Accurate Whole-Brain Segmentation for Alzheimer's Disease Combining an Adaptive Statistical Atlas and Multi-atlas.

Zhennan Yan, Shaoting Zhang, Xiaofeng Liu, Dimitris N Metaxas, Albert Montillo
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引用次数: 9

Abstract

Accurate segmentation of whole brain MR images including the cortex, white matter and subcortical structures is challenging due to inter-subject variability and the complex geometry of brain anatomy. However a precise solution would enable accurate, objective measurement of structure volumes for disease quantification. Our contribution is three-fold. First we construct an adaptive statistical atlas that combines structure specific relaxation and spatially varying adaptivity. Second we integrate an isotropic pairwise class-specific MRF model of label connectivity. Together these permit precise control over adaptivity, allowing many structures to be segmented simultaneously with superior accuracy. Third, we develop a framework combining the improved adaptive statistical atlas with a multi-atlas method which achieves simultaneous accurate segmentation of the cortex, ventricles, and sub-cortical structures in severely diseased brains, a feat not attained in [18]. We test the proposed method on 46 brains including 28 diseased brain with Alzheimer's and 18 healthy brains. Our proposed method yields higher accuracy than state-of-the-art approaches on both healthy and diseased brains.

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结合自适应统计图谱和多图谱对阿尔茨海默病进行精确的全脑分割。
由于受试者之间的可变性和大脑解剖结构的复杂几何形状,包括皮层、白质和皮层下结构在内的全脑MR图像的精确分割是具有挑战性的。然而,精确的解决方案将能够准确、客观地测量用于疾病量化的结构体积。我们的贡献是三倍的。首先,我们构建了一个自适应统计图谱,该图谱结合了结构特异性松弛和空间变化的自适应性。其次,我们集成了标签连通性的各向同性成对类特定MRF模型。这些共同允许对自适应性进行精确控制,允许以优异的精度同时分割许多结构。第三,我们开发了一个框架,将改进的自适应统计图谱与多图谱方法相结合,实现了对严重疾病大脑中皮层、心室和亚皮层结构的同时精确分割,这是[18]中没有实现的壮举。我们在46个大脑上测试了所提出的方法,其中包括28个患有阿尔茨海默病的大脑和18个健康的大脑。我们提出的方法在健康和患病的大脑上都比最先进的方法产生了更高的准确性。
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