Multi-modal Latent-Space Self-alignment for Super-Resolution Cardiac MR Segmentation.

Yu Deng, Yang Wen, Linglong Qian, Esther Puyol Anton, Hao Xu, Kuberan Pushparajah, Zina Ibrahim, Richard Dobson, Alistair Young
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Abstract

2D cardiac MR cine images provide data with a high signal-to-noise ratio for the segmentation and reconstruction of the heart. These images are frequently used in clinical practice and research. However, the segments have low resolution in the through-plane direction, and standard interpolation methods are unable to improve resolution and precision. We proposed an end-to-end pipeline for producing high-resolution segments from 2D MR images. This pipeline utilised a bilateral optical flow warping method to recover images in the through-plane direction, while a SegResNet automatically generated segments of the left and right ventricles. A multi-modal latent-space self-alignment network was implemented to guarantee that the segments maintain an anatomical prior derived from unpaired 3D high-resolution CT scans. On 3D MR angiograms, the trained pipeline produced high-resolution segments that preserve an anatomical prior derived from patients with various cardiovascular diseases.

用于超分辨率心脏磁共振成像分割的多模态潜空间自对齐。
二维心脏磁共振成像为心脏的分割和重建提供了高信噪比的数据。这些图像经常用于临床实践和研究。然而,切片在通面方向的分辨率较低,标准的插值方法无法提高分辨率和精度。我们提出了一种从二维磁共振图像生成高分辨率节段的端到端流水线。该管道利用双侧光流扭曲法恢复通面方向的图像,同时由 SegResNet 自动生成左心室和右心室的切面。多模态潜空间自对齐网络的实施,保证了切片保持从无配对的三维高分辨率 CT 扫描中获得的解剖先验。在三维 MR 血管造影上,训练有素的管道生成的高分辨率片段保持了从各种心血管疾病患者身上获得的解剖先验。
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