An Approach to Identifying Spatial Variability in Observed Infectious Disease Spread in a Prospective Time-Space Series with Applications to COVID-19 and Dengue Incidence
Chih-Chieh Wu, Chien-Hsiun Chen, Shann-Rong Wang, Sanjay Shete

TL;DR
This paper introduces a new method to detect unusual patterns in how infectious diseases spread across different regions over time, using a statistical model applied to real-world data from Taiwan.
Contribution
A novel hypergeometric probability model is proposed to evaluate spatial and temporal anomalies in disease spread during outbreaks.
Findings
The model identifies rapid increases or decreases in disease incidence compared to historical patterns.
It accounts for population differences across regions to improve accuracy in anomaly detection.
The method is demonstrated using dengue and COVID-19 data from Taiwan.
Abstract
Most of the growing prospective analytic methods in space-time disease surveillance and intended functions of disease surveillance systems focus on earlier detection of disease outbreaks, disease clusters, or increased incidence. The spread of the virus such as SARS-CoV-2 has not been spatially and temporally uniform in an outbreak. With the identification of an infectious disease outbreak, recognizing and evaluating anomalies (excess and decline) of disease incidence spread at the time of occurrence during the course of an outbreak is a logical next step. We propose and formulate a hypergeometric probability model that investigates anomalies of infectious disease incidence spread at the time of occurrence in the timeline for many geographically described populations (e.g., hospitals, towns, counties) in an ongoing daily monitoring process. It is structured to determine whether the…
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Taxonomy
TopicsCOVID-19 epidemiological studies · Data-Driven Disease Surveillance · Mosquito-borne diseases and control
