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A unifying modeling framework for highly multivariate disease mapping

机译:高度多元疾病图谱的统一建模框架

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摘要

Multivariate disease mapping refers to the joint mapping of multiple diseases from regionally aggregated data and continues to be the subject of considerable attention for biostatisticians and spatial epidemiologists. The key issue is to map multiple diseases accounting for any correlations among themselves. Recently, Martinez-Beneito (2013) provided a unifying framework for multivariate disease mapping. While attractive in that it colligates a variety of existing statistical models for mapping multiple diseases, this and other existing approaches are computationally burdensome and preclude the multivariate analysis of moderate to large numbers of diseases. Here, we propose an alternative reformulation that accrues substantial computational benefits enabling the joint mapping of tens of diseases. Furthermore, the approach subsumes almost all existing classes of multivariate disease mapping models and offers substantial insight into the properties of statistical disease mapping models. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:多元疾病映射是指根据区域汇总数据对多种疾病进行联合映射,并且仍然是生物统计学家和空间流行病学家相当关注的主题。关键问题是要在考虑到它们之间的任何相关性的情况下映射多种疾病。最近,Martinez-Beneito(2013)为多变量疾病作图提供了一个统一的框架。尽管吸引人的地方在于它可以使用多种现有的统计模型来绘制多种疾病,但这种方法和其他现有方法在计算上非常繁琐,并且无法对中度到大量疾病进行多变量分析。在这里,我们提出了一种替代的重新制定方式,该方式产生了可观的计算收益,可以对数十种疾病进行联合制图。此外,该方法包含了几乎所有现有的多变量疾病映射模型类别,并为统计疾病映射模型的性质提供了实质性见识。版权所有(c)2015 John Wiley&Sons,Ltd.

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