抗体
生物
基因
鉴定(生物学)
急性淋巴细胞白血病
DNA测序
免疫学
淋巴细胞白血病
遗传学
白血病
植物
作者
Monika Brüggemann,Michaela Kotrová,Henrik Knecht,Jack Bartram,Myriam Boudjogrha,Vojtěch Bystrý,Grazia Fazio,Eva Froňková,Mathieu Giraud,Andrea Grioni,Jeremy Hancock,Dietrich Herrmann,Cristina Jiménez,Adam Krejčí,John Moppett,Tomáš Reigl,Mikaël Salson,Blanca Scheijen,Martin Schwarz,Simona Songia
出处
期刊:Leukemia
[Springer Nature]
日期:2019-06-26
卷期号:33 (9): 2241-2253
被引量:252
标识
DOI:10.1038/s41375-019-0496-7
摘要
Amplicon-based next-generation sequencing (NGS) of immunoglobulin (IG) and T-cell receptor (TR) gene rearrangements for clonality assessment, marker identification and quantification of minimal residual disease (MRD) in lymphoid neoplasms has been the focus of intense research, development and application. However, standardization and validation in a scientifically controlled multicentre setting is still lacking. Therefore, IG/TR assay development and design, including bioinformatics, was performed within the EuroClonality-NGS working group and validated for MRD marker identification in acute lymphoblastic leukaemia (ALL). Five EuroMRD ALL reference laboratories performed IG/TR NGS in 50 diagnostic ALL samples, and compared results with those generated through routine IG/TR Sanger sequencing. A central polytarget quality control (cPT-QC) was used to monitor primer performance, and a central in-tube quality control (cIT-QC) was spiked into each sample as a library-specific quality control and calibrator. NGS identified 259 (average 5.2/sample, range 0-14) clonal sequences vs. Sanger-sequencing 248 (average 5.0/sample, range 0-14). NGS primers covered possible IG/TR rearrangement types more completely compared with local multiplex PCR sets and enabled sequencing of bi-allelic rearrangements and weak PCR products. The cPT-QC showed high reproducibility across all laboratories. These validated and reproducible quality-controlled EuroClonality-NGS assays can be used for standardized NGS-based identification of IG/TR markers in lymphoid malignancies.
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