Holm Einar, Timpka Toomas
Department of Social and Economic Geography, Umeå University, Sweden.
Stud Health Technol Inform. 2007;129(Pt 1):464-8.
The World Health Organization urges all nations to develop and maintain national influenza preparedness plans. Important components of such plans are forecasts of morbidity and mortality based on local social and geographic conditions. Most methodologies for simulations of epidemic outbreaks are implicitly based on the assumption that the frequency and duration of social contacts that lead to disease transmission is affected by geography, i.e. the spatial distribution of physical meeting places. In order to increase the effectiveness of the present methods for simulation of infectious disease outbreaks, the aim of this study is to examine two social geographic issues related to such models. We display how the social geographic characteristics of mixing networks, in particular when these significantly deviate from the random-mixing norm, can be represented in order to enhance the understanding and prediction of epidemic patterns in light of a possible future destructive influenza pandemic. We conclude that social geography, social networks and simulation models of directly transmitted infectious diseases are fundamentally linked.
世界卫生组织敦促所有国家制定并维持国家流感防范计划。此类计划的重要组成部分是基于当地社会和地理条件对发病率和死亡率的预测。大多数模拟疫情爆发的方法都隐含地基于这样一种假设,即导致疾病传播的社会接触的频率和持续时间受地理因素影响,也就是实际聚会场所的空间分布。为了提高当前传染病爆发模拟方法的有效性,本研究的目的是考察与此类模型相关的两个社会地理问题。我们展示了混合网络的社会地理特征,特别是当这些特征显著偏离随机混合常态时,如何能够被呈现出来,以便在未来可能发生的毁灭性流感大流行的情况下,增强对疫情模式的理解和预测。我们得出结论,社会地理学、社会网络和直接传播传染病的模拟模型在根本上是相互关联的。