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首页> 外文期刊>NeuroImage >CLASSIC: consistent longitudinal alignment and segmentation for serial image computing.
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CLASSIC: consistent longitudinal alignment and segmentation for serial image computing.

机译:CLASSIC:用于串行图像计算的一致的纵向对齐和分段。

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This paper proposes a temporally consistent and spatially adaptive longitudinal MR brain image segmentation algorithm, referred to as CLASSIC, which aims at obtaining accurate measurements of rates of change of regional and global brain volumes from serial MR images. The algorithm incorporates image-adaptive clustering, spatiotemporal smoothness constraints, and image warping to jointly segment a series of 3-D MR brain images of the same subject that might be undergoing changes due to development, aging, or disease. Morphological changes, such as growth or atrophy, are also estimated as part of the algorithm. Experimental results on simulated and real longitudinal MR brain images show both segmentation accuracy and longitudinal consistency.
机译:本文提出了一种时间一致性和空间自适应的纵向MR脑图像分割算法,称为CLASSIC,旨在从串行MR图像中准确测量区域和全局脑体积变化率。该算法结合了图像自适应聚类,时空平滑约束和图像变形,以共同分割同一受试者的一系列3-D MR脑图像,这些图像可能由于发育,衰老或疾病而发生变化。诸如生长或萎缩之类的形态变化也被估计为算法的一部分。在模拟和真实纵向MR脑图像上的实验结果显示了分割精度和纵向一致性。

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