莫西沙星
养生
医学
临床试验
利福喷丁
肺结核
重症监护医学
抗生素
基岩
药效学
内科学
药理学
药代动力学
结核分枝杆菌
病理
生物
潜伏性肺结核
微生物学
作者
Maral Budak,Jennifer J. Linderman,JoAnne L. Flynn,Denise E. Kirschner
标识
DOI:10.1124/jpet.122.193130
摘要
Abstract ID 19313 Poster Board 151 Tuberculosis (TB) continues to be one of the deadliest infectious diseases in the world, causing ∼1.5 million deaths every year. The World Health Organization initiated an End TB Strategy that aims to reduce TB-related deaths in 2030 by 90%. Recent research goals have focused on discovering more effective and more patient-friendly antibiotic drug regimens to increase patient compliance and decrease the emergence of resistant TB. Moxifloxacin is one promising antibiotic that may improve the current standard regimen by shortening treatment time. Clinical trials and in vivo mouse studies suggest that regimens containing moxifloxacin have better bactericidal activity. However, testing every possible combination regimen with moxifloxacin either in vivo or clinically is not feasible due to experimental and clinical limitations. To identify better regimens more systematically, we simulated pharmacokinetics/pharmacodynamics of various regimens (with and without moxifloxacin) to evaluate efficacies, and then compared our predictions to both clinical trials and nonhuman primate studies performed herein. We used GranSim, our well-established hybrid agent-based model that simulates granuloma formation and antibiotic treatment, for this task. In addition, we established a multiple-objective optimization pipeline using GranSim to discover optimized regimens based on treatment objectives of interest, i.e., minimizing the total drug dose and lowering the time needed to sterilize granulomas. Our approach can efficiently test many regimens and successfully identify optimal regimens to inform pre-clinical studies or clinical trials and ultimately accelerate the TB regimen discovery process.
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