医学
超声波
滑膜炎
类风湿性关节炎
磁共振成像
放射科
物理疗法
内科学
作者
Ettore Silvagni,Sara Zandonella Callegher,Eleonora Mauric,Sofia Chiricolo,Nikolaus Schreiber,Annarita Tullio,Alen Zabotti,Carlo Alberto Scirè,Christian Dejaco,Garifallia Sakellariou
出处
期刊:Rheumatology
[Oxford University Press]
日期:2022-05-04
卷期号:61 (12): 4590-4602
被引量:7
标识
DOI:10.1093/rheumatology/keac261
摘要
We aimed to systematically review the literature to retrieve evidence on the diagnostic and prognostic value of musculoskeletal ultrasound for a treat to target (T2T) approach in RA.Eight research questions were developed addressing the role of ultrasound (including different ultrasound scores and elementary lesions) for diagnosis, monitoring and prognosis of RA. PubMed and EMBASE were searched (2005-2020). Articles on RA and reporting data on musculoskeletal ultrasound were included and extracted according to the underlying questions, and risk of bias assessed according to the study design.Out of 4632 records, 60 articles were included. Due to clinical heterogeneity, meta-analysis was not possible. Ultrasound better predicted disease relapses with respect to clinical examination in patients in remission, while both methods performed similarly in predicting response to therapy, achievement of remission and radiographic progression. Ultrasound was superior to clinical examination in diagnosing joint involvement using another imaging modality, such as magnetic resonance imaging, as reference. Limited ultrasound scores performed like more extensive evaluations for the detection of joint inflammation and for outcome prediction. Higher ultrasound scores of synovitis were linked to poor outcomes at all disease stages, but a specific cut-off distinguishing between low- and high-risk groups did not emerge.These data confirm the pivotal role of ultrasound when evaluating synovial inflammation and when identifying RA patients at higher risk of relapse. Further research is needed to better define the role of ultrasound in a T2T management strategy in moderately-to-highly active RA.
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