Interdisciplinary Program in Bioengineering, College of Engineering, Seoul National University, Seoul, South Korea.
Department of Neurology, Seoul National University Hospital, Seoul National University College of Medicine, Seoul, South Korea.
Sleep. 2024 May 10;47(5). doi: 10.1093/sleep/zsae031.
Isolated rapid eye movement sleep behavior disorder (iRBD) is a prodromal stage of α-synucleinopathies and eventually phenoconverts to overt neurodegenerative diseases including Parkinson's disease (PD), dementia with Lewy bodies (DLB), and multiple system atrophy (MSA). Associations of baseline resting-state electroencephalography (EEG) with phenoconversion have been reported. In this study, we aimed to develop machine learning models to predict phenoconversion time and subtype using baseline EEG features in patients with iRBD.
At baseline, resting-state EEG and neurological assessments were performed on patients with iRBD. Calculated EEG features included spectral power, weighted phase lag index, and Shannon entropy. Three models were used for survival prediction, and four models were used for α-synucleinopathy subtype prediction. The models were externally validated using data from a different institution.
A total of 236 iRBD patients were followed up for up to 8 years (mean 3.5 years), and 31 patients converted to α-synucleinopathies (16 PD, 9 DLB, 6 MSA). The best model for survival prediction was the random survival forest model with an integrated Brier score of 0.114 and a concordance index of 0.775. The K-nearest neighbor model was the best model for subtype prediction with an area under the receiver operating characteristic curve of 0.901. Slowing of the EEG was an important feature for both models.
Machine learning models using baseline EEG features can be used to predict phenoconversion time and its subtype in patients with iRBD. Further research including large sample data from many countries is needed to make a more robust model.
孤立性快速眼动睡眠行为障碍(iRBD)是α-突触核蛋白病的前驱期,最终会表现为明显的神经退行性疾病,包括帕金森病(PD)、路易体痴呆(DLB)和多系统萎缩(MSA)。已有研究报道了基线静息态脑电图(EEG)与表型转化的相关性。本研究旨在通过 iRBD 患者的基线 EEG 特征,建立机器学习模型来预测表型转化时间和亚型。
在基线时,对 iRBD 患者进行静息态 EEG 和神经学评估。计算的 EEG 特征包括谱功率、加权相位滞后指数和香农熵。使用三种模型进行生存预测,四种模型进行α-突触核蛋白病亚型预测。使用来自不同机构的数据对模型进行外部验证。
共 236 例 iRBD 患者接受了长达 8 年的随访(平均 3.5 年),其中 31 例患者转化为α-突触核蛋白病(16 例 PD、9 例 DLB、6 例 MSA)。生存预测的最佳模型是随机生存森林模型,其综合 Brier 评分为 0.114,一致性指数为 0.775。K-最近邻模型是亚型预测的最佳模型,其受试者工作特征曲线下面积为 0.901。EEG 减慢是两个模型的重要特征。
使用基线 EEG 特征的机器学习模型可用于预测 iRBD 患者的表型转化时间及其亚型。需要进一步开展包括来自多个国家的大样本数据的研究,以建立更稳健的模型。