多发性硬化症表型转变的模式和预测因素。

IF 4.1 Q1 CLINICAL NEUROLOGY Brain communications Pub Date : 2024-11-23 eCollection Date: 2024-01-01 DOI:10.1093/braincomms/fcae422
Luigi Pontieri, Nupur Greene, Malthe Faurschou Wandall-Holm, Svend Sparre Geertsen, Nasrin Asgari, Henrik Boye Jensen, Zsolt Illes, Jakob Schäfer, Rikke Marie Jensen, Tobias Sejbæk, Arkadiusz Weglewski, Mie Reith Mahler, Mai Bang Poulsen, Sivagini Prakash, Morten Stilund, Matthias Kant, Peter Vestergaard Rasmussen, Kristina Bacher Svendsen, Finn Sellebjerg, Melinda Magyari
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引用次数: 0

摘要

目前,对于非活动性继发性进行性多发性硬化症患者的治疗选择有限。因此,现实世界的研究调查了复发缓解型多发性硬化、非活动性继发进行性多发性硬化和活动性继发进行性多发性硬化患者之间的差异。在这里,我们探索这些表型之间过渡的模式和预测因素。我们使用丹麦多发性硬化症登记处的数据进行了一项队列研究。我们纳入了复发-缓解表型的患者,记录了继发性进行性多发性硬化症的变化,以及随后在复发和非复发的继发性进行性多发性硬化症之间的转变,这是通过前2年内复发的存在来定义的。我们使用多状态马尔可夫模型分析了从复发缓解型多发性硬化症到复发和非复发继发进行性多发性硬化症过渡的预测因素,以及继发进行性状态之间的预测因素。我们纳入了4413例复发缓解型多发性硬化症患者。在16.2年的中位随访中,962人被其主治医生诊断为继发性进行性多发性硬化症。其中,729例为非复发,233例为复发的继发性进行性多发性硬化症。从复发缓解型向非复发的继发性进行性多发性硬化症过渡的风险包括年龄较大(每增加1年的风险比:1.044,95%可信区间:1.035-1.053)、男性(女性的风险比:0.735,95%可信区间:0.619-0.874)、复发较少(每增加1次复发的风险比:0.863,95%可信区间:0.823-0.906)、扩大残疾状态量表较高(每增加1点的风险比:0.863)。1.522, 95%可信区间:1.458-1.590),改善疾病治疗时间更长(治疗每增加1年,高效改善疾病治疗的风险比:1.095,95%可信区间:1.051-1.141;中等疗效的疾病改善治疗的风险比:1.073,95%可信区间:1.051-1.095)。我们没有发现与复发的继发性进行性多发性硬化症向非复发的继发性进行性多发性硬化症转变相关的显著预测因素,而年龄越大(每增加1岁的风险比:0.956,95%可信区间:0.942-0.971)阻止了从非复发的继发性进行性多发性硬化症向复发的继发性进行性多发性硬化症的转变。我们的研究表明,从复发缓解型多发性硬化症到非复发继发性进行性多发性硬化症的转变取决于影响继发性进行性多发性硬化症诊断的众所周知的因素。继发性进展性多发性硬化症在非复发和复发之间的进一步转变仅受年龄的影响。这些发现增加了对非活动性继发性进行性多发性硬化症的认识,这是一个治疗需求未得到满足的患者群体。
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Patterns and predictors of multiple sclerosis phenotype transition.

Currently, there are limited therapeutic options for patients with non-active secondary progressive multiple sclerosis. Therefore, real-world studies have investigated differences between patients with relapsing-remitting multiple sclerosis, non-active secondary progressive multiple sclerosis and active secondary progressive multiple sclerosis. Here, we explore patterns and predictors of transitioning between these phenotypes. We performed a cohort study using data from The Danish Multiple Sclerosis Registry. We included patients with a relapsing-remitting phenotype, registered changes to secondary progressive multiple sclerosis and subsequent transitions between relapsing and non-relapsing secondary progressive multiple sclerosis, which was defined by the presence of relapses in the previous 2 years. We analysed predictors of transitioning from relapsing-remitting multiple sclerosis to relapsing and non-relapsing secondary progressive multiple sclerosis, as well as between the secondary progressive states using a multi-state Markov model. We included 4413 patients with relapsing-remitting multiple sclerosis. Within a median follow-up of 16.2 years, 962 were diagnosed with secondary progressive multiple sclerosis by their treating physician. Of these, we classified 729 as non-relapsing and 233 as relapsing secondary progressive multiple sclerosis. The risk of transitioning from relapsing-remitting to non-relapsing secondary progressive multiple sclerosis included older age (hazard ratio per increase of 1 year in age: 1.044, 95% confidence interval: 1.035-1.053), male sex (hazard ratio for female: 0.735, 95% confidence interval: 0.619-0.874), fewer relapses (hazard ratio per each additional relapse: 0.863, 95% confidence interval: 0.823-0.906), higher expanded disability status scale (hazard ratio per each additional point: 1.522, 95% confidence interval: 1.458-1.590) and longer time on disease-modifying therapies (hazard ratio per increase of 1 year in treatment, high-efficacy disease-modifying therapy: 1.095, 95% confidence interval: 1.051-1.141; hazard ratio, moderate-efficacy disease-modifying therapy: 1.073, 95% confidence interval: 1.051-1.095). We did not find significant predictors associated with the transition from relapsing secondary progressive multiple sclerosis to non-relapsing secondary progressive multiple sclerosis, whereas older age (hazard ratio per increase of 1 year in age: 0.956, 95% confidence interval: 0.942-0.971) prevented the transition from non-relapsing secondary progressive multiple sclerosis to relapsing secondary progressive multiple sclerosis. Our study suggests that transitioning from relapsing-remitting multiple sclerosis to non-relapsing secondary progressive multiple sclerosis depends on well-known factors affecting diagnosing secondary progressive multiple sclerosis. Further transitions between non-relapsing and relapsing secondary progressive multiple sclerosis are only affected by age. These findings add to the knowledge of non-active secondary progressive multiple sclerosis, a patient group with unmet needs in terms of therapies.

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