《PNAS,5月12日,Spread and dynamics of the COVID-19 epidemic in Italy: Effects of emergency containment measures》

  • 来源专题:COVID-19科研动态监测
  • 编译者: xuwenwhlib
  • 发布时间:2020-05-13
  • Spread and dynamics of the COVID-19 epidemic in Italy: Effects of emergency containment measures

    View ORCID ProfileMarino Gatto, View ORCID ProfileEnrico Bertuzzo, View ORCID ProfileLorenzo Mari, View ORCID ProfileStefano Miccoli, View ORCID ProfileLuca Carraro, View ORCID ProfileRenato Casagrandi, and Andrea Rinaldo

    PNAS May 12, 2020 117 (19) 10484-10491; first published April 23, 2020 https://doi.org/10.1073/pnas.2004978117

    Contributed by Andrea Rinaldo, April 6, 2020 (sent for review March 26, 2020; reviewed by Andy P. Dobson and Giorgi

    Abstract

    The spread of coronavirus disease 2019 (COVID-19) in Italy prompted drastic measures for transmission containment. We examine the effects of these interventions, based on modeling of the unfolding epidemic. We test modeling options of the spatially explicit type, suggested by the wave of infections spreading from the initial foci to the rest of Italy. We estimate parameters of a metacommunity Susceptible–Exposed–Infected–Recovered (SEIR)-like transmission model that includes a network of 107 provinces connected by mobility at high resolution, and the critical contribution of presymptomatic and asymptomatic transmission. We estimate a generalized reproduction number (R0 = 3.60 [3.49 to 3.84]), the spectral radius of a suitable next-generation matrix that measures the potential spread in the absence of containment interventions. The model includes the implementation of progressive restrictions after the first case confirmed in Italy (February 21, 2020) and runs until March 25, 2020. We account for uncertainty in epidemiological reporting, and time dependence of human mobility matrices and awareness-dependent exposure probabilities. We draw scenarios of different containment measures and their impact. Results suggest that the sequence of restrictions posed to mobility and human-to-human interactions have reduced transmission by 45% (42 to 49%). Averted hospitalizations are measured by running scenarios obtained by selectively relaxing the imposed restrictions and total about 200,000 individuals (as of March 25, 2020). Although a number of assumptions need to be reexamined, like age structure in social mixing patterns and in the distribution of mobility, hospitalization, and fatality, we conclude that verifiable evidence exists to support the planning of emergency measures.

  • 原文来源:https://www.pnas.org/content/117/19/10484
相关报告
  • 《PNAS,4月23日,Spread and dynamics of the COVID-19 epidemic in Italy: Effects of emergency containment measures》

    • 来源专题:COVID-19科研动态监测
    • 编译者:xuwenwhlib
    • 发布时间:2020-04-25
    • Spread and dynamics of the COVID-19 epidemic in Italy: Effects of emergency containment measures View ORCID ProfileMarino Gatto, View ORCID ProfileEnrico Bertuzzo, View ORCID ProfileLorenzo Mari, View ORCID ProfileStefano Miccoli, View ORCID ProfileLuca Carraro, View ORCID ProfileRenato Casagrandi, and Andrea Rinaldo PNAS first published April 23, 2020 https://doi.org/10.1073/pnas.2004978117 Abstract The spread of coronavirus disease 2019 (COVID-19) in Italy prompted drastic measures for transmission containment. We examine the effects of these interventions, based on modeling of the unfolding epidemic. We test modeling options of the spatially explicit type, suggested by the wave of infections spreading from the initial foci to the rest of Italy. We estimate parameters of a metacommunity Susceptible–Exposed–Infected–Recovered (SEIR)-like transmission model that includes a network of 107 provinces connected by mobility at high resolution, and the critical contribution of presymptomatic and asymptomatic transmission. We estimate a generalized reproduction number (R0 = 3.60 [3.49 to 3.84]), the spectral radius of a suitable next-generation matrix that measures the potential spread in the absence of containment interventions. The model includes the implementation of progressive restrictions after the first case confirmed in Italy (February 21, 2020) and runs until March 25, 2020. We account for uncertainty in epidemiological reporting, and time dependence of human mobility matrices and awareness-dependent exposure probabilities. We draw scenarios of different containment measures and their impact. Results suggest that the sequence of restrictions posed to mobility and human-to-human interactions have reduced transmission by 45% (42 to 49%). Averted hospitalizations are measured by running scenarios obtained by selectively relaxing the imposed restrictions and total about 200,000 individuals (as of March 25, 2020). Although a number of assumptions need to be reexamined, like age structure in social mixing patterns and in the distribution of mobility, hospitalization, and fatality, we conclude that verifiable evidence exists to support the planning of emergency measures.
  • 《5月12日_COVID-19传染病在意大利的传播和动态:紧急遏制措施的效果》

    • 来源专题:COVID-19科研动态监测
    • 编译者:zhangmin
    • 发布时间:2020-05-14
    • 1.时间:2020年5月12日 2.机构或团队:米兰理工大学、威尼斯大学、European Centre for Living Technology、瑞士联邦水生科学与技术研究所、苏黎世大学、洛桑理工学院、意大利帕多瓦大学 3.事件概要: 米兰理工大学、威尼斯大学等机构的科研人员在PNAS期刊发表题为“Spread and dynamics of the COVID-19 epidemic in Italy: Effects of emergency containment measures”的文章。 文章指出,COVID-19在意大利的传播促使采取严厉措施来遏制传播。研究人员基于展开的流行病建模,研究了这些干预措施的效果,测试了空间上明确类型的建模选项,估算了一个类似“易感-暴露-感染-恢复”(SEIR)的元社区传播模型的参数,该模型包括一个由107个省份通过高分辨率的移动连接的网络,以及症状发生前和无症状传播的关键作用。研究人员估计了一个广义的传染数(R0= 3.60 [3.49-3.84]),这是一个合适的下一代矩阵的谱半径,该矩阵可以衡量在没有遏制措施的情况下的潜在传播。该模型包括在意大利确诊第一例病例(2020年2月21日)后实施渐进式限制,并一直持续到2020年3月25日。研究人员考虑了流行病学报告的不确定性、人员流动矩阵的时间依赖性以及与意识相关的暴露概率,绘制了不同的遏制措施及其影响的场景。结果表明,对人员流动和人与人之间的互动所采取的一系列限制,已减少了45%的疾病传播(42%至49%)。避免住院治疗的人数是运行通过有选择地放宽限制而获得的场景来衡量的,总计约20万人(截至2020年3月25日)。尽管有一些假设需要重新考虑,例如社会混合模式中的年龄结构,以及年龄结构在流动性、住院和死亡的分布,但是研究人员认为,存在可验证的证据来支持紧急措施的规划。 4.附件: 原文链接:https://www.pnas.org/content/117/19/10484