Abstract

The spread of disease in livestock is an important research topic of veterinary epidemiology because it provides warnings or advice to organizations responsible for the protection of animal health in particular and public health in general. Disease transmission simulation programs are often deployed with different species, disease types, or epidemiological models, and each research team manages its own set of parameters relevant to their target diseases and concerns, resulting in limited cooperation and reuse of research results. Furthermore, these simulation and decision support tools often require a large amount of computational power, especially for models involving tens of thousands of herds with millions of individuals spread over a large geographical area such as a region or a country. It is a matter of fact that epidemic simulation programs are often heterogeneous, but they often share some common workflows including processing of input data and execution of simulation, as well as storage, analysis, and visualization of results. In this article, we propose a novel architectural framework for simultaneously deploying any epidemic simulation program both on premises and on the cloud to improve performance and scalability. We also conduct some experiments to evaluate the proposed architectural framework on some aspects when applying it to simulate the spread of African swine fever in Vietnam.

Highlights

  • The spread of diseases in livestock is an important research topic in veterinary epidemiology in order to provide warnings or advice to regulatory bodies responsible for the protection of public health in general and animal health in particular in terms of trends in the spread of diseases in herds [1]

  • A stochastic compartmental model for the spread of Mycobacterium avium subspecies paratuberculosis (Map) into a confined dairy herd has been created by Marcé et al [18]

  • Francis et al [22] presented a summary of the modeling of cattle transmitted diseases by using the North American Animal Disease Spread Model (NAADSM)

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Summary

Introduction

The spread of diseases in livestock is an important research topic in veterinary epidemiology in order to provide warnings or advice to regulatory bodies responsible for the protection of public health in general and animal health in particular in terms of trends in the spread of diseases in herds [1]. As an essential and direct source of nutrition for humans, some diseases from livestock can infect humans if there is no timely intervention policy Current common diseases, such as African swine fever (ASF) in even-toed ungulates, are a concern of many countries. Data Model Standardization is a module for transforming data related to livestock, veterinary epidemiology, etc., from many sources with different formats into uniform data models stored in tables of standardized database These data models are designed according to the standards of each continent or region, for example, the SIGMA standard of European Food Safety Authority (EFSA), a standard for animal disease input data [28].

Architecture
Data Model Standardization
Simulation Programs Management
Analysis and Visualization
ASF Case Study and Simulation Model
System Setup
Scalability
Related Work
Findings
Conclusions
Full Text
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