Rheumatology Service & the Principality of Asturias Institute for Health Research (ISPA), Faculty of Medicine, Universidad de Oviedo, Oviedo, Spain.
Research Unit, Spanish Society of Rheumatology, Madrid, Spain.
Arthritis Res Ther. 2022 Jun 24;24(1):153. doi: 10.1186/s13075-022-02838-2.
Very few data are available on predictors of minimal disease activity (MDA) in patients with recent-onset psoriatic arthritis (PsA). Such data are crucial, since the therapeutic measures used to change the adverse course of PsA are more likely to succeed if we intervene early. In the present study, we used predictive models based on machine learning to detect variables associated with achieving MDA in patients with recent-onset PsA.
We performed a multicenter observational prospective study (2-year follow-up, regular annual visits). The study population comprised patients aged ≥18 years who fulfilled the CASPAR criteria and less than 2 years since the onset of symptoms. The dataset contained data for the independent variables from the baseline visit and from follow-up visit number 1. These were matched with the outcome measures from follow-up visits 1 and 2, respectively. We trained a random forest-type machine learning algorithm to analyze the association between the outcome measure and the variables selected in the bivariate analysis. In order to understand how the model uses the variables to make its predictions, we applied the SHAP technique. We used a confusion matrix to visualize the performance of the model.
The sample comprised 158 patients. 55.5% and 58.3% of the patients had MDA at the first and second follow-up visit, respectively. In our model, the variables with the greatest predictive ability were global pain, impact of the disease (PsAID), patient global assessment of disease, and physical function (HAQ-Disability Index). The percentage of hits in the confusion matrix was 85.94%.
A key objective in the management of PsA should be control of pain, which is not always associated with inflammatory burden, and the establishment of measures to better control the various domains of PsA.
关于刚发病的银屑病关节炎(PsA)患者达到疾病低活动度(MDA)的预测因子,仅有少量数据。这些数据至关重要,因为如果我们尽早干预,改变 PsA 不良病程的治疗措施更有可能成功。在本研究中,我们使用基于机器学习的预测模型来检测与刚发病的 PsA 患者达到 MDA 相关的变量。
我们进行了一项多中心观察性前瞻性研究(2 年随访,定期每年就诊)。研究人群包括符合 CASPAR 标准且发病症状不到 2 年的年龄≥18 岁患者。数据集包含基线就诊和第 1 次随访的独立变量数据,分别与第 1 和第 2 次随访的结局指标相匹配。我们训练了一种随机森林类型的机器学习算法,以分析结局指标与双变量分析中选择的变量之间的关联。为了了解模型如何使用变量进行预测,我们应用了 SHAP 技术。我们使用混淆矩阵来可视化模型的性能。
样本包括 158 名患者。分别有 55.5%和 58.3%的患者在第 1 和第 2 次随访时达到 MDA。在我们的模型中,预测能力最强的变量是总体疼痛、疾病的影响(PsAID)、患者对疾病的总体评估和身体功能(HAQ 残疾指数)。混淆矩阵中的命中百分比为 85.94%。
PsA 管理的一个关键目标应该是控制疼痛,而疼痛并不总是与炎症负担相关,并且应建立更好地控制 PsA 各个领域的措施。