利用机器学习预测登革热并研究其可能的大流行

Savita Choudhary, V. Gaurav, Tushar Sharma, Vishal V, Pradyumna K R
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引用次数: 2

摘要

根据2018年《国家卫生概况》,自2009年以来,印度的登革热病例数量惊人地增加了约300%。登革热不仅在印度被认为是一个严重的威胁,而且正在成为世界各地的一个问题,特别是在印度尼西亚、印度和马来西亚等热带国家。登革热病例在季风开始和持续期间广泛传播,因为雨水的收集为雌伊蚊提供了繁殖地,雌伊蚊是黄病毒(登革热病毒)的载体。由于缺乏适当的基础设施和方法来确定印度的脆弱地区,登革热病例一直在上升。这篇论文试图使用机器学习和统计模型来预测印度各地的登革热病例,并确定气候因素、城市化和登革热病例报告数量之间的模式。这包括登革热的传播谱,也可作为一种基于人工智能的缓解预测模型,在疫情蔓延之前向有关当局发出警报。这将使有关当局能够评估局势并采取适当步骤防止大流行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Dengue and Studying its Plausible Pandemy using Machine Learning
India has witnessed an alarming increase in the number of dengue cases to the count of about 300 percent since 2009 as per the National Health Profile, 2018. Dengue is considered a serious threat not only in India but also is becoming a problem all over the world especially in tropical countries like Indonesia, India and Malaysia. Dengue cases were widespread during the onset and the duration of monsoon due to the collection of water creating breeding grounds for female aedes mosquitoes which are vectors for Flavivirus (Dengue virus). With the lack of appropriate infrastructure and methodology to identify vulnerable regions in India, the cases of dengue have been on the rise. This paper is an attempt to use machine learning and statistical models to predict dengue cases across India and identify the patterns between climatic factors, urbanization and number of cases reported for dengue. This includes the spread spectrum of dengue and also accounts as an AI based mitigative forecast model to alert the concerned authorities before the spread of the epidemic. This will enable the concerned authorities to gauge the situation and take appropriate steps to prevent the pandemy.
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