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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Automatic Computation of Left Ventricular Volume Changes Over a Cardiac Cycle from Echocardiography Images by Nonlinear Dimensionality Reduction
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Automatic Computation of Left Ventricular Volume Changes Over a Cardiac Cycle from Echocardiography Images by Nonlinear Dimensionality Reduction

机译:通过非线性降维从超声心动图图像自动计算心动周期中左心室容积的变化

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Curve of left ventricular (LV) volume changes throughout the cardiac cycle is a fundamental parameter for clinical evaluation of various cardiovascular diseases. Currently, this evaluation is often performed manually which is tedious and time consuming and suffers from significant interobserver and intraobserver variability. This paper introduces a new automatic method, based on nonlinear dimensionality reduction (NLDR) for extracting the curve of the LV volume changes over a cardiac cycle from two-dimensional (2-D) echocardiography images. Isometric feature mapping (Isomap) is one of the most popular NLDR algorithms. In this study, a modified version of Isomap algorithm, where image to image distance metric is computed using nonrigid registration, is applied on 2-D echocardiography images of one cycle of heart. Using this approach, the nonlinear information of these images is embedded in a 2-D manifold and each image is characterized by a symbol on the constructed manifold. This new representation visualizes the relationship between these images based on LV volume changes and allows extracting the curve of the LV volume changes automatically. Our method in comparison to the traditional segmentation algorithms does not need any LV myocardial segmentation and tracking, particularly difficult in the echocardiography images. Moreover, a large data set under various diseases for training is not required. The results obtained by our method are quantitatively evaluated to those obtained manually by the highly experienced echocardiographer on ten healthy volunteers and six patients which depict the usefulness of the presented method.
机译:在整个心动周期中,左心室(LV)体积变化曲线是各种心血管疾病的临床评估的基本参数。当前,该评估通常是手动进行的,这是繁琐且耗时的,并且存在观察者之间和观察者内部的显着差异。本文介绍了一种基于非线性降维(NLDR)的自动方法,用于从二维(2-D)超声心动图图像中提取出心动周期内左心室容积变化的曲线。等距特征映射(Isomap)是最流行的NLDR算法之一。在这项研究中,将Isomap算法的修改版本(其中使用非刚性配准计算图像到图像的距离度量)应用于心脏一个周期的二维超声心动图图像。使用这种方法,这些图像的非线性信息被嵌入到二维流形中,并且每个图像都由所构造的流形上的符号来表征。这种新的表示方式可以根据LV体积变化可视化这些图像之间的关系,并可以自动提取LV体积变化的曲线。与传统的分割算法相比,我们的方法不需要任何LV心肌分割和跟踪,尤其是在超声心动图图像中比较困难。而且,不需要针对各种疾病的大量数据来进行训练。通过我们的方法获得的结果将由经验丰富的超声心动图专家对十名健康志愿者和六名患者进行手工评估,以定量评价所提出的方法的有效性。

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