深度学习辨别手部 X 射线照相术上的类风湿性关节炎和骨关节炎

IF 1.9 3区 医学 Q2 ORTHOPEDICS Skeletal Radiology Pub Date : 2024-02-01 Epub Date: 2023-08-02 DOI:10.1007/s00256-023-04408-2
Yuntong Ma, Ian Pan, Stanley Y Kim, Ged G Wieschhoff, Katherine P Andriole, Jacob C Mandell
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引用次数: 0

摘要

目的:开发一种深度学习模型,利用手部X光片区分类风湿性关节炎(RA)和骨关节炎(OA),并评估改变预训练和训练参数对模型性能的影响:对一个卷积神经网络进行了回顾性训练,训练对象是2017年至2021年期间在一家综合医疗网络内的七家医院获得的8387名患者的9714张手部X光片检查结果。使用来自 146 名患者的 250 张检查结果的独立测试集对其性能进行评估。评估了二元判别能力(无关节炎与关节炎;RA 与非 RA)和三元分类(无关节炎与 OA 与 RA)。此外,还研究了使用肌肉骨骼X光片进行额外预培训、使用所有视图而非仅使用后前方视图以及不同图像分辨率对模型性能的影响。接受者操作特征曲线下面积(AUC)和科恩卡帕系数用于评估诊断性能:对于无关节炎与关节炎,模型的 AUC 为 0.975(95% CI:0.957,0.989)。对于 RA 与非 RA,模型的 AUC 为 0.955(95% CI:0.919,0.983)。对于三向分类,该模型的卡帕值为 0.806(95% CI:0.742,0.866),测试集的准确率为 87.2%(95% CI:83.2%,91.2%)。图像分辨率越高,性能越好,最高可达 1024 × 1024 像素。在肌肉骨骼X光片上进行额外的预训练和使用所有视图对性能没有显著影响:深度学习模型可用于区分手部 X 光片上的无关节炎、OA 和 RA,而且性能很高。
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Deep learning discrimination of rheumatoid arthritis from osteoarthritis on hand radiography.

Purpose: To develop a deep learning model to distinguish rheumatoid arthritis (RA) from osteoarthritis (OA) using hand radiographs and to evaluate the effects of changing pretraining and training parameters on model performance.

Materials and methods: A convolutional neural network was retrospectively trained on 9714 hand radiograph exams from 8387 patients obtained from 2017 to 2021 at seven hospitals within an integrated healthcare network. Performance was assessed using an independent test set of 250 exams from 146 patients. Binary discriminatory capacity (no arthritis versus arthritis; RA versus not RA) and three-way classification (no arthritis versus OA versus RA) were evaluated. The effects of additional pretraining using musculoskeletal radiographs, using all views as opposed to only the posteroanterior view, and varying image resolution on model performance were also investigated. Area under the receiver operating characteristic curve (AUC) and Cohen's kappa coefficient were used to evaluate diagnostic performance.

Results: For no arthritis versus arthritis, the model achieved an AUC of 0.975 (95% CI: 0.957, 0.989). For RA versus not RA, the model achieved an AUC of 0.955 (95% CI: 0.919, 0.983). For three-way classification, the model achieved a kappa of 0.806 (95% CI: 0.742, 0.866) and accuracy of 87.2% (95% CI: 83.2%, 91.2%) on the test set. Increasing image resolution increased performance up to 1024 × 1024 pixels. Additional pretraining on musculoskeletal radiographs and using all views did not significantly affect performance.

Conclusion: A deep learning model can be used to distinguish no arthritis, OA, and RA on hand radiographs with high performance.

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来源期刊
Skeletal Radiology
Skeletal Radiology 医学-核医学
CiteScore
4.40
自引率
9.50%
发文量
253
审稿时长
3-8 weeks
期刊介绍: Skeletal Radiology provides a forum for the dissemination of current knowledge and information dealing with disorders of the musculoskeletal system including the spine. While emphasizing the radiological aspects of the many varied skeletal abnormalities, the journal also adopts an interdisciplinary approach, reflecting the membership of the International Skeletal Society. Thus, the anatomical, pathological, physiological, clinical, metabolic and epidemiological aspects of the many entities affecting the skeleton receive appropriate consideration. This is the Journal of the International Skeletal Society and the Official Journal of the Society of Skeletal Radiology and the Australasian Musculoskelelal Imaging Group.
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