Understanding the spread of infectious diseases such as COVID-19 is crucial for informed decision-making and resource allocation. A critical component of disease behavior is the velocity with which disease spreads, defined as the rate of change between time and space. In this paper, we propose a spatio-temporal modeling approach to determine the velocities of infectious disease spread. Our approach assumes that the locations and times of people infected can be considered as a spatio-temporal point pattern that arises as a realization of a spatio-temporal log-Gaussian Cox process. The intensity of this process is estimated using fast Bayesian inference by employing the integrated nested Laplace approximation (INLA) and the Stochastic Partial Differential Equations (SPDE) approaches. The velocity is then calculated using finite differences that approximate the derivatives of the intensity function. Finally, the directions and magnitudes of the velocities can be mapped at specific times to examine better the spread of the disease throughout the region. We demonstrate our method by analyzing COVID-19 spread in Cali, Colombia, during the 2020-2021 pandemic.


翻译:理解诸如COVID-19等传染病的传播对于知情决策和资源分配至关重要。疾病行为的一个关键组成部分是疾病传播的速度,其定义为时间与空间之间的变化率。本文提出了一种时空建模方法来确定传染病传播的速度。我们的方法假设感染者的位置和时间可被视为一个时空点模式,该模式是时空对数高斯Cox过程的一个实现。该过程的强度通过采用集成嵌套拉普拉斯近似(INLA)和随机偏微分方程(SPDE)方法进行快速贝叶斯推断来估计。然后使用有限差分法计算速度,该方法近似于强度函数的导数。最后,可以在特定时间映射速度的方向和大小,以更好地检查疾病在整个区域的传播情况。我们通过分析2020-2021年大流行期间哥伦比亚卡利市的COVID-19传播来演示我们的方法。

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