Segmentation of the myocardium from myocardial contrast echocardiography

John E. Pickard, Rob L. Janiczek, S. Acton, J. Sklenar, J. Hossack, Sanjiv Kaul
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引用次数: 2

Abstract

Myocardial contrast echocardiography (MCE) is a promising new technique that allows quantification of myocardium perfusion and therefore accurate diagnosis of coronary artery disease. MCE data, however, have previously required tedious and time-consuming off-line manual image processing. This paper presents results that demonstrate success of an automatic segmentation approach utilizing active shape models. A shape model was created from a training set of eleven manually drawn contours, which was then applied to twenty-two MCE images. Standard success metrics show that error from this automatic method is comparable to error found among manually drawn contours. Additionally, a more robust calculation of the key blood flow parameters was developed which can accommodate error in the segmentation, verified by high correlation between manually and automatically derived parameters.
心肌超声造影术对心肌的分割
心肌超声造影(MCE)是一种很有前途的新技术,可以定量心肌灌注,从而准确诊断冠状动脉疾病。然而,MCE数据以前需要繁琐且耗时的离线人工图像处理。本文给出的结果表明,利用主动形状模型的自动分割方法是成功的。从11个手工绘制的轮廓的训练集创建形状模型,然后将其应用于22个MCE图像。标准的成功度量表明,这种自动方法的误差与手动绘制轮廓的误差相当。此外,开发了一种更鲁棒的关键血流参数计算方法,该方法可以容纳分割中的误差,并通过手动和自动导出的参数之间的高度相关性进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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