体素填充:高质量的体插值从多个序列的横断面图像

R. Minamikawa-Tachino, H. Sakuraba, Yumi Yamaguchi, I. Fujishiro
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引用次数: 0

摘要

本文提出了一种新的体素填充算法,用于从磁共振成像(MRI)获得的多个稀疏间隔的截面图像序列中重建单个高质量的体数据。虽然使用最先进的MRI设备可以获得精细和各向同性的横断面图像,但在临床检查中通常进行稀疏采样。利用三个规则网格体数据集进行了深入的可行性研究,这些数据集的来源包括一个分析函数;数值模拟;和测量。在这两种情况下,体素填充算法从三组横截面图像序列中生成的体积数据比从单个类截面图像序列中线性重建的体积数据质量更高。将体素填充算法扩展到从一般MRI临床检查中常见的三组非正交截面图像序列中重建一个线性结构的体数据集。扩展体素填充算法的有效性用一个包含肿瘤的人脑MRI数据集来说明。
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Voxel Stuffing: high-quality volume interpolation from multiple sequences of cross-sectional images
This paper proposes a new algorithm, called Voxel Stuffing, to reconstruct single high-quality volume data from multiple sparsely-spaced sequences of cross-sectional images acquired by magnetic resonance imaging (MRI). Although fine and isotropic cross-sectional images can be obtained by using the most advanced MRI facilities, sparse sampling is commonly performed in the clinical examination. Intensive feasibility study was performed with three regular grid volume data sets, whose sources include an analytic function; a numerical simulation; and measurements. In either case, the Voxel Stuffing algorithm generates a higher-quality volume data from triple sequences of cross-sectional images in comparison with any volume data reconstructed linearly from a single sequence of class-sectional images. The Voxel Stuffing algorithm is extended to reconstruct a rectilinearly structured volume data set from triple non-orthogonal sequences of cross-sectional images, which are taken commonly in the general MRI clinical examination. The effectiveness of the extended Voxel Stuffing algorithm is illustrated with an MRI data set for a human brain containing a tumor.
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