用机器学习预测肌萎缩性脊髓侧索硬化症(ALS)的进展。

Muzammil Arif Din Abdul Jabbar, Ling Guo, Sonakshi Nag, Yang Guo, Zachary Simmons, Erik P Pioro, Savitha Ramasamy, Crystal Jing Jing Yeo
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引用次数: 0

摘要

目的利用机器学习(ML)预测不同观察和预测窗口长度下的 ALS 进展:我们使用极端梯度提升法(XGBoost)和贝叶斯长时短记忆法(BLSTM),利用汇集资源开放存取 ALS 临床试验(PRO-ACT)数据库中 5030 名患者的人口统计学、临床和实验室参数,将 ALS 疾病进展建模为快速(ALS 功能评分量表-修订版(ALSFRS-R)每月至少下降 1.5 分)或非快速。XGBoost 确定了病情进展的预测因素,而 BLSTM 则为每个预测提供了置信度:ML 模型的受体运算特征曲线下面积 (AUROC) 为 0.570-0.748,不劣于临床医生的评估。在单次就诊、3个月、6个月或12个月的观察期以及保留验证数据集上的表现相似,但预测期更长的预测结果更好。研究发现了 21 个重要的预测因子,其中排在前三位的是发病天数、过去的 ALSFRS-R 和强迫生命容量。非标准预测因子包括磷、氯化物和白蛋白。BLSTM 对其最有把握的样本表现出更高的性能。通过模型筛选患者可使假设的 II/III 期临床试验规模减少 18.3%:使用不同观察长度的 ML 模型具有相似的准确性,这表明临床试验观察期可缩短为单次就诊,临床试验规模也可缩小。BLSTM提供的置信度为预测的可信度提供了额外信息,有助于决策。已确定的 ALS 进展预测因子是有待进一步研究的潜在生物标记物和治疗目标。
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Predicting amyotrophic lateral sclerosis (ALS) progression with machine learning.

Objective: To predict ALS progression with varying observation and prediction window lengths, using machine learning (ML).

Methods: We used demographic, clinical, and laboratory parameters from 5030 patients in the Pooled Resource Open-Access ALS Clinical Trials (PRO-ACT) database to model ALS disease progression as fast (at least 1.5 points decline in ALS Functional Rating Scale-Revised (ALSFRS-R) per month) or non-fast, using Extreme Gradient Boosting (XGBoost) and Bayesian Long Short Term Memory (BLSTM). XGBoost identified predictors of progression while BLSTM provided a confidence level for each prediction.

Results: ML models achieved area under receiver-operating-characteristics curve (AUROC) of 0.570-0.748 and were non-inferior to clinician assessments. Performance was similar with observation lengths of a single visit, 3, 6, or 12 months and on a holdout validation dataset, but was better for longer prediction lengths. 21 important predictors were identified, with the top 3 being days since disease onset, past ALSFRS-R and forced vital capacity. Nonstandard predictors included phosphorus, chloride and albumin. BLSTM demonstrated higher performance for the samples about which it was most confident. Patient screening by models may reduce hypothetical Phase II/III clinical trial sizes by 18.3%.

Conclusion: Similar accuracies across ML models using different observation lengths suggest that a clinical trial observation period could be shortened to a single visit and clinical trial sizes reduced. Confidence levels provided by BLSTM gave additional information on the trustworthiness of predictions, which could aid decision-making. The identified predictors of ALS progression are potential biomarkers and therapeutic targets for further research.

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