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Spatio-temporal analysis of dengue cases in Sabah


Citation

Kunasagran, Priya Dharishini and Syed Abdul Rahim, Syed Sharizman and Jeffree, Mohammad Saffree and Atil, Azman and Hidrus, Aizuddin and Mokti, Khalid and Abd Rahim, Mohammad Aklil and Muyou, Adora J. and Mujin, Sheila Miriam and Ali, Nabihah and Md Taib, Norsyahida and Mohd Zali, S Muhammad Izuddin Rabbani and Dapari, Rahmat and Azhar, Zahir Izuan and Koay, Teng Khoon (2023) Spatio-temporal analysis of dengue cases in Sabah. Malaysian Journal of Medicine and Health Sciences, 19 (suppl.20). pp. 88-94. ISSN 1675-8544

Abstract

Introduction: Dengue fever is a significant public health issue worldwide. Geographic Information System is a powerful tool in public health, allowing for the analysis and visualisation of spatial data to understand disease distribution and identify clusters of cases. Therefore, this study aims to determine the spatiotemporal distribution of dengue cases in Sabah. Methods: Quantum Geospatial Information System (QGIS) and GeoDa software were used to determine the spatial distribution, pattern, and cluster analysis. Results: The spatial distribution of dengue cases shifted, with most cases concentrated on the east coast of Sabah. The distribution of dengue cases in Beluran, Tenom, Kota Marudu, Kudat, Keningau, and Papar changed from 2017 to 2020. The scatter plots of Moran’s index values were generated to analyse the spatial clustering of dengue cases in Sabah over four years: 2017 (Moran’s index = 0.271), 2018 (Moran’s index = 0.333), 2019 (Moran’s index = 0.367), and 2020 (Moran’s index = 0.294). The statistical significance of clustering was established by observing p-values below the threshold of 0.05 for all four years. Local indicators of spatial association showed the spatial autocorrelation pattern of high-high (hotspot) areas with elevated dengue incidence and low-low (cold-spot) areas with relatively lower dengue rates. Conclusion: This study has provided evidence of dengue case distribution patterns, spatial clustering, and hotspot and coldspot areas. Prioritising these clusters can improve planning and resource allocation for more efficient dengue prevention and control.


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Additional Metadata

Item Type: Article
Divisions: Faculty of Medicine and Health Science
Publisher: Universiti Putra Malaysia, Fakulti Perubatan dan Sains Kesihatan
Keywords: Dengue cases; Spatial distribution; Spatial clustering; Sabah; Spatial analysis; Geographic information system; Spatio-temporal distribution; Cluster analysis; Public health; Disease prevention; GIS tools; Spatial clustering; Resource allocation; Dengue control; Spatial autocorrelation; Hotspot areas; Coldspot areas; Health planning; Vector control; Geospatial analysis; Disease distribution; Epidemiology
Depositing User: Mr. Mohamad Syahrul Nizam Md Ishak
Date Deposited: 11 May 2024 15:08
Last Modified: 11 May 2024 15:08
URI: http://psasir.upm.edu.my/id/eprint/108933
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