Department of Mathematics, University of Sussex, Falmer, Brighton, BN1 9QH, UK.
Department of Mathematics, University of Sussex, Falmer, Brighton, BN1 9QH, UK; Big Data Institute, Nuffield Department of Medicine, University of Oxford, Oxford, OX3 7FL, UK.
Math Biosci. 2022 Aug;350:108854. doi: 10.1016/j.mbs.2022.108854. Epub 2022 Jun 2.
We predict the future course of ongoing susceptible-infected-susceptible (SIS) epidemics on regular, Erdős-Rényi and Barabási-Albert networks. It is known that the contact network influences the spread of an epidemic within a population. Therefore, observations of an epidemic, in this case at the population-level, contain information about the underlying network. This information, in turn, is useful for predicting the future course of an ongoing epidemic. To exploit this in a prediction framework, the exact high-dimensional stochastic model of an SIS epidemic on a network is approximated by a lower-dimensional surrogate model. The surrogate model is based on a birth-and-death process; the effect of the underlying network is described by a parametric model for the birth rates. We demonstrate empirically that the surrogate model captures the intrinsic stochasticity of the epidemic once it reaches a point from which it will not die out. Bayesian parameter inference allows for uncertainty about the model parameters and the class of the underlying network to be incorporated directly into probabilistic predictions. An evaluation of a number of scenarios shows that in most cases the resulting prediction intervals adequately quantify the prediction uncertainty. As long as the population-level data is available over a long-enough period, even if not sampled frequently, the model leads to excellent predictions where the underlying network is correctly identified and prediction uncertainty mainly reflects the intrinsic stochasticity of the spreading epidemic. For predictions inferred from shorter observational periods, uncertainty about parameters and network class dominate prediction uncertainty. The proposed method relies on minimal data at population-level, which is always likely to be available. This, combined with its numerical efficiency, makes the proposed method attractive to be used either as a standalone inference and prediction scheme or in conjunction with other inference and/or predictive models.
我们预测了在规则、Erdős-Rényi 和 Barabási-Albert 网络上进行的持续易感染-感染-易感染(SIS)传染病的未来进程。众所周知,接触网络会影响传染病在人群中的传播。因此,对传染病的观察,在这种情况下是在人群层面上,包含了有关潜在网络的信息。反过来,这些信息对于预测正在进行的传染病的未来进程很有用。为了在预测框架中利用这一点,我们通过一个低维替代模型来近似 SIS 传染病在网络上的精确高维随机模型。该替代模型基于出生和死亡过程;底层网络的影响由出生率的参数模型来描述。我们通过实证证明,一旦传染病达到不会消亡的地步,替代模型就可以捕捉到传染病的内在随机性。贝叶斯参数推断允许将模型参数和底层网络类别的不确定性直接纳入概率预测中。对许多场景的评估表明,在大多数情况下,所得的预测区间能够充分量化预测不确定性。只要在足够长的时间内获得人群水平的数据,即使不是频繁采样,该模型也可以得出很好的预测结果,其中正确识别了底层网络,预测不确定性主要反映了传播传染病的内在随机性。对于从较短观察期推断出的预测,参数和网络类别的不确定性主导了预测不确定性。所提出的方法依赖于人群水平的最少数据,而这些数据总是有可能获得的。这一点,加上其数值效率,使得所提出的方法具有吸引力,可以作为独立的推断和预测方案使用,也可以与其他推断和/或预测模型结合使用。