Awasthi Srishti, Dehkharghani Maryam Zolfaghari, Fudolig Miguel
Department of Healthcare Administration and Policy, School of Public Health, University of Nevada Las Vegas, Las Vegas, Nevada, United States of America.
Department of Epidemiology and Biostatistics, School of Public Health, University of Nevada Las Vegas, Las Vegas, Nevada, United States of America.
PLoS One. 2025 Apr 2;20(4):e0311459. doi: 10.1371/journal.pone.0311459. eCollection 2025.
BACKGROUND/OBJECTIVE: Relative proportion of cases in a multi-strain pandemic like the COVID-19 pandemic provides insight on how fast a newly emergent variant dominates the infected population. However, the behavior of relative proportion of emerging variants is an understudied field. We investigated the emerging behavior of dominant COVID-19 variants using nonlinear statistical methods and calculated the time to dominance of each variant.
We used a phenomenological approach to model national- and regional-level variant share data from the national genomic surveillance system provided by the Centers for Disease Control and Prevention to determine the best model to describe the emergence of two recent dominant variants of the SARS-CoV-2 virus: XBB.1.5 and JN.1. The proportions were modeled using logistic, Weibull, and generalized additive models. Model performance was evaluated using the Akaike Information Criteria (AIC) and the root mean square error (RMSE).
The Weibull model performed the worst out of all three approaches. The generalized additive model approach slightly outperformed the logistic model based on fit statistics, but lacked in interpretability compared to the logistic model. These models were then used to estimate the time elapsed from emergence to dominance in the infected population, denoted by the time to dominance (TTD). All three models yielded similar TTD estimates. The XBB.1.5 variant was found to dominate the population faster compared to the JN.1 variant, especially in HHS Region 2 (New York) where the XBB.1.5 was believed to emerge. This research expounds on how emerging viral strains transition to dominance, informing public health interventions against future emergent COVID-19 variants and other infectious diseases.
背景/目的:在像新冠疫情这样的多毒株大流行中,病例的相对比例能让我们了解新出现的变异株在感染人群中占据主导地位的速度有多快。然而,新兴变异株相对比例的行为是一个研究较少的领域。我们使用非线性统计方法研究了新冠病毒主要变异株的出现行为,并计算了每个变异株占据主导地位的时间。
我们采用现象学方法,对美国疾病控制与预防中心提供的国家基因组监测系统中的国家和地区层面的变异株份额数据进行建模,以确定描述严重急性呼吸综合征冠状病毒2(SARS-CoV-2)病毒最近两个主要变异株:XBB.1.5和JN.1出现情况的最佳模型。使用逻辑模型、威布尔模型和广义相加模型对比例进行建模。使用赤池信息准则(AIC)和均方根误差(RMSE)评估模型性能。
在所有三种方法中,威布尔模型表现最差。基于拟合统计,广义相加模型方法略优于逻辑模型,但与逻辑模型相比缺乏可解释性。然后使用这些模型估计从出现到在感染人群中占据主导地位所经过的时间,即占据主导地位的时间(TTD)。所有三种模型得出的TTD估计值相似。发现XBB.1.5变异株比JN.1变异株更快地在人群中占据主导地位,尤其是在据信XBB.1.5出现的美国卫生与公众服务部第2地区(纽约)。这项研究阐述了新兴病毒株如何过渡到占据主导地位,为针对未来出现的新冠病毒变异株和其他传染病的公共卫生干预提供了信息。