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Open Access 01-12-2024 | Research

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

Authors: Jian Pan, Yuangang Wu, Zhenchao Tang, Kaibo Sun, Mingyang Li, Jiayu Sun, Jiangang Liu, Jie Tian, Bin Shen

Published in: Arthritis Research & Therapy | Issue 1/2024

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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.
Appendix
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Literature
1.
go back to reference Dainese P, Wyngaert KV, De Mits S, Wittoek R, Van Ginckel A, Calders P. Association between knee inflammation and knee pain in patients with knee osteoarthritis: a systematic review. Osteoarthritis Cartilage. 2022;30:516–34.CrossRefPubMed Dainese P, Wyngaert KV, De Mits S, Wittoek R, Van Ginckel A, Calders P. Association between knee inflammation and knee pain in patients with knee osteoarthritis: a systematic review. Osteoarthritis Cartilage. 2022;30:516–34.CrossRefPubMed
2.
go back to reference Kan HS, Chan PK, Chiu KY, Yan CH, Yeung SS, Ng YL, Shiu KW, Ho T. Non-surgical treatment of knee osteoarthritis. Hong Kong Med J. 2019;25:127–33.PubMed Kan HS, Chan PK, Chiu KY, Yan CH, Yeung SS, Ng YL, Shiu KW, Ho T. Non-surgical treatment of knee osteoarthritis. Hong Kong Med J. 2019;25:127–33.PubMed
4.
go back to reference Bijlsma JW, Berenbaum F, Lafeber FP. Osteoarthritis: an update with relevance for clinical practice. Lancet. 2011;377:2115–26.CrossRefPubMed Bijlsma JW, Berenbaum F, Lafeber FP. Osteoarthritis: an update with relevance for clinical practice. Lancet. 2011;377:2115–26.CrossRefPubMed
6.
go back to reference Emrani PS, Katz JN, Kessler CL, Reichmann WM, Wright EA, McAlindon TE, Losina E. Joint space narrowing and Kellgren-Lawrence progression in knee osteoarthritis: an analytic literature synthesis. Osteoarthritis Cartilage. 2008;16:873–82.CrossRefPubMedPubMedCentral Emrani PS, Katz JN, Kessler CL, Reichmann WM, Wright EA, McAlindon TE, Losina E. Joint space narrowing and Kellgren-Lawrence progression in knee osteoarthritis: an analytic literature synthesis. Osteoarthritis Cartilage. 2008;16:873–82.CrossRefPubMedPubMedCentral
7.
go back to reference Kohn MD, Sassoon AA, Fernando ND. Classifications in brief: Kellgren-Lawrence classification of Osteoarthritis. Clin Orthop Relat Res. 2016;474:1886–93.CrossRefPubMedPubMedCentral Kohn MD, Sassoon AA, Fernando ND. Classifications in brief: Kellgren-Lawrence classification of Osteoarthritis. Clin Orthop Relat Res. 2016;474:1886–93.CrossRefPubMedPubMedCentral
8.
go back to reference Yeoh PSQ, Lai KW, Goh SL, Hasikin K, Hum YC, Tee YK, Dhanalakshmi S. Emergence of Deep Learning in Knee Osteoarthritis Diagnosis. Comput Intell Neurosci. 2021; 2021:4931437. Yeoh PSQ, Lai KW, Goh SL, Hasikin K, Hum YC, Tee YK, Dhanalakshmi S. Emergence of Deep Learning in Knee Osteoarthritis Diagnosis. Comput Intell Neurosci. 2021; 2021:4931437.
10.
go back to reference Teoh YX, Lai KW, Usman J, Goh SL, Mohafez H, Hasikin K, Qian P, Jiang Y, Zhang Y, Dhanalakshmi S. Discovering Knee Osteoarthritis Imaging Features for Diagnosis and Prognosis: Review of Manual Imaging Grading and Machine Learning Approaches. J Healthc Eng. 2022; 2022:4138666. Teoh YX, Lai KW, Usman J, Goh SL, Mohafez H, Hasikin K, Qian P, Jiang Y, Zhang Y, Dhanalakshmi S. Discovering Knee Osteoarthritis Imaging Features for Diagnosis and Prognosis: Review of Manual Imaging Grading and Machine Learning Approaches. J Healthc Eng. 2022; 2022:4138666.
