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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Segmentation of multiple heart cavities in 3-D transesophageal ultrasound images
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Segmentation of multiple heart cavities in 3-D transesophageal ultrasound images

机译:3-D经食道超声图像中多个心腔的分割

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Three-dimensional transesophageal echocardiography (TEE) is an excellent modality for real-time visualization of the heart and monitoring of interventions. To improve the usability of 3-D TEE for intervention monitoring and catheter guidance, automated segmentation is desired. However, 3-D TEE segmentation is still a challenging task due to the complex anatomy with multiple cavities, the limited TEE field of view, and typical ultrasound artifacts. We propose to segment all cavities within the TEE view with a multi-cavity active shape model (ASM) in conjunction with a tissue/blood classification based on a gamma mixture model (GMM). 3-D TEE image data of twenty patients were acquired with a Philips X7???2t matrix TEE probe. Tissue probability maps were estimated by a two-class (blood/tissue) GMM. A statistical shape model containing the left ventricle, right ventricle, left atrium, right atrium, and aorta was derived from computed tomography angiography (CTA) segmentations by principal component analysis. ASMs of the whole heart and individual cavities were generated and consecutively fitted to tissue probability maps. First, an average whole-heart model was aligned with the 3-D TEE based on three manually indicated anatomical landmarks. Second, pose and shape of the whole-heart ASM were fitted by a weighted update scheme excluding parts outside of the image sector. Third, pose and shape of ASM for individual heart cavities were initialized by the previous whole heart ASM and updated in a regularized manner to fit the tissue probability maps. The ASM segmentations were validated against manual outlines by two observers and CTA derived segmentations.
机译:三维经食道超声心动图(TEE)是心脏实时可视化和干预监测的绝佳方式。为了提高3-D TEE在介入监测和导管引导中的可用性,需要自动分割。然而,由于具有多个腔体的复杂解剖结构,有限的TEE视野和典型的超声伪像,3-D TEE分割仍然是一项艰巨的任务。我们建议使用多腔活动形状模型(ASM)结合基于伽玛混合模型(GMM)的组织/血液分类,对TEE视图内的所有腔进行细分。用飞利浦X7-6 2t矩阵TEE探头采集了20名患者的3-D TEE图像数据。组织概率图由两类(血液/组织)GMM估算。通过主成分分析从计算机断层摄影血管造影(CTA)分割中得出包含左心室,右心室,左心房,右心房和主动脉的统计形状模型。生成了整个心脏和单个腔的ASM,并将其连续拟合到组织概率图。首先,基于三个手动指示的解剖标志,将平均全心模型与3-D TEE对齐。其次,通过加权更新方案拟合全心ASM的姿势和形状,排除图像扇区以外的部分。第三,单个心腔的ASM的姿势和形状由先前的整个心脏ASM初始化,并以有规律的方式更新以适合组织概率图。通过两名观察员的手工轮廓和CTA得出的细分,对ASM细分进行了验证。

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