UK Small Area Health Statistics Unit.
MRC-PHE Centre for Environment & Health, Department of Epidemiology & Biostatistics, Imperial College London, London, UK.
Int J Epidemiol. 2020 Apr 1;49 Suppl 1(Suppl 1):i26-i37. doi: 10.1093/ije/dyz181.
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.
监测系统常用于提供早期预警检测,或评估干预/政策的影响。传统上,监测的方法学和概念框架是为传染病设计的,但全球范围内非传染性疾病(NCD)负担的增加表明,迫切需要监测策略来检测数据中的异常模式,并帮助揭示这一环境中的重要风险因素。监测方法需要能够检测到与预期的显著偏离,并利用数据中的依存关系,以产生风险的无偏估计和未来预测。这导致了专门为 NCD 监测设计的一系列时空方法的不断发展。我们使用分层指定的模型,介绍了 NCD 时空疾病监测的最新进展概述。这为建模复杂的数据结构提供了一个连贯的框架,处理数据稀疏性,利用数据源之间的依存关系,并传播数据和建模过程中固有的不确定性。然后,我们将重点放在贝叶斯分层模型(BHM)框架内的三个常用模型上,并通过模拟研究比较它们的性能。我们还讨论了研究人员在处理 NCD 监测时面临的一些挑战,包括如何考虑错误检测和可修改的区域单位问题。最后,我们考虑如何使用和解释复杂的模型,模型选择可能如何根据预期的用户群体而有所不同,以及如何将结果最好地传达给利益相关者和公众。