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首页> 外文期刊>Neuroepidemiology >Application of three focused cluster detection methods to study geographic variation in the incidence of multiple sclerosis in Manitoba, Canada
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Application of three focused cluster detection methods to study geographic variation in the incidence of multiple sclerosis in Manitoba, Canada

机译:三种聚焦聚类检测方法在加拿大曼尼托巴多发性硬化症发病率地理变异研究中的应用

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Background: Macroscopic geographic variation in the incidence and prevalence of MS is well-recognized. Microscopic geographic variation in the distribution of MS is also recognized, but less well-studied. Most studies have focused on prevalent cases of MS, although studies of variation in disease incidence are more relevant for developing etiologic hypotheses. We aimed to study geographic variation in the incidence of MS using three different methods. Methods: We used population-based administrative (health claims) data to identify 2,290 incident cases of MS in the province of Manitoba, Canada from 1990 to 2006. We applied three focused cluster-detection procedures, including the circular spatial scan statistic (CSS), flexible spatial scan statistic (FSS), and Bayesian disease mapping (BYM), to the dataset. Results: The CSS and FSS methods identified 30 and 26 regions as potential clusters, respectively, although the regions identified differed slightly due to the non-circular shape of some regions in Manitoba. The BYM approach identified 37 regions as potential clusters, again with some differences as compared to the other two methods. Twelve regions were identified as potential clusters by all three methods. All methods identified the western part of the city of Winnipeg as a significant cluster. Using the BYM approach, the incidence of MS was highest among areas of higher socioeconomic status. Conclusions: Two methods CSS and FSS only capture geographical variations and are not able to control for confounders at the same time which may lead to misidentification of clusters. However, the BYM method can simultaneously identify geographical variations and control for possible confounders.
机译:背景:MS发生率和患病率的宏观地理差异已广为人知。 MS分布的微观地理变化也得到认可,但研究较少。尽管有关疾病发生率变化的研究与病因假说的建立更为相关,但大多数研究都集中在MS的流行病例上。我们旨在使用三种不同的方法研究MS发病率的地理差异。方法:我们使用基于人群的行政(健康声明)数据来确定1990年至2006年加拿大曼尼托巴省的2290例MS病例。我们采用了三种集中的聚类检测程序,包括圆形空间扫描统计数据(CSS) ,灵活的空间扫描统计量(FSS)和贝叶斯疾病映射(BYM)到数据集。结果:CSS和FSS方法分别将30和26个区域识别为潜在簇,尽管由于曼尼托巴省某些区域的非圆形形状,识别出的区域略有不同。 BYM方法将37个区域确定为潜在的集群,与其他两种方法相比也存在一些差异。通过这三种方法将十二个区域确定为潜在的簇。所有方法都将温尼伯市的西部确定为重要的集群。使用BYM方法,在社会经济地位较高的地区,MS的发生率最高。结论:CSS和FSS的两种方法只能捕获地理变化,并且不能同时控制混杂因素,这可能导致对群集的错误识别。但是,BYM方法可以同时识别地理变化并控制可能的混杂因素。

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