Deteksi dan Klasifikasi Osteoartritis Lutut pada Citra X-ray Menggunakan ResNet-50 dan DenseNet-121 dengan Visualisasi Berbasis Web
Detection and Classification of Knee Osteoarthritis in X-ray Images Using ResNet-50 and DenseNet-121 with Web-Based Visualization

Date
2025Author
Saragih, Novariya Br
Advisor(s)
Lydia, Maya Silvi
Amalia
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Knee osteoarthritis (OA) is one of the most common types of joint disorders in the elderly, characterized by pain and limited mobility. This study aims to develop a hybrid deep learning model to detect and classify the severity of knee OA in X-ray images using a combination of ResNet-50 and DenseNet-121 architecture. The severity is determined based on the Kellgren-Lawrence (KL) grading system, which consists of five grades (0-4). The dataset used was obtained from Roboflow and Dr. Pirngadi General Hospital Medan (RSUD Dr. Pirngadi Medan), with a total of 5,353 images after preprocessing. The model was trained using transfer learning and fine-tuning approaches, then integrated into a Streamlit-based web application. The model performance was evaluated using accuracy, precision, recall, and f1-score metrics. The evaluation resulted in an accuracy value of 60.1%, an average precision of 61.7%, an average recall of 59.5%, and an average f1-score of 60.2%. The model experienced overfitting and bias toward grade 4 (severe), and was unable to accurately classify other grades. This issue was caused by the limited size of the dataset and the model being too complex for a small dataset. Although the accuracy obtained was not optimal, the system has potential as an early-stage tool for knee OA detection and classification, and can be optimized through model training with more balanced and diverse dataset.
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- Undergraduate Theses [1235]