Niels Hendrickx, France Mentré, Andreas Traschütz, Cynthia Gagnon, Rebecca Schüle, Matthis Synofzik, Emmanuelle Comets
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引用次数: 0
摘要
本研究的目的是开发一种模型来预测单个受试者的疾病轨迹,包括参数的不确定性和罕见神经系统疾病的数据缺失,超罕见疾病常染色体隐性痉挛性共济失调(ARSACS)就是一个很好的例子。我们使用非线性混合效应模型,对纳入前瞻性真实世界多中心常染色体隐性小脑共济失调(ARCA)登记处的 173 名 ARSACS 患者的 SARA(共济失调评估和评级量表)评分变化与发病时间的关系进行了建模。我们使用多变量归因链式方程(MICE)算法来归因缺失的协变量,并使用具有集合 p 值的协变量选择程序来考虑多重归因数据集。然后,我们研究了协变量和群体参数不确定性对个体最后一次就诊后 5 年内的轨迹预测的影响。我们选择了一个四参数逻辑函数。据估计,男性患者发病时的 SARA 评分要低 25%,SARA 最大评分要高一些,而发病年龄超过 15 岁的患者的疾病进展时间(T50)要短 35%。人群疾病进展率从每年 0.1 分开始缓慢上升,最高达到每年 0.8 分(发病后 36.8 年)。最后一次就诊后 5 年的 SARA 评分预测区间较大(中位数为 7.4 分,Q1-Q3:6.4-8.5);其大小主要受当时个体参数不确定性和个体疾病进展率的影响。
Prediction of Individual Disease Progression Including Parameter Uncertainty in Rare Neurodegenerative Diseases: The Example of Autosomal-Recessive Spastic Ataxia Charlevoix Saguenay (ARSACS)
The aim of this study was to develop a model to predict individual subject disease trajectories including parameter uncertainty and accounting for missing data in rare neurological diseases, showcased by the ultra-rare disease Autosomal-Recessive Spastic Ataxia Charlevoix Saguenay (ARSACS). We modelled the change in SARA (Scale for Assessment and Rating of Ataxia) score versus Time Since Onset of symptoms using non-linear mixed effect models for a population of 173 patients with ARSACS included in the prospective real-world multicenter Autosomal Recessive Cerebellar Ataxia (ARCA) registry. We used the Multivariate Imputation Chained Equation (MICE) algorithm to impute missing covariates, and a covariate selection procedure with a pooled p-value to account for the multiply imputed data sets. We then investigated the impact of covariates and population parameter uncertainty on the prediction of the individual trajectories up to 5 years after their last visit. A four-parameter logistic function was selected. Men were estimated to have a 25% lower SARA score at disease onset and a moderately higher maximum SARA score, and time to progression (T50) was estimated to be 35% lower in patients with age of onset over 15 years. The population disease progression rate started slowly at 0.1 points per year peaking to a maximum of 0.8 points per year (at 36.8 years since onset of symptoms). The prediction intervals for SARA scores 5 years after the last visit were large (median 7.4 points, Q1-Q3: 6.4–8.5); their size was mostly driven by individual parameter uncertainty and individual disease progression rate at that time.