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首页> 外文期刊>Journal of the Royal Statistical Society >Analysing behavioural risk factor surveillance data by using spatially and temporally varying coefficient models
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Analysing behavioural risk factor surveillance data by using spatially and temporally varying coefficient models

机译:通过使用随时间和空间变化的系数模型分析行为危险因素监视数据

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摘要

The study of temporal and spatial trends in large databases, such as behavioural risk factor surveillance data, can be a great challenge, especially when the intent is to study the time-related effects of multiple independent variables; this is an issue which is not usually addressed in trend analysis in epidemiological studies. This study demonstrates the use of varying coefficient models using non-parametric techniques, which can show how coefficients vary in time or space; it is a useful statistical tool that is applied for the first time to health surveillance data. Using the US 'Behavioral risk factor surveillance system', a varying coefficient model is constructed using obesity as an outcome measure. Odds ratio plots and probability maps illustrate the temporal or spatial changes in coefficients of the independent variables; these results can be used to identify changes in at-risk subgroups of the population for the odds of obesity.
机译:研究大型数据库中的时空趋势(例如行为风险因素监视数据)可能是一个巨大的挑战,尤其是在研究多个自变量与时间相关的影响时;这是流行病学趋势分析中通常不解决的问题。这项研究证明了使用非参数技术的可变系数模型的使用,该模型可以显示系数如何随时间或空间变化。它是一个有用的统计工具,首次应用于健康监控数据。使用美国的“行为危险因素监视系统”,以肥胖作为结局指标来构建可变系数模型。几率比图和概率图说明了自变量系数的时间或空间变化。这些结果可用于识别肥胖风险几率的高危人群。

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