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Deformable image registration of liver with consideration of lung sliding motion.

机译:考虑到肺部滑动,肝脏的可变形图像定位。

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PURPOSE: A feature based deformable registration model with sliding transformation was developed in the upper abdominal region for liver cancer. METHODS: A two-step thin-plate spline (bi-TPS) algorithm was implemented to deformably register the liver organ. The first TPS registration was performed to exclusively quantify the sliding displacement component. A manual segmentation of the thoracic and abdominal cavity was performed as a priori knowledge. Tissue feature points were automatically identified inside the segmented contour on the images. The scale invariant feature transform method was utilized to match feature points that served as landmarks for the subsequent TPS registration to derive the sliding displacement vector field. To a good approximation, only motion along superior/inferior (SI) direction of voxels on each slice was averaged to obtain the sliding displacement for each slice. A second TPS transformation, as the last step, was carried out to obtain the local deformation field. Manual identification of bifurcation on liver, together with the manual segmentation of liver organ, was employed as a "ground truth" for assessing the algorithm's performance. RESULTS: The proposed two-step TPS was assessed with six liver patients. The average error of liver bifurcation between manual identification and calculation for these patients was less than 1.8 mm. The residual errors between manual contour and propagated contour of liver organ using the algorithm fell in the range between 2.1 and 2.8 mm. An index of Dice similarity coefficient (DSC) between manual contour and calculated contour for liver tumor was 93.6% compared with 71.2% from the conventional TPS calculation. CONCLUSIONS: A high accuracy ( approximately 2 mm) of the two-step feature based TPS registration algorithm was achievable for registering the liver organ. The discontinuous motion in the upper abdominal region was properly taken into consideration. Clinical implementation of the algorithm will find broad application in radiation therapy of liver cancer.
机译:目的:在肝癌的上腹部开发了一种基于特征的具有滑动变换的可变形配准模型。方法:采用两步薄板样条(bi-TPS)算法可变形地记录肝器官。进行第一次TPS配准以专门量化滑动位移分量。先验知识是对胸腔和腹腔进行手动分割。在图像的分割轮廓内自动识别组织特征点。利用尺度不变特征变换方法来匹配用作地标的特征点,以用于后续的TPS配准,以得出滑动位移矢量场。很好地近似,仅平均沿每个切片上体素的上/下(SI)方向的运动,以获得每个切片的滑动位移。作为最后一步,进行了第二次TPS转换以获得局部变形场。手动识别肝脏上的分叉以及手动分割肝脏器官,被用作评估算法性能的“基础”。结果:建议的两步TPS评估了六名肝病患者。对于这些患者,手动识别和计算之间的肝脏分叉的平均误差小于1.8 mm。使用该算法,肝脏器官的手动轮廓和传播轮廓之间的残留误差在2.1到2.8 mm之间。肝脏肿瘤的手动轮廓与计算轮廓之间的骰子相似系数(DSC)指数为93.6%,而传统TPS计算为71.2%。结论:基于两步特征的TPS配准算法可以实现高精度(大约2 mm)的配准,以配准肝器官。适当考虑了上腹部的不连续运动。该算法的临床实现将在肝癌的放射治疗中得到广泛的应用。

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