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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >Plaque Tissue Characterization and Classification in Ultrasound Carotid Scans: A Paradigm for Vascular Feature Amalgamation
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Plaque Tissue Characterization and Classification in Ultrasound Carotid Scans: A Paradigm for Vascular Feature Amalgamation

机译:斑块组织表征和超声颈动脉扫描中的分类:血管特征合并的范例。

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The selection of carotid atherosclerosis patients for surgery or stenting is a crucial task in atherosclerosis disease management. In order to select only those symptomatic cases who need surgery, we have, in this work, presented a computer-aided diagnostic technique to effectively classify symptomatic and asymptomatic plaques from B-mode ultrasound carotid images. We extracted several grayscale features that quantify the textural differences inherent in the manually delineated plaque regions and selected the most significant among these extracted features. These features, along with the degree of stenosis (DoS), were used to train and test a support vector machine (SVM) classifier using threefold stratified cross-validation using a data set consisting of 160 (50 symptomatic and 110 asymptomatic) images. Using 32 features in an SVM classifier with a polynomial kernel of order 1, we obtained the best accuracy of 90.66%, sensitivity of 83.33%, and specificity of 95.39%. The DoS was found to be a valuable feature in addition to other texture-based features. We have also proposed the plaque risk index ( $PRI$) made up of a combination of significant features such that the $PRI$ has unique ranges for both plaque classes. PRI can be used in monitoring the variations in features over a period of time which will provide evidence on how and which features change as asymptomatic plaques become symptomatic.
机译:在手术或支架置入术中选择颈动脉粥样硬化患者是动脉粥样硬化疾病管理中的关键任务。为了只选择那些需要手术的有症状的病例,我们在这项工作中提出了一种计算机辅助诊断技术,可以从B型超声颈动脉图像中对有症状和无症状的斑块进行有效分类。我们提取了几个灰度特征,这些特征量化了手动描绘的斑块区域中固有的纹理差异,并从这些提取的特征中选择了最重要的。这些特征与狭窄程度(DoS)一起被用于训练和测试支持向量机(SVM)分类器,该分类器使用三重分层交叉验证,并使用包括160张(50个有症状和110个无症状)图像的数据集。使用SVM分类器中具有32个阶次多项式核的32个特征,我们获得了90.66%的最佳准确性,83.33%的灵敏度和95.39%的特异性。除了其他基于纹理的功能外,还发现DoS是有价值的功能。我们还提出了斑块风险指数( $ PRI $ ),这些特征由多种重要特征组成,例如Formulatype =“ inline”> $ PRI $ 对于两种噬菌斑类都有独特的范围。 PRI可用于监视一段时间内的特征变化,这将为无症状斑块变得有症状时如何以及哪些特征发生变化提供证据。

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