Pengelompokkan Penyakit Tuberkulosis Paru Berdasarkan Penyebabnya Menggunakan Metode Clustering
Studi Kasus : UPT Puskesmas Selesai
DOI:
https://doi.org/10.61132/neptunus.v3i3.995Keywords:
Clustering, Disease, Grouping, K-Means, Pulmonary TuberculosisAbstract
Pulmonary tuberculosis remains a pressing public health problem, particularly in the work area of the Duduk Health Center (UPT Puskesmas). Effective management of this disease requires a thorough understanding of the characteristics of the causes of pulmonary TB in patients. This study aims to classify pulmonary TB cases based on the main causes such as diabetes mellitus, irritant factors, pleural effusion, and family environmental conditions. The research method used is a clustering technique with the K-Means algorithm. The data used are data on pulmonary TB patients in 2020–2025 with variables of age, gender, and causative factors collected from medical records. The analysis process was carried out using MATLAB R2014b software. The clustering model was carried out in 3, 4, and 5 clusters to compare the level of segmentation efficiency. Based on the calculation results, the model with 5 clusters showed the lowest cluster variance value of 0.4889 compared to the 3-cluster model (0.7333) and 4-cluster models (0.6151), which indicates that the division into 5 clusters produces the most compact and representative data group. Each cluster shows a different combination of characteristics of pulmonary TB patients, for example: (1) elderly male patients with comorbid diabetes; (2) adolescent females with the negative influence of environmental factors; (3) adult males exposed to irritants; (4) patients with pleural effusion; and (5) groups with multiple factors. The results of this study can provide strategic input for the Finished Community Health Center UPT in formulating more targeted and targeted intervention policies in order to prevent, control, and handle pulmonary tuberculosis cases in a sustainable and effective manner.
References
Aditya Nugraha, I. B., Gotera, W., & Yustin, W. E. F. (2021). Diabetes melitus sebagai faktor risiko tuberkulosis. Jurnal Kedokteran Meditek, 27(3), 273–281. https://doi.org/10.36452/jkdoktmeditek.v27i3.2126
Afrina, Y. (2023). Faktor lingkungan dengan kejadian tuberculosis paru. Jurnal Riset Kesehatan Poltekkes Depkes Bandung, 15(1), 1–21.
Aja, N., Ramli, R., & Rahman, H. (2022). Penularan tuberkulosis paru dalam anggota keluarga di wilayah kerja Puskesmas Siko Kota Ternate. Jurnal Kedokteran dan Kesehatan, 18(1), 78–87. https://doi.org/10.24853/jkk.18.1.78-87
Ananda, R. A. (2024). Clustering menggunakan algoritma K-means untuk mengelompokkan data perjudian berdasarkan wilayah di Kota Binjai (Studi kasus: Pengadilan Negeri Binjai) [Skripsi, Universitas XYZ].
Avisa, D., Widyadhana, B., D, K. C., & Pawitra, A. S. (2025). Gambaran epidemiologi penyakit tuberkulosis wilayah kerja Dinas Kesehatan Kabupaten Kediri. Jurnal Kesehatan Masyarakat, 6, 3015–3022.
Fatwa, M., Rizki, R., Sriwinarty, P., & Supriyadi, E. (2022). Pengaplikasian MATLAB pada perhitungan matriks. Papanda Journal of Mathematics and Science Research, 1(2), 81–93. https://doi.org/10.56916/pjmsr.v1i2.260
Harmaja, O. J., Widyatama, H. H., & Suryadi, S. L. (2023). Implementasi algoritma K-means clustering untuk pengelompokan penyakit pasien pada Puskesmas Pulo Brayan. Jurnal Sains dan Teknologi, 5(1), 150–157.
Hidayat, F. S., Berliana, R., Affandi, P., Zuliana, V., & Padilah, T. N. (2022). Penerapan K-means clustering dalam pengelompokan kasus tuberkulosis di Provinsi Jawa Barat. Jurnal Ilmiah Wahana Pendidikan, 8(15), 213–227. https://doi.org/10.5281/zenodo.7049113
Jelita, T., Buaton, R., Simajuntak, M., & Kaputama, S. (2023). Pengelompokan bidang usaha terhadap bantuan produktif usaha mikro (BPUM) berdasarkan wilayah Deli Serdang menggunakan metode clustering K-means (Studi kasus: Dinas Koperasi dan UMKM Kabupaten Deli Serdang). Journal of Computer Science and Information Technology, 3(2), 50–60.
Prameswaty, A. A., & Swari, M. H. P. (2024). Perancangan sistem pakar diagnosis penyakit TBC paru dengan metode Certainty Factor dan Dempster Shafer. Jurnal Teknologi Informasi dan Ilmu Komputer, 8(5), 8658–8663.
Purwanto, B., Nilogiri, A., & Wardoyo, A. E. (2022). Penerapan algoritma K-means clustering untuk pengelompokan penyebaran penyakit TBC (Studi kasus: Puskesmas di Kabupaten Jember). Jurnal Smart Teknologi, 3(3), 1–10. http://jurnal.unmuhjember.ac.id/index.php/JST
Salsabila, D. S., & Azizah, R. (2022). Faktor risiko kejadian tuberkulosis paru di Indonesia. Media Publikasi Promosi Kesehatan Indonesia (MPPKI), 5(9), 1054–1062. https://jurnal.unismuhpalu.ac.id/index.php/MPPKI/article/view/2622/2309
Sari, D. P., & Putri, A. M. (2019). Analisis spasial penderita tuberkulosis paru dengan pendekatan GIS dan K-means clustering di Kota Medan. Jurnal Kesehatan Masyarakat, 14(3), 243–251. https://doi.org/10.20473/jkm.v14i3.2019.243-251
Sari, G. K., Sarifuddin, & Setyawati, T. (2022). Tuberkulosis paru post-Wodec pleural effusion: Laporan kasus. Jurnal Medical Profession, 4(2), 174–182.
Tarigan, M. S., Hardinata, J. T., Qurniawan, H., Salfii, M., & Winanjaya, R. (2024). Implementasi data mining menggunakan algoritma Apriori dalam menentukan persediaan barang (Studi kasus: Toko Sinar Harahap). Justify: Jurnal Sistem Informasi Ibrahimy, 3(1), 55–65. https://doi.org/10.35316/justify.v3i1.5335
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