11.
go back to reference Kose O, Acar B, Cay F, Yilmaz B, Guler F, Yuksel HY. Inter- and intraobserver reliabilities of four different Radiographic Grading scales of Osteoarthritis of the knee Joint. J Knee Surg. 2018;31:247–53.CrossRefPubMed Kose O, Acar B, Cay F, Yilmaz B, Guler F, Yuksel HY. Inter- and intraobserver reliabilities of four different Radiographic Grading scales of Osteoarthritis of the knee Joint. J Knee Surg. 2018;31:247–53.CrossRefPubMed
12.
go back to reference Chen P, Gao L, Shi X, Allen K, Yang L. Fully automatic knee osteoarthritis severity grading using deep neural networks with a novel ordinal loss. Comput Med Imaging Graph. 2019;75:84–92.CrossRefPubMedPubMedCentral Chen P, Gao L, Shi X, Allen K, Yang L. Fully automatic knee osteoarthritis severity grading using deep neural networks with a novel ordinal loss. Comput Med Imaging Graph. 2019;75:84–92.CrossRefPubMedPubMedCentral
13.
go back to reference Zhang BF, Tan JM, Cho KY, Chang G, Deniz CM, Ieee. Attention-based CNN for KL Grade Classification: Data from the Osteoarthritis Initiative. In: IEEE 17th International Symposium on Biomedical Imaging (ISBI): Apr 03–07 2020; Iowa, IA; 2020: 731–735. Zhang BF, Tan JM, Cho KY, Chang G, Deniz CM, Ieee. Attention-based CNN for KL Grade Classification: Data from the Osteoarthritis Initiative. In: IEEE 17th International Symposium on Biomedical Imaging (ISBI): Apr 03–07 2020; Iowa, IA; 2020: 731–735.
14.
go back to reference Wang CT, Huang B, Thogiti N, Zhu WX, Chang CH, Pao JL, Lai F. Successful real-world application of an osteoarthritis classification deep-learning model using 9210 knees-An orthopedic surgeon’s view. J Orthop Res. 2023;41:737–46.CrossRefPubMed Wang CT, Huang B, Thogiti N, Zhu WX, Chang CH, Pao JL, Lai F. Successful real-world application of an osteoarthritis classification deep-learning model using 9210 knees-An orthopedic surgeon’s view. J Orthop Res. 2023;41:737–46.CrossRefPubMed
16.
go back to reference Cheung JC, Tam AY, Chan LC, Chan PK, Wen C. Superiority of multiple-joint space width over Minimum-Joint Space Width Approach in the machine learning for Radiographic severity and knee osteoarthritis progression. Biology (Basel). 2021; 10. Cheung JC, Tam AY, Chan LC, Chan PK, Wen C. Superiority of multiple-joint space width over Minimum-Joint Space Width Approach in the machine learning for Radiographic severity and knee osteoarthritis progression. Biology (Basel). 2021; 10.
17.
go back to reference Liu Z, Li Z, Qu J, Zhang R, Zhou X, Li L, Sun K, Tang Z, Jiang H, Li H, et al. Radiomics of Multiparametric MRI for Pretreatment Prediction of Pathologic Complete Response to neoadjuvant chemotherapy in breast Cancer: a Multicenter Study. Clin Cancer Res. 2019;25:3538–47.CrossRefPubMed Liu Z, Li Z, Qu J, Zhang R, Zhou X, Li L, Sun K, Tang Z, Jiang H, Li H, et al. Radiomics of Multiparametric MRI for Pretreatment Prediction of Pathologic Complete Response to neoadjuvant chemotherapy in breast Cancer: a Multicenter Study. Clin Cancer Res. 2019;25:3538–47.CrossRefPubMed
18.
go back to reference Liu Z, Meng X, Zhang H, Li Z, Liu J, Sun K, Meng Y, Dai W, Xie P, Ding Y, et al. Predicting distant metastasis and chemotherapy benefit in locally advanced rectal cancer. Nat Commun. 2020;11:4308.CrossRefPubMedPubMedCentral Liu Z, Meng X, Zhang H, Li Z, Liu J, Sun K, Meng Y, Dai W, Xie P, Ding Y, et al. Predicting distant metastasis and chemotherapy benefit in locally advanced rectal cancer. Nat Commun. 2020;11:4308.CrossRefPubMedPubMedCentral
19.
