Finkenstädt B F, Morton A, Rand D A
Department of Statistics, University of Warwick, Coventry CV4 7AL, UK.
Stat Med. 2005 Nov 30;24(22):3447-61. doi: 10.1002/sim.2196.
Since influenza in humans is a major public health threat, the understanding of its dynamics and evolution, and improved prediction of its epidemics are important aims. Underlying its multi-strain structure is the evolutionary process of antigenic drift whereby epitope mutations give mutant virions a selective advantage. While there is substantial understanding of the molecular mechanisms of antigenic drift, until now there has been no quantitative analysis of this process at the population level. The aim of this study is to develop a predictive model that is of a modest-enough structure to be fitted to time series data on weekly flu incidence. We observe that the rate of antigenic drift is highly non-uniform and identify several years where there have been antigenic surges where a new strain substantially increases infective pressure. The SIR-S approach adopted here can also be shown to improve forecasting in comparison to conventional methods.
由于人类流感是对公共卫生的重大威胁,了解其动态变化与进化过程以及改进对其流行情况的预测是重要目标。其多毒株结构的基础是抗原漂移的进化过程,通过该过程表位突变赋予突变病毒粒子选择优势。虽然对抗原漂移的分子机制已有充分了解,但迄今为止,尚未在群体水平上对这一过程进行定量分析。本研究的目的是开发一种预测模型,其结构足够适度,能够拟合每周流感发病率的时间序列数据。我们观察到抗原漂移率极不均匀,并确定了出现抗原激增的若干年份,此时新毒株大幅增加了感染压力。与传统方法相比,这里采用的SIR-S方法也能改善预测效果。