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首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Improving the correction of eddy current-induced distortion in diffusion-weighted images by excluding signals from the cerebral spinal fluid
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Improving the correction of eddy current-induced distortion in diffusion-weighted images by excluding signals from the cerebral spinal fluid

机译:通过排除脑脊髓液中的信号来改善弥散加权图像中涡流引起的畸变的校正

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摘要

Iterative cross-correlation (ICC) is the most popularly used schema for correcting eddy current (EC)-induced distortion in diffusion-weighted imaging data, however, it cannot process data acquired at high b-values. We analyzed the error sources and affecting factors in parameter estimation, and propose an efficient algorithm by expanding the ICC framework with a number of techniques: (1) pattern recognition for excluding brain ventricles; (2) ICC with the extracted ventricle for parameter initialization; (3) gradient-based entropy correlation coefficient (GECC) for optimal and finer registration. Experiments demonstrated that our method is robust with high accuracy and error tolerance, and outperforms other ICC-family algorithms and popular approaches currently in use.
机译:迭代互相关(ICC)是校正扩散加权成像数据中涡流(EC)引起的畸变的最常用方法,但是,它无法处理以高b值获取的数据。我们分析了参数估计中的误差来源和影响因素,并通过扩展ICC框架并采用多种技术提出了一种有效的算法:(1)模式识别以排除脑室; (2)ICC与提取的心室进行参数初始化; (3)基于梯度的熵相关系数(GECC),用于最佳和精细配准。实验表明,我们的方法具有很高的准确性和容错性,并且性能优于其他ICC系列算法和当前使用的流行方法。

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