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Antiviral resistance and the control of pandemic influenza: The roles of stochasticity evolution and model details

机译:抗病毒抗药性和大流行性流感的控制:随机性进化和模型细节的作用

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摘要

Antiviral drugs, most notably the neuraminidase inhibitors, are an important component of control strategies aimed to prevent or limit any future influenza pandemic. The potential large-scale use of antiviral drugs brings with it the danger of drug resistance evolution. A number of recent studies have shown that the emergence of drug-resistant influenza could undermine the usefulness of antiviral drugs for the control of an epidemic or pandemic outbreak. While these studies have provided important insights, the inherently stochastic nature of resistance generation and spread, as well as the potential for ongoing evolution of the resistant strain have not been fully addressed. Here, we study a stochastic model of drug resistance emergence and consecutive evolution of the resistant strain in response to antiviral control during an influenza pandemic. We find that taking into consideration the ongoing evolution of the resistant strain does not increase the probability of resistance emergence, however it increases the total number of infecteds if a resistant outbreak occurs. Our study further shows that taking stochasticity into account leads to results that can differ from deterministic models. Specifically, we find that rapid and strong control can not only contain a drug sensitive outbreak, it can also prevent a resistant outbreak from occurring. We find that the best control strategy is early intervention heavily based on prophylaxis at a level that leads to outbreak containment. If containment is not possible, mitigation works best at intermediate levels of antiviral control. Finally, we show that the results are not very sensitive to the way resistance generation is modeled.
机译:抗病毒药物,尤其是神经氨酸酶抑制剂,是旨在预防或限制未来流感大流行的控制策略的重要组成部分。抗病毒药物的潜在大规模使用带来了耐药性演变的危险。最近的许多研究表明,耐药性流感的出现可能破坏抗病毒药物对控制流行病或大流行病爆发的有用性。尽管这些研究提供了重要的见识,但尚未充分解决耐药性产生和传播的内在随机性,以及耐药菌株持续进化的潜力。在这里,我们研究了在流感大流行期间耐药性出现和耐药株响应抗病毒控制的连续演变的随机模型。我们发现考虑到耐药菌株的持续进化不会增加耐药性出现的可能性,但是,如果发生耐药性暴发,则会增加感染总数。我们的研究进一步表明,考虑随机性会导致结果与确定性模型有所不同。具体而言,我们发现快速而有力的控制不仅可以控制药物敏感性爆发,还可以防止耐药菌爆发的发生。我们发现最好的控制策略是在很大程度上基于预防的早期干预,以达到控制疫情的水平。如果无法遏制,则缓解措施应在抗病毒控制的中间水平上发挥最佳作用。最后,我们表明结果对电阻生成的建模方式不是很敏感。

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