An optimal deep learning model for the scoring of radiographic damage in patients with ankylosing spondylitis.

IF 3.4 2区 医学 Q2 RHEUMATOLOGY
Therapeutic Advances in Musculoskeletal Disease Pub Date : 2024-10-07 eCollection Date: 2024-01-01 DOI:10.1177/1759720X241285973
Yen-Ju Chen, Der-Yuan Chen, Haw-Chang Lan, An-Chih Huang, Yi-Hsing Chen, Wen-Nan Huang, Hsin-Hua Chen
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引用次数: 0

Abstract

Background: Detecting vertebral structural damage in patients with ankylosing spondylitis (AS) is crucial for understanding disease progression and in research settings.

Objectives: This study aimed to use deep learning to score the modified Stoke Ankylosing Spondylitis Spinal Score (mSASSS) using lateral X-ray images of the cervical and lumbar spine in patients with AS in Asian populations.

Design: A deep learning model was developed to automate the scoring of mSASSS based on X-ray images.

Methods: We enrolled patients with AS at a tertiary medical center in Taiwan from August 1, 2001 to December 30, 2020. A localization module was used to locate the vertebral bodies in the images of the cervical and lumbar spine. Images were then extracted from these localized points and fed into a classification module to determine whether common lesions of AS were present. The scores of each localized point were calculated based on the presence of these lesions and summed to obtain the total mSASSS score. The performance of the model was evaluated on both validation set and testing set.

Results: This study reviewed X-ray image data from 554 patients diagnosed with AS, which were then annotated by 3 medical experts for structural changes. The accuracy for judging various structural changes in the validation set ranged from 0.886 to 0.985, whereas the accuracy for scoring the single vertebral corner in the test set was 0.865.

Conclusion: This study demonstrated a well-trained deep learning model of mSASSS scoring for detecting the vertebral structural damage in patients with AS at an accuracy rate of 86.5%. This artificial intelligence model would provide real-time mSASSS assessment for physicians to help better assist in radiographic status evaluation with minimal human errors. Furthermore, it can assist in a research setting by offering a consistent and objective method of scoring, which could enhance the reproducibility and reliability of clinical studies.

强直性脊柱炎患者放射损伤评分的最佳深度学习模型。
背景:检测强直性脊柱炎(AS)患者的脊椎结构损伤对于了解疾病进展和研究环境至关重要:本研究旨在利用深度学习,使用亚洲强直性脊柱炎患者颈椎和腰椎的侧位X光图像,对改良的斯托克强直性脊柱炎脊柱评分(mSASSS)进行评分:设计:我们开发了一个深度学习模型,根据X光图像自动进行mSASSS评分:我们从2001年8月1日至2020年12月30日在台湾的一家三级医疗中心招募了强直性脊柱炎患者。使用定位模块对颈椎和腰椎图像中的椎体进行定位。然后从这些定位点提取图像并输入分类模块,以确定是否存在强直性脊柱炎的常见病变。根据这些病变的存在情况计算每个定位点的得分,然后求和得出 mSASSS 总分。在验证集和测试集中对模型的性能进行了评估:本研究审查了 554 名确诊为强直性脊柱炎患者的 X 光图像数据,然后由 3 位医学专家对这些数据的结构变化进行了注释。在验证集中,判断各种结构变化的准确率在 0.886 到 0.985 之间,而在测试集中,对单个椎体拐角评分的准确率为 0.865:本研究展示了一种训练有素的 mSASSS 评分深度学习模型,用于检测强直性脊柱炎患者的椎体结构损伤,准确率高达 86.5%。该人工智能模型可为医生提供实时的 mSASSS 评估,有助于更好地协助进行放射学状态评估,同时将人为误差降至最低。此外,它还能在研究环境中提供一致、客观的评分方法,从而提高临床研究的可重复性和可靠性。
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
6.80
自引率
4.80%
发文量
132
审稿时长
18 weeks
期刊介绍: Therapeutic Advances in Musculoskeletal Disease delivers the highest quality peer-reviewed articles, reviews, and scholarly comment on pioneering efforts and innovative studies across all areas of musculoskeletal disease.
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