探索空间,时间和采样如何影响我们测量恶性疟原虫种群遗传结构的能力

Frontiers in epidemiology Pub Date : 2023-02-17 eCollection Date: 2023-01-01 DOI:10.3389/fepid.2023.1058871
Rohan Arambepola, Sophie Bérubé, Betsy Freedman, Steve M Taylor, Wendy Prudhomme O'Meara, Andrew A Obala, Amy Wesolowski
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引用次数: 0

摘要

疟疾寄生虫基因组学的一个主要用途是确定高度相关的感染,以量化与传播模式相关的流行病学、空间或时间因素。例如,高度相关寄生虫的空间聚集可以表明传播的焦点,而相关性的时间差异可以作为传播随时间变化的证据。然而,对于中度至高度流行环境中的感染,由于复杂的感染、总体的高感染力和高度多样化的寄生虫种群,对相关性模式的理解受到了损害。目前尚不清楚这些因素在多大程度上限制了利用基因组数据更好地了解这些环境中的传播。特别是,需要进一步的调查来确定我们期望在高传播环境中看到的高质量、密集采样的基因组数据的相关性模式,以及这些观察结果在不同的研究设计、缺失和样本收集中的偏差下如何变化。在这里,我们研究了两种按州识别的相关性测量方法,并将它们应用于作为肯尼亚西部纵向队列的一部分收集的扩增子深度测序数据,这些数据先前已被分析以确定与受感染蚊子共享寄生虫相关的个体因素。利用这些数据,我们使用排列检验来评估与零分布相比有关时空相关性模式的几个假设。我们在队列数据中观察到时间结构的证据,但没有观察到精细尺度的空间结构。为了探索与这些数据缺乏空间结构相关的因素,我们使用基于agent的模型构建了一系列简化的模拟场景,并校准了该队列研究的昆虫学、流行病学和基因组学数据,以研究队列中观察到的空间结构缺乏是否可能是由于该分析方法固有的功率限制。我们进一步研究了假设检验在不同采样方案、完全随机和系统缺失水平以及不同传输强度下的表现。
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Exploring how space, time, and sampling impact our ability to measure genetic structure across Plasmodium falciparum populations.

A primary use of malaria parasite genomics is identifying highly related infections to quantify epidemiological, spatial, or temporal factors associated with patterns of transmission. For example, spatial clustering of highly related parasites can indicate foci of transmission and temporal differences in relatedness can serve as evidence for changes in transmission over time. However, for infections in settings of moderate to high endemicity, understanding patterns of relatedness is compromised by complex infections, overall high forces of infection, and a highly diverse parasite population. It is not clear how much these factors limit the utility of using genomic data to better understand transmission in these settings. In particular, further investigation is required to determine which patterns of relatedness we expect to see with high quality, densely sampled genomic data in a high transmission setting and how these observations change under different study designs, missingness, and biases in sample collection. Here we investigate two identity-by-state measures of relatedness and apply them to amplicon deep sequencing data collected as part of a longitudinal cohort in Western Kenya that has previously been analysed to identify individual-factors associated with sharing parasites with infected mosquitoes. With these data we use permutation tests, to evaluate several hypotheses about spatiotemporal patterns of relatedness compared to a null distribution. We observe evidence of temporal structure, but not of fine-scale spatial structure in the cohort data. To explore factors associated with the lack of spatial structure in these data, we construct a series of simplified simulation scenarios using an agent based model calibrated to entomological, epidemiological and genomic data from this cohort study to investigate whether the lack of spatial structure observed in the cohort could be due to inherent power limitations of this analytical method. We further investigate how our hypothesis testing behaves under different sampling schemes, levels of completely random and systematic missingness, and different transmission intensities.

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