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Adaptive Diffeomorphic Multiresolution Demons and Their Application to Same Modality Medical Image Registration with Large Deformation

机译:适应性扩散多分辨率恶魔及其在相同的模态医学图像配准与大变形的应用

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摘要

Diffeomorphic demons can guarantee smooth and reversible deformation and avoid unreasonable deformation. However, the number of iterations needs to be set manually, and this greatly influences the registration result. In order to solve this problem, we proposed adaptive diffeomorphic multiresolution demons in this paper. We used an optimized framework with nonrigid registration and diffeomorphism strategy, designed a similarity energy function based on grey value, and stopped iterations adaptively. This method was tested by synthetic image and same modality medical image. Large deformation was simulated by rotational distortion and extrusion transform, medical image registration with large deformation was performed, and quantitative analyses were conducted using the registration evaluation indexes, and the influence of different driving forces and parameters on the registration result was analyzed. The registration results of same modality medical images were compared with those obtained using active demons, additive demons, and diffeomorphic demons. Quantitative analyses showed that the proposed method’s normalized cross-correlation coefficient and structural similarity were the highest and mean square error was the lowest. Medical image registration with large deformation could be performed successfully; evaluation indexes remained stable with an increase in deformation strength. The proposed method is effective and robust, and it can be applied to nonrigid registration of same modality medical images with large deformation.
机译:Diffeomorphic Demons可以保证光滑可逆的变形,避免不合理的变形。但是,需要手动设置迭代的数量,这大大影响了登记结果。为了解决这个问题,我们提出了本文的自适应扩散多分辨率恶魔。我们使用了一个具有非防护和扩散策略的优化框架,设计了基于灰度值的相似能量功能,并自适应地停止迭代。该方法由合成图像和相同的模态医学图像进行测试。通过旋转变形和挤出变换模拟大变形,进行了大变形的医学图像配准,并且使用注册评价指标进行定量分析,分析了不同驱动力和参数对登记结果的影响。将相同模态医学图像的登记结果与使用活性恶魔,附加恶魔和散晶恶魔获得的那些进行比较。定量分析表明,所提出的方法的归一化互相关系数和结构相似度最高,平均误差是最低的。可以成功地执行具有大变形的医学图像登记;评价指标随着变形强度的增加而保持稳定。该方法的方法是有效且稳健的,它可以应用于具有大变形的相同模态医学图像的非曲线注册。

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