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Face To Face with Next Flu Pandemic with a Wiener-Series-Based Machine Learning: Fast Decisions to Tackle Rapid Spread

机译:通过基于Wiener系列的机器学习与下一次流感大流行面对面:解决快速传播的快速决策

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It's well known the potential arrival of the AH1N1 flu disease can be realized in any large city, as well as its unknown impact and consequences on the people. Depending upon the strength of the propagation of virus, clearly it might fade away any scheme of preparedness has been designed. The experience of the 2009 worldwide flu pandemic have served to improve and test newest methodologies that target to toughen the resilience of the public health systems. In this paper we focus on the usage of a Machine Learning algorithm as an advantageous computational system aimed to support fast and effective decisions in epochs where a flu virus has initialized its spreading in a large or middle- size city. For this end the algorithm uses the formalism of the Wiener series that allows us to estimate predictions and thus manage decisions through these computational methodologies. In order to test the efficiency of the algorithm we used the 2009 Peruvian data where the flu A(H1N1) was spreading in Lima city with a velocity of 40 cases per week. We present simulations by which the usage of Machine Learning algorithms might be of importance to minimize undesired errors and optimize resources of public health services on those epochs where the velocity of spreading and number of contagious reaches their top values.
机译:众所周知,AH1N1流感病毒的潜在到来可以在任何大城市中实现,而且它对人们的影响和后果是未知的。根据病毒传播的强度,很明显,它可能会消失,已经设计了任何防备方案。 2009年全球流感大流行的经验有助于改进和测试旨在加强公共卫生系统的抵御能力的最新方法。在本文中,我们着重于将机器学习算法用作有利的计算系统,以支持在流感病毒已初始化其在大中型城市中传播的时代做出快速而有效的决策。为此,该算法使用了维纳级数的形式,这使我们能够估计预测,从而通过这些计算方法来管理决策。为了测试该算法的效率,我们使用了2009年秘鲁的数据,其中甲型H1N1流感在利马市的传播速度为每周40例。我们提供了一些模拟,通过这些模拟,机器学习算法的使用对于减少不必要的错误和优化传播速度和传染性数量达到其最高值的时期的公共卫生服务资源的重要性。

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