Shape-based Similarity Retrieval of Doppler Images for Clinical Decision Support.

T Syeda-Mahmood, P Turaga, D Beymer, F Wang, A Amir, H Greenspan, K Pohl
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引用次数: 0

Abstract

Flow Doppler imaging has become an integral part of an echocardiographic exam. Automated interpretation of flow doppler imaging has so far been restricted to obtaining hemodynamic information from velocity-time profiles depicted in these images. In this paper we exploit the shape patterns in Doppler images to infer the similarity in valvular disease labels for purposes of automated clinical decision support. Specifically, we model the similarity in appearance of Doppler images from the same disease class as a constrained non-rigid translation transform of the velocity envelopes embedded in these images. The shape similarity between two Doppler images is then judged by recovering the alignment transform using a variant of dynamic shape warping. Results of similarity retrieval of doppler images for cardiac decision support on a large database of images are presented.

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基于形状的多普勒图像相似性检索用于临床决策支持
血流多普勒成像已成为超声心动图检查不可或缺的一部分。迄今为止,对血流多普勒成像的自动解读仅限于从这些图像中描述的速度-时间曲线中获取血液动力学信息。在本文中,我们利用多普勒图像中的形状模式来推断瓣膜疾病标签的相似性,从而实现自动临床决策支持的目的。具体来说,我们将同一疾病类别的多普勒图像的外观相似性建模为这些图像中嵌入的速度包络线的约束非刚性平移变换。然后,通过使用动态形状扭曲变体恢复对齐变换来判断两幅多普勒图像的形状相似性。本文介绍了在大型图像数据库中进行多普勒图像相似性检索以支持心脏决策的结果。
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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CiteScore
43.50
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