基于神经网络的新冠肺炎疫情过程预测模型

Q3 Computer Science Radioelectronic and Computer Systems Pub Date : 2022-11-29 DOI:10.32620/reks.2022.4.01
Serhii Krivtsov, I. Meniailov, K. Bazilevych, D. Chumachenko
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引用次数: 2

摘要

COVID-19大流行已经持续了近三年,表明公共卫生系统还没有准备好应对这样的挑战。在卫生保健部门面临的压力急剧增加的情况下,各国政府在卫生保健部门采取的措施包括遏制病毒的传播和扩散,为医疗保健提供足够的空间,确保提供检测设施和医疗保健,以及动员和再培训医务人员。疫情改变了政府和商业流程,使经济和医疗保健数字化。全球挑战刺激了数据驱动的医学研究。对传染过程的流行过程进行预测,就有可能评估即将到来的大流行的规模,从而规划必要的控制措施。本研究建立了基于神经网络的新冠肺炎流行过程模型,对其动态进行预测。以COVID-19为例,研究传染病的流行过程。研究课题是基于神经网络的流行病过程仿真方法和模型。在此基础上,建立了基于神经网络的新型冠状病毒流行过程仿真模型。模型显示出较高的准确率,根据预测周期的不同,德国为93.11% ~ 93.96%,日本为95.53% ~ 95.54%,韩国为97.49% ~ 98.43%,乌克兰为93.34% ~ 94.18%。对绝对误差的评估证实,该模型可用于医疗保健实践,以制定控制措施,以遏制COVID-19大流行。这项研究各自的贡献是双重的。首先,基于神经网络方法的模型的开发将允许估计这些方法应用于COVID-19流行过程模拟的准确性。其次,将开发的模型应用于四个国家的数据,对实验研究进行调查,将有助于实证评估其应用于COVID-19以及其他传染病模拟的有效性。结论。该研究的意义在于,为流行病学家和其他公共卫生工作者提供的自动化决策支持系统可以提高抗疫决策的效率。这项研究是特别相关的背景下,俄罗斯在乌克兰的战争升级时,医疗系统的资源是有限的。
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Predictive model of COVID-19 epidemic process based on neural network
The COVID-19 pandemic, which has been going on for almost three years, has shown that public health systems are not ready for such a challenge. Measures taken by governments in the healthcare sector in the context of a sharp increase in the pressure on it include containment of the transmission and spread of the virus, providing sufficient space for medical care, ensuring the availability of testing facilities and medical care, and mobilizing and retraining medical personnel. The pandemic has changed government and business processes, digitalizing the economy and healthcare. Global challenges have stimulated data-driven medicine research. Forecasting the epidemic process of infectious processes would make it possible to assess the scale of the impending pandemic to plan the necessary control measures. The study builds a model of the COVID-19 epidemic process to predict its dynamics based on neural networks. The target of the research is the infectious diseases epidemic process in the example of COVID-19. The research subjects are the methods and models of epidemic process simulation based on neural networks. As a result of this research, a simulation model of COVID-19 epidemic process based on a neural network was built. The model showed high accuracy: from 93.11% to 93.96% for Germany, from 95.53% to 95.54% for Japan, from 97.49% to 98.43% for South Korea, from 93.34% up to 94.18% for Ukraine, depending on the forecasting period. The assessment of absolute errors confirms that the model can be used in healthcare practice to develop control measures to contain the COVID-19 pandemic. The respective contribution of this research is two-fold. Firstly, the development of models based on the neural network approach will allow estimate the accuracy of such methods applied to the simulation of the COVID-19 epidemic process. Secondly, an investigation of the experimental study with a developed model applied to data from four countries will contribute to empirical evaluation of the effectiveness of its application not only to COVID-19 but also to other infectious diseases simulations. Conclusions. The research’s significance lies in the fact that automated decision support systems for epidemiologists and other public health workers can improve the efficiency of making anti-epidemic decisions. This study is especially relevant in the context of the escalation of the Russian war in Ukraine when the healthcare system's resources are limited.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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