Foreign Animal Disease Research Unit, Agricultural Research Service, U.S. Department of Agriculture, Plum Island Animal Disease Center (PIADC) and National Bio Agro Defense Facility (NBAF), Manhattan, KS 66502, USA.
Veterinary Services, Animal and Plant Health Inspection Service (APHIS), U.S. Department of Agriculture, Fort Collins, CO 80526, USA.
Viruses. 2024 Aug 18;16(8):1315. doi: 10.3390/v16081315.
Vesicular stomatitis (VS) is a vector-borne livestock disease caused by the vesicular stomatitis New Jersey virus (VSNJV). This study presents the first application of an SEIR-SEI compartmental model to analyze VSNJV transmission dynamics. Focusing on the 2014-2015 outbreak in the United States, the model integrates vertebrate hosts and insect vector demographics while accounting for heterogeneous competency within the populations and observation bias in documented disease cases. Key epidemiological parameters were estimated using Bayesian inference and Markov chain Monte Carlo (MCMC) methods, including the force of infection, effective reproduction number (Rt), and incubation periods. The model revealed significant underreporting, with only 10-24% of infections documented, 23% of which presented with clinical symptoms. These findings underscore the importance of including competence and imperfect detection in disease models to depict outbreak dynamics and inform effective control strategies accurately. As a baseline model, this SEIR-SEI implementation is intended to serve as a foundation for future refinements and expansions to improve our understanding of VS dynamics. Enhanced surveillance and targeted interventions are recommended to manage future VS outbreaks.
水疱性口炎(VS)是一种由水疱性口炎新泽西病毒(VSNJV)引起的虫媒传染病。本研究首次应用 SEIR-SEI 房室模型来分析 VSNJV 的传播动态。研究聚焦于 2014-2015 年在美国发生的疫情,该模型整合了脊椎动物宿主和昆虫媒介的种群动态,同时考虑了种群内异质性的效力和记录疾病病例中的观察偏差。使用贝叶斯推断和马尔可夫链蒙特卡罗(MCMC)方法估计了关键的流行病学参数,包括感染强度、有效繁殖数(Rt)和潜伏期。模型揭示了显著的漏报现象,仅有 10-24%的感染得到记录,其中 23%出现了临床症状。这些发现强调了在疾病模型中纳入效力和不完全检测的重要性,以准确描绘疫情动态并为有效的控制策略提供信息。作为一个基准模型,这种 SEIR-SEI 的实施旨在为未来的改进和扩展提供基础,以提高我们对 VS 动态的理解。建议加强监测和针对性干预,以管理未来的 VS 疫情。