New Loss Functions For Medical Image Registration Based On Voxelmorph

MEDICAL IMAGING 2020: IMAGE PROCESSING(2021)

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摘要
Optimization of loss function is one of the research directions in medical image registration. A loss function of registration is the sum of two terms: a similarity term L-sim (phi) and a smoothing term L-smooth (phi). From variational method in differential geometry, control function is essential to generate better registration field phi. Here, we propose a new registration loss function with novel smoothing terms using VoxelMorph based on control function and Laplacian operator. We divide the process into two steps. The first step is based on Laplacian operator. We replace the gradient of registration field phi in L-smooth (phi) by the Laplacian of phi. In the second step, we add the term control function F to the L-smooth (phi) in the first step, which is the key contribution of our method. We verify our method on two datasets including ADNI and IBSR, and obtain excellent improvement on MR image registration, with better convergence and gets higher average Dice and lower percentage of non-positive Jacobian locations compared with original loss function.
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关键词
Medical image registration, Loss function, Diffeomorphic registration field, Laplacian operator, Control function, VoxelMorph
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