Describing and characterising variability in ALS disease progression.

Muzammil Arif Din Abdul Jabbar, Ling Guo, Yang Guo, Zachary Simmons, Erik P Pioro, Savitha Ramasamy, Crystal Jing Jing Yeo
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Abstract

Background, objectives: Decrease in the revised ALS Functional Rating Scale (ALSFRS-R) score is currently the most widely used measure of disease progression. However, it does not sufficiently encompass the heterogeneity of ALS. We describe a measure of variability in ALSFRS-R scores and demonstrate its utility in disease characterization.

Methods: We used 5030 ALS clinical trial patients from the Pooled Resource Open-Access ALS Clinical Trials database to calculate variability in disease progression employing a novel measure and correlated variability with disease span. We characterized the more and less variable populations and designed a machine learning model that used clinical, laboratory and demographic data to predict class of variability. The model was validated with a holdout clinical trial dataset of 84 ALS patients (NCT00818389).

Results: Greater variability in disease progression was indicative of longer disease span on the patient-level. The machine learning model was able to predict class of variability with accuracy of 60.1-72.7% across different time periods and yielded a set of predictors based on clinical, laboratory and demographic data. A reduced set of 16 predictors and the holdout dataset yielded similar accuracy.

Discussion: This measure of variability is a significant determinant of disease span for fast-progressing patients. The predictors identified may shed light on pathophysiology of variability, with greater variability in fast-progressing patients possibly indicative of greater compensatory reinnervation and longer disease span. Increasing variability alongside decreasing rate of disease progression could be a future aim of trials for faster-progressing patients.

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描述和表征ALS疾病进展的变异性。
背景、目的:修订的ALS功能评定量表(ALSFRS-R)评分的降低是目前最广泛使用的疾病进展指标。然而,它并没有充分涵盖ALS的异质性。我们描述了ALSFRS-R评分的变异性测量,并证明了其在疾病表征中的实用性。方法:我们使用汇集资源开放获取ALS临床试验数据库中的5030名ALS临床研究患者,采用一种新的测量方法计算疾病进展的变异性,并将变异性与疾病跨度相关联。我们对或多或少可变的人群进行了表征,并设计了一个机器学习模型,该模型使用临床、实验室和人口统计数据来预测变异类别。该模型通过84名ALS患者的坚持临床试验数据集(NCT00818389)进行了验证。结果:疾病进展的变异性越大,表明患者的疾病持续时间越长。机器学习模型能够预测不同时间段的变异类别,准确率为60.1-72.7%,并基于临床、实验室和人口统计数据产生了一组预测因素。一个由16个预测因子组成的精简集和坚持数据集产生了类似的准确性。讨论:这种变异性的测量是快速进展患者疾病持续时间的重要决定因素。所确定的预测因素可能揭示了变异性的病理生理学,快速进展患者的变异性更大,可能表明有更大的代偿性神经再支配和更长的疾病跨度。随着疾病进展率的降低,变异性的增加可能是未来对进展更快的患者进行试验的目标。
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