Aregay Mehreteab, Lawson Andrew B, Faes Christel, Kirby Russell S, Carroll Rachel, Watjou Kevin
Division of Biostatistics and Bioinformatics, Department of Public Health Sciences, MUSC, 135 Cannon Street Suite 303, MSC 835, Charleston, SC, 29425-8350, USA.
Interuniversity Institute for Biostatistics and Statistical Bioinformatics, Hasselt University, Martelarenlaan 42, Hasselt, BE3500, Belgium.
Biom J. 2016 Sep;58(5):1091-112. doi: 10.1002/bimj.201500168. Epub 2016 Feb 29.
One of the main goals in spatial epidemiology is to study the geographical pattern of disease risks. For such purpose, the convolution model composed of correlated and uncorrelated components is often used. However, one of the two components could be predominant in some regions. To investigate the predominance of the correlated or uncorrelated component for multiple scale data, we propose four different spatial mixture multiscale models by mixing spatially varying probability weights of correlated (CH) and uncorrelated heterogeneities (UH). The first model assumes that there is no linkage between the different scales and, hence, we consider independent mixture convolution models at each scale. The second model introduces linkage between finer and coarser scales via a shared uncorrelated component of the mixture convolution model. The third model is similar to the second model but the linkage between the scales is introduced through the correlated component. Finally, the fourth model accommodates for a scale effect by sharing both CH and UH simultaneously. We applied these models to real and simulated data, and found that the fourth model is the best model followed by the second model.
空间流行病学的主要目标之一是研究疾病风险的地理模式。为此,常使用由相关和不相关成分组成的卷积模型。然而,在某些地区,这两个成分之一可能占主导地位。为了研究多尺度数据中相关或不相关成分的主导性,我们通过混合相关异质性(CH)和不相关异质性(UH)的空间变化概率权重,提出了四种不同的空间混合多尺度模型。第一个模型假设不同尺度之间没有联系,因此,我们在每个尺度上考虑独立的混合卷积模型。第二个模型通过混合卷积模型的共享不相关成分引入更细和更粗尺度之间的联系。第三个模型与第二个模型类似,但尺度之间的联系是通过相关成分引入的。最后,第四个模型通过同时共享CH和UH来考虑尺度效应。我们将这些模型应用于真实数据和模拟数据,发现第四个模型是最佳模型,其次是第二个模型。