利用动态贝叶斯网络和向量自回归移动平均模型构建流感样疾病的空间传播网络。
Spatial transmission network construction of influenza-like illness using dynamic Bayesian network and vector-autoregressive moving average model.
机构信息
Department of Epidemiology and Health Statistics, West China School of Public Health and West China Fourth Hospital, Sichuan University, Chengdu, Sichuan, China.
Sichuan Center for Disease Control and Prevention, Chengdu, China.
出版信息
BMC Infect Dis. 2021 Feb 10;21(1):164. doi: 10.1186/s12879-021-05769-6.
BACKGROUND
Although vaccination is one of the main countermeasures against influenza epidemic, it is highly essential to make informed prevention decisions to guarantee that limited vaccination resources are allocated to the places where they are most needed. Hence, one of the fundamental steps for decision making in influenza prevention is to characterize its spatio-temporal trend, especially on the key problem about how influenza transmits among adjacent places and how much impact the influenza of one place could have on its neighbors. To solve this problem while avoiding too much additional time-consuming work on data collection, this study proposed a new concept of spatio-temporal route as well as its estimation methods to construct the influenza transmission network.
METHODS
The influenza-like illness (ILI) data of Sichuan province in 21 cities was collected from 2010 to 2016. A joint pattern based on the dynamic Bayesian network (DBN) model and the vector autoregressive moving average (VARMA) model was utilized to estimate the spatio-temporal routes, which were applied to the two stages of learning process respectively, namely structure learning and parameter learning. In structure learning, the first-order conditional dependencies approximation algorithm was used to generate the DBN, which could visualize the spatio-temporal routes of influenza among adjacent cities and infer which cities have impacts on others in influenza transmission. In parameter learning, the VARMA model was adopted to estimate the strength of these impacts. Finally, all the estimated spatio-temporal routes were put together to form the final influenza transmission network.
RESULTS
The results showed that the period of influenza transmission cycle was longer in Western Sichuan and Chengdu Plain than that in Northeastern Sichuan, and there would be potential spatio-temporal routes of influenza from bordering provinces or municipalities into Sichuan province. Furthermore, this study also pointed out several estimated spatio-temporal routes with relatively high strength of associations, which could serve as clues of hot spot areas detection for influenza surveillance.
CONCLUSIONS
This study proposed a new framework for exploring the potentially stable spatio-temporal routes between different places and measuring specific the sizes of transmission effects. It could help making timely and reliable prediction of the spatio-temporal trend of infectious diseases, and further determining the possible key areas of the next epidemic by considering their neighbors' incidence and the transmission relationships.
背景
尽管接种疫苗是应对流感疫情的主要措施之一,但为了确保有限的疫苗资源分配到最需要的地方,做出明智的预防决策至关重要。因此,流感预防决策的基本步骤之一是描述其时空趋势,特别是解决流感在相邻地区之间传播的关键问题,以及一个地方的流感对其邻居的影响有多大。为了解决这个问题,同时避免在数据收集上花费太多额外的时间,本研究提出了时空路径的新概念及其估计方法,以构建流感传播网络。
方法
收集了 2010 年至 2016 年四川省 21 个城市的流感样病例(ILI)数据。采用基于动态贝叶斯网络(DBN)模型和向量自回归移动平均(VARMA)模型的联合模式来估计时空路径,该模式分别应用于学习过程的两个阶段,即结构学习和参数学习。在结构学习中,采用一阶条件依赖近似算法生成 DBN,该方法可以可视化流感在相邻城市之间的时空路径,并推断出在流感传播中哪些城市对其他城市有影响。在参数学习中,采用 VARMA 模型来估计这些影响的强度。最后,将所有估计的时空路径放在一起,形成最终的流感传播网络。
结果
结果表明,川西和成都平原的流感传播周期比川东北长,而且可能有来自毗邻省份或直辖市的流感潜在时空路径传入四川省。此外,本研究还指出了一些具有较高关联强度的估计时空路径,这些路径可以作为流感监测热点地区检测的线索。
结论
本研究提出了一种新的框架,用于探索不同地点之间潜在稳定的时空路径,并测量特定的传播效应大小。它可以帮助对传染病的时空趋势进行及时、可靠的预测,并通过考虑相邻地区的发病率和传播关系,进一步确定下一次疫情的可能关键地区。