Moonchai Sompop, Himakalasa Adsadang, Rojsiraphisal Thaned, Arjkumpa Orapun, Panyasomboonying Pawares, Kuatako Noppasorn, Buamithup Noppawan, Punyapornwithaya Veerasak
Advanced Research Center for Computational Simulation, Chiang Mai University, Chiang Mai, 50200, Thailand.
Department of Mathematics, Faculty of Science, Chiang Mai University, Chiang Mai, 50200, Thailand.
Infect Dis Model. 2023 Feb 20;8(1):282-293. doi: 10.1016/j.idm.2023.02.004. eCollection 2023 Mar.
Lumpy skin disease (LSD) is a transboundary disease affecting cattle and has a detrimental effect on the cattle industries in numerous countries in Africa, Europe and Asia. In 2021, LSD outbreaks have been reported in almost all of Thailand's provinces. Indeed, fitting LSD occurrences using mathematical models provide important knowledge in the realm of animal disease modeling. Thus, the objective of this study is to fit the pattern of daily new LSD cases and daily cumulative LSD cases in Thailand using mathematical models. The first- and second-order models in the forms of Lorentzian, Gaussian and Pearson-type VII models are used to fit daily new LSD cases whereas Richard's growth, Boltzmann sigmoidal and Power-law growth models are utilized to fit the curve of cumulative LSD cases. Based on the root-mean-squared error (RMSE) and Akaike information criterion (AIC), results showed that both first and second orders of Pearson-type VII models and Richard's growth model (RGM) were fit to the data better than other models used in the present study. The obtained models and their parameters can be utilized to describe the LSD outbreak in Thailand. For disease preparedness purposes, we can use the first order of the Pearson-type VII model to estimate the time of maximum infected cases occurring when the growth rate of infected cases starts to slow down. Furthermore, the period when the growth rate changes at a slower rate, known as the inflection time, obtained from RGM allows us to anticipate when the pandemic has peaked and the situation has stabilized. This is the first study that utilizes mathematical methods to fit the LSD epidemics in Thailand. This study offers decision-makers and authorities with valuable information for establishing an effective disease control strategy.
结节性皮肤病(LSD)是一种影响牛群的跨界疾病,对非洲、欧洲和亚洲许多国家的养牛业产生不利影响。2021年,泰国几乎所有省份都报告了LSD疫情。事实上,使用数学模型拟合LSD疫情发生情况可在动物疾病建模领域提供重要知识。因此,本研究的目的是使用数学模型拟合泰国每日新增LSD病例和每日累计LSD病例的模式。采用洛伦兹、高斯和皮尔逊VII型模型形式的一阶和二阶模型来拟合每日新增LSD病例,而使用理查德生长模型、玻尔兹曼S型模型和幂律生长模型来拟合累计LSD病例曲线。基于均方根误差(RMSE)和赤池信息准则(AIC),结果表明,皮尔逊VII型模型的一阶和二阶模型以及理查德生长模型(RGM)对数据的拟合效果优于本研究中使用的其他模型。所获得的模型及其参数可用于描述泰国的LSD疫情。出于疾病防范目的,我们可以使用皮尔逊VII型模型的一阶模型来估计感染病例增长率开始放缓时出现最大感染病例的时间。此外,从RGM获得的增长率变化较慢的时期,即拐点时间,使我们能够预测疫情何时达到峰值以及局势何时稳定。这是第一项利用数学方法拟合泰国LSD疫情的研究。本研究为决策者和当局制定有效的疾病控制策略提供了有价值的信息。