Department of Integrative Biology, The University of Texas at Austin, Austin, Texas, United States of America.
Analytics, Intelligence, and Technology Division, Los Alamos National Laboratory, Los Alamos, New Mexico, United States of America.
PLoS Comput Biol. 2020 Feb 18;16(2):e1007683. doi: 10.1371/journal.pcbi.1007683. eCollection 2020 Feb.
Influenza A/H3N2 is a rapidly evolving virus which experiences major antigenic transitions every two to eight years. Anticipating the timing and outcome of transitions is critical to developing effective seasonal influenza vaccines. Using a published phylodynamic model of influenza transmission, we identified indicators of future evolutionary success for an emerging antigenic cluster and quantified fundamental trade-offs in our ability to make such predictions. The eventual fate of a new cluster depends on its initial epidemiological growth rate--which is a function of mutational load and population susceptibility to the cluster--along with the variance in growth rate across co-circulating viruses. Logistic regression can predict whether a cluster at 5% relative frequency will eventually succeed with ~80% sensitivity, providing up to eight months advance warning. As a cluster expands, the predictions improve while the lead-time for vaccine development and other interventions decreases. However, attempts to make comparable predictions from 12 years of empirical influenza surveillance data, which are far sparser and more coarse-grained, achieve only 56% sensitivity. By expanding influenza surveillance to obtain more granular estimates of the frequencies of and population-wide susceptibility to emerging viruses, we can better anticipate major antigenic transitions. This provides added incentives for accelerating the vaccine production cycle to reduce the lead time required for strain selection.
甲型 H3N2 流感是一种快速进化的病毒,每两到八年就会经历重大的抗原转变。预测转变的时间和结果对于开发有效的季节性流感疫苗至关重要。我们使用已发表的流感传播系统发育动力学模型,确定了新兴抗原簇未来进化成功的指标,并量化了我们进行此类预测的能力的基本权衡。新集群的最终命运取决于其初始流行病学增长率,这是突变负荷和人群对集群易感性的函数,以及共同循环病毒增长率的差异。逻辑回归可以预测一个相对频率为 5%的集群最终是否会成功,其敏感性约为 80%,提前预警时间长达 8 个月。随着集群的扩展,预测的准确性会提高,而疫苗开发和其他干预措施的提前时间会减少。然而,尝试从 12 年的实际流感监测数据中进行类似的预测,这些数据远为稀疏且更粗糙,只能达到 56%的敏感性。通过扩大流感监测范围,以获得对新兴病毒的频率和人群普遍易感性的更精细估计,可以更好地预测重大抗原转变。这为加快疫苗生产周期提供了额外的动力,以减少选择菌株所需的提前时间。