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Non-Rigid Registration of Multi-Modality Medical Image Using Combined Gradient Information and Mutual Information

机译:使用组合梯度信息和相互信息,非模态医学图像的非刚性注册

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摘要

Non-rigid multi-modality medical image registration is a vital problem in medical image analysis, and mutual information (MI) is a popular similarity measure. However, mutual information performs badly in the low-contrast regions due to the intensity discretization procedure beforethe accumulation of statistical entropy. A possible solution is to add spatial information into the criterion. In this paper, a novel intensity-based similarity measure is proposed for deformable medical image registration, and both mutual information and gradient information are considered.The basic idea is to distribute mutual information to each pixel, and the discrete mutual information is multiplied with a defined weighting term, which is a function of the gradient information. According to our definition, the proposed measure provides a strict restriction that gradientsin reference and float images should have the same orientation, either identical or opposing directions. By adding of the weighting term, the registration of the strong gradient regions has a priority over the small gradient regions. In addition, several non-rigid registration experimentshave been carried out to verify the effectiveness of the proposed method. The results indicate that one of the key advantages of the new similarity measure is its restriction in the low-contrast regions. The proposed method outperforms MI, sum of squared distances (SSD) and multifeature mutualinformation (MMI) with respect to registration accuracy and sensitivity to the grid spacing, and it performs better than residual complexity (RC) when the grid spacing becomes large and the registration results become stable.
机译:非刚性多模态医学图像登记是医学图像分析中的重要问题,并且互信息(MI)是一种流行的相似度测量。然而,由于强度离散化程序,在低对比度区域中,相互信息在统计熵的累积中累积而在低对比度区域中执行。可能的解决方案是将空间信息添加到标准中。在本文中,提出了一种新的基于强度的相似度测量,用于可变形的医学图像登记,并且考虑了相互信息和梯度信息。基本思想是将相互信息分发给每个像素,并且离散互信息乘以a定义的加权项,这是梯度信息的函数。根据我们的定义,所提出的措施提供了严格的限制,即梯度引用和浮子图像应该具有相同的方向,无论是相同的还是相反的方向。通过增加加权项,强梯度区域的配准在小梯度区域上具有优先级。此外,已经进行了几种非刚性注册实验,以验证所提出的方法的有效性。结果表明,新的相似性度量的关键优势之一是其在低对比区域的限制。所提出的方法优于MI,方形距离(SSD)和多分电图(MMI)相对于网格间隔的敏感性,并且当网格间隔变大并且配准时,它比残余复杂度更好地执行结果变得稳定。

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