Abstract
Surveillance systems are commonly used to provide early warning detection or to assess an impact of an intervention/policy. Traditionally, the methodological and conceptual frameworks for surveillance have been designed for infectious diseases, but the rising burden of non-communicable diseases (NCDs) worldwide suggests a pressing need for surveillance strategies to detect unusual patterns in the data and to help unveil important risk factors in this setting. Surveillance methods need to be able to detect meaningful departures from expectation and exploit dependencies within such data to produce unbiased estimates of risk as well as future forecasts. This has led to the increasing development of a range of space-time methods specifically designed for NCD surveillance. We present an overview of recent advances in spatiotemporal disease surveillance for NCDs, using hierarchically specified models. This provides a coherent framework for modelling complex data structures, dealing with data sparsity, exploiting dependencies between data sources and propagating the inherent uncertainties present in both the data and the modelling process. We then focus on three commonly used models within the Bayesian Hierarchical Model (BHM) framework and, through a simulation study, we compare their performance. We also discuss some challenges faced by researchers when dealing with NCD surveillance, including how to account for false detection and the modifiable areal unit problem. Finally, we consider how to use and interpret the complex models, how model selection may vary depending on the intended user group and how best to communicate results to stakeholders and the general public.
Highlights
Complete List of Authors: Blangiardo, Marta; Imperial College London, Department of Epidemiology and Biostatistics, School of Medicine
Methods for non-communicable diseases (NCDs) surveillance have largely been based around the idea of detecting whether the outcome of interest shows a particular behaviour in a defined subset
In this paper we have presented an overview of the main statistical methods for disease surveillance in the context of NCDs, both from a test-based and model-based perspective and with a particular focus on the Bayesian Hierarchical Model (BHM) approach, which provides a flexible framework to allow for complex data dependencies present in surveillance studies
Summary
According to the World Health Organization surveillance is the “ongoing systematic data collection, analysis, interpretation and dissemination of information in order for action to be taken” [1]. NCD surveillance shares many objectives with infectious disease surveillance, including generating information to guide public health action, detecting the health impact of environmental exposures, or of environmentally driven disease vectors; it presents some different methodological challenges [7, 8]. Health data contain both a time and a space component. We first discuss how data availability is one of the key challenges in surveillance studies, before giving a generic overview of test-based approaches for NCD surveillance.
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