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Advantages of high throughput parallel sequencing in detecting somatic mosaicism in sporadic retinoblastoma

Abstract

Almost 80% of cases of hereditary retinoblastoma do not have a family history and arise as a result of de novo mutations in the RB1 gene. An NGS test was performed on 208 unrelated patients with sporadic RB, including 145 patients with a unilateral form and 63 patients with a bilateral one. In the group of patients with bilateral RB, pathogenic variants in the RB1 gene were detected in 90.5% (57/63) cases. In 4.8% (3/63) of patients, a mosaic variants were determined. In the group of patients with unilateral RB, changes in the RB1 gene were detected in 17.9% (26/145) cases. Among the examined patients, somatic mosaicism was detected in 9.0% (13/165) cases. NGS allows us to determine the allelic frequency of variants, which makes the search for somatic mosaicism effective.

About the Authors

E. A. Alekseeva
Research Centre for Medical Genetics
Russian Federation


O. V. Babenko
Research Centre for Medical Genetics
Russian Federation


V. M. Kozlova
N.N. Blokhin National Medical Research Center of Oncology
Russian Federation


T. L. Ushakova
N.N. Blokhin National Medical Research Center of Oncology
Russian Federation


T. P. Kazubskaya
N.N. Blokhin National Medical Research Center of Oncology
Russian Federation


A. S. Tanas
Research Centre for Medical Genetics
Russian Federation


K. O. Karandasheva
Research Centre for Medical Genetics
Russian Federation


V. V. Strelnikov
Research Centre for Medical Genetics
Russian Federation


D. V. Zaletaev
Research Centre for Medical Genetics
Russian Federation


Review

For citations:


Alekseeva E.A., Babenko O.V., Kozlova V.M., Ushakova T.L., Kazubskaya T.P., Tanas A.S., Karandasheva K.O., Strelnikov V.V., Zaletaev D.V. Advantages of high throughput parallel sequencing in detecting somatic mosaicism in sporadic retinoblastoma. Medical Genetics. 2020;19(6):6-7. (In Russ.)

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ISSN 2073-7998 (Print)