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Statistical Segmentation of Carotid Plaque Neovascularization

机译:颈动脉斑块新血管化的统计分割

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In several studies, intraplaque neovascularization (IPN) has been linked with plaque vulnerability. The recent development of contrast enhanced ultrasound enables IPN detection, but an accurate quantification of IPN is a big challenge due to noise, motion, subtle contrast response, blooming of contrast and artifacts. We present an algorithm that automatically estimates the location and amount of contrast within the plaque over time. Plaque pixels are initially labeled through an iterative expectation-maximization (EM) algorithm. The used algorithm avoids several drawbacks of standard EM. It is capable of selecting the best number of components in an unsupervised way, based on a minimum message length criterion. Next, neighborhood information using a 5×5 kernel and spatiotemporal behavior are combined with the known characteristics of contrast spots in order to group components, identify artifacts and finalize the classification. Image sequences are divided into 3-seconds subgroups. A pixel is relabeled as an artifact if it is labeled as contrast for more than 1.5 seconds in at least two subgroups. For 10 plaques, automated segmentation results were validated with manual segmentation of contrast in 10 frames per clip. Average Dice index and area ratio were 0.73±0.1 (mean±SD) and 98.5±29.6 (%) respectively. Next, 45 atherosclerotic plaques were analyzed. Time integrated IPN surface area was calculated. Average area of IPN was 3.73±3.51 mm~2. Average area of 45 plaques was 11.6±8.6 mm~2. This method based on EM contrast segmentation provides a new way of IPN quantification.
机译:在几项研究中,颅内新血管(IPN)已与斑块脆弱性有关。最近的对比度增强超声波的发展使IPN检测能够进行IPN检测,但由于噪音,运动,微妙的对比度,坯树和伪影的盛开,准确地量化IPN是一个很大的挑战。我们提出了一种算法,它随着时间的推移自动估计斑块内的对比度的位置和数量。斑块像素最初通过迭代期望 - 最大化(EM)算法标记。使用的算法避免了标准EM的几个缺点。基于最小消息长度标准,它能够以无监督的方式选择最佳数量的组件。接下来,使用5×5内核和时空行为的邻域信息与对比度斑点的已知特征相结合,以便组件,识别伪像并最终确定分类。图像序列分为3秒子组。如果在至少两个子组中标记为对比度,则将像素重新标记为伪影。对于10个PLAQUES,自动分割结果验证了每剪辑10帧的对比度进行对比度。平均骰子指数和面积比分别为0.73±0.1(平均值±SD)和98.5±29.6(%)。接下来,分析了45个动脉粥样硬化斑块。计算时间集成IPN表面区域。 IPN的平均面积为3.73±3.51 mm〜2。平均面积为45个斑块为11.6±8.6 mm〜2。基于EM对比度分割的该方法提供了一种新的IPN量化方式。

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