ACR Meeting Abstracts

ACR Meeting Abstracts

  • Meetings
    • ACR Convergence 2024
    • ACR Convergence 2023
    • 2023 ACR/ARP PRSYM
    • ACR Convergence 2022
    • ACR Convergence 2021
    • ACR Convergence 2020
    • 2020 ACR/ARP PRSYM
    • 2019 ACR/ARP Annual Meeting
    • 2018-2009 Meetings
    • Download Abstracts
  • Keyword Index
  • Advanced Search
  • Your Favorites
    • Favorites
    • Login
    • View and print all favorites
    • Clear all your favorites
  • ACR Meetings

Abstract Number: 0972

Automated Joint Space Width Measurement for Hand Osteoarthritis: A Deep Learning Approach

Zhiheng Chang1, Juan Shan2, Yue Wang2, Xinyue Sun3, Jeffrey Driban4, Timothy McAlindon5, Jeffrey Duryea6, Lena Schaefer6, Charles Eaton7 and Ming Zhang8, 1Wentworth Institute of Technol, Boston, MA, 2Pace University, New York, NY, 3Shandong University, Qing Dao, Shandong, China, 4Tufts Medical Center, Westborough, MA, 5Tufts Medical Center, Arlington, MA, 6Brigham and Women's Hospital, Boston, MA, 7Brown University, Pawtucket, RI, 8Boston University, Westford, MA

Meeting: ACR Convergence 2022

Keywords: Joint Structure, Osteoarthritis, X-ray

  • Tweet
  • Email
  • Print
Session Information

Date: Sunday, November 13, 2022

Title: Research Methodology Poster

Session Type: Poster Session B

Session Time: 9:00AM-10:30AM

Background/Purpose: Hand osteoarthritis (OA) can be assessed visually through radiographs using Kellgren and Lawrence (KL) system. However, the KL grading system is not fully objective and cannot distinguish minor differences. Although joint space width (JSW) measuring compensates for these disadvantages, current semi-automated JSW measurement methods are time-consuming and financially costly. In this abstract, we introduced a machine learning (ML) approach, which employs two multi-output regression convolutional neural networks (CNNs) to automatically measure JSW in 5 subregions on each finger joint (12 joints from a hand radiograph).

Methods: We selected 3,591 hand X-rays from the Osteoarthritis Initiative (OAI). We first used our previously developed automated joint detection pipeline to identify 41,060 joints. An existing semi-automated labeling method was used to establish the ground truth for training and testing. In this study, we used a total of 10,845 distal interphalangeal (DIP) joints, including 576 DIP joints that we selected as a testing set for the ML model method. We then split the other DIP joints (10,269) into a training set and a validation set by a ratio of 0.8 for training and 0.2 for validation. The ML method took the X-ray finger joint segmentation (measurement region) and the KL grade as input. Next, the ML method measured five JSW measurements directly using two multi-output regression CNN models: The non-OA model for KL grade 0 or 1, and the OA model for KL grade 2 to 4. Both models were built on top of regular VGG-19 architecture. We trained each model for 1,000 epochs using Mean Square Error (MSE) as the loss function and optimized using Adaptive moment estimation (Adam) with a learning rate of 10-5.

Results: Table 1 lists the Pearson correlation (r), MSE, and average JSW in millimeters for the ML method along with the ground truth from the semi-automated software. The method achieved the highest correlation coefficient of 0.89 and the smallest MSE of 0.013 mm for the KL=0 group. In general, the ML method performs better in healthy (KL= 0 ∼ 1) compared to severe (KL= 3 ∼ 4) joints.

Conclusion: JSW measurement is oftentimes more applicable for examining hand OA than the KL system because of its ability to monitor small positive or negative changes. In this study, we reported an ML-based approach to obtain five JSW measurements automatically from the radiographs, which is more efficient than the current method. The method achieves good correlation and small MSE with the manual JSW among hands with no or minimal hand OA. This work has the potential to improve the efficiency of hand OA research studies. In future studies, we will extend the ML models to measure proximal interphalangeal and metacarpophalangeal finger joints.

Supporting image 1

Table 1: Result of JSW Measurement using ML

Supporting image 2

Figure 1 Automated JSW measurement using multi-output regression Convolutional neural networks


Disclosures: Z. Chang, None; J. Shan, None; Y. Wang, None; X. Sun, None; J. Driban, Pfizer, Eli Lilly; T. McAlindon, Biosplice Therapeutics, Inc, Remedium-Bio, Organogenesis, Pfizer, Kolon Tissue Gene, Seikugaku; J. Duryea, None; L. Schaefer, None; C. Eaton, None; M. Zhang, None.

To cite this abstract in AMA style:

Chang Z, Shan J, Wang Y, Sun X, Driban J, McAlindon T, Duryea J, Schaefer L, Eaton C, Zhang M. Automated Joint Space Width Measurement for Hand Osteoarthritis: A Deep Learning Approach [abstract]. Arthritis Rheumatol. 2022; 74 (suppl 9). https://acrabstracts.org/abstract/automated-joint-space-width-measurement-for-hand-osteoarthritis-a-deep-learning-approach/. Accessed .
  • Tweet
  • Email
  • Print

« Back to ACR Convergence 2022

ACR Meeting Abstracts - https://acrabstracts.org/abstract/automated-joint-space-width-measurement-for-hand-osteoarthritis-a-deep-learning-approach/

Advanced Search

Your Favorites

You can save and print a list of your favorite abstracts during your browser session by clicking the “Favorite” button at the bottom of any abstract. View your favorites »

All abstracts accepted to ACR Convergence are under media embargo once the ACR has notified presenters of their abstract’s acceptance. They may be presented at other meetings or published as manuscripts after this time but should not be discussed in non-scholarly venues or outlets. The following embargo policies are strictly enforced by the ACR.

Accepted abstracts are made available to the public online in advance of the meeting and are published in a special online supplement of our scientific journal, Arthritis & Rheumatology. Information contained in those abstracts may not be released until the abstracts appear online. In an exception to the media embargo, academic institutions, private organizations, and companies with products whose value may be influenced by information contained in an abstract may issue a press release to coincide with the availability of an ACR abstract on the ACR website. However, the ACR continues to require that information that goes beyond that contained in the abstract (e.g., discussion of the abstract done as part of editorial news coverage) is under media embargo until 10:00 AM ET on November 14, 2024. Journalists with access to embargoed information cannot release articles or editorial news coverage before this time. Editorial news coverage is considered original articles/videos developed by employed journalists to report facts, commentary, and subject matter expert quotes in a narrative form using a variety of sources (e.g., research, announcements, press releases, events, etc.).

Violation of this policy may result in the abstract being withdrawn from the meeting and other measures deemed appropriate. Authors are responsible for notifying colleagues, institutions, communications firms, and all other stakeholders related to the development or promotion of the abstract about this policy. If you have questions about the ACR abstract embargo policy, please contact ACR abstracts staff at [email protected].

Wiley

  • Online Journal
  • Privacy Policy
  • Permissions Policies
  • Cookie Preferences

© Copyright 2025 American College of Rheumatology