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Maps, molecules, and multi-level modeling: Understanding the epidemiology of Escherichia coli O157 with clustered data.

机译:地图,分子和多层次建模:使用聚类数据了解大肠杆菌O157的流行病学。

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摘要

From 2000--2002, over 800 human cases of Escherichia coli O157 were reported in Alberta, Canada. Using spatial scan statistics yearly spatial, temporal, and space-time clusters were identified. In each year, spatial clusters were identified in the south of the province and temporal clusters were identified during the summer to early fall period. The locations of spatial clusters varied among years, but were fairly similar regardless of whether analyses included sporadic and outbreak cases or only sporadic cases alone. However, the spatial clusters identified for the entire study period were highly sensitive to the inclusion/exclusion of outbreak cases, and had the potential to lead to different hypotheses regarding the role of cattle farming in disease transmission. The space-time clusters identified as outbreaks using spatial scan statistics were validated qualitatively using epidemiological evidence and/or molecular data based on pulsed-field gel electrophoresis (PFGE). A randomization test was then applied and evaluated, using known outbreaks and analytical space-time clusters, and shown to be a reasonable tool to determine if isolates associated with a putative outbreak were more closely related, based on PFGE banding pattern, than expected by chance alone. Logistic regression models using various techniques to correct for auto-correlation revealed that outbreak cases tended to be younger and were more likely the result of person-person transmission than sporadic cases. Negative binomial and multi-level Poisson models revealed that population stability, the aboriginal composition of communities, and the economic links between communities and major urban centers were statistically significant risk factors associated with rates of disease among census subdivisions. The statistical significance of cattle density, recorded at a higher geographic level, depended on the method used to correct for over-dispersion, the number of levels included in the multi-level models, and the choice of using all reported cases or only sporadic cases. The impact of outbreak identification and limits to the spatial resolution of demographic and agricultural data are discussed as issues that limit and potentially bias the results of studies based on surveillance data.
机译:2000--2002年,加拿大艾伯塔省报告了800多例人类O157大肠杆菌病例。使用空间扫描统计数据,可以识别每年的空间,时间和时空群集。每年,在该省南部确定空间集群,并在夏季至初秋期间确定时间集群。空间群的位置随年份变化,但无论分析是仅包括散发病例还是暴发病例,还是仅包括散发病例,其空间分布都相当相似。但是,在整个研究期间确定的空间集群对爆发病例的纳入/排除高度敏感,并且有可能导致关于牛群在疾病传播中的作用的不同假设。使用流行病学证据和/或基于脉冲场凝胶电泳(PFGE)的分子数据,定性验证了使用空间扫描统计数据确定为爆发的时空簇。然后使用已知的暴发和分析时空群集应用和评估随机化测试,证明它是确定与推定暴发相关的分离株是否基于PFGE谱带关联更紧密相关的合理工具,而不是偶然的预期单独。使用各种技术校正自相关的Logistic回归模型显示,暴发病例比散发病例更年轻,更可能是人传人的结果。负二项式和多层Poisson模型显示,人口稳定性,社区的原住民构成以及社区与主要城市中心之间的经济联系是与普查部门中疾病发生率相关的统计学上显着的危险因素。在较高地理水平上记录的牛密度的统计显着性取决于校正过度分散所使用的方法,多层次模型中所包括的层次数,以及使用所有报告的病例还是仅偶发病例的选择。讨论了暴发识别的影响以及人口和农业数据空间分辨率的局限性,这些问题限制并可能使基于监视数据的研究结果产生偏差。

著录项

  • 作者

    Pearl, David Leon.;

  • 作者单位

    University of Guelph (Canada).;

  • 授予单位 University of Guelph (Canada).;
  • 学科 Biology Microbiology.; Health Sciences Epidemiology.; Biology Veterinary Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 161 p.
  • 总页数 161
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 微生物学;动物学;
  • 关键词

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