UGformer for Robust Left Atrium and Scar Segmentation Across Scanners

Tianyi Liu, Size Hou, Jiayu Zhu, Zilong Zhao, Haochuan Jiang
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引用次数: 1

Abstract

Thanks to the capacity for long-range dependencies and robustness to irregular shapes, vision transformers and deformable convolutions are emerging as powerful vision techniques of segmentation.Meanwhile, Graph Convolution Networks (GCN) optimize local features based on global topological relationship modeling. Particularly, they have been proved to be effective in addressing issues in medical imaging segmentation tasks including multi-domain generalization for low-quality images. In this paper, we present a novel, effective, and robust framework for medical image segmentation, namely, UGformer. It unifies novel transformer blocks, GCN bridges, and convolution decoders originating from U-Net to predict left atriums (LAs) and LA scars. We have identified two appealing findings of the proposed UGformer: 1). an enhanced transformer module with deformable convolutions to improve the blending of the transformer information with convolutional information and help predict irregular LAs and scar shapes. 2). Using a bridge incorporating GCN to further overcome the difficulty of capturing condition inconsistency across different Magnetic Resonance Images scanners with various inconsistent domain information. The proposed UGformer model exhibits outstanding ability to segment the left atrium and scar on the LAScarQS 2022 dataset, outperforming several recent state-of-the-arts.
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鲁棒左心房和跨扫描仪疤痕分割的UGformer
由于具有长期依赖关系和对不规则形状的鲁棒性,视觉变形和可变形卷积正在成为强大的视觉分割技术。同时,图卷积网络(GCN)基于全局拓扑关系建模优化局部特征。特别是,它们已被证明可以有效地解决医学成像分割任务中的问题,包括低质量图像的多域泛化。在本文中,我们提出了一种新的,有效的,鲁棒的医学图像分割框架,即UGformer。它结合了来自U-Net的新型变压器块、GCN桥和卷积解码器来预测左心房(LAs)和LA疤痕。我们已经确定了提出的UGformer的两个吸引人的发现:1)一个具有可变形卷积的增强变压器模块,以改善变压器信息与卷积信息的混合,并有助于预测不规则的LAs和疤痕形状。2).利用结合GCN的桥接进一步克服了不同磁共振图像扫描仪在不同域信息不一致的情况下捕获条件不一致的困难。提出的UGformer模型在LAScarQS 2022数据集上表现出出色的左心房和疤痕分割能力,优于最近的几个最先进的技术。
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Automatically Segment the Left Atrium and Scars from LGE-MRIs Using a Boundary-focused nnU-Net UGformer for Robust Left Atrium and Scar Segmentation Across Scanners Multi-Depth Boundary-Aware Left Atrial Scar Segmentation Network TESSLA: Two-Stage Ensemble Scar Segmentation for the Left Atrium Automatic Semi-supervised Left Atrial Segmentation Using Deep-Supervision 3DResUnet with Pseudo Labeling Approach for LAScarQS 2022 Challenge
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