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Automatic error correction using adaptive weighting for vessel-based deformable image registration

机译:基于船舶可变形图像配准的自适应加权自动纠错

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摘要

In this paper, we extend our previous work on deformable image registration to inhomogenous tissues. Inhomogenous tissues include the tissues with embedded tumors, which is common in clinical applications. It is a very challenging task since the registration method that works for homogenous tissues may not work well with inhomogenous tissues. The maximum error normally occurs in the regions with tumors and often exceeds the acceptable error threshold. In this paper, we propose a new error correction method with adaptive weighting to reduce the maximum registration error. Our previous fast deformable registration method is used in the inner loop. We have also proposed a new evaluation metric average error of deformation field (AEDF) to evaluate the registration accuracy in regions between vessels and bifurcation points. We have validated the proposed method using liver MR images from human subjects. AEDF results show that the proposed method can greatly reduce the maximum registration errors when compared with the previous method with no adaptive weighting. The proposed method has the potential to be used in clinical applications to reduce registration errors in regions with tumors.
机译:在本文中,我们将以前的工作扩展到可变形的图像配准到不归因组织。不归类组织包括具有嵌入式肿瘤的组织,这在临床应用中是常见的。这是一个非常具有挑战性的任务,因为为均匀组织适用的注册方法可能与均匀组织不起作用。最大误差通常发生在具有肿瘤的区域中,并且通常超过可接受的误差阈值。在本文中,我们提出了一种新的纠错方法,具有自适应加权来减少最大登记误差。我们以前的快速可变形的注册方法用于内圈。我们还提出了一种新的评估度量的变形场(AEDF)的平均误差,以评估血管和分叉点之间的区域中的登记精度。我们验证了使用人类受试者的肝脏MR图像的提出方法。 AEDF结果表明,与未经自适应加权的方法相比,该方法可以大大降低最大登记误差。该方法具有临床应用中的可能性,以减少肿瘤区域中的登记误差。

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