Data-Driven Deep-Learning Algorithm for Asymptomatic COVID-19 Model with Varying Mitigation Measures and Transmission Rate.

K D Olumoyin, A Q M Khaliq, K M Furati
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引用次数: 0

Abstract

Epidemiological models with constant parameters may not capture satisfactory infection patterns in the presence of pharmaceutical and non-pharmaceutical mitigation measures during a pandemic, since infectiousness is a function of time. In this paper, an Epidemiology-Informed Neural Network algorithm is introduced to learn the time-varying transmission rate for the COVID-19 pandemic in the presence of various mitigation scenarios. There are asymptomatic infectives, mostly unreported, and the proposed algorithm learns the proportion of the total infective individuals that are asymptomatic infectives. Using cumulative and daily reported cases of the symptomatic infectives, we simulate the impact of non-pharmaceutical mitigation measures such as early detection of infectives, contact tracing, and social distancing on the basic reproduction number. We demonstrate the effectiveness of vaccination on the transmission of COVID-19. The accuracy of the proposed algorithm is demonstrated using error metrics in the data-driven simulation for COVID-19 data of Italy, South Korea, the United Kingdom, and the United States.

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针对无症状 COVID-19 模型的数据驱动深度学习算法,具有不同的缓解措施和传播率。
由于传染性是时间的函数,因此在大流行期间采取药物和非药物缓解措施时,参数恒定的流行病学模型可能无法捕捉到令人满意的感染模式。本文介绍了一种流行病学信息神经网络算法,用于学习 COVID-19 大流行在各种缓解方案下的时变传播率。无症状感染者大多未被报告,所提出的算法可了解无症状感染者在感染者总数中所占的比例。利用无症状感染者的累积病例和每日报告病例,我们模拟了非药物缓解措施对基本繁殖数量的影响,如早期发现感染者、追踪接触者和拉开社会距离。我们证明了接种疫苗对 COVID-19 传播的有效性。在对意大利、韩国、英国和美国的 COVID-19 数据进行的数据驱动模拟中,我们使用误差指标证明了所提算法的准确性。
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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CiteScore
3.60
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0.00%
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审稿时长
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