Department of Epidemiology of Microbial Diseases, Yale School of Public Health, Yale University, New Haven, CT, USA.
Department of Pharmaceutical Systems and Policy, School of Pharmacy, West Virginia University, USA.
Proc Biol Sci. 2022 Jun 8;289(1976):20212727. doi: 10.1098/rspb.2021.2727.
To quantify the potential impact of rotavirus vaccines and identify strategies to improve vaccine performance in Bangladesh, a better understanding of the drivers of pre-vaccination rotavirus patterns is required. We developed and fitted mathematical models to 23 years (1990-2012) of weekly rotavirus surveillance data from Dhaka with and without incorporating long-term and seasonal variation in the birth rate and meteorological factors. We performed external model validation using data between 2013 and 2019 from the regions of Dhaka and Matlab. The models showed good agreement with the observed age distribution of rotavirus cases and captured the observed shift in seasonal patterns of rotavirus hospitalizations from biannual to annual peaks. The declining long-term trend in the birth rate in Bangladesh was the key driver of the observed shift from biannual to annual winter rotavirus patterns. Meteorological indices were also important: a 1°C, 1% and 1 mm increase in diurnal temperature range, surface water presence and degree of wetness were associated with a 19%, 3.9% and 0.6% increase in the transmission rate, respectively. The model demonstrated reasonable predictions for both Dhaka and Matlab, and can be used to evaluate the impact of rotavirus vaccination in Bangladesh against changing patterns of disease incidence.
为了量化轮状病毒疫苗的潜在影响,并确定提高孟加拉国疫苗效果的策略,需要更好地了解疫苗接种前轮状病毒模式的驱动因素。我们开发并拟合了数学模型,以 23 年(1990-2012 年)的达卡每周轮状病毒监测数据为基础,同时考虑了出生率和气象因素的长期和季节性变化。我们使用 2013 年至 2019 年达卡和马特拉布地区的数据进行了外部模型验证。模型与观察到的轮状病毒病例年龄分布具有良好的一致性,并捕捉到了观察到的轮状病毒住院季节性模式从双年度峰值向年度峰值的转变。孟加拉国出生率的长期下降趋势是观察到从双年度到年度冬季轮状病毒模式转变的关键驱动因素。气象指数也很重要:日温差、地表水存在和湿度程度分别增加 1°C、1%和 1 毫米,与传播率分别增加 19%、3.9%和 0.6%相关。该模型对达卡和马特拉布都进行了合理的预测,可以用来评估轮状病毒疫苗接种对孟加拉国疾病发病率变化模式的影响。