Disease Outbreak Detection and Forecasting: A Review of Methods and Data Sources
Journal:
arXiv
Published Date:
Oct 21, 2024
Abstract
Infectious diseases occur when pathogens from other individuals or animals
infect a person, resulting in harm to both individuals and society as a whole.
The outbreak of such diseases can pose a significant threat to human health.
However, early detection and tracking of these outbreaks have the potential to
reduce the mortality impact. To address these threats, public health
authorities have endeavored to establish comprehensive mechanisms for
collecting disease data. Many countries have implemented infectious disease
surveillance systems, with the detection of epidemics being a primary
objective. The clinical healthcare system, local/state health agencies, federal
agencies, academic/professional groups, and collaborating governmental entities
all play pivotal roles within this system. Moreover, nowadays, search engines
and social media platforms can serve as valuable tools for monitoring disease
trends. The Internet and social media have become significant platforms where
users share information about their preferences and relationships. This
real-time information can be harnessed to gauge the influence of ideas and
societal opinions, making it highly useful across various domains and research
areas, such as marketing campaigns, financial predictions, and public health,
among others. This article provides a review of the existing standard methods
developed by researchers for detecting outbreaks using time series data. These
methods leverage various data sources, including conventional data sources and
social media data or Internet data sources. The review particularly
concentrates on works published within the timeframe of 2015 to 2022.