go back to reference Wei G, Jiang P, Tang Z, Qu A, Deng X, Guo F, Sun H, Zhang Y, Gu L, Zhang S, et al. MRI radiomics in overall survival prediction of local advanced cervical cancer patients tread by adjuvant chemotherapy following concurrent chemoradiotherapy or concurrent chemoradiotherapy alone. Magn Reson Imaging. 2022;91:81–90.CrossRefPubMed Wei G, Jiang P, Tang Z, Qu A, Deng X, Guo F, Sun H, Zhang Y, Gu L, Zhang S, et al. MRI radiomics in overall survival prediction of local advanced cervical cancer patients tread by adjuvant chemotherapy following concurrent chemoradiotherapy or concurrent chemoradiotherapy alone. Magn Reson Imaging. 2022;91:81–90.CrossRefPubMed
20.
go back to reference Tang Z, Zhang XY, Liu Z, Li XT, Shi YJ, Wang S, Fang M, Shen C, Dong E, Sun YS, et al. Quantitative analysis of diffusion weighted imaging to predict pathological good response to neoadjuvant chemoradiation for locally advanced rectal cancer. Radiother Oncol. 2019;132:100–8.CrossRefPubMed Tang Z, Zhang XY, Liu Z, Li XT, Shi YJ, Wang S, Fang M, Shen C, Dong E, Sun YS, et al. Quantitative analysis of diffusion weighted imaging to predict pathological good response to neoadjuvant chemoradiation for locally advanced rectal cancer. Radiother Oncol. 2019;132:100–8.CrossRefPubMed
21.
go back to reference Hirvasniemi J, Klein S, Bierma-Zeinstra S, Vernooij MW, Schiphof D, Oei EHG. A machine learning approach to distinguish between knees without and with osteoarthritis using MRI-based radiomic features from tibial bone. Eur Radiol. 2021;31:8513–21.CrossRefPubMedPubMedCentral Hirvasniemi J, Klein S, Bierma-Zeinstra S, Vernooij MW, Schiphof D, Oei EHG. A machine learning approach to distinguish between knees without and with osteoarthritis using MRI-based radiomic features from tibial bone. Eur Radiol. 2021;31:8513–21.CrossRefPubMedPubMedCentral
22.
go back to reference Anifah L, Purnama IK, Hariadi M, Purnomo MH. Osteoarthritis classification using self organizing map based on gabor kernel and contrast-limited adaptive histogram equalization. Open Biomed Eng J. 2013;7:18–28.CrossRefPubMedPubMedCentral Anifah L, Purnama IK, Hariadi M, Purnomo MH. Osteoarthritis classification using self organizing map based on gabor kernel and contrast-limited adaptive histogram equalization. Open Biomed Eng J. 2013;7:18–28.CrossRefPubMedPubMedCentral
23.
go back to reference Rosenberg TD, Paulos LE, Parker RD, Coward DB, Scott SM. The forty-five-degree posteroanterior flexion weight-bearing radiograph of the knee. J Bone Joint Surg Am. 1988;70:1479–83.CrossRefPubMed Rosenberg TD, Paulos LE, Parker RD, Coward DB, Scott SM. The forty-five-degree posteroanterior flexion weight-bearing radiograph of the knee. J Bone Joint Surg Am. 1988;70:1479–83.CrossRefPubMed
24.
go back to reference Yushkevich PA, Piven J, Hazlett HC, Smith RG, Ho S, Gee JC, Gerig G. User-guided 3D active contour segmentation of anatomical structures: significantly improved efficiency and reliability. NeuroImage. 2006;31:1116–28.CrossRefPubMed Yushkevich PA, Piven J, Hazlett HC, Smith RG, Ho S, Gee JC, Gerig G. User-guided 3D active contour segmentation of anatomical structures: significantly improved efficiency and reliability. NeuroImage. 2006;31:1116–28.CrossRefPubMed
25.
go back to reference Schiphof D, Boers M, Bierma-Zeinstra SM. Differences in descriptions of Kellgren and Lawrence grades of knee osteoarthritis. Ann Rheum Dis. 2008;67:1034–6.CrossRefPubMed Schiphof D, Boers M, Bierma-Zeinstra SM. Differences in descriptions of Kellgren and Lawrence grades of knee osteoarthritis. Ann Rheum Dis. 2008;67:1034–6.CrossRefPubMed
26.
go back to reference Ronneberger O, Fischer P, Brox T. U-net: Convolutional networks for biomedical image segmentation. In: Medical Image Computing and Computer-Assisted Intervention–MICCAI 2015: 18th International Conference, Munich, Germany, October 5–9, 2015, Proceedings, Part III 18: 2015: Springer; 2015: 234–241. Ronneberger O, Fischer P, Brox T. U-net: Convolutional networks for biomedical image segmentation. In: Medical Image Computing and Computer-Assisted Intervention–MICCAI 2015: 18th International Conference, Munich, Germany, October 5–9, 2015, Proceedings, Part III 18: 2015: Springer; 2015: 234–241.
