Decaux Nathan, Conze Pierre-Henri, Ropars Juliette, He Xinyan, Sheehan Frances T, Pons Christelle, Salem Douraied Ben, Brochard Sylvain, Rousseau François
LaTIM UMR 1101, Inserm, Brest, France.
IMT Atlantique, Brest, France.
Pattern Recognit. 2023 Aug;140. doi: 10.1016/j.patcog.2023.109529. Epub 2023 Mar 17.
Fully automated approaches based on convolutional neural networks have shown promising performances on muscle segmentation from magnetic resonance (MR) images, but still rely on an extensive amount of training data to achieve valuable results. Muscle segmentation for pediatric and rare diseases cohorts is therefore still often done manually. Producing dense delineations over 3D volumes remains a time-consuming and tedious task, with significant redundancy between successive slices. In this work, we propose a segmentation method relying on registration-based label propagation, which provides 3D muscle delineations from a limited number of annotated 2D slices. Based on an unsupervised deep registration scheme, our approach ensures the preservation of anatomical structures by penalizing deformation compositions that do not produce consistent segmentation from one annotated slice to another. Evaluation is performed on MR data from lower leg and shoulder joints. Results demonstrate that the proposed few-shot multi-label segmentation model outperforms state-of-the-art techniques.
基于卷积神经网络的全自动化方法在磁共振(MR)图像的肌肉分割上已展现出颇具前景的性能,但仍依赖大量训练数据才能取得有价值的结果。因此,儿科和罕见病队列的肌肉分割仍常常采用人工方式。在三维体积上生成密集轮廓仍是一项耗时且繁琐的任务,连续切片之间存在大量冗余。在这项工作中,我们提出了一种基于配准的标签传播分割方法,该方法能从有限数量的标注二维切片中提供三维肌肉轮廓。基于无监督深度配准方案,我们的方法通过惩罚那些无法从一个标注切片到另一个切片产生一致分割的变形组合,确保解剖结构的保留。我们对来自小腿和肩关节的MR数据进行了评估。结果表明,所提出的少样本多标签分割模型优于现有技术。