Automatic knee osteoarthritis severity grading based on X-ray images using a hierarchical classification method.

IF 4.9 2区 医学 Q1 Medicine
Jian Pan, Yuangang Wu, Zhenchao Tang, Kaibo Sun, Mingyang Li, Jiayu Sun, Jiangang Liu, Jie Tian, Bin Shen
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引用次数: 0

Abstract

Background: This study aims to develop a hierarchical classification method to automatically assess the severity of knee osteoarthritis (KOA).

Methods: This retrospective study recruited 4074 patients. Clinical diagnostic indicators and clinical diagnostic processes were applied to develop a hierarchical classification method that involved four sub-task classifications. These four sub-task classifications were the classification of Kellgren-Lawrence (KL) grade 0-2 and KL grade 3-4, KL grade 3 and KL grade 4, KL grade 0 and KL grade 1-2, and KL grade 1 and KL grade 2, respectively. To extract the features of clinical diagnostic indicators, four U-Net models were first used to segment the total joint space (TJS), the lateral joint space (LJS), the medial joint space (MJS), and osteophytes, respectively. Based on the segmentation result of TJS, the region of knee subchondral bone was generated. Then, geometric features were extracted based on segmentation results of the LJS, MJS, TJS, and osteophytes, while radiomic features were extracted from the knee subchondral bone. Finally, the geometric features, radiomic features, and combination of geometric features and radiomic features were used to construct the geometric model, radiomic model, and combined model in KL grading, respectively. A strict decision strategy was used to evaluate the performance of the hierarchical classification method in all X-ray images of testing cohort.

Results: The U-Net models achieved relatively satisfying performances in the segmentation of the TJS, the LJS, the MJS, and the osteophytes with the dice similarity coefficient of 0.88, 0.86, 0.88, and 0.64 respectively. The combined models achieved the best performance in KL grading. The accuracy of combined models was 98.50%, 81.65%, 82.07%, and 74.10% in the classification of KL grade 0-2 and KL grade 3-4, KL grade 3 and KL grade 4, KL grade 0 and KL grade 1-2, and KL grade 1 and KL grade 2, respectively. For all X-ray images of the testing cohort, the accuracy of the hierarchical classification method was 65.98%.

Conclusion: The hierarchical classification method developed in the current study is a feasible approach to assess the severity of KOA.

基于X光图像的膝关节骨关节炎严重程度自动分级分层分类法。
背景:本研究旨在开发一种分层分类方法,用于自动评估膝骨关节炎(KOA)的严重程度:本研究旨在开发一种分层分类方法,用于自动评估膝关节骨性关节炎(KOA)的严重程度:这项回顾性研究共招募了 4074 名患者。应用临床诊断指标和临床诊断流程开发了一种分级分类方法,其中包括四个子任务分类。这四个子任务分类分别为 Kellgren-Lawrence(KL)0-2 级和 KL 3-4 级、KL 3 级和 KL 4 级、KL 0 级和 KL 1-2 级、KL 1 级和 KL 2 级。为了提取临床诊断指标的特征,首先使用四个 U-Net 模型分别对全关节间隙(TJS)、外侧关节间隙(LJS)、内侧关节间隙(MJS)和骨质增生进行分割。根据 TJS 的分割结果,生成膝关节软骨下骨区域。然后,根据内侧关节间隙(LJS)、外侧关节间隙(MJS)、内侧关节间隙(TJS)和骨质增生的分割结果提取几何特征,并从膝关节软骨下骨提取放射学特征。最后,在 KL 分级中分别使用几何特征、放射学特征以及几何特征和放射学特征的组合构建几何模型、放射学模型和组合模型。采用严格的决策策略来评估分层分类方法在测试组群所有 X 光图像中的性能:结果:U-Net模型在TJS、LJS、MJS和骨质增生的分割中取得了相对令人满意的表现,骰子相似系数分别为0.88、0.86、0.88和0.64。组合模型在 KL 分级中表现最佳。在 KL 0-2 级和 KL 3-4 级、KL 3 级和 KL 4 级、KL 0 级和 KL 1-2 级、KL 1 级和 KL 2 级的分类中,组合模型的准确率分别为 98.50%、81.65%、82.07% 和 74.10%。对于测试组群的所有 X 光图像,分级分类法的准确率为 65.98%:结论:本研究开发的分级分类法是评估 KOA 严重程度的可行方法。
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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来源期刊
CiteScore
8.60
自引率
2.00%
发文量
261
审稿时长
14 weeks
期刊介绍: Established in 1999, Arthritis Research and Therapy is an international, open access, peer-reviewed journal, publishing original articles in the area of musculoskeletal research and therapy as well as, reviews, commentaries and reports. A major focus of the journal is on the immunologic processes leading to inflammation, damage and repair as they relate to autoimmune rheumatic and musculoskeletal conditions, and which inform the translation of this knowledge into advances in clinical care. Original basic, translational and clinical research is considered for publication along with results of early and late phase therapeutic trials, especially as they pertain to the underpinning science that informs clinical observations in interventional studies.
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