Quantification Of Natural Growth Of Two Strains Of Mycobacterium Marinum For Translational Antituberculosis Drug Development

CTS-CLINICAL AND TRANSLATIONAL SCIENCE(2020)

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摘要
The zebrafish infected with Mycobacterium marinum (M. marinum) is an attractive tuberculosis disease model, showing similar pathogenesis to Mycobacterium tuberculosis (M. tuberculosis) infections in humans. To translate pharmacological findings from this disease model to higher vertebrates, a quantitative understanding of the natural growth of M. marinum in comparison to the natural growth of M. tuberculosis is essential. Here, the natural growth of two strains of M. marinum, E11 and M-USA, is studied over an extended period using an established model-based approach, the multistate tuberculosis pharmacometric (MTP) model, for comparison to that of M. tuberculosis. Poikilotherm-derived strain E11 and human-derived strain M-USA were grown undisturbed up to 221 days and viability of cultures (colony forming unit (CFU)/mL) was determined by plating at different time points. Nonlinear mixed effects modeling using the MTP model quantified the bacterial growth, the transfer among fast, slow, and non-multiplying states, and the inoculi. Both strains showed initial logistic growth, reaching a maximum after 20-25 days for E11 and M-USA, respectively, followed by a decrease to a new plateau. Natural growth of both E11 and M-USA was best described with Gompertz growth functions. For E11, the inoculum was best described in the slow-multiplying state, for M-USA in the fast-multiplying state. Natural growth of E11 was most similar to that of M. tuberculosis, whereas M-USA showed more aggressive growth behavior. Characterization of natural growth of M. marinum and quantitative comparison with M. tuberculosis brings the zebrafish tuberculosis disease model closer to the quantitative translational pipeline of antituberculosis drug development.
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关键词
Drug development,Infectious disease,Mathematical modelling,Preclinical,Tuberculosis
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