Modelling Disease Progression of Multiple Sclerosis in a South Wales Cohort.

IF 3.2 3区 医学 Q2 CLINICAL NEUROLOGY Neuroepidemiology Pub Date : 2024-01-01 Epub Date: 2024-02-20 DOI:10.1159/000536427
Emeka C Uzochukwu, Katharine E Harding, James Hrastelj, Karim L Kreft, Peter Holmans, Neil P Robertson, Emma C Tallantyre, Michael Lawton
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Abstract

Objectives: The objective of this study was to model multiple sclerosis (MS) disease progression and compare disease trajectories by sex, age of onset, and year of diagnosis.

Study design and setting: Longitudinal EDSS scores (20,854 observations) were collected for 1,787 relapse-onset MS patients at MS clinics in South Wales and modelled using a multilevel model (MLM). The MLM adjusted for covariates (sex, age of onset, year of diagnosis, and disease-modifying treatments), and included interactions between baseline covariates and time variables.

Results: The optimal model was truncated at 30 years after disease onset and excluded EDSS recorded within 3 months of relapse. As expected, older age of onset was associated with faster disease progression at 15 years (effect size (ES): 0.75; CI: 0.63, 0.86; p: <0.001) and female-sex progressed more slowly at 15 years (ES: -0.43; CI: -0.68, -0.18; p: <0.001). Patients diagnosed more recently (defined as 2007-2011 and >2011) progressed more slowly than those diagnosed historically (<2006); (ES: -0.46; CI: -0.75, -0.16; p: 0.006) and (ES: -0.95; CI: -1.20, -0.70; p: <0.001), respectively.

Conclusion: We present a novel model of MS outcomes, accounting for the non-linear trajectory of MS and effects of baseline covariates, validating well-known risk factors (sex and age of onset) associated with disease progression. Also, patients diagnosed more recently progressed more slowly than those diagnosed historically.

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南威尔士队列中多发性硬化症的疾病进展模型。
研究目的建立多发性硬化症(MS)疾病进展模型,并比较不同性别、发病年龄和诊断年份的疾病轨迹:自1985年以来,在南威尔士的多发性硬化症诊所收集了复发多发性硬化症患者的纵向EDSS评分,并使用多层次模型(MLM)进行建模。多层次模型调整了基线协变量(性别、发病年龄、诊断年份和疾病修饰治疗(DMT)),并包括基线协变量和时间变量之间的交互作用:最佳模型以发病后 30 年为截断点,并排除了复发后 3 个月内的 EDSS 记录。不出所料,发病年龄越大,15 年后疾病进展越快(效应大小 (ES): 0.75; CI: 0.63, 0.86; P: 2011):我们提出了一个新的多发性硬化症预后模型,该模型考虑了多发性硬化症的非线性轨迹和基线协变量的影响,验证了与疾病进展相关的众所周知的风险因素(性别和发病年龄)。此外,近期确诊的患者比历史上确诊的患者进展更慢。
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来源期刊
Neuroepidemiology
Neuroepidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
9.90
自引率
1.80%
发文量
49
审稿时长
6-12 weeks
期刊介绍: ''Neuroepidemiology'' is the only internationally recognised peer-reviewed periodical devoted to descriptive, analytical and experimental studies in the epidemiology of neurologic disease. The scope of the journal expands the boundaries of traditional clinical neurology by providing new insights regarding the etiology, determinants, distribution, management and prevention of diseases of the nervous system.
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