National Wildlife Research Center, USDA-APHIS, Fort Collins, CO 80521, USA.
Colorado State University, Fort Collins, CO 80523, USA.
Philos Trans R Soc Lond B Biol Sci. 2019 Sep 30;374(1782):20180346. doi: 10.1098/rstb.2018.0346. Epub 2019 Aug 12.
Reassortment is an evolutionary mechanism by which influenza A viruses (IAV) generate genetic novelty. Reassortment is an important driver of host jumps and is widespread according to retrospective surveillance studies. However, predicting the epidemiological risk of reassortant emergence in novel hosts from surveillance data remains challenging. IAV strains persist and co-occur in the environment, promoting co-infection during environmental transmission. These conditions offer opportunity to understand reassortant emergence in reservoir and spillover hosts. Specifically, environmental RNA could provide rich information for understanding the evolutionary ecology of segmented viruses, and transform our ability to quantify epidemiological risk to spillover hosts. However, significant challenges with recovering and interpreting genomic RNA from the environment have impeded progress towards predicting reassortant emergence from environmental surveillance data. We discuss how the fields of genomics, experimental ecology and epidemiological modelling are well positioned to address these challenges. Coupling quantitative disease models and natural transmission studies with new molecular technologies, such as deep-mutational scanning and single-virus sequencing of environmental samples, should dramatically improve our understanding of viral co-occurrence and reassortment. We define observable risk metrics for emerging molecular technologies and propose a conceptual research framework for improving accuracy and efficiency of risk prediction. This article is part of the theme issue 'Dynamic and integrative approaches to understanding pathogen spillover'.
重配是甲型流感病毒(IAV)产生遗传新颖性的进化机制。重配是宿主跳跃的重要驱动因素,根据回顾性监测研究,它广泛存在。然而,从监测数据预测新型宿主中重组体出现的流行病学风险仍然具有挑战性。IAV 株在环境中持续存在并共存,促进了环境传播过程中的共同感染。这些条件为了解储主和溢出宿主中重组体的出现提供了机会。具体来说,环境 RNA 可以为了解分段病毒的进化生态学提供丰富的信息,并改变我们定量溢出宿主的流行病学风险的能力。然而,从环境中回收和解释基因组 RNA 存在重大挑战,这阻碍了从环境监测数据预测重组体出现的进展。我们讨论了基因组学、实验生态学和流行病学模型领域如何能够很好地应对这些挑战。将定量疾病模型和自然传播研究与新的分子技术(如深度突变扫描和环境样本的单病毒测序)相结合,应该会极大地提高我们对病毒共存和重配的理解。我们定义了新兴分子技术的可观察风险指标,并提出了一个概念性研究框架,以提高风险预测的准确性和效率。本文是主题为“理解病原体溢出的动态和综合方法”的一部分。