Department of Global Health, National Centre for Epidemiology and Population Health, College of Health and Medicine, The Australian National University, Canberra, ACT, 2601, Australia.
World Vision US, 34834 Weyerhaeuser Way South, Federal Way, Washington, USA.
Sci Rep. 2022 Apr 11;12(1):6058. doi: 10.1038/s41598-022-09819-0.
Globally, cross-border importation of malaria has become a challenge to malaria elimination. The border areas between Brazil and Venezuela have experienced high numbers of imported cases due to increased population movement and migration out of Venezuela. This study aimed to identify risk factors for imported malaria and delineate imported malaria hotspots in Roraima, Brazil and Bolivar, Venezuela between 2016 and 2018. Data on malaria surveillance cases from Roraima, Brazil and Bolivar, Venezuela from 2016 to 2018 were obtained from national surveillance systems: the Brazilian Malaria Epidemiology Surveillance Information System (SIVEP-Malaria), the Venezuelan Ministry of Health and other non-government organizations. A multivariable logistic regression model was used to identify the risk factors for imported malaria. Spatial autocorrelation in malaria incidence was explored using Getis-Ord (Gi*) statistics. During the study period, there were 11,270 (24.3%) and 4072 (0.7%) imported malaria cases in Roraima, Brazil and Bolivar, Venezuela, respectively. In the multivariable logistic regression for Roraima, men were 28% less likely to be an imported case compared to women (Adjusted Odds Ratio [AOR] = 0.72; 95% confidence interval [CI] 0.665, 0.781). Ages 20-29 and 30-39 were 90% (AOR = 1.90; 95% CI 1.649, 2.181) and 54% (AOR = 1.54; 95% CI 1.331, 1.782) more likely to be an imported case compared to the 0-9 year age group, respectively. Imported cases were 197 times (AOR = 197.03; 95% CI 175.094, 221.712) more likely to occur in miners than those working in agriculture and domestic work. In Bolivar, cases aged 10-19 (AOR = 1.75; 95% CI 1.389, 2.192), 20-29 (AOR = 2.48; 95% CI 1.957, 3.144), and 30-39 (AOR = 2.29; 95% CI 1.803, 2.913) were at higher risk of being an imported case than those in the 0-9 year old group, with older age groups having a slightly higher risk compared to Roraima. Compared to agriculture and domestic workers, tourism, timber and fishing workers (AOR = 6.38; 95% CI 4.393, 9.254) and miners (AOR = 7.03; 95% CI 4.903, 10.092) were between six and seven times more likely to be an imported case. Spatial analysis showed the risk was higher along the international border in the municipalities of Roraima, Brazil. To achieve malaria elimination, cross-border populations in the hotspot municipalities will need targeted intervention strategies tailored to occupation, age and mobility status. Furthermore, all stakeholders, including implementers, policymakers, and donors, should support and explore the introduction of novel approaches to address these hard-to-reach populations with the most cost-effective interventions.
全球范围内,疟疾的跨境输入给疟疾消除带来了挑战。由于巴西和委内瑞拉之间的人口流动和移民增加,巴西的罗赖马州和委内瑞拉的玻利瓦尔州边境地区出现了大量输入性疟疾病例。本研究旨在确定输入性疟疾的危险因素,并确定 2016 年至 2018 年间巴西罗赖马州和委内瑞拉玻利瓦尔州的输入性疟疾热点地区。从 2016 年至 2018 年,从巴西的罗赖马州和委内瑞拉的玻利瓦尔州的国家监测系统(巴西疟疾流行病学监测信息系统[SIVEP-Malaria]、委内瑞拉卫生部和其他非政府组织)获得疟疾监测病例数据。使用多变量逻辑回归模型确定输入性疟疾的危险因素。使用 Getis-Ord(Gi*)统计数据探索疟疾发病率的空间自相关。在研究期间,巴西的罗赖马州和委内瑞拉的玻利瓦尔州分别有 11270 例(24.3%)和 4072 例(0.7%)输入性疟疾病例。在罗赖马州的多变量逻辑回归中,男性患输入性疟疾病例的可能性比女性低 28%(调整后的优势比[AOR]为 0.72;95%置信区间[CI]为 0.665,0.781)。20-29 岁和 30-39 岁的年龄组患输入性疟疾病例的可能性分别比 0-9 岁年龄组高 90%(AOR=1.90;95%CI 1.649,2.181)和 54%(AOR=1.54;95%CI 1.331,1.782)。与从事农业和家务劳动的人相比,矿工患输入性疟疾病例的可能性高 197 倍(AOR=197.03;95%CI 175.094,221.712)。在玻利瓦尔州,年龄在 10-19 岁(AOR=1.75;95%CI 1.389,2.192)、20-29 岁(AOR=2.48;95%CI 1.957,3.144)和 30-39 岁(AOR=2.29;95%CI 1.803,2.913)的病例患输入性疟疾病例的风险高于 0-9 岁年龄组,与罗赖马州相比,年龄较大的组风险略高。与农业和家务劳动相比,旅游、木材和渔业工人(AOR=6.38;95%CI 4.393,9.254)和矿工(AOR=7.03;95%CI 4.903,10.092)患输入性疟疾病例的可能性高 6 至 7 倍。空间分析显示,在巴西罗赖马州的各市政当局,沿国际边界的风险更高。为了实现疟疾消除,热点地区的跨境人口将需要有针对性的干预战略,针对职业、年龄和流动状况。此外,包括执行者、决策者和捐助者在内的所有利益攸关方都应支持并探索引入新方法,以最具成本效益的干预措施,解决这些难以接触到的人群。