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基于有向图理论的新发传染病防控区域风险分类方法研究。

Study on the regional risk classification method for the prevention and control of emerging infectious diseases based on directed graph theory.

机构信息

School of Science, Xi'an University of Architecture and Technology, Xi'an, China.

School of Economics and Statistics, Guangzhou University, Guangzhou, China.

出版信息

Front Public Health. 2023 Sep 25;11:1211291. doi: 10.3389/fpubh.2023.1211291. eCollection 2023.

Abstract

BACKGROUND

Emerging infectious diseases are a class of diseases that are spreading rapidly and are highly contagious. It seriously affects social stability and poses a significant threat to human health, requiring urgent measures to deal with them. Its outbreak will very easily lead to the large-scale spread of the virus, causing social problems such as work stoppages and traffic control, thereby causing social panic and psychological unrest, affecting human activities and social stability, and even endangering lives. It is essential to prevent and control the spread of infectious diseases effectively.

PURPOSE

We aim to propose an effective method to classify the risk level of a new epidemic region by using graph theory and risk classification methods to provide a theoretical reference for the comprehensive evaluation and determination of epidemic prevention and control, as well as risk level classification.

METHODS

Using the graph theory method, we first define the network structure of social groups and construct the risk transmission network of the new epidemic region. Then, combined with the risk classification method, the classification of high, medium, and low risk levels of the new epidemic region is discussed from two cases with common and looped graph nodes, respectively. Finally, the reasonableness of the classification method is verified by simulation data.

RESULTS

The directed weighted scale-free network can better describe the transmission law of an epidemic. Moreover, the proposed method of classifying the risk level of a region by using the correlation function between two regions and the risk value of the regional nodes can effectively evaluate the risk level of different regions in the new epidemic region. The experiments show that the number of medium and high risk nodes shows no increasing trend. The number of high-risk regions is relatively small compared to medium-risk regions, and the number of low-risk regions is the largest.

CONCLUSIONS

It is necessary to distinguish scientifically between the risk level of the epidemic area and the neighboring regions so that the constructed social network model of the epidemic region's spread risk can better describe the spread of the epidemic risk in the social network relations.

摘要

背景

新发传染病是一类传播迅速且具有高度传染性的疾病。它严重影响社会稳定,对人类健康构成重大威胁,需要采取紧急措施加以应对。其爆发非常容易导致病毒的大规模传播,引起停工、交通管制等社会问题,从而引发社会恐慌和心理不安,影响人类活动和社会稳定,甚至危及生命。有效防控传染病的传播至关重要。

目的

我们旨在提出一种利用图论和风险分类方法对新发疫区风险等级进行有效分类的方法,为传染病防控的综合评价和确定以及风险等级分类提供理论参考。

方法

利用图论方法,首先定义社会群体的网络结构,构建新发疫区的风险传播网络。然后,结合风险分类方法,分别从常见和有环图节点两种情况讨论新发疫区高、中、低风险等级的分类。最后,通过模拟数据验证分类方法的合理性。

结果

有向加权无标度网络可以更好地描述传染病的传播规律。此外,提出的利用两个区域之间的相关函数和区域节点的风险值来划分区域风险水平的方法可以有效地评估新发疫区不同区域的风险水平。实验表明,中、高风险节点的数量没有呈现出增加的趋势。中危区域的数量相对于高危区域较少,而低危区域的数量最多。

结论

有必要科学地区分疫区和周边地区的风险水平,以便构建的疫区传播风险社会网络模型能够更好地描述社会网络关系中疫区风险的传播。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ec85/10561095/e64d351d1431/fpubh-11-1211291-g0001.jpg

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