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Classification of LV wall motion in cardiac MRI using kernel Dictionary Learning with a parametric approach

机译:基于核字典学习的参数化方法对心脏MRI中左室壁运动的分类

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In this paper, we propose a parametric approach for the assessment of wall motion in Left Ventricle (LV) function in cardiac cine-Magnetic Resonance Imaging (MRI). Time-signal intensity curves (TSICs) are identified in Spatio-temporal image profiles extracted from different anatomical segments in a cardiac MRI sequence. Different parameters are constructed from specific TSICs that present a decreasing then increasing shape reflecting dynamic information of the LV contraction. The parameters extracted from these curves are related to: 1) an average curve based on a clustering process, 2) curve skewness and 3) cross correlation values between each average clustered curve and a patient-specific reference. Several tests are performed in order to construct different vectors to train a sparse classifier based on kernel Dictionary Learning (DL). Results are compared with other classifiers like Support Vector Machine (SVM) and Discriminative Dictionary Learning. The best classification performance is obtained with information of skewness and the average curve with an accuracy about 94% using the mentioned sparse based kernel DL with a radial basis function kernel.
机译:在本文中,我们提出了一种用于评估心脏电影磁共振成像(MRI)中左心室(LV)功能壁运动的参数方法。在从心脏MRI序列的不同解剖部分提取的时空图像轮廓中识别时间信号强度曲线(TSIC)。从特定的TSIC构造不同的参数,这些参数呈现出递减的形状,反映了LV收缩的动态信息。从这些曲线中提取的参数与:1)基于聚类过程的平均曲线,2)曲线偏度和3)每个平均聚类曲线与患者特定参考之间的互相关值有关。为了构建不同的向量以基于内核字典学习(DL)训练稀疏分类器,执行了一些测试。将结果与其他分类器(如支持向量机(SVM)和判别词典学习)进行比较。使用具有径向基函数核的上述基于稀疏的核DL,可以通过偏度和平均曲线的信息获得最佳分类性能,准确度约为94%。

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