27.
go back to reference Heising L, Angelopoulos S. Operationalising fairness in medical AI adoption: detection of early Alzheimer’s disease with 2D CNN. BMJ Health Care Inf. 2022; 29. Heising L, Angelopoulos S. Operationalising fairness in medical AI adoption: detection of early Alzheimer’s disease with 2D CNN. BMJ Health Care Inf. 2022; 29.
28.
go back to reference Kolarik M, Burget R, Travieso-Gonzalez CM, Kocica J. Planar 3D transfer learning for end to end unimodal MRI unbalanced data segmentation. In: 2020 25th International Conference on Pattern Recognition (ICPR): 2021: IEEE; 2021: 6051–6058. Kolarik M, Burget R, Travieso-Gonzalez CM, Kocica J. Planar 3D transfer learning for end to end unimodal MRI unbalanced data segmentation. In: 2020 25th International Conference on Pattern Recognition (ICPR): 2021: IEEE; 2021: 6051–6058.
29.
go back to reference Tan JW, Wang L, Chen Y, Xi W, Ji J, Wang L, Xu X, Zou LK, Feng JX, Zhang J, et al. Predicting Chemotherapeutic Response for Far-advanced gastric Cancer by Radiomics with Deep Learning semi-automatic segmentation. J Cancer. 2020;11:7224–36.CrossRefPubMedPubMedCentral Tan JW, Wang L, Chen Y, Xi W, Ji J, Wang L, Xu X, Zou LK, Feng JX, Zhang J, et al. Predicting Chemotherapeutic Response for Far-advanced gastric Cancer by Radiomics with Deep Learning semi-automatic segmentation. J Cancer. 2020;11:7224–36.CrossRefPubMedPubMedCentral
30.
go back to reference Van Griethuysen JJ, Fedorov A, Parmar C, Hosny A, Aucoin N, Narayan V, Beets-Tan RG, Fillion-Robin J-C, Pieper S, Aerts HJ. Computational radiomics system to decode the radiographic phenotype. Cancer Res. 2017;77:e104–7.CrossRefPubMedPubMedCentral Van Griethuysen JJ, Fedorov A, Parmar C, Hosny A, Aucoin N, Narayan V, Beets-Tan RG, Fillion-Robin J-C, Pieper S, Aerts HJ. Computational radiomics system to decode the radiographic phenotype. Cancer Res. 2017;77:e104–7.CrossRefPubMedPubMedCentral
31.
go back to reference Xie C, Du R, Ho JW, Pang HH, Chiu KW, Lee EY, Vardhanabhuti V. Effect of machine learning re-sampling techniques for imbalanced datasets in (18)F-FDG PET-based radiomics model on prognostication performance in cohorts of head and neck cancer patients. Eur J Nucl Med Mol Imaging. 2020;47:2826–35.CrossRefPubMed Xie C, Du R, Ho JW, Pang HH, Chiu KW, Lee EY, Vardhanabhuti V. Effect of machine learning re-sampling techniques for imbalanced datasets in (18)F-FDG PET-based radiomics model on prognostication performance in cohorts of head and neck cancer patients. Eur J Nucl Med Mol Imaging. 2020;47:2826–35.CrossRefPubMed
32.
go back to reference Gou W, Zhang H, Zhang R. Multi-classification and Tree-Based Ensemble Network for the intrusion detection system in the Internet of vehicles. Sens (Basel). 2023; 23. Gou W, Zhang H, Zhang R. Multi-classification and Tree-Based Ensemble Network for the intrusion detection system in the Internet of vehicles. Sens (Basel). 2023; 23.
