Spatio-temporal characterization of phenotypic resistance in malaria vector species.

IF 4.4 1区 生物学 Q1 BIOLOGY
Eric Ali Ibrahim, Mark Wamalwa, John Odindi, Henri E Z Tonnang
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Abstract

Background: Malaria, a deadly disease caused by Plasmodium protozoa parasite and transmitted through bites of infected female Anopheles mosquitoes, remains a significant public health challenge in sub-Saharan Africa. Efforts to eliminate malaria have increasingly focused on vector control using insecticides. However, the emergence of insecticide resistance (IR) in malaria vectors pose a formidable obstacle, and the current IR mapping models remain static, relying on fixed coefficients. This study introduces a dynamic spatio-temporal approach to characterize phenotypic resistance in Anopheles gambiae complex and Anopheles arabiensis. We developed a cellular automata (CA) model and applied it to data collected from Ethiopia, Nigeria, Cameroon, Chad, and Burkina Faso. The data encompasses georeferenced records detailing IR levels in mosquito vector populations across various classes of insecticides. In characterizing the dynamic patterns of confirmed resistance, we identified key driving factors through correlation analysis, chi-square tests, and extensive literature review.

Results: The CA model demonstrated robustness in capturing the spatio-temporal dynamics of confirmed IR states in the vector populations. In our model, the key driving factors included insecticide usage, agricultural activities, human population density, Land Use and Land Cover (LULC) characteristics, and environmental variables.

Conclusions: The CA model developed offers a robust tool for countries that have limited data on confirmed IR in malaria vectors. The embrace of a dynamical modeling approach and accounting for evolving conditions and influences, contribute to deeper understanding of IR dynamics, and can inform effective strategies for malaria vector control, and prevention in regions facing this critical health challenge.

疟疾病媒物种表型抗药性的时空特征。
背景:疟疾是由原生动物疟原虫引起的一种致命疾病,通过受感染的雌性按蚊叮咬传播,在撒哈拉以南非洲地区仍然是一项重大的公共卫生挑战。消除疟疾的努力越来越侧重于使用杀虫剂控制病媒。然而,疟疾病媒出现的杀虫剂抗药性(IR)构成了巨大的障碍,而目前的 IR 绘图模型仍然是静态的,依赖于固定的系数。本研究引入了一种动态时空方法来描述冈比亚按蚊和阿拉伯按蚊的表型抗药性。我们开发了一个单元自动机(CA)模型,并将其应用于从埃塞俄比亚、尼日利亚、喀麦隆、乍得和布基纳法索收集的数据。这些数据包含地理参照记录,详细记录了不同杀虫剂类别下蚊媒群体中的红外水平。在描述确证抗药性的动态模式时,我们通过相关性分析、卡方检验和广泛的文献综述确定了关键驱动因素:结果:CA 模型在捕捉病媒种群中确证抗药性状态的时空动态方面表现出稳健性。在我们的模型中,关键的驱动因素包括杀虫剂的使用、农业活动、人口密度、土地利用和土地覆盖(LULC)特征以及环境变量:对于疟疾病媒中已证实的 IR 数据有限的国家来说,所开发的 CA 模型提供了一种强有力的工具。采用动态建模方法并考虑不断变化的条件和影响因素,有助于加深对 IR 动态的理解,并为面临这一重大健康挑战的地区制定有效的疟疾病媒控制和预防战略提供依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Biology
BMC Biology 生物-生物学
CiteScore
7.80
自引率
1.90%
发文量
260
审稿时长
3 months
期刊介绍: BMC Biology is a broad scope journal covering all areas of biology. Our content includes research articles, new methods and tools. BMC Biology also publishes reviews, Q&A, and commentaries.
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