Literature DB >> 29296778

ASXL1 and BIM germ line variants predict response and identify CML patients with the greatest risk of imatinib failure.

Justine E Marum1,2, David T Yeung1,3,4,5, Leanne Purins6, John Reynolds7, Wendy T Parker8, Doris Stangl1, Paul P S Wang8, David J Price9, Jonathan Tuke9, Andreas W Schreiber8, Hamish S Scott1,5,8,10,11, Timothy P Hughes3,4,10, Susan Branford1,5,10,11.   

Abstract

Scoring systems used at diagnosis of chronic myeloid leukemia (CML), such as Sokal risk, provide important response prediction for patients treated with imatinib. However, the sensitivity and specificity of scoring systems could be enhanced for improved identification of patients with the highest risk. We aimed to identify genomic predictive biomarkers of imatinib response at diagnosis to aid selection of first-line therapy. Targeted amplicon sequencing was performed to determine the germ line variant profile in 517 and 79 patients treated with first-line imatinib and nilotinib, respectively. The Sokal score and ASXL1 rs4911231 and BIM rs686952 variants were independent predictors of early molecular response (MR), major MR, deep MRs (MR4 and MR4.5), and failure-free survival (FFS) with imatinib treatment. In contrast, the ASXL1 and BIM variants did not consistently predict MR or FFS with nilotinib treatment. In the imatinib-treated cohort, neither Sokal or the ASXL1 and BIM variants predicted overall survival (OS) or progression to accelerated phase or blast crisis (AP/BC). The Sokal risk score was combined with the ASXL1 and BIM variants in a classification tree model to predict imatinib response. The model distinguished an ultra-high-risk group, representing 10% of patients, that predicted inferior OS (88% vs 97%; P = .041), progression to AP/BC (12% vs 1%; P = .034), FFS (P < .001), and MRs (P < .001). The ultra-high-risk patients may be candidates for more potent or combination first-line therapy. These data suggest that germ line genetic variation contributes to the heterogeneity of response to imatinib and may contribute to a prognostic risk score that allows early optimization of therapy.

Entities:  

Year:  2017        PMID: 29296778      PMCID: PMC5727850          DOI: 10.1182/bloodadvances.2017006825

Source DB:  PubMed          Journal:  Blood Adv        ISSN: 2473-9529


  50 in total

1.  A common BIM deletion polymorphism mediates intrinsic resistance and inferior responses to tyrosine kinase inhibitors in cancer.

Authors:  King Pan Ng; Axel M Hillmer; Charles T H Chuah; Wen Chun Juan; Tun Kiat Ko; Audrey S M Teo; Pramila N Ariyaratne; Naoto Takahashi; Kenichi Sawada; Yao Fei; Sheila Soh; Wah Heng Lee; John W J Huang; John C Allen; Xing Yi Woo; Niranjan Nagarajan; Vikrant Kumar; Anbupalam Thalamuthu; Wan Ting Poh; Ai Leen Ang; Hae Tha Mya; Gee Fung How; Li Yi Yang; Liang Piu Koh; Balram Chowbay; Chia-Tien Chang; Veera S Nadarajan; Wee Joo Chng; Hein Than; Lay Cheng Lim; Yeow Tee Goh; Shenli Zhang; Dianne Poh; Patrick Tan; Ju-Ee Seet; Mei-Kim Ang; Noan-Minh Chau; Quan-Sing Ng; Daniel S W Tan; Manabu Soda; Kazutoshi Isobe; Markus M Nöthen; Tien Y Wong; Atif Shahab; Xiaoan Ruan; Valère Cacheux-Rataboul; Wing-Kin Sung; Eng Huat Tan; Yasushi Yatabe; Hiroyuki Mano; Ross A Soo; Tan Min Chin; Wan-Teck Lim; Yijun Ruan; S Tiong Ong
Journal:  Nat Med       Date:  2012-03-18       Impact factor: 53.440

2.  Monitoring chronic myeloid leukaemia therapy by real-time quantitative PCR in blood is a reliable alternative to bone marrow cytogenetics.

Authors:  S Branford; T P Hughes; Z Rudzki
Journal:  Br J Haematol       Date:  1999-12       Impact factor: 6.998

3.  Definitions, methodological and statistical issues for phase 3 clinical trials in chronic myeloid leukemia: a proposal by the European LeukemiaNet.

