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Enhancement and automated segmentation of ultrasound knee cartilage for early diagnosis of knee osteoarthritis

机译:增强和自动分割超声膝关节软骨以早期诊断膝关节骨关节炎

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Ultrasound(US) has emerged as a valid imaging modality for quantitative assessment of femoral cartilage thickness for early diagnosis of knee osteoarthritis (OA). In this work, we are presenting a framework for automated segmentation of knee cartilage from enhanced US images. The proposed framework involves enhancement of US bone surfaces by calculating local phase image features, dynamic programming for bone segmentation and the use of segmented bone surfaces as initial seeds to random walker (RW) algorithm. Qualitative and quantitative validation was performed on 100 scans obtained from eight healthy volunteers. Validation against expert manual segmentation achieved a mean dice similarity coefficient (DSC) of 0.8758.
机译:Ultrasound(US)已成为一种有效的影像学方法,可用于定量评估股骨软骨厚度,从而早期诊断膝骨关节炎(OA)。在这项工作中,我们提出了一种从增强的美国图像中自动分割膝盖软骨的框架。拟议的框架涉及通过计算局部相位图像特征,对骨骼分割进行动态编程以及使用分割后的骨骼表面作为随机沃克(RW)算法的初始种子来增强US骨骼表面。对八名健康志愿者进行的100次扫描进行了定性和定量验证。针对专家手动分割的验证获得了0.8758的平均骰子相似性系数(DSC)。

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