Predicting Psoriatic Arthritis in Psoriasis Patients – A Swiss Registry Study

Q3 Medicine
Mia‐Louise Nielsen, T. Petersen, L. V. Maul, J. P. Thyssen, S. F. Thomsen, Jashin J. Wu, A. A. Navarini, Thomas Kündig, Nikhil Yawalkar, Christoph Schlapbach, Wolf-Henning Boehncke, Curdin Conrad, Antonio Cozzio, R. Micheroli, Lars Erik Kristensen, Alexander Egeberg, J. Maul
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引用次数: 0

Abstract

Psoriatic arthritis (PsA) is a prevalent comorbidity among patients with psoriasis, heavily contributing to their burden of disease, usually diagnosed several years after the diagnosis of psoriasis. To investigate the predictability of psoriatic arthritis in patients with psoriasis and to identify important predictors. Data from the Swiss Dermatology Network on Targeted Therapies (SDNTT) involving patients treated for psoriasis were utilized. A combination of gradient-boosted decision trees and mixed models was used to classify patients based on their diagnosis of PsA or its absence. The variables with the highest predictive power were identified. Time to PsA diagnosis was visualized with the Kaplan-Meier method and the relationship between severity of psoriasis and PsA was explored through quantile regression. A diagnosis of psoriatic arthritis was registered at baseline of 407 (29.5%) treatment series. 516 patients had no registration of PsA, 257 patients had PsA at inclusion, and 91 patients were diagnosed with PsA after inclusion. The model’s AUROCs was up to 73.7%, and variables with the highest discriminatory power were age, PASI, physical well-being, and severity of nail psoriasis. Among patients who developed PsA after inclusion, significantly more first treatment series were classified in the PsA-group, compared to those with no PsA registration. PASI was significantly correlated with the median burden/severity of PsA ( P = .01). Distinguishing between patients with and without PsA based on clinical characteristics is feasible and even predicting future diagnoses of PsA is possible. Patients at higher risk can be identified using important predictors of PsA.
预测银屑病患者的银屑病关节炎--一项瑞士登记研究
银屑病关节炎(PsA)是银屑病患者中普遍存在的一种合并症,严重加重了患者的疾病负担,通常在银屑病确诊数年后才被诊断出来。研究银屑病患者银屑病关节炎的可预测性,并找出重要的预测因素。研究利用了瑞士皮肤病靶向治疗网络(SDNTT)的数据,这些数据涉及接受过银屑病治疗的患者。研究人员结合梯度提升决策树和混合模型,根据患者是否确诊为 PsA 对其进行分类。确定了预测能力最强的变量。采用 Kaplan-Meier 方法对 PsA 诊断时间进行了可视化,并通过量子回归探讨了银屑病严重程度与 PsA 之间的关系。407名患者(29.5%)在治疗过程中被确诊为银屑病关节炎。516名患者没有登记过PsA,257名患者在纳入时有PsA,91名患者在纳入后被诊断为PsA。该模型的AUROCs高达73.7%,判别能力最强的变量是年龄、PASI、身体健康状况和指甲银屑病的严重程度。在纳入后出现 PsA 的患者中,与未登记 PsA 的患者相比,被归入 PsA 组的首次治疗患者明显更多。PASI与PsA的中位负担/严重程度明显相关(P = .01)。根据临床特征区分 PsA 患者和非 PsA 患者是可行的,甚至可以预测未来的 PsA 诊断结果。可以利用 PsA 的重要预测指标来识别风险较高的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
19
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