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GCTransNet:基于全局上下文视觉变换器的三维线粒体实例分割

GCTransNet: 3D mitochondrial instance segmentation based on Global Context Vision Transformers.

作者信息

Chen Chaoyi, Yan Yidan, Wu Jingpeng, Gan Wen-Biao

机构信息

Collage of Biological Sciences, China Agricultural University, Beijing 100091, China; Shenzhen Bay Laboratory, Shenzhen 518132, China.

Collage of Biological Sciences, China Agricultural University, Beijing 100091, China.

出版信息

J Struct Biol. 2025 Mar;217(1):108170. doi: 10.1016/j.jsb.2025.108170. Epub 2025 Jan 20.

Abstract

Mitochondria are double membrane-bound organelles essential for generating energy in eukaryotic cells. Mitochondria can be readily visualized in 3D using Volume Electron Microscopy (vEM), and accurate image segmentation is vital for quantitative analysis of mitochondrial morphology and function. To address the challenge of segmenting small mitochondrial compartments in vEM images, we propose an automated mitochondrial segmentation method called GCTransNet. This method employs grayscale migration technology to preprocess images, effectively reducing intensity distribution differences across EM images. By utilizing 3D Global Context Vision Transformers (GC-ViT) combined with global context self-attention modules and local self-attention modules, GCTransNet precisely models long-range and short-range spatial interactions. The long-range interactions enable the model to capture the global structural relationships within the mitochondrial segmentation network, while the short-range interactions refine local details and boundaries. In our approach, the encoder of the 3D U-Net network, a classical multi-scale learning architecture that retains high-resolution features through skip connections and combines multi-scale features for precise segmentation, is replaced by a 3D GC-ViT. The GC-ViT leverages shifted window-based self-attention, capturing long-range dependencies and offering improved segmentation accuracy compared to traditional U-Net encoders. In the MitoEM mitochondrial segmentation challenge, GCTransNet achieved state-of-the-art results, demonstrating its superiority in automated mitochondrial segmentation. The code and its documentation are publicly available at https://github.com/GanLab123/GCTransNet.

摘要

线粒体是真核细胞中产生能量所必需的双膜结合细胞器。使用体积电子显微镜(vEM)可以很容易地对线粒体进行三维可视化,而精确的图像分割对于线粒体形态和功能的定量分析至关重要。为了应对在vEM图像中分割小型线粒体区室的挑战,我们提出了一种名为GCTransNet的自动线粒体分割方法。该方法采用灰度迁移技术对图像进行预处理,有效减少了电子显微镜图像之间的强度分布差异。通过利用3D全局上下文视觉变换器(GC-ViT)结合全局上下文自注意力模块和局部自注意力模块,GCTransNet精确地对长程和短程空间相互作用进行建模。长程相互作用使模型能够捕捉线粒体分割网络内的全局结构关系,而短程相互作用则细化局部细节和边界。在我们的方法中,3D U-Net网络(一种经典的多尺度学习架构,通过跳跃连接保留高分辨率特征并结合多尺度特征进行精确分割)的编码器被3D GC-ViT所取代。GC-ViT利用基于移位窗口的自注意力,捕捉长程依赖性,与传统的U-Net编码器相比,具有更高的分割精度。在MitoEM线粒体分割挑战赛中,GCTransNet取得了领先成果,证明了其在自动线粒体分割方面的优越性。代码及其文档可在https://github.com/GanLab123/GCTransNet上公开获取。

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