Forecasting Meningitis Outbreak with a Climate-Inspired Model

Aminu T. F., Bamigbola O. M.
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Abstract

Recently, meningitis outbreaks have posed substantial public health issues across the world, prompting effective preventative and control measures. Therefore, this work proposes a unique method for estimating meningitis incidence by incorporating atmospheric data into a predictive model, christened as climate-based predictive meningitis model (CBPMM). The CBPMM is created using machine learning formalities, with meteorological data serving as a key component of the predictor. The model incorporates powerful prediction techniques that analyze historical data and environmental patterns comprehensively and thus, provide useful insights for early identification and proactive intervention strategies. With infection transmission rate at 0.88, carrier natural recovery rate 0.06, and the efficacy of treatment is 0.001, ; it implies that the infectious disease persists in the community. However, when ; that is, the disease is controllable. The CBPMM marks a huge step forward in meningitis surveillance, providing healthcare authorities with information to promptly limit the effect of outbreaks.
利用气候启发模型预测脑膜炎爆发
近来,脑膜炎的爆发在全球范围内造成了严重的公共卫生问题,促使人们采取有效的预防和控制措施。因此,本研究提出了一种独特的方法,通过将大气数据纳入预测模型来估计脑膜炎发病率,该模型被命名为基于气候的预测脑膜炎模型(CBPMM)。CBPMM 采用机器学习形式创建,气象数据是预测器的关键组成部分。该模型采用了强大的预测技术,可全面分析历史数据和环境模式,从而为早期识别和主动干预策略提供有用的见解。在感染传播率为 0.88、带菌者自然恢复率为 0.06、治疗效果为 0.001 的情况下,;意味着传染病在社区中持续存在。然而,当 ; 时,即疾病是可控的。CBPMM 标志着脑膜炎监测工作向前迈出了一大步,为医疗保健当局提供了信息,使其能够及时限制疫情的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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