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A review on segmentation of knee articular cartilage: from conventional methods towards deep learning

机译:膝关节关节软骨分割的综述:从常规方法走向深度学习

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摘要

In this paper, we review the state-of-the-art approaches for knee articular cartilage segmentation from conventional techniques to deep learning (DL) based techniques. Knee articular cartilage segmentation on magnetic resonance (MR) images is of great importance in early diagnosis of osteoarthritis (OA). Besides, segmentation allows estimating the articular cartilage loss rate which is utilised in clinical practice for assessing the disease progression and morphological changes. It has been traditionally applied in quantifying longitudinal knee OA progression pattern to detect and assess the articular cartilage thickness and volume. Topics covered include various image processing algorithms and major features of different segmentation techniques, feature computations and the performance evaluation metrics. This paper is intended to provide researchers with a broad overview of the currently existing methods in the field, as well as to highlight the shortcomings and potential considerations in the application at clinical practice. The survey showed that state-of-the-art techniques based on DL outperform the other segmentation methods. The analysis of the existing methods reveals that integration of DL-based algorithms with other traditional model-based approaches has achieved the best results (mean Dice similarity coefficient (DSC) between 85.8% and 90%).
机译:在本文中,我们审查了从常规技术到深度学习技术(DL)技术的膝关节关节软骨分段的最先进的方法。磁共振(MR)图像上的膝关节关节软骨分段在骨关节炎(OA)的早期诊断中具有重要意义。此外,分割允许估计在临床实践中用于评估疾病进展和形态学变化的关节软骨损失率。它传统上应用于量化纵向膝部OA进展模式以检测和评估关节软骨厚度和体积。涵盖的主题包括各种图像处理算法和不同分段技术的主要特征,功能计算和性能评估度量。本文旨在为研究人员提供广泛概述现有现有方法的广泛概述,并突出临床实践中申请中的缺点和潜在考虑。该调查显示,基于DL的最先进技术优于其他分段方法。对现有方法的分析表明,基于DL的算法与其他基于模式的方法的集成已经实现了最佳结果(平均骰子相似度系数(DSC)在85.8%和90%之间)。

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