超声心动图图像中基于小波的主动脉环大小

N. Mohammad, Z. Omar, U. U. Sheikh, A. Rahman, M. Sahrim
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引用次数: 0

摘要

主动脉瓣狭窄(AS)是一种心脏小叶内的钙化沉积使瓣膜变窄并限制血液流经瓣膜的情况。这种疾病会随着时间的推移而发展,并可能影响心脏瓣膜的机制。为了缓解这种情况而不诉诸于有死亡风险的手术,一种新的治疗方法被引入:经导管主动脉瓣植入术(TAVI),其中需要从实时超声心动图(Echo)获得图像来确定主动脉环的确切大小。然而,回声数据经常受到散斑噪声和低像素分辨率的影响,这可能导致环空大小不正确。因此,我们的研究旨在从回声图像中自动检测和测量主动脉环的大小。提出了图像去噪和目标检测两个阶段的算法。对于散斑噪声的去除,采用了小波阈值技术。它由三个连续的步骤组成;应用线性离散小波变换,对小波系数进行阈值化,并进行线性逆小波变换。对于下一阶段的分析,几个形态学操作被用来执行目标检测以及阀门尺寸。结果表明,该自动化系统能够根据地面真实情况产生更精确的尺寸。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet-based aortic annulus sizing of echocardiography images
Aortic stenosis (AS) is a condition where the calcification deposit within the heart leaflets narrows the valve and restricts the blood from flowing through it. This disease is progressive over time where it may affect the mechanism of the heart valve. To alleviate this condition without resorting to surgery, which runs the risk of mortality, a new method of treatment has been introduced: Transcatheter Aortic Valve Implantation (TAVI), in which imagery acquired from real-time echocardiogram (Echo) are needed to determine the exact size of aortic annulus. However, Echo data often suffers from speckle noise and low pixel resolution, which may result in incorrect sizing of the annulus. Our study therefore aims to perform an automated detection and measurement of aortic annulus size from Echo imagery. Two stages of algorithm are presented — image denoising and object detection. For the removal of speckle noise, Wavelet thresholding technique is applied. It consists of three sequential steps; applying linear discrete wavelet transform, thresholding wavelet coefficients and performing linear inverse wavelet transform. For the next stage of analysis, several morphological operations are used to perform object detection as well as valve sizing. The results showed that the automated system is able to produce more accurate sizing based on ground truth.
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