Classification of MRI images in 2D coronal view and measurement of articular cartilage thickness for early detection of knee osteoarthritis

V. Kumar, A. Jayanthy
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引用次数: 9

Abstract

Osteoarthritis (OA)is a degenerative joint disease which is most prevalent in the knee joint. It can be characterized by the gradual loss of articular cartilage. The knee OA-affected bones slide together due to degradation of cartilage, causing joint pain, swelling, stiffness and eventual loss of motion. Magnetic resonance imaging (MRI) is the most suitable non-invasive imaging modality to detect damages in cartilage, ligament and tendon which cannot be visualized using an x-ray. In the proposed work, the cartilage is segmented using pixel-based segmentation technique. Image processing techniques such as contrast enhancement, histogram equalization, thresholding and canny edge detection are implemented using MATLAB R2013a (8.1) software on the MR images in 2D coronal view. Then a rough mask is created which undergoes morphological operations and the background noise is reduced. The segmented image undergoes GLCM feature extraction process. The texture features are calculated from the segmented image. The extracted GLCM features are given to the SVM classifier for classifying the image as normal and OA-affected. The accuracy was found to be 86.66% for the classification of the subject into normal and OA-affected. Articular cartilage thickness is measured using Euclidean distance formula and compared with the standard values for early detection of knee Osteoarthritis.
二维冠状面MRI图像分类及关节软骨厚度测量在膝关节骨关节炎早期诊断中的应用
骨关节炎(OA)是一种退行性关节疾病,最常见于膝关节。它的特征是关节软骨的逐渐丧失。受oa影响的膝关节骨骼由于软骨退化而一起滑动,导致关节疼痛、肿胀、僵硬并最终失去运动能力。磁共振成像(MRI)是最适合检测软骨、韧带和肌腱损伤的非侵入性成像方式,这些损伤不能用x射线可视化。在提出的工作中,使用基于像素的分割技术对软骨进行分割。利用MATLAB R2013a(8.1)软件对二维冠状视图的MR图像进行对比度增强、直方图均衡化、阈值分割和精细边缘检测等图像处理技术。然后创建一个经过形态学处理的粗糙蒙版,并降低背景噪声。对分割后的图像进行GLCM特征提取。从分割后的图像中计算纹理特征。将提取的GLCM特征提供给SVM分类器,用于对图像进行正常和oa影响的分类。将受试者分为正常和oa影响两类,准确率为86.66%。采用欧氏距离公式测量关节软骨厚度,并与早期检测膝关节骨关节炎的标准值进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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