预测孤立RBD的表型转化:机器学习和可解释的人工智能方法。

IF 2.1 Q3 CLINICAL NEUROLOGY
Yong-Woo Shin, Jung-Ick Byun, Jun-Sang Sunwoo, Chae-Seo Rhee, Jung-Hwan Shin, Han-Joon Kim, Ki-Young Jung
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引用次数: 0

摘要

孤立的快速眼动(REM)睡眠行为障碍(iRBD)被认为是神经退行性疾病的前兆。本研究旨在建立iRBD表型转化时间和亚型的预测模型。我们分析了178名iRBD患者的综合临床数据,中位随访时间为3.6年,并应用机器学习模型来预测何时会发生表型转化,以及进展是否会出现运动或认知优先症状。随访期间,30例患者出现神经退行性疾病,极端梯度促进生存嵌入- kaplan邻居(XGBSE-KN)模型在时间上表现最佳(一致性指数:0.823;Brier综合评分:0.123)。年龄、抗抑郁药的使用和运动障碍学会统一帕金森病评定量表第三部分得分与较高的表型转化风险相关,而咖啡的摄入具有保护作用。对于亚型分类,RandomForestClassifier取得了最高的表现(Matthews相关系数:0.697),这表明较高的蒙特利尔认知评估分数和较年轻的年龄预测运动优先的进展,而较长的总睡眠时间与认知优先的结果相关。这些发现强调了机器学习在指导iRBD预后和量身定制干预方面的效用。未来的研究应包括额外的生物标志物,延长随访时间,并在外部队列中验证这些模型,以确保可推广。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Phenoconversion in Isolated RBD: Machine Learning and Explainable AI Approach.

Isolated rapid eye movement (REM) sleep behavior disorder (iRBD) is recognized as a precursor to neurodegenerative diseases. This study aimed to develop predictive models for the timing and subtype of phenoconversion in iRBD. We analyzed comprehensive clinical data from 178 individuals with iRBD over a median follow-up of 3.6 years and applied machine learning models to predict when phenoconversion would occur and whether progression would present with motor- or cognition-first symptoms. During follow-up, 30 patients developed a neurodegenerative disorder, and the extreme gradient boosting survival embeddings-Kaplan neighbors (XGBSE-KN) model demonstrated the best performance for timing (concordance index: 0.823; integrated Brier score: 0.123). Age, antidepressant use, and Movement Disorder Society-Unified Parkinson's Disease Rating Scale Part III scores correlated with higher phenoconversion risk, while coffee consumption was protective. For subtype classification, the RandomForestClassifier achieved the highest performance (Matthews correlation coefficient: 0.697), indicating that higher Montreal Cognitive Assessment scores and younger age predicted motor-first progression, whereas longer total sleep time was associated with cognition-first outcomes. These findings highlight the utility of machine learning in guiding prognosis and tailored interventions for iRBD. Future research should include additional biomarkers, extend follow-up, and validate these models in external cohorts to ensure generalizability.

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来源期刊
Clocks & Sleep
Clocks & Sleep Multiple-
CiteScore
4.40
自引率
0.00%
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审稿时长
7 weeks
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