| Literature DB >> 30089632 |
Masturah Bte Mohd Abdul Rashid1,2, Tan Boon Toh1, Lissa Hooi1, Aleidy Silva3, Yanzhou Zhang1, Pei Fang Tan4, Ai Ling Teh4, Neerja Karnani4,5, Sudhakar Jha1,5, Chih-Ming Ho3,6,7, Wee Joo Chng1,8, Dean Ho2,6,7,9,10,11, Edward Kai-Hua Chow12,2.
Abstract
Multiple myeloma is an incurable hematological malignancy that relies on drug combinations for first and secondary lines of treatment. The inclusion of proteasome inhibitors, such as bortezomib, into these combination regimens has improved median survival. Resistance to bortezomib, however, is a common occurrence that ultimately contributes to treatment failure, and there remains a need to identify improved drug combinations. We developed the quadratic phenotypic optimization platform (QPOP) to optimize treatment combinations selected from a candidate pool of 114 approved drugs. QPOP uses quadratic surfaces to model the biological effects of drug combinations to identify effective drug combinations without reference to molecular mechanisms or predetermined drug synergy data. Applying QPOP to bortezomib-resistant multiple myeloma cell lines determined the drug combinations that collectively optimized treatment efficacy. We found that these combinations acted by reversing the DNA methylation and tumor suppressor silencing that often occur after acquired bortezomib resistance in multiple myeloma. Successive application of QPOP on a xenograft mouse model further optimized the dosages of each drug within a given combination while minimizing overall toxicity in vivo, and application of QPOP to ex vivo multiple myeloma patient samples optimized drug combinations in patient-specific contexts.Entities:
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Year: 2018 PMID: 30089632 DOI: 10.1126/scitranslmed.aan0941
Source DB: PubMed Journal: Sci Transl Med ISSN: 1946-6234 Impact factor: 17.956