Division of Image Processing, Department of Radiology, Leiden University Medical Center, Leiden, the Netherlands.
Department of Radiology, Leiden University Medical Center, Leiden, the Netherlands.
Nat Rev Rheumatol. 2024 Mar;20(3):182-195. doi: 10.1038/s41584-023-01074-5. Epub 2024 Feb 8.
Artificial intelligence techniques, specifically deep learning, have already affected daily life in a wide range of areas. Likewise, initial applications have been explored in rheumatology. Deep learning might not easily surpass the accuracy of classic techniques when performing classification or regression on low-dimensional numerical data. With images as input, however, deep learning has become so successful that it has already outperformed the majority of conventional image-processing techniques developed during the past 50 years. As with any new imaging technology, rheumatologists and radiologists need to consider adapting their arsenal of diagnostic, prognostic and monitoring tools, and even their clinical role and collaborations. This adaptation requires a basic understanding of the technical background of deep learning, to efficiently utilize its benefits but also to recognize its drawbacks and pitfalls, as blindly relying on deep learning might be at odds with its capabilities. To facilitate such an understanding, it is necessary to provide an overview of deep-learning techniques for automatic image analysis in detecting, quantifying, predicting and monitoring rheumatic diseases, and of currently published deep-learning applications in radiological imaging for rheumatology, with critical assessment of possible limitations, errors and confounders, and conceivable consequences for rheumatologists and radiologists in clinical practice.
人工智能技术,特别是深度学习,已经在广泛的领域影响了日常生活。同样,初步的应用也已经在风湿病学中进行了探索。在对低维数值数据进行分类或回归时,深度学习可能不容易超过经典技术的准确性。但是,对于图像作为输入,深度学习已经非常成功,以至于已经超过了过去 50 年开发的大多数传统图像处理技术。与任何新的成像技术一样,风湿病学家和放射科医生需要考虑调整他们的诊断、预后和监测工具库,甚至他们的临床角色和合作。这种适应需要对深度学习的技术背景有基本的了解,以便有效地利用其优势,但也要认识到其缺点和陷阱,因为盲目依赖深度学习可能与其能力不符。为了促进这种理解,有必要概述用于自动图像分析的深度学习技术,以检测、量化、预测和监测风湿病,并评估目前在放射学成像中用于风湿病学的深度学习应用,对可能的局限性、误差和混杂因素进行批判性评估,以及对风湿病学家和放射科医生在临床实践中的可能后果进行评估。