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 Research Article
												Assessing Univariate and Bivariate Spatial Clustering in Modelled Disease Risks 						
Author(s): Peter CongdonPeter Congdon             
						
												
				 Models for spatial variation in relative disease risk often consider posterior probabilities of elevated disease risk in each area, but for health prioritisation, the interest may also be in the broader clustering pattern across neighbouring areas. The classification of a particular area as high risk may or may not be consistent with risk levels in the surrounding areas. Local join-count statistics are used here in conjunction with Bayesian models of area disease risk to detect different forms of disease clustering over groups of neighbouring areas. A particular interest is in spatial clustering of high risk, which can be assessed by high probabilities of elevated risk across both a focus area and its surrounding locality. An application considers univariate spatial clustering in suicide deaths in 922 small areas in the North West of England, exten.. Read More»
				  
												DOI:
												 10.4172/2155-6180.1000161 
																	  
Journal of Biometrics & Biostatistics received 3496 citations as per Google Scholar report