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Addition of chromosomal microarray and next generation sequencing to FISH and classical cytogenetics enhances genomic profiling of myeloid malignancies.

Authors :
Mukherjee S
Sathanoori M
Ma Z
Andreatta M
Lennon PA
Wheeler SR
Prescott JL
Coldren C
Casey T
Rietz H
Fasig K
Woodford R
Hartley T
Spence D
Donnelan W
Berdeja J
Flinn I
Kozyr N
Bouzyk M
Correll M
Ho H
Kravtsov V
Tunnel D
Chandra P
Source :
Cancer genetics [Cancer Genet] 2017 Oct; Vol. 216-217, pp. 128-141. Date of Electronic Publication: 2017 Aug 14.
Publication Year :
2017

Abstract

Comprehensive genetic profiling is increasingly important for the clinical workup of hematologic tumors, as specific alterations are now linked to diagnostic characterization, prognostic stratification and therapy selection. To characterize relevant genetic and genomic alterations in myeloid malignancies maximally, we utilized a comprehensive strategy spanning fluorescence in situ hybridization (FISH), classical karyotyping, Chromosomal Microarray (CMA) for detection of copy number variants (CNVs) and Next generation Sequencing (NGS) analysis. In our cohort of 569 patients spanning the myeloid spectrum, NGS and CMA testing frequently identified mutations and copy number changes in the majority of genes with important clinical associations, such as TP53, TET2, RUNX1, SRSF2, APC and ATM. Most importantly, NGS and CMA uncovered medically actionable aberrations in 75.6% of cases normal by FISH/cytogenetics testing. NGS identified mutations in 65.5% of samples normal by CMA, cytogenetics and FISH, whereas CNVs were detected in 10.1% cases that were normal by all other methodologies. Finally, FISH or cytogenetics, or both, were abnormal in 14.1% of cases where NGS or CMA failed to detect any changes. Multiple mutations and CNVs were found to coexist, with potential implications for patient stratification. Thus, high throughput genomic tumor profiling through targeted DNA sequencing and CNV analysis complements conventional methods and leads to more frequent detection of actionable alterations.<br /> (Copyright © 2017 Elsevier Inc. All rights reserved.)

Details

Language :
English
ISSN :
2210-7762
Volume :
216-217
Database :
MEDLINE
Journal :
Cancer genetics
Publication Type :
Academic Journal
Accession number :
29025587
Full Text :
https://doi.org/10.1016/j.cancergen.2017.07.010