Feature Selection Optimization Using Genetic Algorithm for Naive Bayes-Based Diabetes Mellitus Classification

Nova Arianti Aris, Ade Yuliana

Sari


Diabetes mellitus is a chronic disease with a steadily increasing prevalence each year and poses the risk of severe complications if not addressed early. Therefore, early detection of diabetes risk plays a vital role in prevention efforts. This study aims to enhance feature selection optimization through the use of a genetic algorithm in the classification of diabetes mellitus patients based on the Naive Bayes method. The genetic algorithm was applied to identify the most significant clinical features from patient data, with the expectation of improving the classification model’s accuracy and efficiency. A dataset comprising 1,557 patient records with 29 initial clinical attributes was utilized. Following preparation and selection stages, 7 key features were chosen for model training. Model performance was evaluated using metrics such as accuracy, precision, recall, and F1-score. The results indicated that the model with selected features achieved an accuracy of 80.99%, precision of 80.99%, recall of 100%, and an F1-score of 89.5%. These findings confirm that genetic algorithms are effective in improving Naive Bayes classification performance for diabetes risk identification. This study is expected to serve as a foundation for the development of more accurate and efficient disease risk prediction systems in the future.

Teks Lengkap:

PDF

Referensi


P. Rahayu, I. G. I. Sudipa, Suryani, A. Surachman, A. Ridwan, I. G. M. Darmawiguna, M. Sutoyo, I. Slamet, S. Harlina, and I. M. May Sanjaya, Buku Ajar Data Mining. PT. Sonpedia Publishing Indonesia, 2024.

E. Puwaningsih, L. Ludiana, and I. Immawati, "Penerapan Senam Kaki Diabetes untuk Meningkatkan Sensitivitas Kaki Pasien Diabetes Mellitus Tipe II di Puskesmas Metro," Jurnal Cendikia Muda, vol. 3, no. 2, pp. 235–244, 2023.

I. Hidayat, S. Revo, L. Inkiriwang, and P. A. K. Pratasis, “Optimasi penjadwalan menggunakan metode algoritma genetika pada proyek rehabilitasi Puskesmas Minanga,†Jurnal Sipil Statik, vol. 7, no. 12, pp. 1669–1680, 2019.

S. F. Tahir and C. A. Sugianto, "Optimasi Naive Bayes Menggunakan Algoritma Genetika Pada Klasifikasi Komentar Cyberbullying Pada Media Sosial X," Jurnal Informatika dan Teknik Elektro Terapan, vol. 12, no. 3, 2024.

E. Manalu, F. A. Siantur, and M. R. Manalu, “Penerapan algoritma Naive Bayes untuk memprediksi jumlah produksi barang berdasarkan data persediaan dan jumlah pemesanan pada CV Papadan Mama Pastries,†Jurnal Mantik Penusa, vol. 1, no. 2, pp. 16–21, 2017.

O. Somantri, R. H. Maharrani, and L. P. Wanti, “An optimize weights Naïve Bayes model for early detection of diabetes,†Telematika, vol. 15, no. 1, pp. 14–22, 2022.

A. Yuliana and F. Devianti, “Analisis pola diabetes melitus menggunakan algoritma Apriori,†Journal of Informatics and Electronics Engineering (JIEE), vol. 5, no. 1, pp. 28–37, 2023.

A. Yuliana, Pengantar Metodologi Penelitian Kualitatif. Bandung, Indonesia: CV. Gita Letera, 2024.

A. Maulana and A. Yuliana, "Analisis Sentimen Opini Publik Terkait Judi Online Pada Pengguna Aplikasi X Menggunakan Algoritma Naïve Bayes Dan Support Vector Mechine," Jurnal Informatika dan Teknik Elektro Terapan, vol. 12, no. 3S1, 2024.

W. D. Septiani and U. Rohwadi, "Optimasi Algoritma Genetika Pada Algoritma C4.5 untuk Deteksi Dini Penyakit Diabetes," Akrab Juara: Jurnal Ilmu-ilmu Sosial, vol. 6, no. 5, pp. 221–229, 2021.

M. A. V. Darmawan, M. M. Al Haromainy, and A. Junaidi, “Optimasi algoritma k-nearest neighbor dengan algoritma genetika pada deteksi penyakit diabetes mellitus,†Jurnal Teknik Informatika dan Sistem Informasi, vol. 12, no. 2, pp. 247–259, 2025.

M. R. Herdiansyah and A. Yuliana, "Analisis Sentimen Kebijakan Kampus Merdeka Menggunakan Naïve Bayes Berdasarkan Komentar Pada Youtube," Jurnal Mahasiswa Teknik Informatika, vol. 8, no. 6, pp. 12454–12459, 2024.

W. E. Nugroho, A. Sofyan, and O. Somantri, “Metode Naive Bayes dalam menentukan program studi bagi calon mahasiswa baru,†Infotekmesin, vol. 12, no. 1, pp. 59–64, 2021.

F. R. Mashfia, “Prediksi ketepatan waktu kelulusan mahasiswa menggunakan metode Naïve Bayes classifier,†Doctoral dissertation, Universitas Islam Negeri Maulana Malik Ibrahim, 2022.

A. Yuliana and D. B. Pratomo, "Algoritma Decision Tree (C4.5) Untuk Memprediksi Kepuasan Mahasiswa Terhadap Kinerja Dosen Politeknik TEDC Bandung," Seminar Nasional Inovasi Teknologi, vol. 1, no. 1, pp. 377–384, 2017.




DOI: http://dx.doi.org/10.30811/jaise.v5i3.7618

Refbacks

  • Saat ini tidak ada refbacks.


Indexing :

Creative Commons License
Journal of Artificial Intelligence and Software Engineering (JAISE) licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.