Time-independent disease state identification defines distinct trajectories determined by localised vs systemic inflammation in patients with early rheumatoid arthritis.
Nils Steinz, Tjardo D Maarseveen, Erik B van den Akker, Andrew P Cope, John D Isaacs, Aaron R Winkler, Tom W J Huizinga, Yann Abraham, Rachel Knevel
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引用次数: 0
Abstract
Objectives: Patients with rheumatoid arthritis (RA) display different trajectories towards improvement of disease. We aimed to disentangle the heterogeneity of RA disease trajectories from the first clinical visit onwards using graph-based pseudotime analysis.
Methods: We studied early patients with RA over 1.5 years in 2 data sets: Leiden (Netherlands), n = 1237, with 5017 visits, and Towards a Cure for Early Rheumatoid Arthritis (TACERA) (United Kingdom), n = 243, with 750 visits. We created a pipeline for time-independent clustering of clinical and haematologic features to identify disease states. Sequence analyses of these states defined the trajectories. We studied the predictability of the trajectories with baseline features.
Results: Clustering identified 8 disease states with localised inflammation (joints) and systemic inflammation (erythrocyte sedimentation rate [ESR] or leucocytes) as the main discriminating factors. The disease state sequences consisted of 4 trajectories, which we independently replicated in TACERA: A, high ESR; B, rapid progression from many inflamed joints towards remission; C, high leucocytes; and D, many inflamed joints with poor prognosis. Systemic vs local inflammation patterns showed moderate predictability at baseline (sensitivity of 71% and precision of 0.73 for trajectory A, although lower precision of 0.52 for trajectory B), while other trajectories were less predictable. Trajectories C and D had strong resemblance with B at baseline but deteriorated into less favourable trajectories. Patients in trajectory A were more often female and on average older. The trajectories were not explained by time till disease-modifying antirheumatic drug, baseline disease activity, or symptom duration. The suboptimal trajectories coincided with worse patient-reported outcomes, even when the inflammation was mainly systemic.
Conclusions: We identified 4 distinct trajectories in early RA, differentiating RA into localised vs systemic inflammation. Our results highlight potential differences in disease pathology and opportunities for further targeted treatment. Inevitably, patterns without linkage to our selected features could not be detected.
目的:类风湿关节炎(RA)患者表现出不同的疾病改善轨迹。我们的目的是利用基于图的伪时间分析,从第一次临床就诊开始,解开RA疾病轨迹的异质性。方法:我们在2个数据集中研究了超过1.5年的早期RA患者:莱顿(荷兰),n = 1237, 5017次就诊,以及Towards a Cure for early Rheumatoid Arthritis (TACERA)(英国),n = 243, 750次就诊。我们创建了一个管道,用于临床和血液学特征的时间无关聚类,以确定疾病状态。这些状态的序列分析定义了轨迹。我们研究了具有基线特征的轨迹的可预测性。结果:聚类鉴定出8种疾病状态,以局部炎症(关节)和全身性炎症(红细胞沉降率[ESR]或白细胞)为主要判别因素。疾病状态序列包括4个轨迹,我们在TACERA中独立复制:A,高ESR;B,从许多发炎关节迅速进展到缓解;C,高白细胞;D,许多关节发炎,预后不良。全身性与局部炎症模式在基线时显示出中度可预测性(轨迹A的敏感性为71%,精度为0.73,轨迹B的精度较低,为0.52),而其他轨迹的可预测性较低。轨迹C和D在基线时与B非常相似,但逐渐恶化为不太有利的轨迹。轨迹A的患者多为女性,平均年龄较大。这些轨迹不能用时间来解释,直到使用改善疾病的抗风湿药物、基线疾病活动或症状持续时间。次优轨迹与患者报告的较差结果相吻合,即使炎症主要是全身性的。结论:我们确定了早期RA的4种不同的轨迹,将RA区分为局部炎症和全身性炎症。我们的结果强调了疾病病理的潜在差异和进一步靶向治疗的机会。不可避免地,与我们选择的特征没有联系的模式无法被检测到。
期刊介绍:
Annals of the Rheumatic Diseases (ARD) is an international peer-reviewed journal covering all aspects of rheumatology, which includes the full spectrum of musculoskeletal conditions, arthritic disease, and connective tissue disorders. ARD publishes basic, clinical, and translational scientific research, including the most important recommendations for the management of various conditions.