Improving Generalization by Learning Geometry-Dependent and Physics-Based Reconstruction of Image Sequences

被引:9
作者
Jiang, Xiajun [1 ]
Toloubidokhti, Maryam [1 ]
Bergquist, Jake [2 ]
Zenger, Brian [2 ]
Good, Wilson W. [2 ]
MacLeod, Rob S. [2 ]
Wang, Linwei [1 ]
机构
[1] Rochester Inst Technol, Golisano Coll Comp & Informat Sci, Rochester, NY 14623 USA
[2] Univ Utah, Sci Comp & Imaging Inst SCI, Salt Lake City, UT 84112 USA
关键词
Geometry; Heart; Image reconstruction; Physics; Training data; Imaging; Torso; Geometric deep learning; inverse problems; physics-based deep learning; DEEP NEURAL-NETWORKS; INVERSE ELECTROCARDIOGRAPHY;
D O I
10.1109/TMI.2022.3218170
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Deep neural networks have shown promise in image reconstruction tasks, although often on the premise of large amounts of training data. In this paper, we present a new approach to exploit the geometry and physics underlying electrocardiographic imaging (ECGI) to learn efficiently with a relatively small dataset. We first introduce a non-Euclidean encoding-decoding network that allows us to describe the unknown and measurement variables over their respective geometrical domains. We then explicitly model the geometry-dependent physics in between the two domains via a bipartite graph over their graphical embeddings. We applied the resulting network to reconstruct electrical activity on the heart surface from body-surface potentials. In a series of generalization tasks with increasing difficulty, we demonstrated the improved ability of the network to generalize across geometrical changes underlying the data using less than 10% of training data and fewer variations of training geometry in comparison to its Euclidean alternatives. In both simulation and real-data experiments, we further demonstrated its ability to be quickly fine-tuned to new geometry using a modest amount of data.
引用
收藏
页码:403 / 415
页数:13
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