Vol. 4 No. 8 (2025): JULY
Open Access
Peer Reviewed

DISEASE CLASSIFICATION USING SUPPORT VECTOR MACHINE (SVM) WITH JAVA STANDARD EDITION (JSE)

Authors

Eka Utaminingsih , Rifki , Zanuar Rizkiansyah , Arista Ardilla , Fitriani

DOI:

10.54443/ijset.v4i8.1064

Published:

2025-08-27

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Abstract

This research focuses on disease clustering, which is a crucial aspect of effective diagnosis and treatment. With the increasing complexity of health data generated from various sources, such as electronic health records and laboratory results, efficient methods are needed to cluster and analyze this data. The use of machine learning algorithms, particularly Support Vector Machine (SVM), offers a promising solution to address this issue. SVM is known for its ability to handle multidimensional data and identify patterns that are not immediately visible. The challenges faced in disease clustering include difficulties in managing large and complex data, as well as the inability of traditional methods to provide accurate and rapid results. Additionally, many healthcare professionals lack access to adequate analytical tools, hindering appropriate clinical decision-making. Therefore, it is essential to develop solutions that can effectively assist in disease clustering. The proposed solution in this study is the development of a Java Standard Edition (JSE) based application that implements the SVM algorithm for disease clustering. This application is designed to provide an intuitive user interface, allowing users to upload data, run the SVM algorithm, and easily obtain clustering results. This research uses clinical data from various diseases, including heart disease, diabetes, hypertension, cancer, asthma, and stroke. Evaluation results show that SVM can cluster diseases with an accuracy of up to 92%. Thus, this study concludes that the application of SVM in a JSE-based application is an effective solution for enhancing disease clustering and supporting better clinical decision-making.

Keywords:

Disease Clustering Support Vector Machine (SVM) Java Standard Edition (JSE) Clinical Data Machine Learning

References

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Khoshgoftaar, T. M., et al. (2018). A Study of Support Vector Machines for Heart Disease Diagnosis. Journal of Healthcare Engineering, 2018.

Prabowo, A., & Sari, R. (2020). Development of Health Applications Using Java Standard Edition. International Journal of Health Information Systems, 12(1), 45-55.

Liu, Y., & Wang, S. (2019). Application of SVM in Medical Data Classification. Journal of Medical Systems, 43(6), 123-130.

Zhang, J., & Li, X. (2021). Machine Learning Techniques for Disease Diagnosis: A Review. Journal of Biomedical Informatics, 115, 103688.

Rashid, M., & Kaur, P. (2021). Application of SVM in Medical Diagnosis: A Review.

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Author Biographies

Eka Utaminingsih, Universitas Bumi Persada

Author Origin : Indonesia

Rifki, Universitas Bumi Persada

Author Origin : Indonesia

Zanuar Rizkiansyah , Universitas Sains Cut Nyak dhien

Author Origin : Indonesia

Arista Ardilla, Universitas Bumi Persada

Author Origin : Indonesia

Fitriani, Universitas Bumi Persada

Author Origin : Indonesia

How to Cite

Eka Utaminingsih, Rifki, Zanuar Rizkiansyah, Arista Ardilla, & Fitriani. (2025). DISEASE CLASSIFICATION USING SUPPORT VECTOR MACHINE (SVM) WITH JAVA STANDARD EDITION (JSE). International Journal of Social Science, Educational, Economics, Agriculture Research and Technology (IJSET), 4(8), 2961–2966. https://doi.org/10.54443/ijset.v4i8.1064

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