首页> 外文期刊>Annals of the American Thoracic Society >Improved graph cut model with features of superpixels and neighborhood patches for myocardium segmentation from ultrasound image
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Improved graph cut model with features of superpixels and neighborhood patches for myocardium segmentation from ultrasound image

机译:改进的图形切割模型,具有超顶像素和邻域贴片的特征,用于超声图像的心肌细分

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摘要

Ultrasound (US) imaging has the technical advantages for the functional evaluation of myocardium compared with other imaging modalities. However, it is a challenge of extracting the myocardial tissues from the background due to low quality of US imaging. To better extract the myocardial tissues, this study proposes a semi-supervised segmentation method of fast Superpixels and Neighborhood Patches based Continuous Min-Cut (fSP-CMC). The US image is represented by a graph, which is constructed depending on the features of superpixels and neighborhood patches. A novel similarity measure is defined to capture and enhance the features correlation using Pearson correlation coefficient and Pearson distance. Interactive labels provided by user play a subsidiary role in the semi-supervised segmentation. The continuous graph cut model is solved via a fast minimization algorithm based on augmented Lagrangian and operator splitting. Additionally, Non-Uniform Rational B-Spline (NURBS) curve fitting is used as post-processing to solve the low resolution problem caused by the graph-based method. 200 B-mode US images of left ventricle of the rats were collected in this study. The myocardial tissues were segmented using the proposed fSP-CMC method compared with the method of fast Neighborhood Patches based Continuous Min-Cut (fP-CMC). The results show that the fSP-CMC segmented the myocardial tissues with a higher agreement with the ground truth (GT) provided by medical experts. The mean absolute distance (MAD) and Hausdorff distance (HD) were significantly lower than those values of fP-CMC (p < 0.05), while the Dice was significantly higher (p < 0.05). In conclusion, the proposed fSP-CMC method accurately and effectively segments the myocardiumn in US images. This method has potentials to be a reliable segmentation method and useful for the functional evaluation of myocardium in the future study.
机译:超声(美国)成像具有与其他成像方式相比的心肌功能评估的技术优势。然而,由于美国成像的低质量,从背景中提取心肌组织是一种挑战。为了更好地提取心肌组织,本研究提出了一种基于快速超像素的半监控分段方法和基于连续的MIN-CUT(FSP-CMC)。美国图像由图形表示,该图是根据超像素和邻域斑块的特征构造的图形。使用Pearson相关系数和Pearson距离定义了一种新颖的相似性度量来捕获和增强特征相关性。用户提供的交互式标签在半监督分段中播放子公司角色。连续图剪切模型通过基于增强拉格朗日和操作员分裂的快速最小化算法来解决。另外,非均匀的Rational B样条(NURBS)曲线拟合用作后处理以解决由基于图形的方法引起的低分辨率问题。在本研究中收集了200 B模式美国的左心室的图像。与连续敏切(FP-CMC)的快速邻域贴片的方法相比,使用所提出的FSP-CMC方法进行心肌组织。结果表明,FSP-CMC将心肌组织与医学专家提供的地面真理(GT)进行了更高的协议。平均绝对距离(Mad)和Hausdorff距离(HD)显着低于FP-CMC的值(P <0.05),而骰子显着高(P <0.05)。总之,提出的FSP-CMC方法准确且有效地将Myocardiumn中的肌动脉段进行了准确和有效。该方法具有可靠的分割方法,可用于未来研究中心肌的功能评估。

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