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Detecting Spatial Patterns of Disease in Large Collections of Electronic Medical Records Using Neighbor-Based Bootstrapping

机译:使用基于邻居的引导程序检测大量电子病历中疾病的空间格局

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摘要

We introduce a method called neighbor-based bootstrapping (NB2) that can be used to quantify the geospatial variation of a variable. We applied this method to an analysis of the incidence rates of disease from electronic medical record data (International Classification of Diseases, Ninth Revision codes) for ∼100 million individuals in the United States over a period of 8 years. We considered the incidence rate of disease in each county and its geospatially contiguous neighbors and rank ordered diseases in terms of their degree of geospatial variation as quantified by the NB2 method. We show that this method yields results in good agreement with established methods for detecting spatial autocorrelation (Moran's I method and kriging). Moreover, the NB2 method can be tuned to identify both large area and small area geospatial variations. This method also applies more generally in any parameter space that can be partitioned to consist of regions and their neighbors.
机译:我们介绍了一种称为基于邻居的引导(NB2)的方法,该方法可用于量化变量的地理空间变化。我们将这种方法用于分析电子病历数据(国际疾病分类,第九修订版)在8年内对美国约1亿人的疾病发病率。我们考虑了每个县及其地理空间连续邻国的疾病发生率,并根据其NB2方法量化的地理空间变化程度对有序疾病进行了排序。我们表明,该方法产生的结果与用于检测空间自相关的既定方法(Moran's I方法和kriging)有很好的一致性。而且,可以调整NB2方法来识别大面积和小面积地理空间变化。此方法还更普遍地应用于可以分区为区域及其邻居的任何参数空间。

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