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定量建模扩展了一氧化氮的抗菌活性。

Quantitative Modeling Extends the Antibacterial Activity of Nitric Oxide.

作者信息

Sivaloganathan Darshan M, Brynildsen Mark P

机构信息

Program in Quantitative and Computational Biology, Princeton University, Princeton, NJ, United States.

Department of Chemical and Biological Engineering, Princeton University, Princeton, NJ, United States.

出版信息

Front Physiol. 2020 Apr 17;11:330. doi: 10.3389/fphys.2020.00330. eCollection 2020.

Abstract

Numerous materials have been developed to try and harness the antimicrobial properties of nitric oxide (NO). However, the short half-life and reactivity of NO have made precise, tunable delivery difficult. As such, conventional methodologies have generally relied on donors that spontaneously release NO at different rates, and delivery profiles have largely been constrained to decaying dynamics. In recent years, the possibility of finely controlling NO release, for instance with light, has become achievable and this raises the question of how delivery dynamics influence therapeutic potential. Here we investigated this relationship using as a model organism and an approach that incorporated both experimentation and mathematical modeling. We found that the best performing delivery mode was dependent on the NO payload, and developed a mathematical model to quantitatively dissect those observations. Those analyses suggested that the duration of respiratory inhibition was a major determinant of NO-induced growth inhibition. Inspired by this, we constructed a delivery schedule that leveraged that insight to extend the antimicrobial activity of NO far beyond what was achievable by traditional delivery dynamics. Collectively, these data and analyses suggest that the delivery dynamics of NO have a considerable impact on its ability to achieve and maintain bacteriostasis.

摘要

人们已经开发出多种材料来尝试利用一氧化氮(NO)的抗菌特性。然而,NO的半衰期短且具有反应性,使得精确、可调节的递送变得困难。因此,传统方法通常依赖于以不同速率自发释放NO的供体,并且递送曲线在很大程度上受到衰减动力学的限制。近年来,例如通过光精确控制NO释放的可能性已经实现,这就提出了递送动力学如何影响治疗潜力的问题。在这里,我们以 为模式生物,采用结合实验和数学建模的方法研究了这种关系。我们发现,最佳的递送模式取决于NO的负载量,并开发了一个数学模型来定量剖析这些观察结果。这些分析表明,呼吸抑制的持续时间是NO诱导生长抑制的主要决定因素。受此启发,我们构建了一个递送方案,利用这一见解将NO的抗菌活性扩展到远远超过传统递送动力学所能达到的范围。总体而言,这些数据和分析表明,NO的递送动力学对其实现和维持抑菌作用的能力有相当大的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef55/7181900/78a666bfe840/fphys-11-00330-g001.jpg

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