Assessing the performance of K-means and DBSCAN clustering methods in tuberculosis mapping

Defi Yusti Faidah, Dianda Destin, Fazila Azra Anggina, Muhammad Imamul Caesar

Abstract


Tuberculosis (TB) remains a significant public health challenge, particularly in densely populated and under-resourced areas such as West Java, Indonesia. This study aimed to map and analyze the spatial distribution of TB prevalence by clustering regions based on variables including sanitation quality, population density, and TB rates. Secondary data from official sources were utilized, and clustering methods such as K-means and DBSCAN were employed to group districts and cities into distinct clusters. The K-means method identified five clusters, while DBSCAN formed four clusters with some noise. Performance evaluation using the silhouette index indicated that K-means outperformed DBSCAN. The clustering results revealed that regions with poor sanitation and high TB prevalence require prioritized public health interventions. This analysis underscores the potential of clustering methods to enhance public health planning by identifying areas in critical need of targeted TB control strategies, optimizing resource allocation, and supporting evidence-based decision-making.

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Published: 2025-01-20

How to Cite this Article:

Defi Yusti Faidah, Dianda Destin, Fazila Azra Anggina, Muhammad Imamul Caesar, Assessing the performance of K-means and DBSCAN clustering methods in tuberculosis mapping, Commun. Math. Biol. Neurosci., 2025 (2025), Article ID 15

Copyright © 2025 Defi Yusti Faidah, Dianda Destin, Fazila Azra Anggina, Muhammad Imamul Caesar. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Commun. Math. Biol. Neurosci.

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