Lubinda Jailos, Bi Yaxin, Haque Ubydul, Lubinda Mukuma, Hamainza Busiku, Moore Adrian J
School of Geography and Environmental Sciences, Ulster University, Coleraine, UK.
School of Nursing, Ulster University, Belfast, UK.
Commun Med (Lond). 2022 Jul 1;2:79. doi: 10.1038/s43856-022-00144-1. eCollection 2022.
The spatial and temporal variability inherent in malaria transmission within countries implies that targeted interventions for malaria control in high-burden settings and subnational elimination are a practical necessity. Identifying the spatio-temporal incidence, risk, and trends at different administrative geographies within malaria-endemic countries and monitoring them in near real-time as change occurs is crucial for developing and introducing cost-effective, subnational control and elimination intervention strategies.
This study developed intelligent data analytics incorporating Bayesian trend and spatio-temporal Integrated Laplace Approximation models to analyse high-burden over 32 million reported malaria cases from 1743 health facilities in Zambia between 2009 and 2015.
The results show that at least 5.4 million people live in catchment areas with increasing trends of malaria, covering over 47% of all health facilities, while 5.7 million people live in areas with a declining trend (95% CI), covering 27% of health facilities. A two-scale spatio-temporal trend comparison identified significant differences between health facilities and higher-level districts, and the pattern observed in the southeastern region of Zambia provides the first evidence of the impact of recently implemented localised interventions.
The results support our recommendation for an adaptive scaling approach when implementing national malaria monitoring, control and elimination strategies and a particular need for stratified subnational approaches targeting high-burden regions with increasing disease trends. Strong clusters along borders with highly endemic countries in the north and south of Zambia underscore the need for coordinated cross-border malaria initiatives and strategies.
各国疟疾传播存在时空变异性,这意味着在高负担地区和国家以下层面开展疟疾消除工作时,有针对性的干预措施是实际所需。确定疟疾流行国家内不同行政区域的时空发病率、风险和趋势,并在变化发生时近乎实时地对其进行监测,对于制定和推行具有成本效益的国家以下层面控制和消除干预策略至关重要。
本研究开发了智能数据分析方法,纳入贝叶斯趋势和时空集成拉普拉斯近似模型,以分析2009年至2015年赞比亚1743个医疗机构报告的3200多万例高负担疟疾病例。
结果显示,至少540万人生活在疟疾发病呈上升趋势的集水区,覆盖所有医疗机构的47%以上,而570万人生活在发病呈下降趋势的地区(95%置信区间),覆盖27%的医疗机构。两尺度时空趋势比较发现医疗机构与更高级别行政区之间存在显著差异,赞比亚东南部地区观察到的模式首次证明了近期实施的局部干预措施的影响。
研究结果支持我们在实施国家疟疾监测、控制和消除策略时采用适应性扩展方法的建议,以及特别需要针对疾病趋势上升的高负担地区采取分层的国家以下层面方法。赞比亚北部和南部与疟疾高度流行国家接壤的边境地区存在明显的聚集区,这突出表明需要开展协调一致的跨境疟疾倡议和策略。