Center of Data and Knowledge Integration for Health (CIDACS), Instituto Gonçalo Moniz, Fundação Oswaldo Cruz, Salvador, Bahia, Brazil.
Centre of Mathematics of the University of Porto (CMUP), Department of Mathematics, Porto, Portugal.
PLoS One. 2020 Feb 3;15(2):e0228347. doi: 10.1371/journal.pone.0228347. eCollection 2020.
The co-circulation of different arboviruses in the same time and space poses a significant threat to public health given their rapid geographic dispersion and serious health, social, and economic impact. Therefore, it is crucial to have high quality of case registration to estimate the real impact of each arboviruses in the population. In this work, a Vector Autoregressive (VAR) model was developed to investigate the interrelationships between discarded and confirmed cases of dengue, chikungunya, and Zika in Brazil. We used data from the Brazilian National Notifiable Diseases Information System (SINAN) from 2010 to 2017. There were three peaks in the series of dengue notification in this period occurring in 2013, 2015 and in 2016. The series of reported cases of both Zika and chikungunya reached their peak in late 2015 and early 2016. The VAR model shows that the Zika series have a significant impact on the dengue series and vice versa, suggesting that several discarded and confirmed cases of dengue could actually have been cases of Zika. The model also suggests that the series of confirmed and discarded chikungunya cases are almost independent of the cases of Zika, however, affecting the series of dengue. In conclusion, co-circulation of arboviruses with similar symptoms could have lead to misdiagnosed diseases in the surveillance system. We argue that the routinely use of mathematical and statistical models in association with traditional symptom-surveillance could help to decrease such errors and to provide early indication of possible future outbreaks. These findings address the challenges regarding notification biases and shed new light on how to handle reported cases based only in clinical-epidemiological criteria when multiples arboviruses co-circulate in the same population.
不同虫媒病毒在同一时间和空间的共同传播对公共卫生构成了重大威胁,因为它们具有快速的地理扩散性和严重的健康、社会和经济影响。因此,高质量的病例登记对于估计每种虫媒病毒在人群中的实际影响至关重要。在这项工作中,我们开发了一个向量自回归 (VAR) 模型,以研究巴西登革热、基孔肯雅热和寨卡病毒的确诊病例和疑似病例之间的相互关系。我们使用了 2010 年至 2017 年巴西国家传染病信息系统 (SINAN) 的数据。在此期间,登革热通知系列有三个高峰,分别发生在 2013 年、2015 年和 2016 年。寨卡病毒和基孔肯雅热报告病例系列在 2015 年末和 2016 年初达到峰值。VAR 模型表明,寨卡病毒系列对登革热系列有显著影响,反之亦然,这表明有相当数量的登革热疑似病例实际上可能是寨卡病毒病例。该模型还表明,确诊和疑似基孔肯雅热病例系列几乎与寨卡病毒病例系列独立,但影响登革热病例系列。总之,具有相似症状的虫媒病毒共同传播可能导致监测系统中的误诊疾病。我们认为,在传统的症状监测中常规使用数学和统计模型可以帮助减少这些错误,并为可能未来的疫情提供早期迹象。这些发现解决了通知偏差的挑战,并为如何在同一人群中多种虫媒病毒共同传播时仅根据临床流行病学标准处理报告病例提供了新的思路。