MRC-University of Glasgow Centre for Virus Research , Glasgow, UK.
Department of Clinical Research, London School of Hygiene and Tropical Medicine , London, UK.
J R Soc Interface. 2024 Aug;21(217):20240168. doi: 10.1098/rsif.2024.0168. Epub 2024 Aug 7.
Viruses that infect animals regularly spill over into the human population, but individual events may lead to anything from a single case to a novel pandemic. Rapidly gaining an understanding of a spillover event is critical to calibrating a public health response. We here propose a novel method, using likelihood-free rejection sampling, to evaluate the properties of an outbreak of swine-origin influenza A(H1N2)v in the United Kingdom, detected in November 2023. From the limited data available, we generate historical estimates of the probability that the outbreak had died out in the days following the detection of the first case. Our method suggests that the outbreak could have been said to be over with 95% certainty between 19 and 29 days after the first case was detected, depending upon the probability of a case being detected. We further estimate the number of undetected cases conditional upon the outbreak still being live, the epidemiological parameter , and the date on which the spillover event itself occurred. Our method requires minimal data to be effective. While our calculations were performed after the event, the real-time application of our method has potential value for public health responses to cases of emerging viral infection.
经常感染动物的病毒会定期溢出到人类群体中,但个别事件可能导致从单一病例到新的大流行。快速了解溢出事件对于调整公共卫生应对措施至关重要。我们在这里提出了一种新方法,使用无似然拒绝抽样,来评估 2023 年 11 月在英国检测到的猪源甲型流感 A(H1N2)v 的爆发情况。根据有限的数据,我们生成了爆发在首例病例检测后几天内消失的概率的历史估计。我们的方法表明,根据病例被检测到的概率,在首例病例被检测到后 19 到 29 天,爆发可以被认为已经结束,其置信度为 95%。我们进一步根据仍在流行的爆发、流行病学参数 和溢出事件本身发生的日期来估计未被检测到的病例数量。我们的方法需要最少的数据即可生效。虽然我们的计算是在事件发生后进行的,但我们的方法实时应用于新兴病毒感染病例的公共卫生应对措施具有潜在价值。