Department of Radiology, New York University Grossman School of Medicine, 660 First Avenue, 3Rd Floor, New York, NY, 10016, USA.
Skeletal Radiol. 2023 Nov;52(11):2225-2238. doi: 10.1007/s00256-023-04296-6. Epub 2023 Feb 9.
Deep learning (DL) is one of the most exciting new areas in medical imaging. This article will provide a review of current applications of DL in osteoarthritis (OA) imaging, including methods used for cartilage lesion detection, OA diagnosis, cartilage segmentation, and OA risk assessment. DL techniques have been shown to have similar diagnostic performance as human readers for detecting and grading cartilage lesions within the knee on MRI. A variety of DL methods have been developed for detecting and grading the severity of knee OA and various features of knee OA on X-rays using standardized classification systems with diagnostic performance similar to human readers. Multiple DL approaches have been described for fully automated segmentation of cartilage and other knee tissues and have achieved higher segmentation accuracy than currently used methods with substantial reductions in segmentation times. Various DL models analyzing baseline X-rays and MRI have been developed for OA risk assessment. These models have shown high diagnostic performance for predicting a wide variety of OA outcomes, including the incidence and progression of radiographic knee OA, the presence and progression of knee pain, and future total knee replacement. The preliminary results of DL applications in OA imaging have been encouraging. However, many DL techniques require further technical refinement to maximize diagnostic performance. Furthermore, the generalizability of DL approaches needs to be further investigated in prospective studies using large image datasets acquired at different institutions with different imaging hardware before they can be implemented in clinical practice and research studies.
深度学习(DL)是医学影像学中最令人兴奋的新领域之一。本文将综述 DL 在骨关节炎(OA)成像中的当前应用,包括用于软骨病变检测、OA 诊断、软骨分割和 OA 风险评估的方法。研究表明,DL 技术在 MRI 上检测和分级膝关节软骨病变方面与人类读者具有相似的诊断性能。已经开发了多种 DL 方法,用于使用标准化分类系统检测和分级 X 射线上的膝关节 OA 严重程度和各种特征,其诊断性能与人类读者相似。已经描述了多种用于全自动分割软骨和其他膝关节组织的 DL 方法,与目前使用的方法相比,这些方法的分割时间大大减少,分割准确性更高。已经开发了各种分析基线 X 射线和 MRI 的 DL 模型来进行 OA 风险评估。这些模型在预测各种 OA 结局方面表现出了较高的诊断性能,包括放射学膝关节 OA 的发生率和进展、膝关节疼痛的存在和进展以及未来的全膝关节置换。DL 在 OA 成像中的初步应用结果令人鼓舞。然而,许多 DL 技术需要进一步的技术改进,以最大限度地提高诊断性能。此外,在不同机构使用不同成像硬件获得的大型图像数据集的前瞻性研究中,需要进一步研究 DL 方法的泛化能力,然后才能将其应用于临床实践和研究中。