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利用颗粒聚集动力学模拟噬菌体诱导的大肠杆菌失活。

Modeling bacteriophage-induced inactivation of Escherichia coli utilizing particle aggregation kinetics.

机构信息

Department of Civil & Environmental Engineering, Duke University, Durham, NC, USA; Center for the Environmental Implications of Nanotechnology (CEINT), Duke University, Durham, NC, USA.

Department of Civil & Environmental Engineering, Duke University, Durham, NC, USA; Center for the Environmental Implications of Nanotechnology (CEINT), Duke University, Durham, NC, USA.

出版信息

Water Res. 2020 Mar 15;171:115438. doi: 10.1016/j.watres.2019.115438. Epub 2019 Dec 23.

Abstract

Targeted inactivation of bacteria using bacteriophages has been proposed in applications ranging from bioengineering and biofuel production to medical treatments. The ability to differentiate between desirable and undesirable organisms, such as in targeting filamentous bacteria in activated sludge, is a potential advantage over conventional disinfectants. Like conventional disinfectants, bacteriophages exhibit non-linear concentration-time (Ct) dynamics in achieving bacterial inactivation. However, there is currently no workable model for predicting these observed non-linear inactivation rates. This work considers an approach to predicting bacteriophage-induced inactivation rates by utilizing classical particle aggregation theory. Bacteriophage-bacteria interactions are represented as a two-step process of transport by Brownian motion, differential settling, and shear, followed by attachment. Modifying classical expressions for particle-particle aggregation to include bacterial growth, death, and bacteriophage reproduction, the model was calibrated and validated using literature data. The calibrated model captures much of the observed non-linearity in inactivation rates and reasonably predicts the final host concentration. This model was shown to be most useful in systems more likely to reflect an industrial setting, where the initial multiplicity of infection, or MOI (the ratio of bacteriophage to host organisms), was 1 or greater. For systems of an initial MOI of less than 1 the model showed increased sensitivity to changes in input parameters and a less pronounced ability to reasonably predict inactivation rates.

摘要

利用噬菌体靶向灭活细菌的方法已被应用于生物工程、生物燃料生产和医疗等多个领域。与传统消毒剂相比,噬菌体能够区分所需和不需要的生物体,例如在靶向活性污泥中的丝状细菌方面具有潜在优势。与传统消毒剂一样,噬菌体在实现细菌失活方面表现出非线性的浓度-时间(Ct)动力学。然而,目前还没有可行的模型可以预测这些观察到的非线性失活率。本研究采用经典的颗粒聚集理论来预测噬菌体诱导的失活率。噬菌体-细菌相互作用被表示为通过布朗运动、差异沉降和剪切进行的两步传输过程,然后是附着。通过将经典的颗粒-颗粒聚集表达式修改为包括细菌生长、死亡和噬菌体繁殖,该模型使用文献数据进行了校准和验证。校准后的模型捕捉到了失活率中许多观察到的非线性,并合理地预测了最终的宿主浓度。该模型在更有可能反映工业环境的系统中最有用,其中初始感染复数(MOI)或噬菌体与宿主生物的比值为 1 或更高。对于初始 MOI 小于 1 的系统,该模型对输入参数的变化更加敏感,并且合理预测失活率的能力也不那么明显。

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