Roberts M G
Infectious Disease Research Centre, Institute of Information and Mathematical Sciences, New Zealand Institute for Advanced Study, Massey University, Private Bag 102904, North Shore Mail Centre, Auckland, New Zealand.
J Math Biol. 2013 Jun;66(7):1463-74. doi: 10.1007/s00285-012-0540-y. Epub 2012 May 5.
One of the first quantities to be estimated at the start of an epidemic is the basic reproduction number, R₀. The progress of an epidemic is sensitive to the value of R₀, hence we need methods for exploring the consequences of uncertainty in the estimate. We begin with an analysis of the SIR model, with R₀ specified by a probability distribution instead of a single value. We derive probability distributions for the prevalence and incidence of infection during the initial exponential phase, the peaks in prevalence and incidence and their timing, and the final size of the epidemic. Then, by expanding the state variables in orthogonal polynomials in uncertainty space, we construct a set of deterministic equations for the distribution of the solution throughout the time-course of the epidemic. The resulting dynamical system need only be solved once to produce a deterministic stochastic solution. The method is illustrated with R₀ specified by uniform, beta and normal distributions. We then apply the method to data from the New Zealand epidemic of H1N1 influenza in 2009. We apply the polynomial expansion method to a Kermack-McKendrick model, to simulate a forecasting system that could be used in real time. The results demonstrate the level of uncertainty when making parameter estimates and projections based on a limited amount of data, as would be the case during the initial stages of an epidemic. In solving both problems we demonstrate how the dynamical system is derived automatically via recurrence relationships, then solved numerically.
在疫情开始时需要估计的首批量之一是基本再生数(R₀)。疫情的发展对(R₀)的值很敏感,因此我们需要探索估计值不确定性后果的方法。我们首先分析SIR模型,其中(R₀)由概率分布而非单个值指定。我们推导出初始指数阶段感染流行率和发病率、流行率和发病率峰值及其出现时间以及疫情最终规模的概率分布。然后,通过在不确定性空间中用正交多项式展开状态变量,我们构建了一组确定性方程,用于描述疫情整个时间过程中解的分布。由此产生的动态系统只需求解一次就能得到确定性的随机解。该方法通过由均匀分布、贝塔分布和正态分布指定的(R₀)进行了说明。然后,我们将该方法应用于2009年新西兰甲型H1N1流感疫情的数据。我们将多项式展开方法应用于Kermack-McKendrick模型,以模拟一个可实时使用的预测系统。结果表明,在基于有限数据进行参数估计和预测时(如在疫情初期的情况)存在的不确定性水平。在解决这两个问题时,我们展示了如何通过递归关系自动推导动态系统,然后进行数值求解。