FRI0478 Dynamic automated synovial imaging (DASI) For differentiating between rheumatoid arthritis and other forms of arthritis: automated versus manual interpretation in contrast-enhanced ultrasound

2013 
Background Rheumatoid arthritis (RA) is the most aggressive chronic arthritis and affects about 1% of population, impacting severely both the individual wellbeing and the health care system. Early diagnosis and effective treatment can avoid the devastating outcome of RA 1 , but the differential diagnosis is especially difficult at its onset. The diagnosis relies on conventional methods (clinical parameters, autoantibodies), even if distinct vascularization patterns have been identified in biopsy specimens 2 . Contrast-enhanced ultrasound (CEUS) allows a non-invasive dynamic study of synovial vascularisation and perfusion, although its capacity in differentiating among different arthritis forms has not yet been evaluated 3,4 . Objectives to investigate the performance of quantitative analysis of CEUS data versus manual semiquantitative assessment in differentiating RA from other arthritis (non-RA). Methods 78 outclinic patients with finger joints arthritis were recruited, 33 with RA and 45 with other arthritis. The most active joint was chosen for CEUS examination as previously described 3 , using a US device (MyLab25, Esaote) equipped with Contrast tuned Imaging (CnTI, Esaote), and as contrast agent sulfur hexafluoride microbubbles (SonoVue; Bracco International). Both the anatomical B-mode image and the CnTI cineloop video were digitally stored for subsequent quantiative analysis or manual review. Two in arthritis experienced radiologists manually assessed the examinations as consistent with RA or not. Quantitative image analysis was performed firstly applying a semi-automatic detection of synovial boundaries 5 . Then, the contrast time-activity curve of all pixels belonging to the synovial and perisynovial region was analysed fitting a gamma curve f(t)=A(t-t 0 ) a ×e (t-t0)/b on the data. The statistics summarizing the distribution of the estimated kinetics parameters in the synovial and in the perisynovial tissue were computed and their difference between the two groups (RA and non-RA) analyzed, so to study the existance of different vascularization or flow patterns. Finally, a supervised classifier (random forest) was trained to classify each patient through its CEUS-derived parameters, validating the classifier diagnostic power using a leave-one-out strategy. Results Manual assessment of CEUS examination consistent with RA or non-RA performed by radiologists showed high sensitivity (0,9), but indeed low specificity and accuracy (0,46 and 0,69, respectively). On the contrary, the classifier using CEUS quantitative parameters showed both good sensitivity (0,88) and specificitity (0,94), resulting in a diagnostic accuracy of 0,92. Conclusions The Dynamic Automated Synovial Imaging (DASI) proposed provided a high accuracy in discriminating RA from non-RA arthritis. DASI promises to be a powerful tool for the diagnosis and follow-up of arthritis, attributing to CEUS a new role in the field. References Smolen JS. Ann Rheum Dis 2010;69:965-75. Reece RJ. Arthritis Rheum 1999;42(7):1481-4. Stramare R. J Clin Ultrasound 2012;40(3):147-54. Klauser A. Eur Radiol 2005;15:2404. Veronese E. Med Eng Phys 2013; 35, 188–194. Disclosure of Interest None Declared
    • Correction
    • Source
    • Cite
    • Save
    • Machine Reading By IdeaReader
    0
    References
    2
    Citations
    NaN
    KQI
    []