Stumper Nele, Berger Jörn, Klotsche Jens, Gedat Egbert, Hoff Paula, Schmittat Gabriela, Burmester Gerd R, Krönke Gerhard, Backhaus Marina, Haugen Ida K, Ohrndorf Sarah
Department of Rheumatology and Clinical Immunology, Charite-Universitatsmedizin Berlin, Berlin, BE, Germany
Xiralite GmbH, Berlin, Germany.
RMD Open. 2025 Aug 31;11(3):e005372. doi: 10.1136/rmdopen-2024-005372.
Accurate and rapid diagnosis of rheumatic diseases is essential for further treatment decision. Different rheumatic diseases present characteristic patterns (image features) in fluorescence optical imaging (FOI). We developed an atlas of FOI image features and tested its ability to differentiate various rheumatic diseases.
FOI images from patients with rheumatoid arthritis (RA), psoriatic arthritis (PsA), connective tissue diseases (CTD) and osteoarthritis (OA) were analysed by two readers blinded for diagnosis and calibrated against each other, using the prima vista mode (PVM) and an automated 5-phase model. Twenty-six different reoccurring typical signal enhancement patterns (features) indicating inflamed joints, nail or skin were defined and all FOI images were scored accordingly. The feature frequency in each patient cohort and phase (PVM, 5-phase) was counted. Contingency tables were created with categorical variable counts and diagnosis using common formulae.
Four hundred thirty-eight patients with RA (n=117), PsA (n=110), CTD (n=121) and OA (n=90) were included. Once the data had been categorised, a two-step diagnostic pathway was developed: in the first step, OA was best distinguished from the other diseases with high specificity by five patterns (specificity >0.9, diagnostic OR between 2.34 and 8.24). In a second step, the remaining autoimmune diseases were differentiated from each other by a certain number of features (five for RA, 12 for PsA and four for CTD).
This was the first study to show that feature analysis in FOI helps to differentiate typical rheumatic diseases from each other, potentially simplifying and speeding up the diagnostic process. Therefore, FOI could be considered an additional component of a wider range of imaging techniques used in rheumatology.
准确快速地诊断风湿性疾病对于进一步的治疗决策至关重要。不同的风湿性疾病在荧光光学成像(FOI)中呈现出特征性模式(图像特征)。我们开发了一本FOI图像特征图谱,并测试了其区分各种风湿性疾病的能力。
由两名对诊断不知情且相互校准的阅片者,使用初视模式(PVM)和自动五阶段模型,对类风湿关节炎(RA)、银屑病关节炎(PsA)、结缔组织病(CTD)和骨关节炎(OA)患者的FOI图像进行分析。定义了26种不同的反复出现的典型信号增强模式(特征),这些模式表明关节、指甲或皮肤存在炎症,并据此对所有FOI图像进行评分。计算每个患者队列和阶段(PVM、五阶段)的特征频率。使用通用公式创建包含分类变量计数和诊断的列联表。
纳入了438例RA(n = 117)、PsA(n = 110)、CTD(n = 121)和OA(n = 90)患者。数据分类后,制定了两步诊断途径:第一步,通过五种模式(特异性>0.9,诊断比值比在2.34至8.24之间),OA能以高特异性与其他疾病最佳区分。第二步,通过一定数量的特征(RA为五种,PsA为十二种,CTD为四种)将其余自身免疫性疾病相互区分。
这是第一项表明FOI中的特征分析有助于区分典型风湿性疾病的研究,可能会简化并加快诊断过程。因此,FOI可被视为风湿病学中广泛使用的一系列成像技术的一个附加组成部分。