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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Identifying Regional Cardiac Abnormalities From Myocardial Strains Using Nontracking-Based Strain Estimation and Spatio-Temporal Tensor Analysis
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Identifying Regional Cardiac Abnormalities From Myocardial Strains Using Nontracking-Based Strain Estimation and Spatio-Temporal Tensor Analysis

机译:使用基于非跟踪的应变估计和时空张量分析从心肌应变中识别区域性心脏异常

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Myocardial strain is a critical indicator of many cardiac diseases and dysfunctions. The goal of this paper is to extract and use the myocardial strain pattern from tagged magnetic resonance imaging (MRI) to identify and localize regional abnormal cardiac function in human subjects. In order to extract the myocardial strains from the tagged images, we developed a novel nontracking-based strain estimation method for tagged MRI. This method is based on the direct extraction of tag deformation, and therefore avoids some limitations of conventional displacement or tracking-based strain estimators. Based on the extracted spatio-temporal strain patterns, we have also developed a novel tensor-based classification framework that better conserves the spatio-temporal structure of the myocardial strain pattern than conventional vector-based classification algorithms. In addition, the tensor-based projection function keeps more of the information of the original feature space, so that abnormal tensors in the subspace can be back-projected to reveal the regional cardiac abnormality in a more physically meaningful way. We have tested our novel methods on 41 human image sequences, and achieved a classification rate of 87.80%. The regional abnormalities recovered from our algorithm agree well with the patient's pathology and clinical image interpretation, and provide a promising avenue for regional cardiac function analysis.
机译:心肌劳损是许多心脏疾病和功能障碍的关键指标。本文的目的是从标记的磁共振成像(MRI)中提取并使用心肌应变模式,以识别和定位人类受试者的局部心脏功能异常。为了从标记的图像中提取心肌应变,我们为标记的MRI开发了一种新型的基于非跟踪的应变估计方法。该方法基于标签变形的直接提取,因此避免了常规位移或基于跟踪的应变估计器的某些限制。基于提取的时空应变模式,我们还开发了一种新颖的基于张量的分类框架,与传统的基于矢量的分类算法相比,该框架更好地保存了心肌应变模式的时空结构。此外,基于张量的投影功能保留了更多原始特征空间的信息,因此可以反投影子空间中的异常张量以更有意义的物理方式显示区域性心脏异常。我们已经在41种人类图像序列上测试了我们的新颖方法,并实现了87.80%的分类率。从我们的算法中恢复的区域异常与患者的病理学和临床图像解释非常吻合,并为区域心脏功能分析提供了有希望的途径。

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