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Estimating in Real Time the Efficacy of Measures to Control Emerging Communicable Diseases

机译:实时估计控制新兴传染病的措施的有效性

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摘要

Controlling an emerging communicable disease requires prompt adoption of measures such as quarantine. Assessment of the efficacy of these measures must be rapid as well. In this paper, the authors present a framework to monitor the efficacy of control measures in real time. Bayesian estimation of the reproduction number R (mean number of cases generated by a single infectious person) during an outbreak allows them to judge rapidly whether the epidemic is under control (R < 1). Only counts and time of onset of symptoms, plus tracing information from a subset of cases, are required. Markov chain Monte Carlo and Monte Carlo sampling are used to infer the temporal pattern of R up to the last observation. The operating characteristics of the method are investigated in a simulation study of severe acute respiratory syndrome–like outbreaks. In this particular setting, control measures lacking efficacy (R ≥ 1.1) could be detected after 2 weeks in at least 70% of the epidemics, with less than a 5% probability of a wrong conclusion. When control measures are efficacious (R = 0.5), this situation may be evidenced in 68% of the epidemics after 2 weeks and 92% of the epidemics after 3 weeks, with less than a 5% probability of a wrong conclusion.
机译:控制新出现的传染病需要迅速采取检疫等措施。还必须快速评估这些措施的有效性。在本文中,作者提出了一个实时监控控制措施有效性的框架。暴发期间贝叶斯对繁殖数量R(单个感染者产生的病例的平均数量)的估计使他们能够迅速判断该流行病是否受到控制(R <1)。仅需要症状发作的次数和时间,以及部分病例的追踪信息。马尔可夫链蒙特卡洛和蒙特卡洛采样被用来推断R的时间模式,直到最后一次观察。该方法的操作特性在严重急性呼吸道综合征样暴发的模拟研究中进行了研究。在这种特殊情况下,至少有70%的流行病在2周后可以检测到缺乏疗效(R≥1.1)的控制措施,错误结论的可能性小于5%。当有效的控制措施时(R = 0.5),这种情况可能在2周后的68%的流行病和3周后的92%的流行病中得到证明,错误结论的可能性小于5%。

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  • 来源
    《American Journal of Epidemiology》 |2006年第6期|591-597|共7页
  • 作者单位

    Department of Infectious Disease Epidemiology Faculty of Medicine Imperial College London London United Kingdom;

    Université Pierre et Marie Curie–Paris 6 UMR-S 707 Paris France;

    INSERM Epidemiology Information Systems and Modeling (UMR-S 707) Paris France;

    Assistance Publique-Hôpitaux de Paris Hôpital Saint-Antoine Department of Public Health Paris France;

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