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Statistical detection of geographic clusters of resistant Escherichia coli in a regional network with WHONET and SaTScan

机译:使用WHONET和SaTScan在区域网络中对耐药性大肠杆菌地理簇进行统计检测

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Background: While antimicrobial resistance threatens the prevention, treatment, and control of infectious diseases, systematic analysis of routine microbiology laboratory test results worldwide can alert new threats and promote timely response. This study explores statistical algorithms for recognizing geographic clustering of multi-resistant microbes within a healthcare network and monitoring the dissemination of new strains over time.Methods:Escherichia coli antimicrobial susceptibility data from a three-year period stored in WHONET were analyzed across ten facilities in a healthcare network utilizing SaTScan's spatial multinomial model with two models for defining geographic proximity. We explored geographic clustering of multi-resistance phenotypes within the network and changes in clustering over time.Results: Geographic clustering identified from both latitude/longitude and non-parametric facility groupings geographic models were similar, while the latter was offers greater flexibility and generalizability. Iterative application of the clustering algorithms suggested the possible recognition of the initial appearance of invasive E. coli ST131 in the clinical database of a single hospital and subsequent dissemination to others.Conclusion: Systematic analysis of routine antimicrobial resistance susceptibility test results supports the recognition of geographic clustering of microbial phenotypic subpopulations with WHONET and SaTScan, and iterative application of these algorithms can detect the initial appearance in and dissemination across a region prompting early investigation, response, and containment measures.
机译:背景:虽然抗菌素耐药性威胁着传染病的预防,治疗和控制,但对全球常规微生物实验室检测结果的系统分析可以提醒新的威胁并促进及时应对。这项研究探索了统计算法,以识别医疗网络中多种耐药菌的地理聚类并随着时间的推移监测新菌株的传播。方法:对WHONET中存储在三年中的大肠杆菌耐药性数据进行了分析,涵盖了十个设施一个医疗网络,利用SaTScan的空间多项式模型和两个模型来定义地理位置。我们研究了网络内多抗性表型的地理聚类以及聚类随时间的变化。结果:从纬度/经度和非参数设施分组中识别出的地理聚类相似,而后者则提供了更大的灵活性和通用性。聚类算法的迭代应用表明,可能会在一家医院的临床数据库中识别出侵袭性大肠杆菌ST131的最初外观,并随后传播给其他人。结论:常规抗菌素耐药性检测结果的系统分析支持地理区域的识别用WHONET和SaTScan对微生物表型亚群进行聚类,并且这些算法的迭代应用可以检测区域中的初始外观并在整个区域中传播,从而促进早期调查,响应和遏制措施。

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