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FAIM - A ConvNet Method for Unsupervised 3D Medical Image Registration

机译:FAIM-用于无监督3D医学图像配准的ConvNet方法

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We present a new unsupervised learning algorithm, 'FAIM', for 3D medical image registration. With a different architecture than the popular 'U-net' [10], the network takes a pair of full image volumes and predicts the displacement fields needed to register source to target. Compared with 'U-net' based registration networks such as VoxelMorph [2], FAIM has fewer trainable parameters but can achieve higher registration accuracy as judged by Dice score on region labels in the Mindboggle-101 dataset. Moreover, with the proposed penalty loss on negative Jacobian determinants, FAIM produces deformations with many fewer 'foldings', i.e. regions of non-invertibility where the surface folds over itself. We varied the strength of this penalty and found that FAIM is able to maintain both the advantages of higher accuracy and fewer 'folding' locations over VoxelMorph, over a range of hyper-parameters. We also evaluated Probabilistic VoxelMorph [3], both in its original form and with its U-net backbone replaced with our FAIM network. We found that the choice of backbone makes little difference. The original version of FAIM outperformed Probabilistic VoxelMorph for registration accuracy, and also for invertibility if FAIM is trained using an anti-folding penalty. Code for this paper is freely available at https://github.com/dykuang/Medical-image-registration.
机译:我们提出了一种新的无监督学习算法“ FAIM”,用于3D医学图像配准。与流行的“ U-net” [10]相比,该网络具有不同的体系结构,可获取一对完整的图像体积,并预测将源对准目标所需的位移场。与基于V-elMorph [2]的基于“ U-net”的注册网络相比,FAIM具有较少的可训练参数,但可以通过Mindboggle-101数据集中区域标签上的Dice得分判断获得更高的注册精度。此外,由于对负雅可比行列式提出了惩罚损失,FAIM产生的变形具有较少的“折叠”,即表面在其自身折叠的不可逆区域。我们改变了这种惩罚的强度,发现FAIM能够在一定范围的超参数范围内保持较高的精度和与VoxelMorph相比较少的“折叠”位置的优点。我们还评估了概率VoxelMorph [3],既有其原始形式,也有其U-net主干网被FAIM网络取代的。我们发现主干的选择没有什么区别。 FAIM的原始版本在套准准确度方面优于概率VoxelMorph,并且如果使用反折叠惩罚训练FAIM则可逆性也优于。本文的代码可从https://github.com/dykuang/Medical-image-registration免费获得。

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