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Towards Left Ventricle Segmentation From Magnetic Resonance Images

机译:从磁共振图像向左心室分割

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Quantitative evaluation of cardiac function from magnetic resonance images generally requires the clinician to first trace the left ventricle contours. However, detection of myocardial walls continues to remain a challenge on magnetic resonance images acquired from patients having serious pathologies because of three key issues: 1) low contrast; 2) high noise level; and 3) blood pool region in the left ventricle is highly non-homogeneous. In this paper, a semi-automatic graph-based method is proposed to segment such pathological left ventricles. This paper has mainly three contributions, and they are: 1) weighting function in graph-based approaches for image segmentation is thoroughly analyzed; 2) a new weighting function is introduced for graph-based methods to outline the endocardium; and 3) epicardium is extracted by a proposed active contour model. We have tested the algorithm on real data sets obtained from two sources, Hospital for Sick Children (SICK-KID), Toronto, and MICCAI Left Ventricle Segmentation Challenge. Average Dice coefficients (in %), false positive ratio, false negative ratio, sensitivity, and specificity for SICK-KID database are found to be 94.7 ± 1.1, 0.023, , and 0.76, respectively; for MICCAI database, they are , and 0.74, respectively. Average Hausdorff distances between segmented contour and ground truth in these two databases are determined to be 2.86 and 2.84 mm, respectively. Promising experimental results by the method tested on publicly available database demonstrate the potential of the approach.
机译:从磁共振图像对心脏功能进行定量评估通常需要临床医生首先追踪左心室轮廓。然而,由于三个关键问题,从严重病变患者获得的磁共振图像中,检测心肌壁仍然是一个挑战。 2)噪音高; 3)左心室的血池区域高度不均匀。本文提出了一种基于半自动图的方法来对这种病理性左心室进行分割。本文主要有三个方面的贡献,它们是:1)彻底分析了基于图的图像分割方法中的加权函数; 2)为基于图的方法概述心内膜引入了新的加权函数; 3)通过提出的主动轮廓模型提取心外膜。我们已经从两个来源获得的真实数据集上测试了该算法,这两个来源分别是多伦多的病童医院(SICK-KID)和MICCAI左心室分割挑战。发现SICK-KID数据库的平均Dice系数(%),假阳性率,假阴性率,敏感性和特异性分别为94.7±1.1、0.023,和0.76。对于MICCAI数据库,它们分别是和0.74。在这两个数据库中,分段轮廓和地面真实之间的平均Hausdorff距离分别确定为2.86和2.84 mm。通过在公开数据库中测试的方法,有希望的实验结果证明了该方法的潜力。

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