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Mapping populations at risk: improving spatial demographic data for infectious disease modeling and metric derivation

机译:绘制危险人群的图:改进空间人口统计数据以进行传染病建模和度量推导

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摘要

The use of Global Positioning Systems (GPS) and Geographical Information Systems (GIS) in disease surveys and reporting is becoming increasingly routine, enabling a better understanding of spatial epidemiology and the improvement of surveillance and control strategies. In turn, the greater availability of spatially referenced epidemiological data is driving the rapid expansion of disease mapping and spatial modeling methods, which are becoming increasingly detailed and sophisticated, with rigorous handling of uncertainties. This expansion has, however, not been matched by advancements in the development of spatial datasets of human population distribution that accompany disease maps or spatial models.Where risks are heterogeneous across population groups or space or dependent on transmission between individuals, spatial data on human population distributions and demographic structures are required to estimate infectious disease risks, burdens, and dynamics. The disease impact in terms of morbidity, mortality, and speed of spread varies substantially with demographic profiles, so that identifying the most exposed or affected populations becomes a key aspect of planning and targeting interventions. Subnational breakdowns of population counts by age and sex are routinely collected during national censuses and maintained in finer detail within microcensus data. Moreover, demographic and health surveys continue to collect representative and contemporary samples from clusters of communities in low-income countries where census data may be less detailed and not collected regularly. Together, these freely available datasets form a rich resource for quantifying and understanding the spatial variations in the sizes and distributions of those most at risk of disease in low income regions, yet at present, they remain unconnected data scattered across national statistical offices and websites.In this paper we discuss the deficiencies of existing spatial population datasets and their limitations on epidemiological analyses. We review sources of detailed, contemporary, freely available and relevant spatial demographic data focusing on low income regions where such data are often sparse and highlight the value of incorporating these through a set of examples of their application in disease studies. Moreover, the importance of acknowledging, measuring, and accounting for uncertainty in spatial demographic datasets is outlined. Finally, a strategy for building an open-access database of spatial demographic data that is tailored to epidemiological applications is put forward.
机译:在疾病调查和报告中越来越普遍地使用全球定位系统(GPS)和地理信息系统(GIS),从而可以更好地了解空间流行病学并改善监视和控制策略。反过来,空间参考的流行病学数据的越来越多的可用性正在推动疾病制图和空间建模方法的快速扩展,这些方法变得越来越详细和复杂,并且对不确定性进行了严格的处理。然而,这种扩展并没有与疾病图或空间模型相伴的人类人口分布空间数据集的发展取得进步。在跨人口群体或空间的风险是异构的或取决于个人之间的传播的情况下,人类的空间数据需要分布和人口结构来估计传染病的风险,负担和动态。就发病率,死亡率和传播速度而言,疾病影响随人口统计学特征而有很大不同,因此,确定暴露最严重或受影响最大的人群已成为计划和针对性干预措施的关键方面。在国家人口普查期间,通常会按年龄和性别对国家以下地区的人口统计数据进行细分,并在微观人口普查数据中保留更详细的信息。此外,人口和健康调查继续从低收入国家的社区集群中收集代表性样本和当代样本,在这些样本中,人口普查数据可能不太详细,而且没有定期收集。这些可免费获得的数据集在一起,形成了丰富的资源,可用于量化和了解低收入地区最易患疾病的人群的大小和分布的空间变化,但目前,它们仍然是分散连接在国家统计局和网站上的未关联数据。在本文中,我们讨论了现有空间人口数据集的不足及其在流行病学分析中的局限性。我们回顾了针对低收入地区的详细,现代,可免费获得的相关空间人口统计数据的来源,这些数据通常很少见,并通过在疾病研究中应用它们的一系列实例,强调了将这些数据纳入其中的价值。此外,还概述了在空间人口统计数据集中确认,测量和考虑不确定性的重要性。最后,提出了一种建立针对流行病学应用的空间人口统计数据开放访问数据库的策略。

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