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Automatic Cortical Gyral Parcellation Using Probabilistic Atlas and Graph Cuts

机译:使用概率图谱和图切自动进行皮质回旋分割

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Automatic parcellation of cortical surfaces into sulci or gyri based regions is of great importance in studying the structure and function of the human brain. This paper presents a novel method for automatic parcellation of cortical surfaces into gyri based regions. The method is composed of two major steps: data-driven gyral patch segmentation and model-driven gyral patch labeling. The gyral patch segmentation is achieved by several steps, including sulcal region segmentation, sulcal basin parcellation, gyral crest segments extraction and gyral patch segmentation. The gyral patch labeling is formulated as an energy minimization problem, in which a cortical probabilistic atlas and the curvature information on surfaces are used to define the energy function. The energy function is efficiently solved by the graph cuts method. A unique feature of the proposed method is that it does not require high dimensional spatial normalization on images or surfaces. The method has been successfully applied to cortical surfaces of 15 young healthy brain MR images. Quantitative and qualitative evaluation results demonstrate the validity of the proposed method.
机译:在研究人脑的结构和功能时,将皮质表面自动分割成基于龈沟或回旋的区域非常重要。本文提出了一种新的方法,可将皮质表面自动分割为基于回旋的区域。该方法包括两个主要步骤:数据驱动的回旋斑块分割和模型驱动的回旋斑块标记。通过几个步骤来实现回旋区分割,这些步骤包括龈沟区分割,沟盆分割,回旋段提取和回旋区分割。将回旋贴片标签公式化为能量最小化问题,其中使用皮质概率图集和表面上的曲率信息来定义能量函数。通过图割法可以有效地解决能量函数。所提出的方法的独特之处在于它不需要在图像或表面上进行高维空间归一化。该方法已成功应用于15个年轻健康大脑MR图像的皮质表面。定量和定性评估结果证明了该方法的有效性。

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