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首页> 外文期刊>Journal of medical systems >Inter-greedy technique for fusion of different segmentation strategies leading to high-performance carotid IMT measurement in ultrasound images.
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Inter-greedy technique for fusion of different segmentation strategies leading to high-performance carotid IMT measurement in ultrasound images.

机译:贪婪技术用于融合不同的分割策略,从而在超声图像中实现高性能的颈动脉IMT测量。

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摘要

User-based estimation of intima-media thickness (IMT) of carotid arteries leads to subjectivity in its decision support systems, while being used as a cardiovascular risk marker. During automated computer-based decision support, we had developed segmentation strategies that follow three main courses of our contributions: (a) signal processing approach combined with snakes and fuzzy K-means (CULEXsa), (b) integrated approach based on seed and line detection followed by probability based connectivity and classification (CALEXsa), and (c) morphological approach with watershed transform and fitting (WS). These grayscale segmentation algorithms yielding carotid wall boundaries has certain bias along with their own merits. We recently developed a fusion technique that was helpful in removing bias which combines two carotid wall boundaries using ground truth as an ideal marker. Here we have extended this fusion concept by taking merits of these multiple boundaries, so called, Inter-Greedy (IG) approach. Further we estimate IMT from these fused boundaries from multiple sources. Starting from the technique with the overall least system error (the snake-based one), we iteratively swapped the vertices of the profiles until we minimized its overall distance with respect to ground truth. The fusion boundary was the Inter-Greedy boundary. We used the polyline distance metric for performance evaluation and error minimization. We ran the segmentation protocol over the database of 200 carotid longitudinal B-mode ultrasound images and compared the performance of all the four techniques (CALEXia, CULEXsa, WS, IG). The mean error of Inter-Greedy technique yielded 0.32 +/- 0.44 pixel (20.0 +/- 27.5 microm) for the LI boundary (a 33.3% +/- 5.6% improvement over initial best performing technique) and 0.21 +/- 0.34 pixel (13.1 +/- 21.3 microm) for MA boundary (a 32.3% +/- 6.7% improvement). IMT measurement error for Greedy method was 0.74 +/- 0.75 pixel (46.3 +/- 46.9 microm), a 43.5% +/- 2.4% improvement.
机译:基于用户的颈动脉内膜中层厚度(IMT)估计导致了其决策支持系统的主观性,同时还被用作心血管疾病的危险标记。在基于计算机的自动化决策支持过程中,我们开发了细分策略,该策略遵循了我们的三个主要课程:(a)结合蛇和模糊K均值(CULEXsa)的信号处理方法,(b)基于种子和品系的集成方法检测,然后进行基于概率的连通性和分类(CALEXsa),以及(c)具有分水岭变换和拟合(WS)的形态学方法。这些产生颈动脉壁边界的灰度分割算法具有一定的偏见及其优点。我们最近开发了一种融合技术,该技术有助于消除偏见,该融合使用地面真相作为理想标记物,结合了两个颈动脉壁边界。在这里,我们通过利用这些多重边界的优点扩展了这种融合概念,即所谓的贪婪间(IG)方法。此外,我们从多个来源的这些融合边界估计了IMT。从总体误差最小的技术(基于蛇的误差)开始,我们迭代地交换轮廓的顶点,直到相对于地面真实性最小化轮廓的总距离。融合边界是格里迪边界。我们将折线距离度量用于性能评估和误差最小化。我们在200例颈动脉纵向B型超声图像的数据库上运行了分割协议,并比较了所有四种技术(CALEXia,CULEXsa,WS,IG)的性能。贪婪技术的平均误差为LI边界产生了0.32 +/- 0.44像素(20.0 +/- 27.5微米)(相对于最初的最佳性能技术提高了33.3%+/- 5.6%)和0.21 +/- 0.34像素(13.1 +/- 21.3微米)的MA边界(改善了32.3%+/- 6.7%)。贪婪方法的IMT测量误差为0.74 +/- 0.75像素(46.3 +/- 46.9微米),提高了43.5%+/- 2.4%。

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