ID: 2036 Next-generation sequencing to evaluate frequency of BCR-ABL1 kinase domain Imatinib-resistance mutations
Abstract
Chronic myeloid leukemia is a clonal myeloproliferative neoplasm, characterized by the presence of chromosomal translocation t(9; 22)(q34; q11). This is found in over 95% of the cases and results in the BCR-ABL1 fusion gene with high tyrosine kinase activity. During the last decades, imatinib and other generation of tyrosine kinase inhibitors have been used effectively for target therapy of the disease. However, many of the drug resistance cases have been reported recently, due to the mutation within kinase domain of the BCR-ABL1 fusion gene. In this work, we performed a retrospective study of 141 imatinib-resistance chronic myeloid leukemia patients to analyze kinase domain mutation by deep sequencing. Another group of 20 untreated patients were added as control. RNA from bone marrow cells was extracted and deeply sequenced utilizing Illumina MiSeq. Bioinformatics pipeline was applied for variant calling and annotation. And the Sanger sequencing was used to validate those mutations. The results showed that nearly one-fourth of patients harboring mutations that resist to Imatinib, among those, Y253F/H, M351T, G250E, F359V/I and M244V were the most frequent mutations. There were also a number of samples harboring multiple substitutions and new variations. Thus, Next-generation sequencing could be the sensitive and effective method to detect kinase domain mutation and our results could provide further information about the drug-resistance mutation in chronic myeloid leukemia.
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Volume & Issue : Vol 4 No S (2017): Abstract Proceeding: International conference INNOVATIONS IN CANCER RESEARCH AND REGENERATIVE MEDICINE 2017
Page No.: S67
Published on: 2017-09-05
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This work is licensed under a Creative Commons Attribution 4.0 International License.
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