Effect of individual activity level heterogeneity on disease spreading in higher-order networks.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Ming Li, Liang'an Huo, Xiaoxiao Xie, Yafang Dong
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Abstract

The active state of individuals has a significant impact on disease spread dynamics. In addition, pairwise interactions and higher-order interactions coexist in complex systems, and the pairwise networks proved insufficient for capturing the essence of complex systems. Here, we propose a higher-order network model to study the effect of individual activity level heterogeneity on disease-spreading dynamics. Activity level heterogeneity radically alters the dynamics of disease spread in higher-order networks. First, the evolution equations for infected individuals are derived using the mean field method. Second, numerical simulations of artificial networks reveal that higher-order interactions give rise to a discontinuous phase transition zone where the coexistence of health and disease occurs. Furthermore, the system becomes more unstable as individual activity levels rise, leading to a higher likelihood of disease outbreaks. Finally, we simulate the proposed model on two real higher-order networks, and the results are consistent with the artificial networks and validate the inferences from theoretical analysis. Our results explain the underlying reasons why groups with higher activity levels are more likely to initiate social changes. Simultaneously, the reduction in group activity, characterized by measures such as "isolation," emerges as a potent strategy for disease control.

个体活动水平异质性对高阶网络中疾病传播的影响。
个体的活跃状态对疾病的传播动态有重大影响。此外,复杂系统中存在配对相互作用和高阶相互作用,而配对网络被证明不足以捕捉复杂系统的本质。在此,我们提出了一个高阶网络模型来研究个体活动水平异质性对疾病传播动态的影响。活动水平异质性从根本上改变了疾病在高阶网络中的传播动态。首先,利用均值场方法推导出受感染个体的演化方程。其次,对人工网络进行数值模拟后发现,高阶交互作用产生了一个不连续的相变区,在该区健康与疾病共存。此外,随着个体活动水平的提高,系统变得更加不稳定,导致疾病爆发的可能性增加。最后,我们在两个真实的高阶网络上模拟了所提出的模型,结果与人工网络一致,并验证了理论分析的推论。我们的研究结果解释了活动水平较高的群体更有可能发起社会变革的根本原因。同时,以 "隔离 "等措施为特征的群体活动减少也成为一种有效的疾病控制策略。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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