首页> 外文期刊>Expert Systems with Application >Discriminative dictionary learning for local LV wall motion classification in cardiac MRI
【24h】

Discriminative dictionary learning for local LV wall motion classification in cardiac MRI

机译:区分性词典学习在心脏MRI中用于局部左室壁运动分类

获取原文
获取原文并翻译 | 示例

摘要

The characterization of cardiac function is of high clinical interest for early diagnosis and better patient follow-up in cardiovascular diseases. A large number of cardiac image analysis methods and more precisely in cine-Magnetic Resonance Imaging (MRI) have been proposed to quantify both shape and motion parameters. However, the first major problem to address lies in the cardiac image segmentation that is most often needed to extract the myocardium before any other process such as motion tracking, or registration. Moreover, intelligent systems based on classification and learning techniques have emerged over the last years in medical imaging. In this paper, a new method is proposed to help medical experts in classifying the Left Ventricle (LV) wall motion without the need of image segmentation and through the learning of motion features by using dictionary learning techniques. Specifically the novelty of this approach lies in the extraction of new spatio-temporal descriptors and in the use of discriminative dictionary learning (DL) techniques to classify normal/abnormal LV function in cardiac MRI. Local radial spatio-temporal profiles are first extracted from bidimensional (2D) short axis (SAX) MRI images, for each anatomical segment of the LV cavity. These profiles inherently contain discriminatory information that can help for cardiac motion characterization. An advantage of this approach is that these profiles are constructed from a very limited user interaction that corresponds to a number of five points in only one frame of the sequence, (without the need of LV boundaries segmentation) and by exploiting all the phases of the cardiac cycle. Two specific discriminative DL algorithms have been selected for the LV wall classification based on these profiles: Label Consistent K-SVD (LC-KSVD) and Fisher Discriminative (FD-DL). For the application of the proposed methods, cine-MR SAX images have been collected from a control group of 9 healthy subjects and from 9 patients with cardiac dyssynchrony. Radial strain curves in 2D Speckle Tracking Echocardiography (2D-STE) have been analysed for the patient group and have been used as reference truth. They allowed to label each profile as normal or abnormal. The best performance has been achieved in the Wavelet domain by the LC-KSVD algorithm with an accuracy of 84.07% in the classification of radial spatio-temporal profiles and using a leave-one-out patient cross validation. The approach has been compared with recent methods of the literature and offers a good compromise between performance, user interaction, time computing and complexity. This new method of LV classification, with minimal user interaction and based on discriminative DL has not been previously reported. It could help to improve the performance of pre-screening systems for cardiac assessment, which can affect positively the quality of the early diagnosis for heart failure patients. (C) 2019 Published by Elsevier Ltd.
机译:对于心血管疾病的早期诊断和更好的患者随访,心功能的表征具有很高的临床意义。已经提出了许多心脏图像分析方法,更确切地说是在电影磁共振成像(MRI)中,以量化形状和运动参数。但是,要解决的第一个主要问题是在进行任何其他过程(例如运动跟踪或配准)之前最常需要提取心肌的心脏图像分割。此外,近年来,基于分类和学习技术的智能系统已经出现在医学成像中。本文提出了一种新方法,可以帮助医学专家对左心室(LV)壁运动进行分类,而无需图像分割,并且可以通过使用字典学习技术来学习运动特征。具体而言,该方法的新颖之处在于提取新的时空描述符,并使用判别词典学习(DL)技术对心脏MRI中正常/异常的LV功能进行分类。对于左室的每个解剖部分,首先从二维(2D)短轴(SAX)MRI图像中提取局部径向时空分布。这些配置文件固有地包含可以帮助进行心脏运动表征的区分信息。这种方法的优势在于,这些配置文件是由非常有限的用户交互(仅与序列的一个帧中的五个点相对应)构成的(不需要LV边界分段),并且可以通过利用心动周期。基于这些配置文件,已为LV墙分类选择了两种特定的判别DL算法:标签一致的K-SVD(LC-KSVD)和Fisher判别(FD-DL)。为了应用所提出的方法,已从9名健康受试者的对照组和9名心脏不同步患者中收集了cine-MR SAX图像。已针对患者组分析了二维斑点跟踪超声心动图(2D-STE)中的径向应变曲线,并将其用作参考真相。他们允许将每个配置文件标记为正常或异常。 LC-KSVD算法在小波域中实现了最佳性能,在径向时空分布的分类中以及使用免检患者交叉验证的精度为84.07%。该方法已与文献中的最新方法进行了比较,并在性能,用户交互,时间计算和复杂性之间做出了很好的折衷。先前尚未报道过这种LV分类的新方法,该方法具有最小的用户交互作用并且基于判别性DL。它可以帮助改善用于心脏评估的预筛查系统的性能,从而可以积极影响心力衰竭患者的早期诊断质量。 (C)2019由Elsevier Ltd.发布

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号