Skolkovo Institute of Science and Technology, Moscow, 121205, Russia.
Department of Computer Science, University of Arizona, Tucson, AZ, 85721, USA.
Sci Rep. 2022 May 9;12(1):7599. doi: 10.1038/s41598-022-11705-8.
Hard-to-predict bursts of COVID-19 pandemic revealed significance of statistical modeling which would resolve spatio-temporal correlations over geographical areas, for example spread of the infection over a city with census tract granularity. In this manuscript, we provide algorithmic answers to the following two inter-related public health challenges of immense social impact which have not been adequately addressed (1) Inference Challenge assuming that there are N census blocks (nodes) in the city, and given an initial infection at any set of nodes, e.g. any N of possible single node infections, any [Formula: see text] of possible two node infections, etc, what is the probability for a subset of census blocks to become infected by the time the spread of the infection burst is stabilized? (2) Prevention Challenge What is the minimal control action one can take to minimize the infected part of the stabilized state footprint? To answer the challenges, we build a Graphical Model of pandemic of the attractive Ising (pair-wise, binary) type, where each node represents a census tract and each edge factor represents the strength of the pairwise interaction between a pair of nodes, e.g. representing the inter-node travel, road closure and related, and each local bias/field represents the community level of immunization, acceptance of the social distance and mask wearing practice, etc. Resolving the Inference Challenge requires finding the Maximum-A-Posteriory (MAP), i.e. most probable, state of the Ising Model constrained to the set of initially infected nodes. (An infected node is in the [Formula: see text] state and a node which remained safe is in the [Formula: see text] state.) We show that almost all attractive Ising Models on dense graphs result in either of the two possibilities (modes) for the MAP state: either all nodes which were not infected initially became infected, or all the initially uninfected nodes remain uninfected (susceptible). This bi-modal solution of the Inference Challenge allows us to re-state the Prevention Challenge as the following tractable convex programming: for the bare Ising Model with pair-wise and bias factors representing the system without prevention measures, such that the MAP state is fully infected for at least one of the initial infection patterns, find the closest, for example in [Formula: see text], [Formula: see text] or any other convexity-preserving norm, therefore prevention-optimal, set of factors resulting in all the MAP states of the Ising model, with the optimal prevention measures applied, to become safe. We have illustrated efficiency of the scheme on a quasi-realistic model of Seattle. Our experiments have also revealed useful features, such as sparsity of the prevention solution in the case of the [Formula: see text] norm, and also somehow unexpected features, such as localization of the sparse prevention solution at pair-wise links which are NOT these which are most utilized/traveled.
难以预测的 COVID-19 疫情爆发凸显了统计建模的重要性,这种建模可以解决地理区域的时空相关性,例如以普查地段粒度传播感染。在本文中,我们针对以下两个具有巨大社会影响的相互关联的公共卫生挑战提供了算法答案,这些挑战尚未得到充分解决:
推断挑战:假设城市中有 N 个普查块(节点),并且在任何一组节点上都存在初始感染,例如任何可能的单节点感染中的 N 个,任何可能的两个节点感染中的 [Formula: see text],等等,那么在感染爆发稳定之前,有多少个普查块会被感染?
预防挑战:为了将稳定状态的感染部分最小化,您可以采取什么最小的控制措施?
为了回答这些挑战,我们构建了具有吸引力的伊辛(成对,二进制)类型的流行模型,其中每个节点代表一个普查地段,每个边因素代表节点对之间的相互作用强度,例如代表节点间的旅行、道路封闭和相关等,每个局部偏差/场代表社区的免疫水平、对社会距离和戴口罩的接受程度等。解决推断挑战需要找到最大后验(MAP),即受一组初始感染节点约束的伊辛模型的最可能状态。(一个感染的节点处于 [Formula: see text] 状态,一个安全的节点处于 [Formula: see text] 状态。)我们表明,在密集图上几乎所有有吸引力的伊辛模型都导致 MAP 状态的两种可能性(模式)之一:要么最初未感染的所有节点都被感染,要么所有最初未感染的节点都保持未感染(易感染)。这种推断挑战的双峰解决方案使我们能够将预防挑战重新表述为以下可处理的凸规划:对于没有预防措施的具有成对和偏差因子的基本伊辛模型,即对于至少一种初始感染模式,MAP 状态完全感染,找到最接近的状态,例如在 [Formula: see text] 、 [Formula: see text] 或任何其他保持凸性的范数中,因此应用最佳预防措施的伊辛模型的所有 MAP 状态的预防优化因素集,成为安全的。我们已经在西雅图的准现实模型上展示了该方案的效率。我们的实验还揭示了一些有用的特征,例如在 [Formula: see text] 范数下预防解决方案的稀疏性,以及一些意想不到的特征,例如稀疏预防解决方案在不是最常用/旅行的成对链路处的本地化。