新冠肺炎流行模型中缺少复杂的社交网络

Q3 Social Sciences
Gianluca Manzo
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引用次数: 35

摘要

在新冠肺炎危机中,划分模型在很大程度上被用于预测感染和死亡的宏观动态,并评估旨在遏制人与人之间传染的微观动态的不同非药物干预措施。有证据表明,这些模型的预测受到高度不确定性的影响。然而,预测和干预措施之间的联系很少受到质疑,公共辩论中也没有对干预措施对模型假设的依赖性进行批判性审查。在这篇文章中,我研究了在当前危机中如此有影响力的分区流行病模型的构建块。仔细观察表明,这些模型只能导致一种类型的干预,即对人群的大部分子集甚至整个人群漠不关心的干预。这是因为他们在观察病毒传播时没有对社会互动的拓扑结构进行建模。因此,他们无法评估任何有针对性的干预措施,这些干预措施可以通过手术隔离特定个体和/或切断特定的人与人之间的传播途径。如果认真考虑复杂的社会网络,可以探索更复杂的干预措施,适用于具有预期集体利益的特定类别或群体。在文章的最后一节,我概述了一个研究议程,以推广新一代网络驱动的流行病模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complex Social Networks are Missing in the Dominant COVID-19 Epidemic Models
In the COVID-19 crisis, compartmental models have been largely used to predict the macroscopic dynamics of infections and deaths and to assess different non-pharmaceutical interventions aimed to contain the microscopic dynamics of person-to-person contagions. Evidence shows that the predictions of these models are affected by high levels of uncertainty. However, the link between predictions and interventions is rarely questioned and a critical scrutiny of the dependency of interventions on model assumptions is missing in public debate. In this article, I have examined the building blocks of compartmental epidemic models so influential in the current crisis. A close look suggests that these models can only lead to one type of intervention, i.e., interventions that indifferently concern large subsets of the population or even the overall population. This is because they look at virus diffusion without modelling the topology of social interactions. Therefore, they cannot assess any targeted interventions that could surgically isolate specific individuals and/or cutting particular person-to-person transmission paths. If complex social networks are seriously considered, more sophisticated interventions can be explored that apply to specific categories or set of individuals with expected collective benefits. In the last section of the article, I sketch a research agenda to promote a new generation of network-driven epidemic models.
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来源期刊
Sociologia, Problemas e Praticas
Sociologia, Problemas e Praticas Social Sciences-Social Sciences (miscellaneous)
CiteScore
0.70
自引率
0.00%
发文量
23
审稿时长
16 weeks
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