论文标题

一种自我监督的神经分析方法,可预测罗马尼亚的Covid-19

A self-supervised neural-analytic method to predict the evolution of COVID-19 in Romania

论文作者

Stochiţoiu, Radu D., Petrica, Marian, Rebedea, Traian, Popescu, Ionel, Leordeanu, Marius

论文摘要

必须分析和理解Covid-19的大流行的传播和演变必须能够设计最佳的社会和医疗政策,预见其结果并处理随后的所有社会经济效应。我们从计算和机器学习的角度解决了这个重要问题。更具体地说,我们希望在统计上估算新的冠状病毒Covid-19的所有相关参数,例如基于罗马尼亚患者的繁殖数量,死亡率或传染性期的长度,并能够预测未来的结果。这项工作很重要,因为众所周知,这些因素在全球各不相同,并且可能取决于许多原因,包括社会,医疗,年龄和遗传因素。我们使用最近发布的改进版SEIR,这是经典的传染病模型。我们想根据唯一可靠的真实测量值(即死亡人数)来推断罗马尼亚大流行的演变的模型的所有参数。一旦估算了模型参数,我们就可以预测所有其他相关措施,例如暴露和感染者的数量。为此,我们提出了一种自制的方法来训练一个深度卷积网络,以猜测正确的修改模型参数,鉴于观察到的日常死亡人数数量。然后,我们使用随机坐标下降方法来完善溶液。我们将深度学习优化方案与经典的网格搜索方法进行了比较,并在计算时间和预测准确性方面都显示出很大的改善。我们发现罗马尼亚的死亡率的乐观结果可能约为0.3%,我们还证明了我们的模型能够正确预测未来最多三周的日常死亡人数。

Analysing and understanding the transmission and evolution of the COVID-19 pandemic is mandatory to be able to design the best social and medical policies, foresee their outcomes and deal with all the subsequent socio-economic effects. We address this important problem from a computational and machine learning perspective. More specifically, we want to statistically estimate all the relevant parameters for the new coronavirus COVID-19, such as the reproduction number, fatality rate or length of infectiousness period, based on Romanian patients, as well as be able to predict future outcomes. This endeavor is important, since it is well known that these factors vary across the globe, and might be dependent on many causes, including social, medical, age and genetic factors. We use a recently published improved version of SEIR, which is the classic, established model for infectious diseases. We want to infer all the parameters of the model, which govern the evolution of the pandemic in Romania, based on the only reliable, true measurement, which is the number of deaths. Once the model parameters are estimated, we are able to predict all the other relevant measures, such as the number of exposed and infectious people. To this end, we propose a self-supervised approach to train a deep convolutional network to guess the correct set of Modified-SEIR model parameters, given the observed number of daily fatalities. Then, we refine the solution with a stochastic coordinate descent approach. We compare our deep learning optimization scheme with the classic grid search approach and show great improvement in both computational time and prediction accuracy. We find an optimistic result in the case fatality rate for Romania which may be around 0.3% and we also demonstrate that our model is able to correctly predict the number of daily fatalities for up to three weeks in the future.

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