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Detection of a slow-flow component in contrast-enhanced ultrasound of the synovia for the differential diagnosis of arthritis

机译:检测Sysovia对比增强超声波的慢流量分量,用于关节炎的差异诊断

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Contrast Enhanced Ultrasound (CEUS) is a sensitive imaging technique to assess tissue vascularity, that can be useful in the quantification of different perfusion patterns. This can particularly important in the early detection and differentiation of different types of arthritis. A Gamma-variate can accurately quantify synovial perfusion and it is flexible enough to describe many heterogeneous patterns. However, in some cases the heterogeneity of the kinetics can be such that even the Gamma model does not properly describe the curve, especially in presence of recirculation or of an additional slow-flow component. In this work we apply to CEUS data both the Gamma-variate and the single compartment recirculation model (SCR) which takes explicitly into account an additional component of slow flow. The models are solved within a Bayesian framework. We also employed the perfusion estimates obtained with SCR to train a support vector machine classifier to distinguish different types of arthritis. When dividing the patients into two groups (rheumatoid arthritis and polyarticular RA-like psoriatic arthritis vs. other arthritis types), the slow component amplitude was significantly different across groups: mean values of a_1 and its variability were statistically higher in RA and RA-like patients (131% increase in mean, p = 0.035 and 73% increase in standard deviation, p = 0.049 respectively). The SVM classifier achieved a balanced accuracy of 89%, with a sensitivity of 100% and a specificity of 78%.
机译:对比度增强超声(CEU)是一种敏感的成像技术,用于评估组织血管性,这可以用于定量不同的灌注模式。这在早期检测和分化的不同类型关节炎的早期检测和分化中尤其重要。 γ变化可以精确地量化滑膜灌注,并且足够灵活,以描述许多异质图案。然而,在某些情况下,动力学的异质性可以使得即使γ模型也没有适当地描述曲线,尤其是在再循环或额外的慢流量组件存在下。在这项工作中,我们适用于CEUS数据,伽玛变化和单个隔间再循环模型(SCR)都明确地考虑了缓冲的附加分量。该模型在贝叶斯框架内得到解决。我们还采用了与SCR获得的灌注估计用于培训支持向量机分类器以区分不同类型的关节炎。当将患者分成两组(类风湿性关节炎和多颗粒Ra样的性乳房关节炎时,慢组分幅度在组中显着差异:A_1的平均值及其可变性在RA和RA的统计学上较高患者(平均值增加131%,P = 0.035和73%的标准偏差增加,P = 0.049)。 SVM分类器实现了89%的均衡精度,灵敏度为100%,特异性为78%。

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