医学
银屑病性关节炎
一致性
银屑病
末端炎
皮肤病科
红斑
物理疗法
痹症科
内科学
作者
Dan E. Webster,Rebecca H. Haberman,Lourdes M. Pérez-Chada,Meghasyam Tummalacherla,Aryton Tediarjo,Vijay Yadav,Elias Chaibub Neto,Woody MacDuffie,M. DePhillips,Eric Sieg,Sydney Catron,Carly Grant,Wynona Francis,Marina Nguyen,Muibat Yussuff,Rochelle Castillo,Di Yan,Andrea L. Neimann,Soumya Reddy,Alexis Ogdie
标识
DOI:10.3899/jrheum.2024-0074
摘要
Objective Psoriatic disease remains underdiagnosed and undertreated. We developed and validated a suite of novel, sensor-based smartphone assessments (Psorcast app) that can be self-administered to measure cutaneous and musculoskeletal signs and symptoms of psoriatic disease. Methods Participants with psoriasis (PsO) or psoriatic arthritis (PsA) and healthy controls were recruited between June 5, 2019, and November 10, 2021, at 2 academic medical centers. Concordance and accuracy of digital measures and image-based machine learning models were compared to their analogous clinical measures from trained rheumatologists and dermatologists. Results Of 104 study participants, 51 (49%) were female and 53 (51%) were male, with a mean age of 42.3 years (SD 12.6). Seventy-nine (76%) participants had PsA, 16 (15.4%) had PsO, and 9 (8.7%) were healthy controls. Digital patient assessment of percent body surface area (BSA) affected with PsO demonstrated very strong concordance (Lin concordance correlation coefficient [CCC] 0.94 [95% CI 0.91-0.96]) with physician-assessed BSA. The in-clinic and remote target plaque physician global assessments showed fair-to-moderate concordance (CCC erythema 0.72 [0.59-0.85]; CCC induration 0.72 [0.62-0.82]; CCC scaling 0.60 [0.48-0.72]). Machine learning models of hand photos taken by patients accurately identified clinically diagnosed nail PsO with an accuracy of 0.76. The Digital Jar Open assessment categorized physician-assessed upper extremity involvement, considering joint tenderness or enthesitis (AUROC 0.68 [0.47-0.85]). Conclusion The Psorcast digital assessments achieved significant clinical validity, although they require further validation in larger cohorts before use in evidence-based medicine or clinical trial settings. The smartphone software and analysis pipelines from the Psorcast suite are open source and freely available.
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