IVCVLGApr 30, 2024

A Flexible 2.5D Medical Image Segmentation Approach with In-Slice and Cross-Slice Attention

arXiv:2405.00130v134 citationsh-index: 6Has CodeComput. Biol. Medicine
Originality Highly original
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This addresses a relatively unexplored problem in medical image segmentation for researchers and practitioners, offering a computationally efficient solution for 2.5D data.

The paper tackled the challenge of segmenting 2.5D medical images, which have high in-plane but low through-plane resolution, by introducing CSA-Net, a flexible 2.5D segmentation model that outperformed leading 2D and 2.5D methods across three tasks, including multi-class brain MRI and prostate MRI segmentation.

Deep learning has become the de facto method for medical image segmentation, with 3D segmentation models excelling in capturing complex 3D structures and 2D models offering high computational efficiency. However, segmenting 2.5D images, which have high in-plane but low through-plane resolution, is a relatively unexplored challenge. While applying 2D models to individual slices of a 2.5D image is feasible, it fails to capture the spatial relationships between slices. On the other hand, 3D models face challenges such as resolution inconsistencies in 2.5D images, along with computational complexity and susceptibility to overfitting when trained with limited data. In this context, 2.5D models, which capture inter-slice correlations using only 2D neural networks, emerge as a promising solution due to their reduced computational demand and simplicity in implementation. In this paper, we introduce CSA-Net, a flexible 2.5D segmentation model capable of processing 2.5D images with an arbitrary number of slices through an innovative Cross-Slice Attention (CSA) module. This module uses the cross-slice attention mechanism to effectively capture 3D spatial information by learning long-range dependencies between the center slice (for segmentation) and its neighboring slices. Moreover, CSA-Net utilizes the self-attention mechanism to understand correlations among pixels within the center slice. We evaluated CSA-Net on three 2.5D segmentation tasks: (1) multi-class brain MRI segmentation, (2) binary prostate MRI segmentation, and (3) multi-class prostate MRI segmentation. CSA-Net outperformed leading 2D and 2.5D segmentation methods across all three tasks, demonstrating its efficacy and superiority. Our code is publicly available at https://github.com/mirthAI/CSA-Net.

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