超声心动图序列测量左心室容积

Yi Guo, S. Green, L. Park, Lauren Rispen
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引用次数: 1

摘要

左心室容积测量是生理学研究中的一个难题。其中一种非侵入性的方法是超声心动图。通过从超声图像中提取左心室面积,可以用左心室面积的大小来近似计算容积。该问题的核心是在考虑时空信息的噪声图像中识别左心室。我们提出了自适应稀疏平滑左心室分割的超声心动图视频的每一帧的优势,鲁棒性强的斑点噪声在超声图像。然后通过固定秩主成分分析作为后处理进一步调整识别出的左心室面积(作为极坐标系曲线)。由生理学专家在两个数据集上对部分帧的左心室区域进行了测试,并与基于活动轮廓的方法进行了比较。实验结果表明,该方法具有较好的精度。
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Left Ventricle Volume Measuring using Echocardiography Sequences
Measuring left ventricle (LV) volume is a challenging problem in physiological study. One of the non-intrusive methods that is possible for this task is echocardiography. By extracting left ventricle area from ultrasound images, the volume can be approximated by the size of the left ventricle area. The core of the problem becomes the identification of the left ventricle in noisy images considering spatial temporal information. We propose adaptive sparse smoothing for left ventricle segmentation for each frame in echocardiography video for the benefit of robustness against strong speckle noise in ultrasound imagery. Then we adjust the identified left ventricle areas (as curves in polar coordinate system) further by a fixed rank principal component analysis as post processing. This method is tested on two data sets with labelled left ventricle areas for some frames by expert physiologist and compared against active contour based method. The experimental results show clearly that the proposed method has better accuracy than that of the competitor.
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