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  • Düzce Üniversitesi Bilim ve Teknoloji Dergisi
  • Cilt: 13 Sayı: 3
  • Classification of Knee X-rays That Can Be Diagnosed Radiographically Using Deep Learning and Machine...

Classification of Knee X-rays That Can Be Diagnosed Radiographically Using Deep Learning and Machine Learning Methods

Authors : Kemal Üreten, Semra Duran, Yüksel Maraş, Ebru Atalar, Kevser Orhan, Hadi Hakan Maraş
Pages : 1297-1308
Doi:10.29130/dubited.1626406
View : 101 | Download : 124
Publication Date : 2025-07-31
Article Type : Research Paper
Abstract :The aim of this study is to classify knee osteoarthritis, synovial chondromatosis, Osgood-Schlatter disease, os fabella pathologies that can be diagnosed with plain knee X-rays, and normal knee radiographs with deep learning and machine learning methods. This study was performed on 540 knee osteoarthritis, 151 Osgood_Schlatter disease, 191 knee chondromatosis, 152 os fabella and 523 normal knee X-ray images. First, classification was performed with the VGG-16 network, which is a pre-trained deep learning model. Then, the features extracted with the VGG-16 convolution layer were classified with random forest, support vector machines, logistic regression and decision tree machine learning algorithms. With VGG-16 model, 95.3% accuracy, 95.1% sensitivity, 98.7% specificity, 96.8% precision, and 95.9% F1 score results were obtained. In classifying the features extracted from the VGG- 16 convolution layer with machine learning algorithms, 98.2% accuracy, 99.0% sensitivity, 98.9% specificity, 98.2% precision and 98.5% F1 score results were obtained with the logistic regression classifier. In this study, which was conducted to classify radiographically detectable knee pathologies, successful results were obtained with the VGG-16 network. The features extracted from the convolution layer of the VGG-16 model were reclassified with machine learning algorithms, logistic regression, support vector machines and random forest classifiers, and improvements in performance metrics were obtained compared to the VGG-16 model. With this proposed method, the performance of deep learning models can be further improved.
Keywords : Diz osteoartriti, Diz kondromatozu, Osgood-Schlatter hastalığı, Os fabella, Derin öğrenme, Makine öğrenmesi

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