Development of a causal machine learning model for the diagnosis of African swine fever
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https://esango.cput.ac.za/articles/dataset/Development_of_a_causal_machine_learning_model_for_the_diagnosis_of_African_swine_fever/30327520/1
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Ethics reference number is: 209002409/2023/11This 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 emphasize evidence-based policy making for disease control. This study provides actionable insights 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.
提供机构:
Cape Peninsula University of Technology
创建时间:
2025-12-04



