医学
骨关节炎
循证医学
模态(人机交互)
医学影像学
关节病
医学物理学
模式
梅德林
物理疗法
放射科
替代医学
病理
社会学
法学
人机交互
计算机科学
社会科学
政治学
作者
Garifallia Sakellariou,Philip G. Conaghan,Weiya Zhang,J. W. J. Bijlsma,Pernille Bøyesen,Maria Antonietta D’Agostino,Michael Doherty,Daniela Fodor,M. Kloppenburg,Falk Miese,Esperanza Naredo,Mark Porcheret,Annamaria Iagnocco
标识
DOI:10.1136/annrheumdis-2016-210815
摘要
The increased information provided by modern imaging has led to its more extensive use. Our aim was to develop evidence-based recommendations for the use of imaging in the clinical management of the most common arthropathy, osteoarthritis (OA). A task force (including rheumatologists, radiologists, methodologists, primary care doctors and patients) from nine countries defined 10 questions on the role of imaging in OA to support a systematic literature review (SLR). Joints of interest were the knee, hip, hand and foot; imaging modalities included conventional radiography (CR), MRI, ultrasonography, CT and nuclear medicine. PubMed and EMBASE were searched. The evidence was presented to the task force who subsequently developed the recommendations. The strength of agreement for each recommendation was assessed. 17 011 references were identified from which 390 studies were included in the SLR. Seven recommendations were produced, covering the lack of need for diagnostic imaging in patients with typical symptoms; the role of imaging in differential diagnosis; the lack of benefit in monitoring when no therapeutic modification is related, though consideration is required when unexpected clinical deterioration occurs; CR as the first-choice imaging modality; consideration of how to correctly acquire images and the role of imaging in guiding local injections. Recommendations for future research were also developed based on gaps in evidence, such as the use of imaging in identifying therapeutic targets, and demonstrating the added value of imaging. These evidence-based recommendations and related research agenda provide the basis for sensible use of imaging in routine clinical assessment of people with OA.
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