Department of Mathematics, Waterford School, Salt Lake City, UT, USA.
Department of Biology, College of Science, Taif University, P.O. Box 11099, Taif, 21944, Saudi Arabia.
Sci Rep. 2022 Mar 31;12(1):5459. doi: 10.1038/s41598-022-09489-y.
The recent increase in the global incidence of dengue fever resulted in over 2.7 million cases in Latin America and many cases in Southeast Asia and has warranted the development and application of early warning systems (EWS) for futuristic outbreak prediction. EWS pertaining to dengue outbreaks is imperative; given the fact that dengue is linked to environmental factors owing to its dominance in the tropics. Prediction is an integral part of EWS, which is dependent on several factors, in particular, climate, geography, and environmental factors. In this study, we explore the role of increased susceptibility to a DENV serotype and climate variability in developing novel predictive models by analyzing RT-PCR and DENV-IgM confirmed cases in Singapore and Honduras, which reported high dengue incidence in 2019 and 2020, respectively. A random-sampling-based susceptible-infected-removed (SIR) model was used to obtain estimates of the susceptible fraction for modeling the dengue epidemic, in addition to the Bayesian Markov Chain Monte Carlo (MCMC) technique that was used to fit the model to Singapore and Honduras case report data from 2012 to 2020. Regression techniques were used to implement climate variability in two methods: a climate-based model, based on individual climate variables, and a seasonal model, based on trigonometrically varying transmission rates. The seasonal model accounted for 98.5% and 92.8% of the variance in case count in the 2020 Singapore and 2019 Honduras outbreaks, respectively. The climate model accounted for 75.3% and 68.3% of the variance in Singapore and Honduras outbreaks respectively, besides accounting for 75.4% of the variance in the major 2013 Singapore outbreak, 71.5% of the variance in the 2019 Singapore outbreak, and over 70% of the variance in 2015 and 2016 Honduras outbreaks. The seasonal model accounted for 14.2% and 83.1% of the variance in the 2013 and 2019 Singapore outbreaks, respectively, in addition to 91% and 59.5% of the variance in the 2015 and 2016 Honduras outbreaks, respectively. Autocorrelation lag tests showed that the climate model exhibited better prediction dynamics for Singapore outbreaks during the dry season from May to August and in the rainy season from June to October in Honduras. After incorporation of susceptible fractions, the seasonal model exhibited higher accuracy in predicting outbreaks of higher case magnitude, including those of the 2019-2020 dengue epidemic, in comparison to the climate model, which was more accurate in outbreaks of smaller magnitude. Such modeling studies could be further performed in various outbreaks, such as the ongoing COVID-19 pandemic to understand the outbreak dynamics and predict the occurrence of future outbreaks.
近期,全球登革热发病率上升,导致拉丁美洲超过 270 万例登革热病例,东南亚也出现了许多病例,因此有必要开发和应用未来疫情爆发的早期预警系统(EWS)。登革热疫情预警系统至关重要;因为登革热与环境因素有关,主要在热带地区流行。预测是 EWS 的一个组成部分,它依赖于几个因素,特别是气候、地理和环境因素。在这项研究中,我们通过分析新加坡和洪都拉斯的 RT-PCR 和登革热 IgM 确诊病例,探讨了 DEN 血清型易感性增加和气候变异性在开发新型预测模型中的作用,这两个地区在 2019 年和 2020 年分别报告了高登革热发病率。我们使用基于随机抽样的易感-感染-清除(SIR)模型来获得易感分数的估计值,用于对登革热流行进行建模,此外,还使用贝叶斯马尔可夫链蒙特卡罗(MCMC)技术将模型拟合到新加坡和洪都拉斯 2012 年至 2020 年的病例报告数据。我们使用两种方法来实施气候变异性:一种是基于单个气候变量的气候模型,另一种是基于三角函数变化的传播率的季节模型。季节模型分别解释了 2020 年新加坡和 2019 年洪都拉斯疫情中病例数的 98.5%和 92.8%的方差,气候模型分别解释了新加坡和洪都拉斯疫情中 75.3%和 68.3%的方差,除了解释了 2013 年新加坡主要疫情的 75.4%的方差,2019 年新加坡疫情的 71.5%的方差,以及 2015 年和 2016 年洪都拉斯疫情的方差超过 70%。季节模型分别解释了 2013 年和 2019 年新加坡疫情中 14.2%和 83.1%的方差,除了解释了 2015 年和 2016 年洪都拉斯疫情中 91%和 59.5%的方差。自相关滞后检验表明,气候模型在新加坡旱季(5 月至 8 月)和雨季(6 月至 10 月)表现出更好的预测动态,而在洪都拉斯旱季表现出更好的预测动态。在纳入易感分数后,季节模型在预测更高病例数量的疫情爆发方面表现出更高的准确性,包括 2019-2020 年登革热疫情爆发,而气候模型在预测规模较小的疫情爆发方面更准确。与气候模型相比,这种模型研究可以在各种疫情爆发中进一步进行,例如正在进行的 COVID-19 大流行,以了解疫情动态并预测未来疫情的发生。