Nonrigid registration of breast MR images using residual complexity similarity measure

Azam Hamidi Nekoo, A. Ghaffari, E. Fatemizadeh
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Abstract

Elimination of motion artifact in breast MR images is a significant issue in pre-processing step before utilizing images for diagnostic applications. Breast MR Images are affected by slow varying intensity distortions as a result of contrast agent enhancement. Thus a nonrigid registration algorithm considering this effect is needed. Traditional similarity measures such as sum of squared differences and cross correlation, ignore the mentioned distortion. Therefore, efficient registration is not obtained. Residual complexity is a similarity measure that considers spatially varying intensity distortions by maximizing sparseness of the residual image. In this research, the results obtained by applying nonrigid registration based on residual complexity, sum of squared differences and cross correlation similarity measures are demonstrated which show more robustness and accuracy of RC comparing with other similarity measures for breast MR images.
基于残差复杂度相似度的乳腺MR图像非刚性配准
消除运动伪影在乳房磁共振图像是一个重要的预处理步骤,然后利用图像诊断应用。由于造影剂增强,乳房MR图像受到缓慢变化的强度扭曲的影响。因此,需要一种考虑这种影响的非刚性配准算法。传统的相似性度量,如差的平方和和互相关,忽略了上述的失真。因此,无法获得有效的注册。残差复杂度是一种相似性度量,通过最大化残差图像的稀疏性来考虑空间变化的强度畸变。在本研究中,应用基于残差复杂度、差平方和和相互关联相似度量的非刚性配准得到的结果表明,RC与其他乳房MR图像相似度量相比,具有更高的鲁棒性和准确性。
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