Department of Computer Science and Engineering, University of Notre Dame, Notre Dame, IN 46556, USA.
Department of Electrical and Computer Engineering, University of Iowa, Iowa City, IA 52242, USA.
Med Image Anal. 2022 Jul;79:102460. doi: 10.1016/j.media.2022.102460. Epub 2022 Apr 21.
Accurate 3D segmentation of calf muscle compartments in volumetric MR images is essential to diagnose as well as assess progression of muscular diseases. Recently, good segmentation performance was achieved using state-of-the-art deep learning approaches, which, however, require large amounts of annotated data for training. Considering that obtaining sufficiently large medical image annotation datasets is often difficult, time-consuming, and requires expert knowledge, minimizing the necessary sizes of expert-annotated training datasets is of great importance. This paper reports CMC-Net, a new deep learning framework for calf muscle compartment segmentation in 3D MR images that selects an effective small subset of 2D slices from the 3D images to be labelled, while also utilizing unannotated slices to facilitate proper generalization of the subsequent training steps. Our model consists of three parts: (1) an unsupervised method to select the most representative 2D slices on which expert annotation is performed; (2) ensemble model training employing these annotated as well as additional unannotated 2D slices; (3) a model-tuning method using pseudo-labels generated by the ensemble model that results in a trained deep network capable of accurate 3D segmentations. Experiments on segmentation of calf muscle compartments in 3D MR images show that our new approach achieves good performance with very small annotation ratios, and when utilizing full annotation, it outperforms state-of-the-art full annotation segmentation methods. Additional experiments on a 3D MR thigh dataset further verify the ability of our method in segmenting leg muscle groups with sparse annotation.
准确的 3D 小腿肌肉区域分割对于肌肉疾病的诊断和评估至关重要。最近,基于最先进的深度学习方法取得了很好的分割性能,但这些方法需要大量的标注数据进行训练。考虑到获得足够大的医学图像标注数据集通常是困难的、耗时的,并且需要专业知识,因此最小化专家标注训练数据集的必要大小非常重要。本文提出了 CMC-Net,这是一种用于 3D MR 图像中小腿肌肉区域分割的深度学习框架,它从 3D 图像中选择有效的小部分 2D 切片进行标注,同时利用未标注的切片来促进后续训练步骤的适当泛化。我们的模型由三部分组成:(1)一种从大量未标注的 3D 图像中选择最具代表性的 2D 切片的无监督方法,对这些切片进行专家标注;(2)利用这些标注的以及额外的未标注的 2D 切片进行集成模型训练;(3)使用集成模型生成的伪标签进行模型调整的方法,最终得到一个能够进行准确 3D 分割的训练好的深度网络。在 3D MR 图像中小腿肌肉区域分割的实验表明,我们的新方法在非常小的标注比例下就能取得良好的性能,并且在利用完整的标注数据时,其性能优于最先进的完整标注分割方法。在 3D MR 大腿数据集上的进一步实验进一步验证了我们的方法在稀疏标注下分割腿部肌肉群的能力。