| Literature DB >> 32131829 |
Erin L Crowgey1, Nitin Mahajan2,3, Wing Hing Wong2,3, Anilkumar Gopalakrishnapillai1, Sonali P Barwe1, E Anders Kolb4, Todd E Druley5,6.
Abstract
BACKGROUND: Pediatric leukemias have a diverse genomic landscape associated with complex structural variants, including gene fusions, insertions and deletions, and single nucleotide variants. Routine karyotype and fluorescence in situ hybridization (FISH) techniques lack sensitivity for smaller genomic alternations. Next-generation sequencing (NGS) assays are being increasingly utilized for assessment of these various lesions. However, standard NGS lacks quantitative sensitivity for minimal residual disease (MRD) surveillance due to an inherently high error rate.Entities:
Keywords: Computational biology; Error-corrected sequencing; Minimal residual disease; Next generation sequencing; Pediatric leukemia
Mesh:
Year: 2020 PMID: 32131829 PMCID: PMC7057603 DOI: 10.1186/s12920-020-0671-8
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.063
Summary of variants and allele frequencies in longitudinal samples
Fig. 1Variant tracking at diagnosis, end of induction (EOI), and relapse in a single pediatric AML subject across multiple regions in the genome. The top panel represents the analysis between the diagnostic and end of induction sample. Left axis and blue lines represent the variant allele frequency (VAF), and the orange lines and right x-axis represent the delta of VAF between the diagnostic and end of induction sample. The bottom panel of the Figure represents the analysis between endo of induction and relapse with the same x- and y- axis as the top panel
Fig. 2Error-corrected sequencing noise reduction for low allelic variants. Top panel represents all variants (blue dots) identified in the genomic region of a known somatic mutation located in PTPN11 (red dot). Bottom panel demonstrates noise reduction with the application of error-corrected sequencing
Comparison between gene rearrangements detected by diagnostic FISH analysis and by targeted error-corrected sequencing of pediatric primary bone marrow specimens
Fig. 3Development of a specific and sensitive NGS panel for FLT3-ITD detection and disease monitoring. a Serial dilution results for MV4–11 cell line (30 bp ITD in FLT3). The x-axis is allele fraction and y-axis is the number of ITD supporting reads / 10 M sequencing reads. b Nine leukemia samples were analyzed with varying ITD sizes (right y-axis, grey bars) and allele fraction (left y-axis, blue bars). Subjects are across the x-axis, with D = diagnosis, EOI = end of induction, and R = relapse sample
Fig. 4Summary of RNA-ECS results for pediatric leukemia diagnostic samples. a Distribution of allelic specific single nucleotide variants and gene counts. Pie chart represents the distribution across all leukemia samples. b The bar graph represents the counts per gene. c Distribution of RNA StVs and gene counts. Pie chart represents the distribution across all leukemia samples for SNVs. d The bar graph represents the counts per gene
Fig. 5Novel RNA variants identified at time of diagnosis. a An aberrant RNA molecule in ZCCHC7 was identified in several of the B-ALL samples. b Novel cryptic gene fusion in SPTAN1-ABL1 was identified in a T-ALL subject and confirmed via Sanger sequencing. ExPASy translation of the fusion product sequence revealed the in-frame fusion of SPTAN1 (amino acids in red) and ABL1 (amino acids in black)