brno), Pavla Všianská(University Hospital Brno), Evžen Gregora(University Hospital Kralovske Vinohrady), Petr Kuglík(Masaryk University), Roman Hájek(University of Ostrava), Faith E. Davies(University of Arkansas for Medical Sciences), Gareth J. Morgan(University of Arkansas for Medical Sciences), Brian A. Walker(University of Arkansas Medical Center)
Haematologica
May 26, 2017
Cited by 100Open Access
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Abstract

Monoclonal gammopathy of undetermined significance is a pre-malignant precursor of multiple myeloma with a 1% risk of progression per year. Although targeted analyses have shown the presence of specific genetic abnormalities such as IGH translocations, RB1 deletion, 1q gain, hyperdiploidy or RAS gene mutations, little is known about the molecular mechanism of malignant transformation. We performed whole exome sequencing together with comparative genomic hybridization plus single nucleotide polymorphism array analysis in 33 flow-cytometry-separated abnormal plasma cell samples from patients with monoclonal gammopathy of undetermined significance to describe somatic gene mutations and chromosome changes at the genome-wide level. Non-synonymous mutations and copy-number alterations were present in 97.0% and in 60.6% of cases, respectively. Importantly, the number of somatic mutations was significantly lower in monoclonal gammopathy of undetermined significance than in myeloma (P


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