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首页> 外文期刊>International journal of imaging systems and technology >Simple image intensity compensation (SIMIC) method prior to application of distortion correction algorithms in brain diffusion Tensor Magnetic Resonance Imaging: Validation test for two cost functions of distortion correction algorithms
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Simple image intensity compensation (SIMIC) method prior to application of distortion correction algorithms in brain diffusion Tensor Magnetic Resonance Imaging: Validation test for two cost functions of distortion correction algorithms

机译:在脑扩散张量磁共振成像中应用畸变校正算法之前的简单图像强度补偿(SIMIC)方法:畸变校正算法的两个成本函数的验证测试

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摘要

The purpose of this study is to design a simple image intensity compensation (SIMIC) method prior to the application of a variety of cost functions for distortion correction in diffusion tensor imaging (DTI). The synthetic dataset consists of each direction of diffusion weighted imaging (DWI) made by multiplication of nondiffusion weighted image (b = 0 image) and tensor matrices. We added the effects of patient motion and eddy current distortion using translation, rotation, scaling and shearing matrices. We calculated the b = 0 image of each direction from original DTI, inversely. A co-registration method was applied to the extracted b = 0 images of each direction based on the original b = 0 image and then, the transformation matrices were generated and the original DTI were transformed using this transformation matrix. For the DTI distortion correction, two kinds of cost functions, normalized mutual information (NMI) and normalized cross-correlation (NCC), were used. Visual assessments and quantitative measurements were used to evaluate the results. When using the NMI as a cost function, the quantitative results showed no significant differences between NMI and NMI with SIMIC method. However, there are significant differences compared with using the NCC as a cost function. Our study showed cost function for image distortion correction with SIMIC method improved the results both quantitatively and in terms of qualitative accuracy. This method may be helpful for DTI analysis and helpful for increasing accuracy. (c) 2015 Wiley Periodicals, Inc. Int J Imaging Syst Technol, 25, 328-33, 2015
机译:这项研究的目的是设计一种简单的图像强度补偿(SIMIC)方法,然后再应用各种代价函数进行弥散张量成像(DTI)中的畸变校正。合成数据集包括通过非扩散加权图像(b = 0图像)和张量矩阵相乘得出的每个扩散加权成像(DWI)方向。我们使用平移,旋转,缩放和剪切矩阵添加了患者运动和涡流失真的影响。我们反过来从原始DTI计算了每个方向的b = 0图像。基于原始b = 0图像,将共配准方法应用于每个方向的提取b = 0图像,然后生成转换矩阵,并使用此转换矩阵对原始DTI进行转换。对于DTI失真校正,使用了两种成本函数:标准化互信息(NMI)和标准化互相关(NCC)。使用视觉评估和定量测量来评估结果。当使用NMI作为成本函数时,定量结果显示NMI和采用SIMIC方法的NMI之间没有显着差异。但是,与使用NCC作为成本函数相比,存在显着差异。我们的研究表明,使用SIMIC方法进行图像失真校正的代价函数在定量和定性精度方面均改善了结果。此方法可能有助于DTI分析并有助于提高准确性。 (c)2015 Wiley Periodicals,Inc.国际影像技术学报,2015,25,328-33,

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