基于人工智能的雷诺量化指数(ARTIX):一种以患者为中心的基于移动设备的雷诺现象客观评估工具。
Artificial intelligence-based Raynaud's quantification index (ARTIX): an objective mobile-based tool for patient-centered assessment of Raynaud's phenomenon.
作者信息
Di Battista Marco, Colak Seda, Howard Anna, Donadoni Francesca, Owen-Smith Chris, Rindone Andrea, Di Donato Stefano, Hartley Collette, Bissell Lesley-Anne, Del Galdo Francesco
机构信息
Leeds Institute of Rheumatic and Musculoskeletal Medicine, University of Leeds, Leeds, LS7 4SA, UK.
Rheumatology Unit, University of Pisa, Pisa, Italy.
出版信息
Arthritis Res Ther. 2025 Jun 3;27(1):120. doi: 10.1186/s13075-025-03569-w.
BACKGROUND
We aimed to develop an artificial intelligence algorithm able to assess Raynaud's phenomenon (RP) from mobile phone photography, ensuring as a patient-centered, image-based method for RP quantification.
METHODS
ARTIX (artificial intelligence-based Raynaud's quantification index) score was developed as a multi-step process of segmentation, decomposition and filters application to mobile phone pictures of the hand. ARTIX was validated by the ability to assess finger response to standardised cold challenge in patients with primary and secondary RP and healthy controls (HC) and compared with thermography as a reference.
RESULTS
Forty-five RP patients (91.1% female, mean age 52.2 years, 75.5% secondary RP) were enrolled, along with 22 HC comparable for age and gender. RP patients presented significantly lower ARTIX values than HC both at baseline (p < 0.001) and across all timepoints of the cold challenge (p < 0.01 for all), paralleling a similarly significant difference observed by thermography. ARTIX score was higher in males and in patients taking vasoactive drugs, whereas lower values were obtained in patients with late capillaroscopic pattern, diffuse cutaneous skin subset, or negative for anti-centromere antibodies. ARTIX showed also good ability to discriminate between RP and HC response to cold challenge.
CONCLUSION
We developed and validated ARTIX, a novel machine learning-driven method for the objective quantification of RP. Real-life longitudinal studies in patients with RP will determine the value of ARTIX to complement patient self-assessment surrogate measures of RP activity and severity.
背景
我们旨在开发一种能够通过手机摄影评估雷诺现象(RP)的人工智能算法,确保其成为一种以患者为中心、基于图像的RP量化方法。
方法
ARTIX(基于人工智能的雷诺量化指数)评分是通过对手部手机图片进行分割、分解和应用滤镜的多步骤过程开发而成。通过评估原发性和继发性RP患者以及健康对照(HC)对手部标准化冷刺激的手指反应能力对ARTIX进行验证,并与作为参考的热成像进行比较。
结果
纳入了45例RP患者(91.1%为女性,平均年龄52.2岁,75.5%为继发性RP)以及22例年龄和性别匹配的HC。在基线时(p < 0.001)以及冷刺激的所有时间点(所有时间点p < 0.01),RP患者的ARTIX值均显著低于HC,这与热成像观察到的类似显著差异平行。男性和服用血管活性药物的患者ARTIX评分较高,而在毛细血管镜检查模式较晚、弥漫性皮肤亚型或抗着丝点抗体阴性的患者中获得的值较低。ARTIX在区分RP和HC对冷刺激的反应方面也表现出良好的能力。
结论
我们开发并验证了ARTIX,这是一种用于RP客观量化的新型机器学习驱动方法。对RP患者进行的实际纵向研究将确定ARTIX在补充RP活动和严重程度的患者自我评估替代指标方面的价值。