Brett Tobias S, Drake John M, Rohani Pejman
Odum School of Ecology, University of Georgia, Athens, GA, USA
Center for the Ecology of Infectious Diseases, University of Georgia, Athens, GA, USA.
J R Soc Interface. 2017 Jul;14(132). doi: 10.1098/rsif.2017.0115.
In spite of medical breakthroughs, the emergence of pathogens continues to pose threats to both human and animal populations. We present candidate approaches for anticipating disease emergence prior to large-scale outbreaks. Through use of ideas from the theories of dynamical systems and stochastic processes we develop approaches which are not specific to a particular disease system or model, but instead have general applicability. The indicators of disease emergence detailed in this paper can be classified into two parallel approaches: a set of early-warning signals based around the theory of critical slowing down and a likelihood-based approach. To test the reliability of these two approaches we contrast theoretical predictions with simulated data. We find good support for our methods across a range of different model structures and parameter values.
尽管医学取得了突破,但病原体的出现继续对人类和动物群体构成威胁。我们提出了在大规模疫情爆发之前预测疾病出现的候选方法。通过运用动力系统理论和随机过程的思想,我们开发了一些方法,这些方法并非特定于某一特定疾病系统或模型,而是具有普遍适用性。本文详细阐述的疾病出现指标可分为两种并行方法:一组基于临界减缓理论的早期预警信号和一种基于似然性的方法。为了测试这两种方法的可靠性,我们将理论预测与模拟数据进行了对比。我们发现在一系列不同的模型结构和参数值下,我们的方法都得到了有力支持。