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首页> 外文期刊>BMC Infectious Diseases >An agent-based model simulation of influenza interactions at the host level: insight into the influenza-related burden of pneumococcal infections
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An agent-based model simulation of influenza interactions at the host level: insight into the influenza-related burden of pneumococcal infections

机译:基于宿主的流感相互作用的基于模型的模型模拟:洞察与肺炎球菌感染有关的流感相关负担

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Background Host-level influenza virus–respiratory pathogen interactions are often reported. Although the exact biological mechanisms involved remain unelucidated, secondary bacterial infections are known to account for a large part of the influenza-associated burden, during seasonal and pandemic outbreaks. Those interactions probably impact the microorganisms’ transmission dynamics and the influenza public health toll. Mathematical models have been widely used to examine influenza epidemics and the public health impact of control measures. However, most influenza models overlooked interaction phenomena and ignored other co-circulating pathogens. Methods Herein, we describe a novel agent-based model (ABM) of influenza transmission during interaction with another respiratory pathogen. The interacting microorganism can persist in the population year round (endemic type, e.g. respiratory bacteria) or cause short-term annual outbreaks (epidemic type, e.g. winter respiratory viruses). The agent-based framework enables precise formalization of the pathogens’ natural histories and complex within-host phenomena. As a case study, this ABM is applied to the well-known influenza virus–pneumococcus interaction, for which several biological mechanisms have been proposed. Different mechanistic hypotheses of interaction are simulated and the resulting virus-induced pneumococcal infection (PI) burden is assessed. Results This ABM generates realistic data for both pathogens in terms of weekly incidences of PI cases, carriage rates, epidemic size and epidemic timing. Notably, distinct interaction hypotheses resulted in different transmission patterns and led to wide variations of the associated PI burden. Interaction strength was also of paramount importance: when influenza increased pneumococcus acquisition, 4–27% of the PI burden during the influenza season was attributable to influenza depending on the interaction strength. Conclusions This open-source ABM provides new opportunities to investigate influenza interactions from a theoretical point of view and could easily be extended to other pathogens. It provides a unique framework to generate in silico data for different scenarios and thereby test mechanistic hypotheses.
机译:背景经常报道宿主水平的流感病毒-呼吸道病原体相互作用。尽管仍未阐明确切的生物学机制,但已知在季节性和大流行期间,继发性细菌感染占流感相关负担的很大一部分。这些相互作用可能会影响微生物的传播动态和流感对公众健康的影响。数学模型已广泛用于检查流行性感冒和控制措施对公共健康的影响。但是,大多数流感模型都忽略了相互作用现象,而忽略了其他共同传播的病原体。方法在本文中,我们描述了与另一种呼吸道病原体相互作用期间流感传播的新型基于媒介的模型(ABM)。相互作用的微生物可以全年持续存在(流行型,例如呼吸道细菌)或引起短期的年度暴发(流行型,例如冬天呼吸道病毒)。基于代理的框架可以使病原体的自然历史和复杂的宿主内部现象精确地形式化。作为案例研究,该ABM被应用于众所周知的流感病毒-肺炎球菌相互作用,为此已提出了几种生物学机制。模拟了相互作用的不同机理假说,并评估了由病毒引起的肺炎球菌感染(PI)负担。结果该ABM可以根据PI病例的每周发病率,运输率,流行规模和流行时间来为这两种病原体生成实际数据。值得注意的是,不同的交互假设导致了不同的传播方式,并导致了相关PI负担的巨大变化。相互作用强度也至关重要:当流感增加肺炎球菌的获取时,在流感季节,PI负担的4–27%可归因于流感,具体取决于相互作用强度。结论该开源ABM提供了从理论角度研究流感相互作用的新机会,并且可以很容易地扩展到其他病原体。它提供了一个独特的框架,可以针对不同情况生成计算机模拟数据,从而测试机械假设。

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