探索手足口病热点识别的双部网络方法

Chin-Ying Liew, Nor Shamira Sabri, B. H. Hong, J. Labadin
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引用次数: 0

摘要

手足口病(手足口病)的数学建模主要集中在隔室建模方法上。它将人口划分为不同的区域,并假设每个人都有平等的机会接触人口中的其他个体。然而,手足口病的传播是复杂的、动态的,生物医学和社会因素相互交织。描述涉及高维空间的疾病传播动态在数学上具有挑战性。图论二部网络建模(BNM)方法有可能通过抽象现实世界的疾病传播系统并结合二部节点的个体特征来处理这一挑战。本研究旨在抓住BNM方法在捕获疾病传播系统内实体的异质特征方面所描绘的优势。它打算探索在马来西亚古晋采用BNM方法来模拟手足口病的传播,并通过采用BNM方法来确定热点,该方法包括从BNM方法框架改编的四阶段方法。手足口病接触(BHC)网络是由位置和人节点组成的基本构建块组成的。位置和人体节点的各个参数被合并。由此形成的BHC网络包括10个人类节点、20个位置节点和23条边。然后,识别出6个排名靠前的位置节点,并与选定的基准系统进行匹配。因此,通过确定位置节点排名来确定潜在的手足口病热点。这项研究的结果使公共卫生当局和相关政策制定者能够及时有效地制定相应的措施和政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Bipartite Network Approach in Hand, Foot and Mouth Disease Hotspot Identification
Mathematical modeling of hand, foot, and mouth disease (HFMD) mainly focuses on compartmental modeling approaches. It classifies human population into compartments and assumes homogeneity that regards every human has equal chance of contacting other individuals in the population. However, the transmission of HFMD is complicated and dynamic with the interactions of the intertwined biomedical and social factors. Describing the disease transmission dynamic that involves high-dimensional space is mathematically challenging. The graph theoretic bipartite network modeling (BNM) approach has the potential to handle this challenge by abstracting the real-world disease transmission system and incorporating the individual features of the bipartite nodes. This study aims to seize the advantages portrayed by the BNM approach in capturing the heterogeneous features of the entities within a disease transmission system. It intends to explore adopting the BNM approach in modeling the transmission of HFMD at Kuching, Malaysia and identify the hotspot by employing the BNM approach comprising a four-stage methodology adapted from the BNM methodology framework. The bipartite HFMD contact (BHC) network is formulated with the basic building block consisting of the location and human nodes. The individual parameters of the location and human node are incorporated. The resulting BHC network formulated comprises 10 human nodes, 20 location nodes, and 23 edges. Then, six top-ranked location nodes were identified and agreed with the chosen benchmark system. The potential HFMD hotspots are thus identified by determining the location nodes ranking. The result from this study has enabled timely and effective measures and policies to be customized accordingly by the public health authorities and related policymakers.
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