Accurate segmentation of organs-at-risks (OARs) is a precursor for optimizing radiation therapy planning. Existing deep learning-based multi-scale fusion architectures have demonstrated a tremendous capacity for 2D medical image segmentation. The key to their success is aggregating global context and maintaining high resolution representations. However, when translated into 3D segmentation problems, existing multi-scale fusion architectures might underperform due to their heavy computation overhead and substantial data diet. To address this issue, we propose a new OAR segmentation framework, called OARFocalFuseNet, which fuses multi-scale features and employs focal modulation for capturing global-local context across multiple scales. Each resolution stream is enriched with features from different resolution scales, and multi-scale information is aggregated to model diverse contextual ranges. As a result, feature representations are further boosted. The comprehensive comparisons in our experimental setup with OAR segmentation as well as multi-organ segmentation show that our proposed OARFocalFuseNet outperforms the recent state-of-the-art methods on publicly available OpenKBP datasets and Synapse multi-organ segmentation. Both of the proposed methods (3D-MSF and OARFocalFuseNet) showed promising performance in terms of standard evaluation metrics. Our best performing method (OARFocalFuseNet) obtained a dice coefficient of 0.7995 and hausdorff distance of 5.1435 on OpenKBP datasets and dice coefficient of 0.8137 on Synapse multi-organ segmentation dataset.
翻译:现有基于深度学习的多规模聚合结构展示了2D医学图像分割的巨大能力。成功的关键是整合全球背景并保持高分辨率表示。然而,当将其转化为3D分解问题时,现有的多规模混合结构可能由于高计算间接费用和大量数据饮食而出现缺陷。为了解决这一问题,我们提议一个新的OAR分割框架,称为OARFocalFuseNet,它将多尺度功能结合,并采用焦点调控,以在多个尺度上捕捉全球局部环境。每个分辨率流都丰富了不同分辨率尺度的特征,多尺度信息被汇总到不同的背景范围模型中。结果,特征表述会进一步增强。我们实验设置中与OAR分解以及多器官分解的全面比较表明,我们提议的OARFocal-FuseNet在公开提供的O-KBS O-O-OFS-O-Oral-O-Oral-Oral-OFS-ODS-Oral-Oral-FA-Oral-Oral-OD-OD-SAL-Oral-OD-OD-SAL-SAL-OLAD-OD-OD-OD-OD-OD-S-D-S-S-SAL-SAL-OD-OD-S-A-S-S-S-S-S-S-S-S-S-AD-S-A-A-A-S-S-S-S-S-S-SAL-SAL-SAL-SAL-SAL-A-A-A-A-S-A-A-S-S-A-SD-SD-S-S-A-A-A-A-A-S-S-S-A-A-S-S-S-S-S-S-S-S-A-S-S-S-A-S-S-S-S-S-A-A-A-A-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-A-A-A-A-A-A-A-A-A-A-A-A-A