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Bone Age Assessment in Young Children Using Automatic Carpal Bone Feature Extraction and Support Vector Regression

机译:使用自动腕骨特征提取和支持向量回归的幼儿骨年龄评估

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Boundary extraction of carpal bone images is a critical operation of the automatic bone age assessment system, since the contrast between the bony structure and soft tissue are very poor. In this paper, we present an edge following technique for boundary extraction in carpal bone images and apply it to assess bone age in young children. Our proposed technique can detect the boundaries of carpal bones in X-ray images by using the information from the vector image model and the edge map. Feature analysis of the carpal bones can reveal the important information for bone age assessment. Five features for bone age assessment are calculated from the boundary extraction result of each carpal bone. All features are taken as input into the support vector regression (SVR) that assesses the bone age. We compare the SVR with the neural network regression (NNR). We use 180 images of carpal bone from a digital hand atlas to assess the bone age of young children from 0 to 6 years old. Leave-one-out cross validation is used for testing the efficiency of the techniques. The opinions of the skilled radiologists provided in the atlas are used as the ground truth in bone age assessment. The SVR is able to provide more accurate bone age assessment results than the NNR. The experimental results from SVR are very close to the bone age assessment by skilled radiologists.
机译:腕骨图像的边界提取是自动骨龄评估系统的关键操作,因为骨结构与软组织之间的对比度非常差。在本文中,我们提出了一种边缘跟随技术,用于腕骨图像中的边界提取,并将其应用于评估幼儿的骨龄。我们提出的技术可以通过使用来自矢量图像模型和边缘图的信息来检测X射线图像中腕骨的边界。腕骨的特征分析可以揭示骨龄评估的重要信息。从每个腕骨的边界提取结果中计算出五个用于评估骨龄的特征。所有特征均作为评估骨龄的支持向量回归(SVR)的输入。我们将SVR与神经网络回归(NNR)进行了比较。我们使用来自数字手部地图集的180个腕骨图像来评估0至6岁幼儿的骨骼年龄。留一法交叉验证用于测试技术的效率。地图集中提供的熟练放射科医生的意见被用作骨龄评估的基本事实。与NNR相比,SVR能够提供更准确的骨龄评估结果。 SVR的实验结果与熟练的放射科医生的骨龄评估非常接近。

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