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首页> 外文期刊>Bangladesh Journal of Medical Science >Segmentation and Classification of Jaw Bone CT images using Curvelet based Texture features
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Segmentation and Classification of Jaw Bone CT images using Curvelet based Texture features

机译:使用基于Curvelet的纹理特征对颚骨CT图像进行分割和分类

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The evaluation of jaw bone trabecular structure and quality could be useful for characterization and response of the bone for dental implants. Current clinical methods for assessment of bone quality at the implant sites largely depend on assessing bone mineral density using Dual energy X-ray absorptionometry. However, this does not provide any information about bone structure which is considered to be an equally important factor in assessing bone quality. This paper presents a novel approach for computer analysis of trabecular (or cancellous) bone structure using multiresolution based texture analysis to evaluate changes taking place in the architecture of bone with age and gender. The findings are compared with Hounsfield Units measured from the CT machine at different sites, which is a standard reference. Fifty patients were subjected to clinical CT to obtain the CT number and texture based architectural parameters respectively. In each site texture features were extracted using gray level co-occurrence matrices (GLCM), Run length matrices, Histogram and curvelet based statistical & co occurrence analysis. A very difficult problem in classification techniques is the choice of features to distinguish between classes. However the performance of any classifier is not optimized when all features are used. The feature optimization problem is addressed using Principle component analysis in terms of the best recognition rate and the optimal number of features. Testing this on a series of 120 image sections of trabecular bone with normal, partial and total edentulous patients correctly classified over 90% of the porous bone group with an overall accuracy of 87.8%-95.2%.The results shows that by using the Classification & Regression Tree approach the combination of the features from gray level and Ist order statistics achieved overall classification accuracy in the range of 87.8- 90.24%. Features selected from the curvelet based co occurrence matrix performed better with overall classification accuracy of 92.89%.In order to increase the success rate the classification is done using the combination of curvelet statistical features and curvelet co occurrence features as feature vector and using this, a mean success rate of 95.2% is obtained.
机译:颌骨小梁的结构和质量的评估对于牙科植入物的骨质表征和响应可能有用。当前用于评估植入部位骨质量的临床方法很大程度上取决于使用双能X射线吸收法评估骨矿物质密度。但是,这没有提供有关骨骼结构的任何信息,而这些信息被认为是评估骨骼质量的同等重要的因素。本文提出了一种新的方法,用于使用基于多分辨率的纹理分析对小梁(或松质)骨结构进行计算机分析,以评估随着年龄和性别而发生的骨结构变化。将这些发现与在不同位置的CT机上测得的Hounsfield单位进行比较,这是标准参考。五十名患者接受了临床CT检查,分别获得了CT数和基于纹理的建筑参数。在每个站点中,使用灰度共现矩阵(GLCM),游程矩阵,直方图和基于Curvelet的统计和共现分析提取纹理特征。分类技术中一个非常困难的问题是选择特征以区分类。但是,使用所有功能时,没有优化任何分类器的性能。使用主成分分析以最佳识别率和最佳特征数来解决特征优化问题。在正常,部分和全部无牙的患者的一系列小梁骨的120个图像切片上进行测试,正确分类了90%以上的多孔骨组,总体准确率为87.8%-95.2%。回归树方法结合了灰度级特征和Ist阶统计量,实现了87.8- 90.24%的总体分类精度。从基于Curvelet的共现矩阵中选择的特征表现更好,总分类精度为92.89%。为了提高成功率,使用Curvelet统计特征和Curvelet共同现像特征作为特征向量进行分类,并使用平均成功率为95.2%。

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