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Model-based testing for space–time interaction using point processes: An application to psychiatric hospital admissions in an urban area

机译:使用点过程进行时空交互的基于模型的测试:在市区精神病医院住院中的应用

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摘要

Spatio-temporal interaction is inherent to cases of infectious diseases and occurrences of earthquakes, whereas the spread of other events, such as cancer or crime, is less evident. Statistical significance tests of space–time clustering usually assess the correlation between the spatial and temporal (transformed) distances of the events. Although appealing through simplicity, these classical tests do not adjust for the underlying population nor can they account for a distance decay of interaction. We propose to use the framework of an endemic–epidemic point process model to jointly estimate a background event rate explained by seasonal and areal characteristics, as well as a superposed epidemic component representing the hypothesis of interest. We illustrate this new model-based test for space–time interaction by analysing psychiatric inpatient admissions in Zurich, Switzerland (2007–2012). Several socio-economic factors were found to be associated with the admission rate, but there was no evidence of general clustering of the cases.
机译:时空相互作用是传染病和地震发生所固有的,而诸如癌症或犯罪等其他事件的传播则不那么明显。时空聚类的统计显着性检验通常评估事件的空间和时间(转换)距离之间的相关性。尽管通过简单性吸引人,但这些经典测试无法适应潜在人群,也无法解释相互作用的距离衰减。我们建议使用流行病-流行点过程模型的框架来共同估计由季节和区域特征以及代表感兴趣的假设的流行病组成部分解释的背景事件发生率。我们通过分析瑞士苏黎世(2007-2012年)的精神科住院病人入院率,说明了这种基于模型的时空互动测试。发现有几种社会经济因素与入院率有关,但没有证据表明病例普遍聚集。

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