Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

SAME: Deformable Image Registration based on Self-supervised Anatomical Embeddings

About

In this work, we introduce a fast and accurate method for unsupervised 3D medical image registration. This work is built on top of a recent algorithm SAM, which is capable of computing dense anatomical/semantic correspondences between two images at the pixel level. Our method is named SAME, which breaks down image registration into three steps: affine transformation, coarse deformation, and deep deformable registration. Using SAM embeddings, we enhance these steps by finding more coherent correspondences, and providing features and a loss function with better semantic guidance. We collect a multi-phase chest computed tomography dataset with 35 annotated organs for each patient and conduct inter-subject registration for quantitative evaluation. Results show that SAME outperforms widely-used traditional registration techniques (Elastix FFD, ANTs SyN) and learning based VoxelMorph method by at least 4.7% and 2.7% in Dice scores for two separate tasks of within-contrast-phase and across-contrast-phase registration, respectively. SAME achieves the comparable performance to the best traditional registration method, DEEDS (from our evaluation), while being orders of magnitude faster (from 45 seconds to 1.2 seconds).

Fengze Liu, Ke Yan, Adam Harrison, Dazhou Guo, Le Lu, Alan Yuille, Lingyun Huang, Guotong Xie, Jing Xiao, Xianghua Ye, Dakai Jin• 2021

Related benchmarks

TaskDatasetResultRank
Intra-phase RegistrationChest CT CE-to-CE (test)
Dice Score0.5442
12
Cross-phase RegistrationChest CT CE-to-NC (test)
Dice Score50.96
12
Medical Image RegistrationAbdomen CT inter- and intra-subject
DSC 1347.12
8
Medical Image RegistrationHeadNeck CT (inter- and intra-subject)
DSC (13 Structures)61.35
8
Showing 4 of 4 rows

Other info

Follow for update