
Building Optimal Three-Drug Combination Chemotherapy Regimens
Author(s) -
George L. Drusano,
Michael Neely,
Sarah Kim,
Walter M. Yamada,
Stephan Schmidt,
Brandon Duncanson,
Jocelyn Nole,
Nino Mtchedlidze,
Charles A. Peloquin,
Arnold Louie
Publication year - 2020
Publication title -
antimicrobial agents and chemotherapy
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.07
H-Index - 259
eISSN - 1070-6283
pISSN - 0066-4804
DOI - 10.1128/aac.01610-20
Subject(s) - bedaquiline , moxifloxacin , regimen , pharmacology , mycobacterium tuberculosis , combination therapy , drug resistance , medicine , tuberculosis , drug , multiple drug resistance , metabolite , antibiotics , biology , microbiology and biotechnology , pathology
Multidrug therapy is often required. Examples include antiviral therapy, nosocomial infections, and, most commonly, anti- Mycobacterium tuberculosis therapy. Our laboratory previously identified a mathematical approach to identify 2-drug regimens with a synergistic or additive interaction using a full factorial study design. Our objective here was to generate a method to identify an optimal 3-drug therapy. We studied M. tuberculosis isolate H37Rv in log-phase growth in flasks. Pretomanid and moxifloxacin were chosen as the base 2-drug regimen. Bedaquiline (plus M2 metabolite) was chosen as the third drug for evaluation. Total bacterial burden and bacterial burden less-susceptible to study drugs were enumerated. A large mathematical model was fit to all the data. This allowed extension to evaluation of the 3-drug regimen by employing a Monte Carlo simulation. Pretomanid plus moxifloxacin demonstrated excellent bacterial kill and suppressed amplification of less-susceptible pathogens. Total bacterial burden was driven to extinction in 3 weeks in 6 of 9 combination therapy evaluations. Only the lowest pretomanid/moxifloxacin exposures in combination did not extinguish the bacterial burden. No combination regimen allowed resistance amplification. Generation of 95% credible intervals about estimates of the interaction parameters α (α s , α r-p , and α r-m ) by bootstrapping showed the interaction was near synergistic. The addition of bedaquiline/M2 metabolite was evaluated by forming a 95% confidence interval regarding the decline in bacterial burden. The addition of bedaquiline/M2 metabolite shortened the time to eradication by 1 week and was significantly different. A model-based system approach to evaluating combinations of 3 agents shows promise to rapidly identify the most promising combinations that can then be trialed.