Eneli Amelia Adibe, Siu Pui Chung, Perez Manolo F, Burt Austin, Fumagalli Matteo, Mathieson Sara
School of Biological and Behavioural Sciences, Queen Mary University of London, Mile End Road, E1 4NS, London, United Kingdom.
Real Jardín Botánico, CSIC, 2 Pl. Murillo, 28014, Madrid, Spain.
bioRxiv. 2025 Jun 27:2025.06.26.661760. doi: 10.1101/2025.06.26.661760.
Malaria in sub-Saharan Africa is transmitted by mosquitoes, in particular the complex. Efforts to control the spread of malaria have often focused on these vectors, but relatively little is known about the relationships between populations and species in the complex. Here, we first quantify the genetic structure of mosquito populations in sub-Saharan Africa using unsupervised machine learning. We then adapt and apply an innovative generative deep learning algorithm to infer the joint evolutionary history of populations sampled in Guinea and Burkina Faso, West Africa. We further develop a novel model selection approach and discover that an evolutionary model with migration fits this pair of populations better than a model without post-split migration. For the migration model, we find that our method outperforms earlier work based on summary statistics, especially in capturing population genetic differentiation. These findings demonstrate that machine learning and generative models are a valuable direction for future understanding of the evolution of malaria vectors, including the joint inference of demography and natural selection. Understanding changes in population size, migration patterns, and adaptation in hosts, vectors, and pathogens will assist malaria control interventions, with the ultimate goal of predicting nuanced outcomes from insecticide resistance to population collapse.
撒哈拉以南非洲的疟疾由蚊子传播,尤其是按蚊复合体。控制疟疾传播的努力通常集中在这些病媒上,但对于按蚊复合体中种群与物种之间的关系却知之甚少。在这里,我们首先使用无监督机器学习对撒哈拉以南非洲蚊子种群的遗传结构进行量化。然后,我们采用并应用一种创新的生成式深度学习算法来推断在西非几内亚和布基纳法索采样的种群的联合进化历史。我们进一步开发了一种新颖的模型选择方法,发现具有迁移的进化模型比没有分裂后迁移的模型更适合这两个种群。对于迁移模型,我们发现我们的方法优于基于汇总统计的早期工作,特别是在捕捉种群遗传分化方面。这些发现表明,机器学习和生成模型是未来理解疟疾媒介进化的一个有价值的方向,包括对人口统计学和自然选择的联合推断。了解种群大小、迁移模式以及宿主、病媒和病原体的适应性变化将有助于疟疾控制干预措施,最终目标是预测从杀虫剂抗性到种群崩溃的细微结果。