| Literature DB >> 27014713 |
Gaia Rizzo1, Bernd Raffeiner2, Alessandro Coran3, Luca Ciprian4, Ugo Fiocco3, Costantino Botsios3, Roberto Stramare3, Enrico Grisan1.
Abstract
Inflammatory rheumatic diseases are the leading causes of disability and constitute a frequent medical disorder, leading to inability to work, high comorbidity, and increased mortality. The standard for diagnosing and differentiating arthritis is based on clinical examination, laboratory exams, and imaging findings, such as synovitis, bone edema, or joint erosions. Contrast-enhanced ultrasound (CEUS) examination of the small joints is emerging as a sensitive tool for assessing vascularization and disease activity. Quantitative assessment is mostly performed at the region of interest level, where the mean intensity curve is fitted with an exponential function. We showed that using a more physiologically motivated perfusion curve, and by estimating the kinetic parameters separately pixel by pixel, the quantitative information gathered is able to more effectively characterize the different perfusion patterns. In particular, we demonstrated that a random forest classifier based on pixelwise quantification of the kinetic contrast agent perfusion features can discriminate rheumatoid arthritis from different arthritis forms (psoriatic arthritis, spondyloarthritis, and arthritis in connective tissue disease) with an average accuracy of 97%. On the contrary, clinical evaluation (DAS28), semiquantitative CEUS assessment, serological markers, or region-based parameters do not allow such a high diagnostic accuracy.Entities:
Keywords: arthritis; contrast enhanced ultrasound; kinetics analysis; parameter estimation; perfusion analysis
Year: 2015 PMID: 27014713 PMCID: PMC4797088 DOI: 10.1117/1.JMI.2.3.034503
Source DB: PubMed Journal: J Med Imaging (Bellingham) ISSN: 2329-4302