33.
go back to reference Zheng Y, Han X, Jia X, Ding C, Zhang K, Li H, et al. Dual-energy CT-based radiomics for predicting invasiveness of lung adenocarcinoma appearing as ground-glass nodules. Front Oncol. 2023;13:1208758.CrossRefPubMedPubMedCentral Zheng Y, Han X, Jia X, Ding C, Zhang K, Li H, et al. Dual-energy CT-based radiomics for predicting invasiveness of lung adenocarcinoma appearing as ground-glass nodules. Front Oncol. 2023;13:1208758.CrossRefPubMedPubMedCentral
34.
go back to reference Wang X, Dai Y, Lin H, Cheng J, Zhang Y, Cao M, Zhou Y. Shape and texture analyses based on conventional MRI for the preoperative prediction of the aggressiveness of pituitary adenomas. Eur Radiol. 2023;33:3312–21.CrossRefPubMed Wang X, Dai Y, Lin H, Cheng J, Zhang Y, Cao M, Zhou Y. Shape and texture analyses based on conventional MRI for the preoperative prediction of the aggressiveness of pituitary adenomas. Eur Radiol. 2023;33:3312–21.CrossRefPubMed
35.
go back to reference Ghouri A, Muzumdar S, Barr AJ, Robinson E, Murdoch C, Kingsbury SR, Conaghan PG. The relationship between meniscal pathologies, cartilage loss, joint replacement and pain in knee osteoarthritis: a systematic review. Osteoarthritis Cartilage. 2022;30:1287–327.CrossRefPubMed Ghouri A, Muzumdar S, Barr AJ, Robinson E, Murdoch C, Kingsbury SR, Conaghan PG. The relationship between meniscal pathologies, cartilage loss, joint replacement and pain in knee osteoarthritis: a systematic review. Osteoarthritis Cartilage. 2022;30:1287–327.CrossRefPubMed
36.
go back to reference Gale DR, Chaisson CE, Totterman SM, Schwartz RK, Gale ME, Felson D. Meniscal subluxation: association with osteoarthritis and joint space narrowing. Osteoarthritis Cartilage. 1999;7:526–32.CrossRefPubMed Gale DR, Chaisson CE, Totterman SM, Schwartz RK, Gale ME, Felson D. Meniscal subluxation: association with osteoarthritis and joint space narrowing. Osteoarthritis Cartilage. 1999;7:526–32.CrossRefPubMed
38.
go back to reference Kim YJ, Lee SR, Choi JY, Kim KG. Using Convolutional Neural Network with Taguchi Parametric Optimization for Knee Segmentation from X-Ray Images. Biomed Res Int. 2021; 2021:5521009. Kim YJ, Lee SR, Choi JY, Kim KG. Using Convolutional Neural Network with Taguchi Parametric Optimization for Knee Segmentation from X-Ray Images. Biomed Res Int. 2021; 2021:5521009.
39.
40.
go back to reference Liu F, Zhou Z, Jang H, Samsonov A, Zhao G, Kijowski R. Deep convolutional neural network and 3D deformable approach for tissue segmentation in musculoskeletal magnetic resonance imaging. Magn Reson Med. 2018;79:2379–91.CrossRefPubMed Liu F, Zhou Z, Jang H, Samsonov A, Zhao G, Kijowski R. Deep convolutional neural network and 3D deformable approach for tissue segmentation in musculoskeletal magnetic resonance imaging. Magn Reson Med. 2018;79:2379–91.CrossRefPubMed
41.
go back to reference Jang S, Lee K, Ju JH. Recent updates of diagnosis, pathophysiology, and treatment on Osteoarthritis of the knee. Int J Mol Sci 2021; 22. Jang S, Lee K, Ju JH. Recent updates of diagnosis, pathophysiology, and treatment on Osteoarthritis of the knee. Int J Mol Sci 2021; 22.
42.
go back to reference Michael JW, Schluter-Brust KU, Eysel P. The epidemiology, etiology, diagnosis, and treatment of osteoarthritis of the knee. Dtsch Arztebl Int. 2010;107:152–62.PubMedPubMedCentral Michael JW, Schluter-Brust KU, Eysel P. The epidemiology, etiology, diagnosis, and treatment of osteoarthritis of the knee. Dtsch Arztebl Int. 2010;107:152–62.PubMedPubMedCentral
Metadata
Title
Automatic knee osteoarthritis severity grading based on X-ray images using a hierarchical classification method
Authors
Jian Pan
Yuangang Wu
Zhenchao Tang
Kaibo Sun
Mingyang Li
Jiayu Sun
Jiangang Liu
Jie Tian
Bin Shen
Publication date
01-12-2024
Publisher
BioMed Central
Published in
Arthritis Research & Therapy / Issue 1/2024
Electronic ISSN: 1478-6362
DOI
https://doi.org/10.1186/s13075-024-03416-4

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