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Spatial-Temporal Survey and Occupancy-Abundance Modeling To Predict Bacterial Community Dynamics in the Drinking Water Microbiome

机译:时空调查和占空比模型来预测饮用水微生物组中的细菌群落动态。

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Bacterial communities migrate continuously from the drinking water treatment plant through the drinking water distribution system and into our built environment. Understanding bacterial dynamics in the distribution system is critical to ensuring that safe drinking water is being supplied to customers. We present a 15-month survey of bacterial community dynamics in the drinking water system of Ann Arbor, MI. By sampling the water leaving the treatment plant and at nine points in the distribution system, we show that the bacterial community spatial dynamics of distance decay and dispersivity conform to the layout of the drinking water distribution system. However, the patterns in spatial dynamics were weaker than those for the temporal trends, which exhibited seasonal cycling correlating with temperature and source water use patterns and also demonstrated reproducibility on an annual time scale. The temporal trends were driven by two seasonal bacterial clusters consisting of multiple taxa with different networks of association within the larger drinking water bacterial community. Finally, we show that the Ann Arbor data set robustly conforms to previously described interspecific occupancy abundance models that link the relative abundance of a taxon to the frequency of its detection. Relying on these insights, we propose a predictive framework for microbial management in drinking water systems. Further, we recommend that long-term microbial observatories that collect high-resolution, spatially distributed, multiyear time series of community composition and environmental variables be established to enable the development and testing of the predictive framework. >IMPORTANCE Safe and regulation-compliant drinking water may contain up to millions of microorganisms per liter, representing phylogenetically diverse groups of bacteria, archaea, and eukarya that affect public health, water infrastructure, and the aesthetic quality of water. The ability to predict the dynamics of the drinking water microbiome will ensure that microbial contamination risks can be better managed. Through a spatial-temporal survey of drinking water bacterial communities, we present novel insights into their spatial and temporal community dynamics and recommend steps to link these insights in a predictive framework for microbial management of drinking water systems. Such a predictive framework will not only help to eliminate microbial risks but also help to modify existing water quality monitoring efforts and make them more resource efficient. Further, a predictive framework for microbial management will be critical if we are to fully anticipate the risks and benefits of the beneficial manipulation of the drinking water microbiome.
机译:细菌群落不断从饮用水处理厂通过饮用水分配系统迁移到我们的建筑环境中。了解分配系统中的细菌动态对于确保向客户提供安全的饮用水至关重要。我们提出了一个为期15个月的密西根州安阿伯市饮用水系统中细菌群落动态调查。通过对离开处理厂和分配系统中9个点的水进行采样,我们表明距离衰减和分散性的细菌群落空间动力学符合饮用水分配系统的布局。但是,空间动力学的模式要比时间趋势的模式要弱,后者表现出与温度和水源用水模式相关的季节性循环,并且在年时间尺度上也表现出可重复性。时间趋势是由两个季节性细菌簇驱动的,它们是由较大的饮用水细菌群落中具有不同关联网络的多个分类单元组成的。最后,我们表明Ann Arbor数据集稳健地符合先前描述的种间占用度模型,该模型将分类单元的相对丰度与其检测频率联系起来。基于这些见解,我们提出了饮用水系统中微生物管理的预测框架。此外,我们建议建立长期的微生物观测站,以收集高分辨率的,空间分布的,多年的社区组成和环境变量时间序列,以实现预测框架的开发和测试。 >重要:每升安全且合规的饮用水中可能含有多达数百万种微生物,代表了影响公共卫生,水基础设施和水的美学品质的细菌,古细菌和真核生物的系统发育多样性。 。预测饮用水微生物组动态的能力将确保可以更好地管理微生物污染风险。通过对饮用水细菌群落的时空调查,我们提出了有关其时空群落动态的新颖见解,并提出了在饮用水系统微生物管理的预测框架中将这些见解联系起来的建议步骤。这样的预测框架不仅有助于消除微生物风险,而且还有助于修改现有的水质监测工作,并提高其资源利用效率。此外,如果我们要完全预测饮用水微生物组的有益操作的风险和益处,那么微生物管理的预测框架将至关重要。

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