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Manifold learning for image-based gating of intravascular ultrasound(IVUS) pullback sequences

机译:流形学习用于基于图像的血管内超声(IVUS)撤回序列门控

摘要

Intravascular Ultrasound(IVUS) is an imaging technology which provides cross-sectional images of internal coronary vessel struc- tures. The IVUS frames are acquired by pulling the catheter back with a motor running at a constant speed. However, during the pullback, some artifacts occur due to the beating heart. These artifacts cause inaccu- rate measurements for total vessel and lumen volume and limitation for further processing. Elimination of these artifacts are possible with an ECG (electrocardiogram) signal, which determines the time interval cor- responding to a particular phase of the cardiac cycle. However, using ECG signal requires a special gating unit, which causes loss of impor- tant information about the vessel, and furthermore, ECG gating function may not be available in all clinical systems. To address this problem, we propose an image-based gating technique based on manifold learning. Quantitative tests are performed on 3 different patients, 6 different pull- backs and 24 different vessel cuts. In order to validate our method, the results of our method are compared to those of ECG-Gating method.
机译:血管内超声(IVUS)是一种成像技术,可提供内部冠状动脉结构的横截面图像。 IVUS框架是通过以恒定速度运行的马达将导管向后拉来获得的。但是,在回撤期间,由于跳动的心脏会出现一些伪影。这些伪影会导致总血管和管腔体积的测量不准确,并限制后续处理。使用ECG(心电图)信号可以消除这些伪影,该信号确定与心动周期的特定阶段相对应的时间间隔。但是,使用ECG信号需要一个特殊的门控单元,这会丢失有关血管的重要信息,此外,ECG门控功能可能并非在所有临床系统中都可用。为了解决这个问题,我们提出了一种基于流形学习的基于图像的选通技术。对3位不同的患者,6位不同的后撤和24位不同的血管切开进行了定量测试。为了验证我们的方法,将我们的方法的结果与ECG门控方法的结果进行了比较。

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