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A Generative Model for Image Segmentation Based on Label Fusion

机译:基于标签融合的图像分割生成模型

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We propose a nonparametric, probabilistic model for the automatic segmentation of medical images, given a training set of images and corresponding label maps. The resulting inference algorithms rely on pairwise registrations between the test image and individual training images. The training labels are then transferred to the test image and fused to compute the final segmentation of the test subject. Such label fusion methods have been shown to yield accurate segmentation, since the use of multiple registrations captures greater inter-subject anatomical variability and improves robustness against occasional registration failures. To the best of our knowledge, this manuscript presents the first comprehensive probabilistic framework that rigorously motivates label fusion as a segmentation approach. The proposed framework allows us to compare different label fusion algorithms theoretically and practically. In particular, recent label fusion or multiatlas segmentation algorithms are interpreted as special cases of our framework. We conduct two sets of experiments to validate the proposed methods. In the first set of experiments, we use 39 brain MRI scans—with manually segmented white matter, cerebral cortex, ventricles and subcortical structures—to compare different label fusion algorithms and the widely-used FreeSurfer whole-brain segmentation tool. Our results indicate that the proposed framework yields more accurate segmentation than FreeSurfer and previous label fusion algorithms. In a second experiment, we use brain MRI scans of 282 subjects to demonstrate that the proposed segmentation tool is sufficiently sensitive to robustly detect hippocampal volume changes in a study of aging and Alzheimer's Disease.
机译:我们给定图像的训练集和相应的标签图,为医学图像的自动分割提出了一种非参数概率模型。所得的推理算法依赖于测试图像和单个训练图像之间的成对配准。然后将训练标签转移到测试图像并融合以计算测试对象的最终分割。由于使用多个配准捕获了更大的受试者间解剖变异性并提高了针对偶发配准失败的鲁棒性,这种标签融合方法已显示出准确的分割效果。据我们所知,该手稿提出了第一个全面的概率框架,该框架严格地将标签融合作为一种分割方法。所提出的框架允许我们在理论上和实践上比较不同的标签融合算法。特别是,最近的标签融合或多图谱分割算法被解释为我们框架的特殊情况。我们进行了两组实验以验证所提出的方法。在第一组实验中,我们使用39个脑部MRI扫描-手动分割的白质,大脑皮层,心室和皮层下结构-比较不同的标记融合算法和广泛使用的FreeSurfer全脑分割工具。我们的结果表明,与FreeSurfer和以前的标签融合算法相比,提出的框架可产生更准确的细分。在第二个实验中,我们使用282位受试者的大脑MRI扫描来证明,在研究衰老和阿尔茨海默氏病的过程中,所提出的分割工具足以敏感地检测海马体积变化。

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