流感预测

Navid Shaghaghi, Andrés Calle, George Kouretas
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引用次数: 2

摘要

在2018-19年的流感季节,美国有3740万至4290万人出现了流感样症状。在这一数字中,431至64.7万人住院,36400至61200人(其中大多数是儿童和老年人)死于这种疾病。由于流感病毒的许多链每年都会发生突变,因此必须开发新的疫苗并在每个流感季节接种。因此,预测每一种流感病毒报告感染病例的增长率对于确保正确供应每一种流感病毒的疫苗至关重要。机器学习是利用现有数据预测未来的一个很好的工具,特别是神经网络。eVision(流行病视觉)是一款使用长短期记忆(LSTM)神经网络的软件,由圣克拉拉大学的EPIC(伦理、实用和智能计算)和生物创新与设计实验室研发,利用来自疾病预防控制中心、世界卫生组织和谷歌趋势的数据预测流感病例在整个流感季节的趋势,以帮助制药公司提前几周决定增加或减少测试试剂盒、疫苗和药物的开发。
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Influenza Forecasting
In the 2018-19 influenza season, between 37.4 and 42.9 million people in the United States experienced flu like symptoms. From that number, 431 to 647 thousand were hospitalized and 36400 to 61200 (most of them children and seniors) succumbed to the disease. Due to the annual mutation of the very many strands of the flu virus, new vaccines must be developed and administered every flu season. Therefore, the prediction of the rate of growth in reported infection cases of each strand of the flu is paramount to ensuring the correct supply of vaccines per strand. A great tool for making future predictions using existing data is Machine learning - specifically Neural Networks. eVision (Epidemic Vision) is a software using Long Short-Term Memory (LSTM) neural networks under research and development by Santa Clara University's EPIC (Ethical, Pragmatic, and Intelligent Computing) and Bioinnovation & Design labs to predict the trend of influenza cases throughout the flu season using data from the CDC, WHO, and Google Trends in order to help pharmaceuticals decide on the ramping up or down of their development of tester kits, vaccines, and medicines weeks in advance.
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