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Improving the Modeling of Disease Data from the Government Surveillance System: A Case Study on Malaria in the Brazilian Amazon

机译:改进政府监控系统中疾病数据的建模:以巴西亚马逊河地区的疟疾为例

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摘要

The study of the effect of large-scale drivers (e.g., climate) of human diseases typically relies on aggregate disease data collected by the government surveillance network. The usual approach to analyze these data, however, often ignores a) changes in the total number of individuals examined, b) the bias towards symptomatic individuals in routine government surveillance, and; c) the influence that observations can have on disease dynamics. Here, we highlight the consequences of ignoring the problems listed above and develop a novel modeling framework to circumvent them, which is illustrated using simulations and real malaria data. Our simulations reveal that trends in the number of disease cases do not necessarily imply similar trends in infection prevalence or incidence, due to the strong influence of concurrent changes in sampling effort. We also show that ignoring decreases in the pool of infected individuals due to the treatment of part of these individuals can hamper reliable inference on infection incidence. We propose a model that avoids these problems, being a compromise between phenomenological statistical models and mechanistic disease dynamics models; in particular, a cross-validation exercise reveals that it has better out-of-sample predictive performance than both of these alternative models. Our case study in the Brazilian Amazon reveals that infection prevalence was high in 2004–2008 (prevalence of 4% with 95% CI of 3–5%), with outbreaks (prevalence up to 18%) occurring during the dry season of the year. After this period, infection prevalence decreased substantially (0.9% with 95% CI of 0.8–1.1%), which is due to a large reduction in infection incidence (i.e., incidence in 2008–2010 was approximately one fifth of the incidence in 2004–2008).We believe that our approach to modeling government surveillance disease data will be useful to advance current understanding of large-scale drivers of several diseases.
机译:对人类疾病的大规模驱动因素(例如气候)的影响的研究通常依赖于政府监视网络收集的综合疾病数据。但是,分析这些数据的常用方法通常会忽略以下问题:a)检查的个体总数的变化,b)在常规政府监视中偏向有症状的个体,以及c)观察结果对疾病动态的影响。在这里,我们重点介绍了忽略上述问题的后果,并开发了一种新颖的建模框架来规避这些问题,使用模拟和真实的疟疾数据对此进行了说明。我们的模拟结果表明,由于同时进行的采样工作变化的强烈影响,疾病病例数的趋势不一定暗示感染率或发生率的相似趋势。我们还表明,忽略由于部分个体的治疗而导致的感染个体数量减少会妨碍对感染发生率的可靠推断。我们提出了一种避免这些问题的模型,该模型是现象​​统计模型与机制疾病动力学模型之间的折衷方案。特别是,交叉验证演算表明,与这两种替代模型相比,其具有更好的样本外预测性能。我们在巴西亚马逊的案例研究显示,2004-2008年的感染率很高(4%的感染率,95%CI的3%-5%),在一年的旱季爆发(最高18%) 。在此阶段之后,感染发生率大幅下降(0.9%,95%CI为0.8–1.1%),这是由于感染发生率大大降低(即2008-2010年的发生率约为2004-2004年发生率的五分之一) 2008)。我们认为,我们建立政府监视疾病数据模型的方法将有助于增进当前对几种疾病的大规模驱动因素的了解。

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