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KCB-Net:基于稀疏标注的三维膝关节软骨与骨分割网络

KCB-Net: A 3D knee cartilage and bone segmentation network via sparse annotation.

机构信息

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.

出版信息

Med Image Anal. 2022 Nov;82:102574. doi: 10.1016/j.media.2022.102574. Epub 2022 Sep 7.

Abstract

Knee cartilage and bone segmentation is critical for physicians to analyze and diagnose articular damage and knee osteoarthritis (OA). Deep learning (DL) methods for medical image segmentation have largely outperformed traditional methods, but they often need large amounts of annotated data for model training, which is very costly and time-consuming for medical experts, especially on 3D images. In this paper, we report a new knee cartilage and bone segmentation framework, KCB-Net, for 3D MR images based on sparse annotation. KCB-Net selects a small subset of slices from 3D images for annotation, and seeks to bridge the performance gap between sparse annotation and full annotation. Specifically, it first identifies a subset of the most effective and representative slices with an unsupervised scheme; it then trains an ensemble model using the annotated slices; next, it self-trains the model using 3D images containing pseudo-labels generated by the ensemble method and improved by a bi-directional hierarchical earth mover's distance (bi-HEMD) algorithm; finally, it fine-tunes the segmentation results using the primal-dual Internal Point Method (IPM). Experiments on four 3D MR knee joint datasets (the SKI10 dataset, OAI ZIB dataset, Iowa dataset, and iMorphics dataset) show that our new framework outperforms state-of-the-art methods on full annotation, and yields high quality results for small annotation ratios even as low as 10%.

摘要

膝关节软骨和骨分割对于医生分析和诊断关节损伤和膝骨关节炎(OA)至关重要。深度学习(DL)方法在医学图像分割方面已经大大优于传统方法,但它们通常需要大量的标注数据进行模型训练,这对于医学专家来说非常昂贵和耗时,尤其是对于 3D 图像。在本文中,我们报告了一种新的基于稀疏标注的 3D MR 图像膝关节软骨和骨分割框架 KCB-Net。KCB-Net 从 3D 图像中选择一小部分切片进行标注,并试图弥合稀疏标注和全标注之间的性能差距。具体来说,它首先使用无监督方案识别出最有效和最具代表性的切片子集;然后使用标注的切片训练集成模型;接下来,它使用由集成方法生成并通过双向分层 earth mover's distance(bi-HEMD)算法改进的伪标签的 3D 图像自我训练模型;最后,它使用 primal-dual Internal Point Method(IPM)微调分割结果。在四个 3D MR 膝关节数据集(SKI10 数据集、OAI ZIB 数据集、Iowa 数据集和 iMorphics 数据集)上的实验表明,我们的新框架在全标注方面优于最先进的方法,并且即使标注比例低至 10%,也能产生高质量的结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e049/10515734/59cfbbfe18a6/nihms-1930079-f0001.jpg

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H-EMD: A Hierarchical Earth Mover's Distance Method for Instance Segmentation.H-EMD:一种用于实例分割的分层地移动者距离方法。
IEEE Trans Med Imaging. 2022 Oct;41(10):2582-2597. doi: 10.1109/TMI.2022.3169449. Epub 2022 Sep 30.
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UNet++: A Nested U-Net Architecture for Medical Image Segmentation.U-Net++:一种用于医学图像分割的嵌套U-Net架构。
Deep Learn Med Image Anal Multimodal Learn Clin Decis Support (2018). 2018 Sep;11045:3-11. doi: 10.1007/978-3-030-00889-5_1. Epub 2018 Sep 20.

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