Moon Jucheol, Jadhav Pratik, Choi Sangtae
Department of Computer Engineering and Computer Science, College of Engineering, California State University Long Beach, Long Beach, CA, USA.
Division of Rheumatology, Department of Internal Medicine, Chung-Ang University College of Medicine, Seoul, Korea.
J Rheum Dis. 2025 Apr 1;32(2):73-88. doi: 10.4078/jrd.2024.0128. Epub 2025 Jan 20.
Rheumatic diseases, such as rheumatoid arthritis (RA), osteoarthritis (OA), and spondyloarthritis (SpA), present diagnostic and management challenges due to their impact on connective tissues and the musculoskeletal system. Traditional imaging techniques, including plain radiography, ultrasounds, computed tomography, and magnetic resonance imaging (MRI), play a critical role in diagnosing and monitoring these conditions, but face limitations like inter-observer variability and time-consuming assessments. Recently, deep learning (DL), a subset of artificial intelligence, has emerged as a promising tool for enhancing medical imaging analysis. Convolutional neural networks, a DL model type, have shown great potential in medical image classification, segmentation, and anomaly detection, often surpassing human performance in tasks like tumor identification and disease severity grading. In rheumatology, DL models have been applied to plain radiography, ultrasounds, and MRI for assessing joint damage, synovial inflammation, and disease progression in RA, OA, and SpA patients. Despite the promise of DL, challenges such as data bias, limited explainability, and the need for large annotated datasets remain significant barriers to its widespread adoption. Furthermore, human oversight and value judgment are essential for ensuring the ethical use and effective implementation of DL in clinical settings. This review provides a comprehensive overview of DL's applications in rheumatologic imaging and explores its future potential in enhancing diagnosis, treatment decisions, and personalized medicine.
风湿性疾病,如类风湿性关节炎(RA)、骨关节炎(OA)和脊柱关节炎(SpA),由于其对结缔组织和肌肉骨骼系统的影响,在诊断和管理方面存在挑战。传统的成像技术,包括X线平片、超声、计算机断层扫描和磁共振成像(MRI),在诊断和监测这些疾病中起着关键作用,但面临着诸如观察者间差异和评估耗时等局限性。最近,深度学习(DL)作为人工智能的一个子集,已成为增强医学影像分析的一种有前途的工具。卷积神经网络作为一种深度学习模型类型,在医学图像分类、分割和异常检测方面显示出巨大潜力,在肿瘤识别和疾病严重程度分级等任务中常常超过人类表现。在风湿病学中,深度学习模型已应用于X线平片、超声和MRI,以评估RA、OA和SpA患者的关节损伤、滑膜炎症和疾病进展。尽管深度学习前景广阔,但数据偏差、可解释性有限以及对大量标注数据集的需求等挑战仍然是其广泛应用的重大障碍。此外,人为监督和价值判断对于确保深度学习在临床环境中的道德使用和有效实施至关重要。本综述全面概述了深度学习在风湿病成像中的应用,并探讨了其在增强诊断、治疗决策和个性化医疗方面的未来潜力。