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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Multi-Atlas-Based Segmentation With Local Decision Fusion—Application to Cardiac and Aortic Segmentation in CT Scans
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Multi-Atlas-Based Segmentation With Local Decision Fusion—Application to Cardiac and Aortic Segmentation in CT Scans

机译:基于多图集的局部决策融合分割—在CT扫描中的心脏和主动脉分割中的应用

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摘要

A novel atlas-based segmentation approach based on the combination of multiple registrations is presented. Multiple atlases are registered to a target image. To obtain a segmentation of the target, labels of the atlas images are propagated to it. The propagated labels are combined by spatially varying decision fusion weights. These weights are derived from local assessment of the registration success. Furthermore, an atlas selection procedure is proposed that is equivalent to sequential forward selection from statistical pattern recognition theory. The proposed method is compared to three existing atlas-based segmentation approaches, namely (1) single atlas-based segmentation, (2) average-shape atlas-based segmentation, and (3) multi-atlas-based segmentation with averaging as decision fusion. These methods were tested on the segmentation of the heart and the aorta in computed tomography scans of the thorax. The results show that the proposed method outperforms other methods and yields results very close to those of an independent human observer. Moreover, the additional atlas selection step led to a faster segmentation at a comparable performance.
机译:提出了一种基于多种配准组合的新颖的基于图集的分割方法。多个地图集被注册到目标图像。为了获得目标的分割,将图集图像的标签传播到该目标。通过空间变化的决策融合权重来组合传播的标签。这些权重来自本地对注册成功的评估。此外,提出了一种图集选择程序,该程序等效于从统计模式识别理论中进行顺序的正向选择。将该方法与现有的三种基于图集的分割方法进行了比较,即(1)基于单个图集的分割,(2)基于平均形状图集的分割和(3)基于平均集的多图集分割作为决策融合。在胸部的计算机断层扫描中对心脏和主动脉的分割进行了测试。结果表明,所提出的方法优于其他方法,并且产生的结果与独立观察者的结果非常接近。此外,附加的图集选择步骤可在可比性能下实现更快的分割。

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