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Wall Motion Classification of Stress Echocardiography Based on Combined Rest-and-Stress Data

机译:基于静息压力数据的应力超声心动图壁运动分类

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In this paper, we represent a new framework that performs automated local wall motion analysis based on the combined information derived from a rest and stress sequence (a full stress echocardiography study). Since cardiac data inherits time-varying and sequential properties, we introduce a Hidden Markov Model (HMM) approach to classify stress echocardiography. A wall segment model is developed for a normal and an abnormal heart and experiments are performed on rest, stress and rest-and-stress sequences. In an assessment using n=44 datasets, combined rest-and-stress analysis shows an improvement in classification (84.17%) over individual rest (73.33%) and stress (68.33%).
机译:在本文中,我们代表了一个新的框架,该框架基于从休息和压力序列(全应力超声心动图研究)得出的组合信息执行自动局部壁运动分析。由于心脏数据继承了时变和顺序属性,因此我们引入了隐马尔可夫模型(HMM)方法对应力超声心动图进行分类。针对正常心脏和异常心脏开发了壁段模型,并在休息,压力和休息与压力序列上进行了实验。在使用n = 44数据集进行的评估中,组合的休息和压力分析显示,与单独的休息(73.33%)和压力(68.33%)相比,分类(84.17%)有所改善。

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