A spatial analysis of co-circulating dengue and chikungunya virus infections during an epidemic in a region of Northeastern Brazil

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Spatial and Spatio-Temporal Epidemiology Pub Date : 2023-08-01 DOI:10.1016/j.sste.2023.100589
Marcela Franklin Salvador de Mendonça , Amanda Priscila de Santana Cabral Silva , Heloísa Ramos Lacerda
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Abstract

The aim of this study was to describe, through spatial analysis, the cases of arboviruses (dengue and chikungunya), including deaths, during the first epidemic after the circulation of the chikungunya virus (CHIKV) in the state of Pernambuco, Northeastern Brazil. This was an ecological study in both Pernambuco and the state capital, Recife, from 2015 to 2018. The odds ratios (OR) were estimated, and the statistical significance was considered p≤0.05. For the spatial analysis, Kulldorff's space-time scan statistics method was adopted to identify spatial clusters and to provide the relative risk (RR). In order to assess the significance at a level of p < 0.01 of the model, the number of Monte Carlo replications was 999 times. To perform the scan statistics we used the Poisson probability model, with a circular scanning window; annual temporal precision and retrospective analysis. A total of 227 deaths and 158,728 survivors from arboviruses was reported during the study period, with 100 deaths from dengue and 127 from CHIKV. The proportion of deaths from dengue was 0.08% and from chikungunya was 0.35%. The proportion of all those infected (deaths plus survivors) with dengue was 77.42% and with chikungunya was 22.58%. Children aged 0 to 9 years were around 3 times more likely to die than the reference group (OR 2.84; CI95% 1.16–5.00). From the age of 40, the chances of death increased significantly: 40–49 (OR 2.52; CI95% 1.19–5.29), 50–59 (OR 5.55; CI95% 2.76–11.17) and 60 or more (OR 14.90; CI95% 7.79–28.49). Males were approximately twice as likely to die as females (OR 1.77; CI95% 1.36–2.30). White-skinned people were less likely to die compared to non-white (OR 0.60; CI95% 0.41–0.87). The space-time analysis of prevalence in the state of Pernambuco revealed the presence of four clusters in the years 2015 and 2016, highlighting the Metropolitan Macro-region with a relative risk=4 and the Agreste and Hinterland macro-regions with a relative risk=3.3. The spatial distribution of the death rate in the municipality of Recife smoothed by the local empirical Bayesian estimator enabled a special pattern to be identified in the southwest and northeast of the municipality. The spatiotemporal analysis of the death rate revealed the presence of two clusters in the year 2015. In the primary cluster, it may be noted that the aforementioned aggregate presented a RR=7.2, and the secondary cluster presented a RR=6.0. The spatiotemporal analysis with Kulldorff's space-time scan statistics method, proved viable in identifying the risk areas for the occurrence of arboviruses, and could be included in surveillance routines so as to optimize prevention strategies during future epidemics.

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巴西东北部某地区登革热和基孔肯雅病毒感染流行期间共流行的空间分析
本研究的目的是通过空间分析描述巴西东北部伯南布哥州基孔肯雅病毒(CHIKV)传播后第一次流行期间虫媒病毒(登革热和基孔肯雅)病例,包括死亡病例。这是2015年至2018年在伯南布哥和州首府累西腓进行的一项生态研究。对比值比(OR)进行估计,认为p≤0.05具有统计学意义。在空间分析方面,采用Kulldorff时空扫描统计方法识别空间聚类并提供相对风险(RR)。为了在p <水平上评估显著性;0.01的模型,蒙特卡罗重复次数为999次。为了进行扫描统计,我们使用了泊松概率模型,具有圆形扫描窗口;年时间精度和回顾性分析。在研究期间共报告了227例虫媒病毒死亡和158,728例幸存者,其中100例死于登革热,127例死于CHIKV。登革热死亡比例为0.08%,基孔肯雅热死亡比例为0.35%。所有感染登革热(死亡加上幸存者)的比例为77.42%,基孔肯雅热为22.58%。0至9岁儿童的死亡率约为参照组的3倍(OR 2.84;CI95% 1.16 - -5.00)。从40岁开始,死亡几率显著增加:40 - 49 (OR 2.52;Ci95% 1.19-5.29), 50-59(或5.55;CI95% 2.76-11.17), 60或以上(or 14.90;CI95% 7.79 - -28.49)。男性的死亡率大约是女性的两倍(OR 1.77;CI95% 1.36 - -2.30)。与非白人相比,白皮肤的人死亡的可能性更小(OR 0.60;CI95% 0.41 - -0.87)。对伯南布哥州患病率的时空分析显示,2015年和2016年存在4个集群,其中大都市宏观区域的相对风险=4,内陆和内陆宏观区域的相对风险=3.3。累西腓市死亡率的空间分布经局部经验贝叶斯估计器平滑处理后,在该市西南部和东北部发现了一种特殊的模式。对死亡率的时空分析显示,2015年存在两个群集。在主集群中,可以注意到上述聚合的RR=7.2,而次集群的RR=6.0。利用Kulldorff时空扫描统计方法进行时空分析,可以有效识别虫媒病毒发生的危险区域,并可纳入监测常规,以便在未来流行时优化预防策略。
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来源期刊
Spatial and Spatio-Temporal Epidemiology
Spatial and Spatio-Temporal Epidemiology PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
5.10
自引率
8.80%
发文量
63
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