OP0062 PREDICTIVE VALUE OF BONE TEXTURE FEATURES EXTRACTED BY DEEP LEARNING MODELS FOR THE DETECTION OF OSTEOARTHRITIS: DATA FROM THE OSTEOARTHRITIS INITIATIVE. (2nd June 2020)
- Record Type:
- Journal Article
- Title:
- OP0062 PREDICTIVE VALUE OF BONE TEXTURE FEATURES EXTRACTED BY DEEP LEARNING MODELS FOR THE DETECTION OF OSTEOARTHRITIS: DATA FROM THE OSTEOARTHRITIS INITIATIVE. (2nd June 2020)
- Main Title:
- OP0062 PREDICTIVE VALUE OF BONE TEXTURE FEATURES EXTRACTED BY DEEP LEARNING MODELS FOR THE DETECTION OF OSTEOARTHRITIS: DATA FROM THE OSTEOARTHRITIS INITIATIVE
- Authors:
- Kuo, C. F.
Zheng, K.
Miao, S.
Lu, L.
Hsieh, C. I.
Lin, C.
Fan, T. Y. - Abstract:
- Abstract : Background: Osteoarthritis is a degenerative disorder characterized by radiographic features of asymmetric loss of joint space, subchondral sclerosis, and osteophyte formation. Conventional plain films are essential to detect structural changes in osteoarthritis. Recent evidence suggests that fractal- and entropy-based bone texture parameters may improve the prediction of radiographic osteoarthritis. 1 In contrast to the fixed texture features, deep learning models allow the comprehensive texture feature extraction and recognition relevant to osteoarthritis. Objectives: To assess the predictive value of deep learning-extracted bone texture features in the detection of radiographic osteoarthritis. Methods: We used data from the Osteoarthritis Initiative, which is a longitudinal study with 4, 796 patients followed up and assessed for osteoarthritis. We used a training set of 25, 978 images from 3, 086 patients to develop the textual model. We use the BoneFinder software 2 to do the segmentation of distal femur and proximal tibia. We used the Deep Texture Encoding Network (Deep-TEN) 3 to encode the bone texture features into a vector, which is fed to a 5-way linear classifier for Kellgren and Lawrence grading for osteoarthritis classification. We also developed a Residual Network with 18 layers (ResNet18) for comparison since it deals with contours as well. Spearman's correlation coefficient was used to assess the correlation between predicted and reference KLAbstract : Background: Osteoarthritis is a degenerative disorder characterized by radiographic features of asymmetric loss of joint space, subchondral sclerosis, and osteophyte formation. Conventional plain films are essential to detect structural changes in osteoarthritis. Recent evidence suggests that fractal- and entropy-based bone texture parameters may improve the prediction of radiographic osteoarthritis. 1 In contrast to the fixed texture features, deep learning models allow the comprehensive texture feature extraction and recognition relevant to osteoarthritis. Objectives: To assess the predictive value of deep learning-extracted bone texture features in the detection of radiographic osteoarthritis. Methods: We used data from the Osteoarthritis Initiative, which is a longitudinal study with 4, 796 patients followed up and assessed for osteoarthritis. We used a training set of 25, 978 images from 3, 086 patients to develop the textual model. We use the BoneFinder software 2 to do the segmentation of distal femur and proximal tibia. We used the Deep Texture Encoding Network (Deep-TEN) 3 to encode the bone texture features into a vector, which is fed to a 5-way linear classifier for Kellgren and Lawrence grading for osteoarthritis classification. We also developed a Residual Network with 18 layers (ResNet18) for comparison since it deals with contours as well. Spearman's correlation coefficient was used to assess the correlation between predicted and reference KL grades. We also test the performance of the model to identify osteoarthritis (KL grade≥2). Results: We obtained 6, 490 knee radiographs from 446 female and 326 male patients who were not in the training sets to validate the performance of the models. The distribution of the KL grades in the training and testing sets were shown in Table 1 . The Spearman's correlation coefficient was 0.60 for the Deep-TEN and 0.67 for the ResNet18 model. Table 2 shows the performance of the models to detect osteoarthritis. The positive predictive value for Deep-TEN and ResNet18 model classification for OA was 81.37% and 87.46%, respectively. Conclusion: This study demonstrates that the bone texture model performs reasonably well to detect radiographic osteoarthritis with a similar performance to the bone contour model. References: [1]Bertalan Z, Ljuhar R, Norman B, et al. Combining fractal- and entropy-based bone texture analysis for the prediction of osteoarthritis: data from the multicenter osteoarthritis study (MOST). Osteoarthritis Cartilage 2018;26:S49. [2]Lindner C, Wang CW, Huang CT, et al. Fully Automatic System for Accurate Localisation and Analysis of Cephalometric Landmarks in Lateral Cephalograms. Sci Rep 2016;6:33581. [3]Zhang H, Xue J, Dana K. Deep TEN: Texture Encoding Network. The IEEE Conference on Computer Vision and Pattern Recognition (CVPR) 2017:708-17. Disclosure of Interests: None declared … (more)
- Is Part Of:
- Annals of the rheumatic diseases. Volume 79(2020)Supplement 1
- Journal:
- Annals of the rheumatic diseases
- Issue:
- Volume 79(2020)Supplement 1
- Issue Display:
- Volume 79, Issue 1 (2020)
- Year:
- 2020
- Volume:
- 79
- Issue:
- 1
- Issue Sort Value:
- 2020-0079-0001-0000
- Page Start:
- 41
- Page End:
- 42
- Publication Date:
- 2020-06-02
- Subjects:
- Rheumatism -- Periodicals
616.723005 - Journal URLs:
- http://ard.bmjjournals.com/ ↗
http://www.pubmedcentral.nih.gov/tocrender.fcgi?journal=149&action=archive ↗
http://www.bmj.com/archive ↗
http://gateway.ovid.com/server3/ovidweb.cgi?T=JS&MODE=ovid&D=ovft&PAGE=titles&SEARCH=annals+of+the+rheumatic+diseases.tj&NEWS=N ↗ - DOI:
- 10.1136/annrheumdis-2020-eular.2858 ↗
- Languages:
- English
- ISSNs:
- 0003-4967
- Deposit Type:
- Legaldeposit
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