A Method for Automated Cortical Surface Registration and Labeling.

Anand A Joshi, David W Shattuck, Richard M Leahy
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引用次数: 52

Abstract

Registration and delineation of anatomical features in MRI of the human brain play an important role in the investigation of brain development and disease. Accurate, automatic and computationally efficient cortical surface registration and delineation of surface-based landmarks, including regions of interest (ROIs) and sulcal curves (sulci), remain challenging problems due to substantial variation in the shapes of these features across populations. We present a method that performs a fast and accurate registration, labeling and sulcal delineation of brain images. The new method presented in this paper uses a multiresolution, curvature based approach to perform a registration of a subject brain surface model to a delineated atlas surface model; the atlas ROIs and sulcal curves are then mapped to the subject brain surface. A geodesic curvature flow on the cortical surface is then used to refine the locations of the sulcal curves sulci and label boundaries further, such that they follow the true sulcal fundi more closely. The flow is formulated using a level set based method on the cortical surface, which represents the curves as zero level sets. We also incorporate a curvature based weighting that drives the curves to the bottoms of the sulcal valleys in the cortical folds. Finally, we validate our new approach by comparing sets of automatically delineated sulcal curves it produced to corresponding sets of manually delineated sulcal curves. Our results indicate that the proposed method is able to find these landmarks accurately.

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一种皮质表面自动配准与标记方法。
人脑MRI解剖特征的登记和描绘在脑发育和疾病的研究中起着重要的作用。准确、自动和计算效率高的皮质表面配准和基于表面的地标的描绘,包括感兴趣区域(roi)和沟曲线(sulci),仍然是具有挑战性的问题,因为这些特征的形状在人群中存在很大差异。我们提出了一种快速准确的脑图像配准、标记和脑沟描绘方法。本文提出的新方法采用多分辨率、基于曲率的方法将受试者脑表面模型配准到描绘的图谱表面模型;然后将地图集roi和脑沟曲线映射到受试者的大脑表面。然后使用皮质表面的测地线曲率流来细化沟曲线的位置,并进一步标记边界,使它们更紧密地遵循真正的沟底。在皮质表面上使用基于水平集的方法来制定流,该方法将曲线表示为零水平集。我们还结合了基于曲率的加权,将曲线驱动到皮质褶皱的沟谷底部。最后,我们通过将自动绘制的沟曲线集与相应的手动绘制的沟曲线集进行比较来验证我们的新方法。结果表明,该方法能够准确地找到这些地标。
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