Authors:  Joëlle Guilhot; Michele Baccarani; Richard E Clark; Francisco Cervantes; François Guilhot; Andreas Hochhaus; Sergei Kulikov; Jiri Mayer; Andreas L Petzer; Gianantonio Rosti; Philippe Rousselot; Giuseppe Saglio; Susanne Saussele; Bengt Simonsson; Juan-Luis Steegmann; Andrey Zaritskey; Rüdiger Hehlmann
Journal:  Blood       Date:  2012-04-16       Impact factor: 22.113

4.  OCT1 genetic variants are associated with long term outcomes in imatinib treated chronic myeloid leukemia patients.

Authors:  Maya Koren-Michowitz; Zehavit Buzaglo; Elena Ribakovsky; Michaela Schwarz; Ilias Pessach; Avichai Shimoni; Katia Beider; Ninette Amariglio; Philipp le Coutre; Arnon Nagler
Journal:  Eur J Haematol       Date:  2013-12-18       Impact factor: 2.997

5.  SNPnexus: a web server for functional annotation of novel and publicly known genetic variants (2012 update).

Authors:  Abu Z Dayem Ullah; Nicholas R Lemoine; Claude Chelala
Journal:  Nucleic Acids Res       Date:  2012-04-28       Impact factor: 16.971

Review 6.  Mutations in ASXL1 are associated with poor prognosis across the spectrum of malignant myeloid diseases.

Authors:  Véronique Gelsi-Boyer; Mandy Brecqueville; Raynier Devillier; Anne Murati; Marie-Joelle Mozziconacci; Daniel Birnbaum
Journal:  J Hematol Oncol       Date:  2012-03-21       Impact factor: 17.388

7.  Intronic SNPs of TP53 gene in chronic myeloid leukemia: Impact on drug response.

Authors:  K Sailaja; V R Rao; Satish Yadav; R Rajasekhar Reddy; D Surekha; D Nageswara Rao; D Raghunadharao; S Vishnupriya
Journal:  J Nat Sci Biol Med       Date:  2012-07

8.  A single nucleotide polymorphism in cBIM is associated with a slower achievement of major molecular response in chronic myeloid leukaemia treated with imatinib.

Authors:  Vanessa Augis; Kelly Airiau; Marina Josselin; Béatrice Turcq; François-Xavier Mahon; Francis Belloc
Journal:  PLoS One       Date:  2013-11-05       Impact factor: 3.240

Review 9.  The concept of treatment-free remission in chronic myeloid leukemia.

Authors:  S Saußele; J Richter; A Hochhaus; F-X Mahon
Journal:  Leukemia       Date:  2016-05-02       Impact factor: 11.528

10.  Imatinib and nilotinib induce apoptosis of chronic myeloid leukemia cells through a Bim-dependant pathway modulated by cytokines.

Authors:  Francis Belloc; François Moreau-Gaudry; Maialen Uhalde; Laurie Cazalis; Marie Jeanneteau; Francis Lacombe; Vincent Praloran; François-Xavier Mahon
Journal:  Cancer Biol Ther       Date:  2007-03-05       Impact factor: 4.742

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  2 in total

Review 1.  Mechanisms of Disease Progression and Resistance to Tyrosine Kinase Inhibitor Therapy in Chronic Myeloid Leukemia: An Update.

Authors:  Luana Bavaro; Margherita Martelli; Michele Cavo; Simona Soverini
Journal:  Int J Mol Sci       Date:  2019-12-05       Impact factor: 5.923

2.  Somatic variants in epigenetic modifiers can predict failure of response to imatinib but not to second-generation tyrosine kinase inhibitors.

Authors:  Georgios Nteliopoulos; Alexandra Bazeos; Simone Claudiani; Gareth Gerrard; Edward Curry; Richard Szydlo; Mary Alikian; Hui En Foong; Zacharoula Nikolakopoulou; Sandra Loaiza; Jamshid S Khorashad; Dragana Milojkovic; Danilo Perrotti; Robert Peter Gale; Letizia Foroni; Jane F Apperley
Journal:  Haematologica       Date:  2019-05-09       Impact factor: 9.941

  2 in total

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