Demoze Lidetu, Gubena Fetlework, Akalewold Eyob, Brhan Helen, Kifle Tigist, Yitageasu Gelila
Department of Environmental and Occupational Health and Safety, Institute of Public Health, College of Medicine and Health Sciences, University of Gondar, Gondar, Ethiopia.
Department of Epidemiology and Biostatistics, Institute of Public Health, College of Medicine and Health Sciences, University of Gondar, Gondar, Ethiopia.
Front Public Health. 2025 Jan 13;12:1466610. doi: 10.3389/fpubh.2024.1466610. eCollection 2024.
Malaria is a major global health hazard, particularly in developing countries such as Ethiopia, where it contributes to high morbidity and mortality rates. According to reports from the South Omo Zone Health Bureau, despite various interventions such as insecticide-treated bed nets and indoor residual spraying, the incidence of malaria has increased in recent years. Therefore, this study aimed to assess the spatial, temporal, and spatiotemporal variation in malaria incidence in the South Omo Zone, Southwest Ethiopia.
A retrospective study was conducted using 4 years of malaria data from the South Omo Zone District Health Information Software (DHIS). The incidence rate of malaria per 1,000 people was calculated using Microsoft Excel software. Kulldorff SaTScan software with a discrete Poisson model was used to identify statistically significant spatial, temporal, and spatiotemporal malaria clusters. Graduated color maps depicting the incidence of malaria were generated using ArcGIS 10.7 software.
Spatial clusters were identified in the districts of Dasenech (RR = 2.06, < 0.0001), Hamer (RR = 1.90, < 0.0001), Salamago (RR = 2.00, < 0.0001), Bena Tsemay (RR = 1.71, < 0.0001), Malie (RR = 1.50, < 0.0001), Nyngatom (RR = 1.91, < 0.0001) and North Ari (RR = 1.05, < 0.0001) during the period from 08th July 2019 to 07th July 2023. A temporal cluster was identified as the risk period across all districts between 08th July 2022 and 07th July 2023 (RR = 1.59, = 0.001). Spatiotemporal clusters were detected in Dasenech (RR = 2.26, < 0.001) Salamago, (RR = 2.97, < 0.001) Hamer (RR = 1.95, < 0.001), Malie (RR = 2.03, < 0.001), Bena Tsemay (RR = 1.80, < 0.001), Nyngatom (RR = 2.65, < 0.001), North Ari (RR = 1.50, < 0.001), and Jinka town (RR = 1.19, < 0.001).
Significant spatial, temporal, and spatiotemporal clusters in malaria incidence were identified in the South Omo Zone. To better understand the factors contributing to these high-risk areas, further research is needed to explore individual, household, geographical, and climatic factors. Targeted interventions based on these findings could help reduce malaria incidence and associated risks in the region.
疟疾是全球主要的健康危害,尤其是在埃塞俄比亚等发展中国家,它导致了高发病率和死亡率。根据南奥莫地区卫生局的报告,尽管采取了各种干预措施,如使用杀虫剂处理过的蚊帐和室内滞留喷洒,但近年来疟疾发病率仍有所上升。因此,本研究旨在评估埃塞俄比亚西南部南奥莫地区疟疾发病率的空间、时间和时空变化。
使用来自南奥莫地区卫生信息软件(DHIS)的4年疟疾数据进行回顾性研究。使用Microsoft Excel软件计算每1000人的疟疾发病率。使用具有离散泊松模型的Kulldorff SaTScan软件来识别具有统计学意义的空间、时间和时空疟疾聚集区。使用ArcGIS 10.7软件生成描绘疟疾发病率的分级彩色地图。
在2019年7月8日至2023年7月7日期间,在达塞纳奇(RR = 2.06,< 0.0001)、哈默(RR = 1.90,< 0.0001)、萨拉马戈(RR = 2.00,< 0.0001)、贝纳·采迈(RR = 1.71,< 0.0001)、马利(RR = 1.50,< 0.0001)、宁加托姆(RR = 1.91,< 0.0001)和北阿里(RR = 1.05,< 0.0001)等地区发现了空间聚集区。一个时间聚集区被确定为2022年7月8日至2023年7月7日期间所有地区的风险期(RR = 1.59, = 0.001)。在达塞纳奇(RR = 2.26,< 0.001)、萨拉马戈(RR = 2.97,< 0.001)、哈默(RR = 1.95,< 0.001)、马利(RR = 2.03,< 0.001)、贝纳·采迈(RR = 1.80,< 0.001)、宁加托姆(RR = 2.65,< 0.001)、北阿里(RR = 1.50,< 0.001)和金卡镇(RR = 1.19,< 0.001)发现了时空聚集区。
在南奥莫地区发现了疟疾发病率显著的空间、时间和时空聚集区。为了更好地了解导致这些高风险地区的因素,需要进一步研究以探索个人、家庭、地理和气候因素。基于这些发现的有针对性的干预措施有助于降低该地区的疟疾发病率和相关风险。