Quantifying Knee Cartilage Shape and Lesion: From Image to Metrics

Yongcheng Yao, Weitian Chen
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Abstract

Imaging features of knee articular cartilage have been shown to be potential imaging biomarkers for knee osteoarthritis. Despite recent methodological advancements in image analysis techniques like image segmentation, registration, and domain-specific image computing algorithms, only a few works focus on building fully automated pipelines for imaging feature extraction. In this study, we developed a deep-learning-based medical image analysis application for knee cartilage morphometrics, CartiMorph Toolbox (CMT). We proposed a 2-stage joint template learning and registration network, CMT-reg. We trained the model using the OAI-ZIB dataset and assessed its performance in template-to-image registration. The CMT-reg demonstrated competitive results compared to other state-of-the-art models. We integrated the proposed model into an automated pipeline for the quantification of cartilage shape and lesion (full-thickness cartilage loss, specifically). The toolbox provides a comprehensive, user-friendly solution for medical image analysis and data visualization. The software and models are available at https://github.com/YongchengYAO/CMT-AMAI24paper .
量化膝关节软骨形状和病变:从图像到指标
膝关节软骨的成像特征已被证明是膝关节骨关节炎的潜在成像生物标志物。尽管最近在图像分割、配准和特定领域图像计算算法等图像分析技术方面取得了方法学上的进步,但只有少数作品专注于构建全自动的图像特征提取管道。在这项研究中,我们开发了基于深度学习的膝关节软骨形态计量医学图像分析应用程序 CartiMorph Toolbox(CMT)。我们使用 OAI-ZIB 数据集训练了该模型,并评估了其模板到图像的配准性能。与其他最先进的模型相比,CMT-reg 的结果极具竞争力。我们将所提出的模型集成到一个自动化流水线中,用于量化软骨形状和病变(特别是全厚软骨损失)。该工具箱为医学图像分析和数据可视化提供了一个全面、用户友好的解决方案。软件和模型可从以下网址获取:https://github.com/YongchengYAO/CMT-AMAI24paper 。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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