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Journal : journal of electronics electromedical engineering and medical informatics

Classification of Lenke Scoliosis using GLCM Feature Extraction and Support Vector Machine Chamim, Anna Nur; Ali, Hasimah; Jusman, Yessi; Yusof, Mohd Imran; Priyanindhita, Prasaca Pigama; Ananta, Asy-Syifa Febya
Journal of Electronics, Electromedical Engineering, and Medical Informatics Vol 8 No 3 (2026): July
Publisher : Department of Electromedical Engineering, POLTEKKES KEMENKES SURABAYA

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.35882/jeeemi.v8i3.565

Abstract

Lenke scoliosis is a spinal deformity that is classified into six types by the Lenke classification system. Traditionally, clinicians undertake classification based on manual visual examination of X-ray images, which is time-consuming, requires high skill and is subject to errors caused by human fatigue. To overcome these constraints, the current work presents an automated and reliable classification system to boost the efficiency and accuracy of diagnosis. The method is based on the application of the Grey Level Co-occurrence Matrix (GLCM) for the feature extraction and of a Support Vector Machine (SVM) classifier. The main contribution is the optimisation of SVM kernel functions (Quadratic, Cubic and Coarse Gaussian) using advanced pre-processing methods to achieve very good accuracy while preserving compute efficiency suitable for clinical applications. The approach combines picture pre-processing (grey scale conversion, resize, contrast improvement by adaptive histogram equalisation, segmentation, augmentation) and GLCM-based feature extraction and classification using multiple SVM kernels. The model's performance is evaluated based on accuracy, precision, recall, F1 Score, and execution time. The testing results demonstrate that the Quadratic SVM has the best classification accuracy of 92.26% with a processing time of 20.44 seconds, which outperforms the Cubic SVM (90.97%, 19.30 seconds) and the Coarse Gaussian SVM (60.64%, 21.70 seconds). The results show that the quadratic SVM has the optimum compromise between accuracy and processing efficiency. In conclusion, the proposed GLCM-SVM approach has tremendous potential to support doctors in the automatic categorisation of Lenke scoliosis, improving the accuracy and speed of diagnosis without requiring large computational resources. In future work, we will aim to expand the dataset and include additional features to further improve the model's resilience and generalisability.
Co-Authors Adi Nugroho Agus Jamal Agus Jamal Ahmad Zaki Ahmad Zaki Ahmad Zaki Ali, Hasimah Amin Musthofa Ananta, Asy-Syifa Febya Anna Nur Nazilah Chamim Anna Nur Nazilah Chamim Anna Nur Nazilah Chamim Anshori, Rohman Try Aqmariah Mohd Kanafiah, Siti Nurul Ardiyanto, Yudhi Arisman Adnan Aroffi, Muhammad Rusydi Al Ayuningtiyas, Ratih Azhari Setiawan Candra Dwi Sukardi Chamim, Anna Nur Cheok Ng, Siew Dea Anisya Dedy Prasetiyo Didik Aribowo Dimas Bangkit Wijayanto Faaris Mujaahid, Faaris Farah Ramadhani Fardhan Arkan Farhan Eris Prianto Faris Fauzan Bachtiar Faruliyan Arya Ferisnanda Gigih Ashabul Kahfi Hadiansyah, Naufal Hanafi, Mhd. Hardiyanto, Tio Hasibi, Rahmat Adiprasetya Al Hasikin, Khairunnisa Hendra Setiawan Henny febriani Iffa Maisun Putri Izmi, Rizkinanda Muhammad Jamaaluddin Jeckson Jeckson Juhesni Juhesni Karisma Trinanda Putra Karisma Trinanda Putra, Karisma Trinanda Khairunnisa Hasikin Kharisma Fajar Sidik Kunnu Purwanto Lestari, Sri Indah Loniza, Erika M. Alfadha Tumahadi M.Thariq Assary Marwan, Deinike Wanita Masayu Alya Nur'aini Masayu Alya Nuraini Masfiyah, Nisfi Nurlailatul Muhammad Ahdan Fawwaz Nurkholid Mustar, Muhamad Yusvin Ninda Rizqi Safitri Nugraha, Vendy Dwi Hendra Nur'aini, Masayu Alya Nurul Kurnia Sukmawati Pinkan Adhisa Nurulia Priyanindhita, Prasaca Pigama Purnomo, Halim Purwanto, Kunnu Putri Thelima Rahmat Adiprasetya Al Hasibi Rahmat Adiprasetya Al Hasibi Ramadoni Syahputra Ratih Ayuningtiyas Renda Sukma Tamara Salamun Salamun Sanupal, Sanupal Satriawan, Bunsa Jondan Siew Cheok Ng Siva Aprilia Slamet Suripto Surahmat, Indar Suripto, Slamet Teguh Iman Prasetyo Teguh Iman Prasetyo Tyassari, Wikan Valzon, May Wicaksono, Wahyu Nugroho Widdya Rahmalina Widdya Rahmalina, Widdya Widyasmoro, Widyasmoro wikan tyassari Wita Yulianti Wiyagi, Rama Okta Yudhi Ardiyanto Yusof, Mohd Imran Zakaria, Zulkarnay Zarman, Juni Zul Indra