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The same modality medical image registration with large deformation and clinical application based on adaptive diffeomorphic multi-resolution demons

机译:基于自适应扩散多分辨率恶魔的大变形和临床应用相同的模态医学图像配准

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Diffeomorphic demons can not only guarantee smooth and reversible deformation, but also avoid unreasonable deformation. However, the number of iterations which has great influence on the registration result needs to be set manually. This study proposed a novel method to exploit the adaptive diffeomorphic multi-resolution demons algorithm to the non-rigid registration of the same modality medical images with large deformation. Firstly an optimized non-rigid registration framework and the diffeomorphism strategy were used, and then a similarity energy function based on the grey value was designed as registration metric, lastly termination condition was set based on the variation of this metric and iterations can be stopped adaptively. Quantitative analyses based on the registration evaluation indexes were conducted to prove the validity of this method. Registration result of synthetic image and the same modality MRI and CT image was compared with those obtained by other demons algorithms. Quantitative analyses demonstrated the proposed method’s superiority. Medical image with large deformation was produced by rotational distortion and extrusion transform, and the same modality image registration with large deformation was performed successfully. Quantitative analyses showed that the registration evaluation indexes remained stable with an increase in transform strength. This method can be also applied to pulmonary medical image registration with large deformation successfully, and it showed the clinical application value. The influence of different driving forces and parameters on the registration result was analysed, and the result demonstrated that the proposed method is effective and robust. This method can solve the non-rigid registration problem of the same modality medical image with large deformation showing promise for diagnostic pulmonary imaging applications.
机译:Diffeomorphic Demons不仅可以保证光滑且可逆的变形,而且避免不合理的变形。但是,需要手动设置对注册结果产生很大影响的迭代次数。该研究提出了一种新的方法,用于利用自适应扩散多分辨率Demons算法与具有大变形相同模态医学图像的非刚性登记。首先,使用优化的非刚性登记框架和扩散晶体策略,然后设计了基于灰度值的相似能量函数作为登记度量,基于该度量的变化来设置基于该度量的变化,并且可以自适应地停止迭代的终止条件。可以自适应地停止迭代。进行了基于注册评估指标的定量分析,以证明这种方法的有效性。将合成图像和相同模式MRI和CT图像的注册结果与其他恶魔算法获得的结果进行了比较。定量分析证明了所提出的方法的优越性。通过旋转变形和挤出变换产生具有大变形的医学图像,成功地进行了相同的模态图像配准。定量分析表明,注册评估指标随着变性强度的增加而保持稳定。该方法还可以应用于肺部医学图像配准,成功地具有大变形,并显示出临床应用价值。分析了不同驱动力和参数对登记结果的影响,结果证明了该方法是有效和稳健的。该方法可以解决与诊断肺成像应用的大变形的相同模态医学图像的非刚性配准问题。

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