Machine Learning-Based Techniques for Assessing Critical Factors for European Tick Abundance
Conference paper
Zorto, A., Lansdell, S., Seto, M., Gobena, E., Sharif, S. and Cutler, S. 2024. Machine Learning-Based Techniques for Assessing Critical Factors for European Tick Abundance. ICCSIT 2024: 17th International Conference on Computer Science and Information Technology. Dubai, UAE 23 - 25 Oct 2024 International Association of Computer Science and Information Technology.
Authors | Zorto, A., Lansdell, S., Seto, M., Gobena, E., Sharif, S. and Cutler, S. |
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Type | Conference paper |
Abstract | Tick-borne diseases are a significant health risk to humans and animals worldwide. It is important to understand the environmental and climatic factors that contribute to tick occurrence rates in order to reduce the proliferation of tick borne diseases. Using machine learning and spatial indexing techniques, this study covers tick occurrence rates in Europe over the last 20 years to understand the environmental and climatic factors that contribute to Ixodes ricinus tick abundance. We used biodiversity databases to study land cover categories, climate, vegetation index, and sociological factors. Areas with agriculture and natural vegetation, especially broad-leaved forests, had the strongest tick correlation. Waterways and pastures also showed significant positive correlations, indicating tick habitats. Ticks have moderate associations with urban green spaces, industrial units, and mixed forests suggesting their presence in ecologically disturbed habitats. Geoclimatic factors namely Normalised Difference Vegetation Index and rainfall, showed weak to negative correlations with tick population, indicating that they were less important than previously assumed. Linear Regression, Decision Tree, Random Forest, and Support Vector Machine were compared. We found that feature set and outlier presence significantly affected model performance. After removing outliers, Linear Regression performed best for land use features, with a R² value of 0.81, NRMSE of 1.56, SI of 1.56, and MAPE of 1.22. Outlier exclusion improved the model performance results. This research emphasises the importance of specific land uses in predicting the dynamics of tick population. Our findings lay the groundwork for focused intervention strategies to reduce the spread of tick-borne diseases using an innovative and intelligent approach, while also emphasising the need for further investigation into the complex interactions between environmental factors and tick abundance. |
Year | 2024 |
Conference | ICCSIT 2024: 17th International Conference on Computer Science and Information Technology |
Publisher | International Association of Computer Science and Information Technology |
Accepted author manuscript | License File Access Level Repository staff only |
Publication process dates | |
Completed | Oct 2024 |
Deposited | 03 Oct 2024 |
Accepted | 21 Oct 2024 |
Journal | International Journal of Computer Theory and Engineering |
Journal citation | p. In Press |
ISSN | 1793-8201 |
Copyright holder | © 2024 The Authors |
https://repository.uel.ac.uk/item/8y638
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