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Metanetwork Transmission Model for Predicting a Malaria-Control Strategy

机译:预测疟疾控制策略的元网络传输模型

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摘要

>Background: Mosquitoes are the primary vectors responsible for malaria transmission to humans, with numerous experiments having been conducted to aid in the control of malaria transmission. One of the main approaches aims to develop malaria parasite resistance within the mosquito population by introducing a resistance (R) allele. However, when considering this approach, some critical factors, such as the life of the mosquito, female mosquito fertility capacity, and human and mosquito mobility, have not been considered. Thus, an understanding of how mosquitoes and humans affect disease dynamics is needed to better inform malaria control policymaking.>Methods: In this study, a method was proposed to create a metanetwork on the basis of the geographic maps of Gambia, and a model was constructed to simulate evolution within a mixed population, with factors such as birth, death, reproduction, biting, infection, incubation, recovery, and transmission between populations considered in the network metrics. First, the same number of refractory mosquitoes (RR genotype) was introduced into each population, and the prevalence of the R allele (the ratio of resistant alleles to all alleles) and malaria were examined. In addition, a series of simulations were performed to evaluate two different deployment strategies for the reduction of the prevalence of malaria. The R allele and malaria prevalence were calculated for both the strategies, with 10,000 refractory mosquitoes deployed into randomly selected populations or selection based on nodes with top-betweenness values. The 10,000 mosquitoes were deployed among 1, 5, 10, 20, or 40 populations.>Results: The simulations in this paper showed that a higher RR genotype (resistant-resistant genes) ratio leads to a higher R allele prevalence and lowers malaria prevalence. Considering the cost of deployment, the simulation was performed with 10,000 refractory mosquitoes deployed among 1 or 5 populations, but this approach did not reduce the original malaria prevalence. Thus, instead, the 10,000 refractory mosquitoes were distributed among 10, 20, or 40 populations and were shown to effectively reduce the original malaria prevalence. Thus, deployment among a relatively small fraction of central nodes can offer an effective strategy to reduce malaria.>Conclusion: The standard network centrality measure is suitable for planning the deployment of refractory mosquitoes.>Importance: Malaria is an infectious disease that is caused by a plasmodial parasite, and some control strategies have focused on genetically modifying the mosquitoes. This work aims to create a model that takes into account mosquito development and malaria transmission among the population and how these factors influence disease dynamics so as to better inform malaria-control policymaking.
机译:>背景:蚊子是导致疟疾传播给人类的主要媒介,并进行了大量实验来控制疟疾的传播。一种主要方法旨在通过引入抗性(R)等位基因在蚊子种群中发展疟疾寄生虫抗性。但是,在考虑这种方法时,尚未考虑一些关键因素,例如蚊子的寿命,雌性蚊子的繁殖能力以及人类和蚊子的活动性。因此,需要了解蚊子和人类如何影响疾病动态,以更好地为疟疾控制决策提供依据。>方法:在本研究中,提出了一种方法,可根据蚊虫的地理图创建元网络。冈比亚,并建立了一个模型来模拟混合种群内的进化,并在网络指标中考虑了诸如出生,死亡,繁殖,咬伤,感染,孵化,恢复和种群间传播等因素。首先,将相同数量的难治性蚊子(RR基因型)引入每个人群,并检查R等位基因(抗性等位基因与等位基因之比)和疟疾的患病率。此外,进行了一系列模拟,以评估两种不同的部署策略,以减少疟疾的流行。两种策略均计算了R等位基因和疟疾患病率,将10,000例难治性蚊子部署到随机选择的种群中,或根据具有最高居中值的节点进行选择。在1、5、10、20或40个种群中部署了10,000只蚊子。>结果:本文的模拟结果表明,较高的RR基因型(耐药基因)比率导致较高的R等位基因患病率并降低疟疾患病率。考虑到部署的成本,在1到5个人口中部署了10,000例难治性蚊子进行了仿真,但是这种方法并没有降低最初的疟疾流行率。因此,取而代之的是,将10,000例难治性蚊子分布在10、20或40个种群中,并显示出它们可以有效地降低最初的疟疾流行率。因此,在相对较小的中央节点中进行部署可以提供一种减少疟疾的有效策略。>结论:标准的网络中心性度量适合于规划难治性蚊子的部署。>重要性:< / strong>疟疾是一种由疟原虫寄生虫引起的传染病,一些控制策略集中在对蚊子进行基因改造。这项工作旨在创建一个模型,该模型考虑到蚊子的生长和疟疾在人群中的传播以及这些因素如何影响疾病动态,从而更好地为疟疾控制决策提供依据。

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