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Types of data: areas Health data may be held as counts of cases and total population for specified areas. This preserves confidentiality. 17 12 28 45 19 Sometimes point centroids may be used instead of polygon boundaries. Such count data are also called group data. Types of data: points Instead of counts for areas, sometimes data are available for individuals. Sometimes locations are only available for individuals diagnosed with a disease (cases)…. Types of data: points Instead of counts for areas, sometimes data are available for individuals. Sometimes locations are only available for individuals diagnosed with a disease (cases)…. …but there may also be locations for individuals who have not been diagnosed withthe disease (controls), e.g. children from the same age group as controls from birth register. Looking at all these data, is there clustering? Is there evidence of clustering of health events anywhere in the study area? This is a global test for clustering – the tendency for cases to aggregate together across the whole area Clusters A greater than expected number of health events (real or perceived) in space, time or both is a Cluster. Clusters A possible cluster? A greater than expected number of health events (real or perceived) in space, time or both is a Cluster. Local cluster tests identify particular clusters (‘hot spots’) within the study area. Interpreting clusters: chance 1 in 60 25 in 2000 20 in 2500 17 in 3000 There seems to be a high proportion of cases in one region, but this is based on low numbers and is unreliable: this is commonly referred to as the small number problem. There may also be composition effects – diseases affecting specific population sub-groups should be measured against appropriate denominators. Interpreting clusters: relationship to underlying population distribution Here, there appear to be two clusters, but this reflects the underlying population distribution. Interpreting clusters: data quality issues Data problems may also include problems geo-referencing locations for individuals, or identifying appropriate controls. Clusters This health centre coded mortality correctly. Data problems may also include problems geo-referencing locations for individuals, or identifying appropriate controls. This health centre did not! Interpreting clusters: contextual effects In this example, the cluster in the shaded region may be due to factors that affect only that region, such as failure of a water chlorination plant, for example. Clusters: collective effects In this instance, the cluster results from an infectious disease contagion process. For example, measles may spread among children playing in the same neighbourhood.