Spatio-temporal data mining in ecological and veterinary epidemiology
Aristides Moustakas

TL;DR
This paper discusses the importance of spatio-temporal data mining in ecological and veterinary epidemiology, highlighting how big data and advanced computational methods can improve understanding of disease spread.
Contribution
It reviews recent developments in data analysis methods and case studies that leverage big data for understanding disease dynamics in ecological and veterinary contexts.
Findings
Enhanced understanding of disease spread patterns
Integration of big data sources improves epidemiological insights
Development of new computational methods for analysis
Abstract
Understanding the spread of any disease is a highly complex and interdisciplinary exercise as biological, social, geographic, economic, and medical factors may shape the way a disease moves through a population and options for its eventual control or eradication. Disease spread poses a serious threat in animal and plant health and has implications for ecosystem functioning and species extinctions as well as implications in society through food security and potential disease spread in humans. Space-time epidemiology is based on the concept that various characteristics of the pathogenic agents and the environment interact in order to alter the probability of disease occurrence and form temporal or spatial patterns. Epidemiology aims to identify these patterns and factors, to assess the relevant uncertainty sources, and to describe disease in the population. Thus disease spread at the…
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Taxonomy
TopicsZoonotic diseases and public health · Animal Disease Management and Epidemiology · Viral Infections and Vectors
