AI Article Synopsis

  • Advances in understanding acute myeloid leukemia (AML) are not translating to improved survival rates, highlighting the need for better predictive tools for treatment response.
  • Researchers combined genomics, computational modeling, and chemosensitivity assays on 100 patients to assess the effectiveness of a BET inhibitor (JQ1) in targeting AML.
  • The study found that 93% of predictions for treatment response matched lab results, identifying specific genomic markers that could help tailor therapies for patients with certain chromosomal abnormalities.

Article Abstract

Despite advances in understanding the molecular pathogenesis of acute myeloid leukaemia (AML), overall survival rates remain low. The ability to predict treatment response based on individual cancer genomics using computational modeling will aid in the development of novel therapeutics and personalize care. Here, we used a combination of genomics, computational biology modeling (CBM), ex vivo chemosensitivity assay, and clinical data from 100 randomly selected patients in the Beat AML project to characterize AML sensitivity to a bromodomain (BRD) and extra-terminal (BET) inhibitor. Computational biology modeling was used to generate patient-specific protein network maps of activated and inactivated protein pathways translated from each genomic profile. Digital drug simulations of a BET inhibitor (JQ1) were conducted by quantitatively measuring drug effect using a composite AML disease inhibition score. 93% of predicted disease inhibition scores matched the associated ex vivo IC value. Sensitivity and specificity of CBM predictions were 97.67%, and 64.29%, respectively. Genomic predictors of response were identified. Patient samples harbouring chromosomal aberrations del(7q) or -7, +8, or del(5q) and somatic mutations causing ERK pathway dysregulation, responded to JQ1 in both in silico and ex vivo assays. This study shows how a combination of genomics, computational modeling and chemosensitivity testing can identify network signatures associating with treatment response and can inform priority populations for future clinical trials of BET inhibitors.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6442457PMC
http://dx.doi.org/10.1016/j.leukres.2018.11.010DOI Listing

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