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Robust Live Tracking of Mitral Valve Annulus for Minimally-Invasive Intervention Guidance

机译:用于微创干预指导的二尖瓣环的强大实时跟踪

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Mitral valve (MV) regurgitation is an important cardiac disorder that affects 2-3% of the Western population. While valve repair is commonly performed under open-heart surgery, an increasing number of transcatheter MV repair (TMVR) strategies are being developed. To be successful, TMVR requires extensive image guidance due to the complexity of MV physiology and of the therapies, in particular during device deployment. New trans-esophageal echocardiography (TEE) enable real-time, full-volume imaging of the valve including 3D anatomy and 3D color-Doppler flow. Such new transducers open a large range of applications for TMVR guidance, like the 3D assessment of the impact of a therapy on the MV function. In this manuscript we propose an algorithm towards the goal of live quantification of the MV anatomy. Leveraging the recent advances in ultrasound hardware, and combining machine learning approaches, predictive search strategies and efficient image-based tracking algorithms, we propose a novel method to automatically detect and track the MV annulus over very long image sequences. The method was tested on 12 4D TEE annotated sequences acquired in patients suffering from a large variety of disease. These sequences have been rigidly transformed to simulate probe motion. Obtained results showed a tracking accuracy of 4.04mm mean error, while demonstrating robustness when compared to purely image based methods. Our approach therefore paves the way towards quantitative guidance of TMVR through live 3D valve modeling.
机译:二尖瓣(MV)反流性是一种重要的心脏病,影响西方人口的2-3%。虽然阀门修复通常在露天手术下进行,但正在开发出越来越多的经截管MV修复(TMVR)策略。为了成功,由于MV生理学和治疗的复杂性,TMVR需要广泛的图像指导,特别是在设备部署期间。新的杂物食管超声心动图(TEE)能够实现阀门的实时,全体积成像,包括3D解剖和3D色彩流程。这种新的传感器为TMVR指导开辟了大量应用,如3D评估治疗对MV功能的影响。在本手稿中,我们提出了一种朝向MV解剖学的直播定量目标的算法。利用超声硬件的最新进步,以及组合机器学习方法,预测搜索策略和基于高效的基于图像的跟踪算法,我们提出了一种新的方法,可以在非常长的图像序列上自动检测和跟踪MV环形。该方法在患有各种疾病的患者中获得的12个4D TEE注释序列。这些序列已经刚性变换以模拟探针运动。获得的结果显示出4.04mm均值误差的跟踪精度,同时与基于图像的方法相比,展示了鲁棒性。因此,我们的方法通过Live 3D阀建模铺平了TMVR的定量指导。

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