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首页> 外文期刊>IEEE Transactions on Medical Imaging >3D Statistical Shape Models Incorporating Landmark-Wise Random Regression Forests for Omni-Directional Landmark Detection
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3D Statistical Shape Models Incorporating Landmark-Wise Random Regression Forests for Omni-Directional Landmark Detection

机译:结合了地标明智随机回归森林的3D统计形状模型,用于全方位地标检测

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摘要

3D Statistical Shape Models (3D-SSM) are widely used for medical image segmentation. However, during segmentation, they typically perform a very limited unidirectional search for suitable landmark positions in the image, relying on weak learners or use-case specific appearance models that solely take local image information into account. As a consequence, segmentation errors arise, and results in general depend on the accuracy of a previous model initialization. Furthermore, these methods become subject to a tedious and use-case dependent parameter tuning in order to obtain optimized results. To overcome these limitations, we propose an extension of 3D-SSM by landmark-wise random regression forests that perform an enhanced omni-directional search for landmark positions, thereby taking rich non-local image information into account. In addition, we provide a long distance model fitting based on a multi-scale approach, that allows an accurate and reproducible segmentation even from distant image positions, thus enabling an application without model initialization. Finally, translation of the proposed method to different organs is straightforward and requires no adaptation of the training process. In segmentation experiments on 45 clinical CT volumes, the proposed omni-directional search significantly increased accuracy and displayed great precision regardless of model initialization. Furthermore, for liver, spleen and kidney segmentation in a competitive multi-organ labeling challenge on publicly available data, the proposed method achieved similar or better results than the state of the art. Finally, liver segmentation results were obtained that successfully compete with specialized state-of-the-art methods from the well-known liver segmentation challenge SLIVER.
机译:3D统计形状模型(3D-SSM)被广泛用于医学图像分割。但是,在分割过程中,它们通常依靠弱学习者或仅考虑本地图像信息的用例特定外观模型,对图像中的合适地标位置执行非常有限的单向搜索。结果,出现分段误差,并且其结果通常取决于先前模型初始化的准确性。此外,为了获得优化的结果,这些方法变得乏味且依赖于用例的参数调整。为了克服这些局限性,我们提出了通过对地标位置执行增强型全向搜索的地标方式随机回归森林对3D-SSM的扩展,从而将丰富的非本地图像信息考虑在内。此外,我们提供了一种基于多尺度方法的长距离模型拟合,即使在遥远的图像位置也可以进行准确且可重复的分割,从而无需模型初始化即可进行应用。最后,所提出的方法向不同器官的翻译是直接的,并且不需要适应训练过程。在45个临床CT体积的分割实验中,无论模型初始化如何,拟议的全向搜索都显着提高了准确性并显示出很高的准确性。此外,对于公开数据竞争性多器官标签挑战中的肝,脾和肾分割,所提出的方法比现有技术获得了相似或更好的结果。最后,从众所周知的肝分割挑战SLIVER中获得了与专业最新技术成功竞争的肝分割结果。

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