Colizza Vittoria, Barrat Alain, Barthélemy Marc, Vespignani Alessandro
Complex Networks Lagrange Laboratory (CNLL), Institute for Scientific Interchange (ISI) Foundation, Turin, Italy.
BMC Med. 2007 Nov 21;5:34. doi: 10.1186/1741-7015-5-34.
The global spread of the severe acute respiratory syndrome (SARS) epidemic has clearly shown the importance of considering the long-range transportation networks in the understanding of emerging diseases outbreaks. The introduction of extensive transportation data sets is therefore an important step in order to develop epidemic models endowed with realism.
We develop a general stochastic meta-population model that incorporates actual travel and census data among 3 100 urban areas in 220 countries. The model allows probabilistic predictions on the likelihood of country outbreaks and their magnitude. The level of predictability offered by the model can be quantitatively analyzed and related to the appearance of robust epidemic pathways that represent the most probable routes for the spread of the disease.
In order to assess the predictive power of the model, the case study of the global spread of SARS is considered. The disease parameter values and initial conditions used in the model are evaluated from empirical data for Hong Kong. The outbreak likelihood for specific countries is evaluated along with the emerging epidemic pathways. Simulation results are in agreement with the empirical data of the SARS worldwide epidemic.
The presented computational approach shows that the integration of long-range mobility and demographic data provides epidemic models with a predictive power that can be consistently tested and theoretically motivated. This computational strategy can be therefore considered as a general tool in the analysis and forecast of the global spreading of emerging diseases and in the definition of containment policies aimed at reducing the effects of potentially catastrophic outbreaks.
严重急性呼吸综合征(SARS)疫情的全球传播清楚地表明,在理解新出现的疾病暴发时考虑远程运输网络的重要性。因此,引入广泛的运输数据集是开发具有现实性的疫情模型的重要一步。
我们开发了一个通用的随机元种群模型,该模型纳入了220个国家3100个城市地区之间的实际旅行和人口普查数据。该模型可以对国家暴发的可能性及其规模进行概率预测。该模型提供的可预测性水平可以进行定量分析,并与代表疾病传播最可能途径的稳健疫情路径的出现相关联。
为了评估该模型的预测能力,我们考虑了SARS全球传播的案例研究。模型中使用的疾病参数值和初始条件根据香港的经验数据进行评估。评估了特定国家的暴发可能性以及新出现的疫情路径。模拟结果与SARS全球疫情的经验数据一致。
所提出的计算方法表明,远程流动性和人口数据的整合为疫情模型提供了一种可进行一致测试且有理论依据的预测能力。因此,这种计算策略可被视为分析和预测新出现疾病全球传播以及定义旨在减少潜在灾难性暴发影响的遏制政策的通用工具。