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Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)

机译:使用多个Atlases水平集框架(MALSF)从磁共振图像中自动进行Thalamus分割

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摘要

In this paper, we present an original multiple atlases level set framework (MALSF) for automatic, accurate and robust thalamus segmentation in magnetic resonance images (MRI). The contributions of the MALSF method are twofold. First, the main technical contribution is a novel label fusion strategy in the level set framework. Label fusion is achieved by seeking an optimal level set function that minimizes energy functional with three terms: label fusion term, image based term, and regularization term. This strategy integrates shape prior, image information and the regularity of the thalamus. Second, we use propagated labels from multiple registration methods with different parameters to take full advantage of the complementary information of different registration methods. Since different registration methods and different atlases can yield complementary information, multiple registration and multiple atlases can be incorporated into the level set framework to improve the segmentation performance. Experiments have shown that the MALSF method can improve the segmentation accuracy for the thalamus. Compared to ground truth segmentation, the mean Dice metrics of our method are 0.9239 and 0.9200 for left and right thalamus.
机译:在本文中,我们提出了一种原始的多图谱水平集框架(MALSF),用于磁共振图像(MRI)中的自动,准确和鲁棒的丘脑分割。 MALSF方法的贡献是双重的。首先,主要的技术贡献是在水平集框架中的一种新颖的标签融合策略。标签融合是通过寻求一种最佳水平集函数来实现的,该函数通过以下三个术语将能量函数降至最低:标签融合项,基于图像的项和正则化项。该策略整合了形状先验,图像信息和丘脑的规则性。其次,我们使用来自具有不同参数的多种注册方法的传播标签,以充分利用不同注册方法的补充信息。由于不同的注册方法和不同的地图集可以产生互补的信息,因此可以将多个注册和多个地图集合并到级别集框架中,以提高分割性能。实验表明,MALSF方法可以提高丘脑的分割精度。与地面真相分割相比,我们的方法的平均Dice指标分别为左丘脑和右丘脑0.9239和0.9200。

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