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An Improved Level Set for Liver Segmentation and Perfusion Analysis in MRIs

机译:MRI肝脏分割和灌注分析的改进水平集

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Determining liver segmentation accurately from MRIs is the primary and crucial step for any automated liver perfusion analysis, which provides important information about the blood supply to the liver. Although implicit contour extraction methods, such as level set methods (LSMs) and active contours, are often used to segment livers, the results are not always satisfactory due to the presence of artifacts and low-gradient response on the liver boundary. In this paper, we propose a multiple-initialization, multiple-step LSM to overcome the leakage and over-segmentation problems. The multiple-initialization curves are first evolved separately using the fast marching methods and LSMs, which are then combined with a convex hull algorithm to obtain a rough liver contour. Finally, the contour is evolved again using global level set smoothing to determine a precise liver boundary. Experimental results on 12 abdominal MRI series showed that the proposed approach obtained better liver segmentation results, so that a refined liver perfusion curve without respiration affection can be obtained by using a modified chamfer matching algorithm and the perfusion curve is evaluated by radiologists.
机译:从MRI准确确定肝脏分割是任何自动肝灌注分析的主要也是至关重要的步骤,它可以提供有关肝脏血液供应的重要信息。尽管通常使用隐式轮廓提取方法(例如,水平集方法(LSM)和活动轮廓)来分割肝脏,但由于在肝脏边界上存在伪影和低梯度响应,结果并不总是令人满意。在本文中,我们提出了一种多初始化,多步骤的LSM,以克服泄漏和过度分割的问题。首先使用快速行进方法和LSM分别生成多次初始化曲线,然后将其与凸包算法组合以获得粗糙的肝脏轮廓。最后,使用全局水平集平滑来再次确定轮廓,以确定精确的肝脏边界。在12个腹部MRI序列上的实验结果表明,该方法获得了更好的肝脏分割结果,因此,使用改进的倒角匹配算法可以得到没有呼吸影响的精确肝脏灌注曲线,并且放射线医师会评估灌注曲线。

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