MLLGAPMay 31, 2021

Early Detection of COVID-19 Hotspots Using Spatio-Temporal Data

arXiv:2106.00072v211 citations
Originality Incremental advance
AI Analysis

This work addresses the need for timely identification of disease outbreaks to support public health policy decisions, though it appears incremental as it builds on existing Bayesian and neural network approaches.

The paper tackles the problem of early detection of COVID-19 hotspots at the county level in the U.S. by developing a spatio-temporal Bayesian framework, which demonstrates better interpretability and superior performance compared to baseline methods.

Recently, the Centers for Disease Control and Prevention (CDC) has worked with other federal agencies to identify counties with increasing coronavirus disease 2019 (COVID-19) incidence (hotspots) and offers support to local health departments to limit the spread of the disease. Understanding the spatio-temporal dynamics of hotspot events is of great importance to support policy decisions and prevent large-scale outbreaks. This paper presents a spatio-temporal Bayesian framework for early detection of COVID-19 hotspots (at the county level) in the United States. We assume both the observed number of cases and hotspots depend on a class of latent random variables, which encode the underlying spatio-temporal dynamics of the transmission of COVID-19. Such latent variables follow a zero-mean Gaussian process, whose covariance is specified by a non-stationary kernel function. The most salient feature of our kernel function is that deep neural networks are introduced to enhance the model's representative power while still enjoying the interpretability of the kernel. We derive a sparse model and fit the model using a variational learning strategy to circumvent the computational intractability for large data sets. Our model demonstrates better interpretability and superior hotspot-detection performance compared to other baseline methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes