Please use this identifier to cite or link to this item: https://etd.cput.ac.za/handle/20.500.11838/4310
Title: Development of a causal machine learning model for the diagnosis of African swine fever
Authors: Lububu, Steven 
Keywords: African swine fever (ASF);ASF diagnosis;Causal inference;Machine learning;Causality model
Issue Date: 2025
Publisher: Cape Peninsula University of Technology
Abstract: This study investigates the causal relationship between African swine fever (ASF) viral load and disease severity in domestic and wild pigs using machine learning models. A causality model with linear regression and random forest regressor was developed to analyse ASF transmission dynamics and symptom severity. The linear regression model achieved an R² value of 83.68% with an MAE of 1.27, while the random forest model achieved an R² value of 58.10% with an MAE of 1.52, confirming strong predictive performance. The results highlight the effectiveness of biosecurity, surveillance and culling measures in containing ASF and em phasize evidence-based policy making for disease control. This study provides actionable in sights for veterinarians, farmers and policy makers, contributing to ASF risk management and prevention strategies. Future research should integrate AI-driven real-time surveillance and genetic analysis to improve ASF outbreak prediction and global containment measures.
Description: Thesis (Master of Information and Communication Technology)--Cape Peninsula University of Technology, 2025
URI: https://etd.cput.ac.za/handle/20.500.11838/4310
DOI: https://doi.org/10.25381/cput.30327520
Appears in Collections:Design - Doctoral Degree

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