Cesari Matteo, Portscher Andrea, Stefani Ambra, Angerbauer Raphael, Ibrahim Abubaker, Brandauer Elisabeth, Feuerstein Simon, Egger Kristin, Högl Birgit, Rodriguez-Sanchez Antonio
Department of Neurology, Medical University of Innsbruck, 6020 Innsbruck, Austria.
Department of Computer Science, University of Innsbruck, 6020 Innsbruck, Austria.
Brain Sci. 2024 Aug 28;14(9):871. doi: 10.3390/brainsci14090871.
Isolated rapid eye movement (REM) sleep behavior disorder (iRBD) is a prodromal stage of alpha-synucleinopathies. This study aimed at developing a fully-automated machine learning framework for the prediction of phenoconversion in patients with iRBD by using data recorded during polysomnography (PSG). A total of 66 patients with iRBD were included, of whom 18 converted to an overt alpha-synucleinopathy within 2.7 ± 1.0 years. For each patient, a baseline PSG was available. Sleep stages were scored automatically, and time and frequency domain features were derived from electromyography (EMG) and electroencephalography (EEG) signals in REM and non-REM sleep. Random survival forest was employed to predict the time to phenoconversion, using a four-fold cross-validation scheme and by testing several combinations of features. The best test performances were obtained when considering EEG features in REM sleep only (Harrel's C-index: 0.723 ± 0.113; Uno's C-index: 0.741 ± 0.11; integrated Brier score: 0.174 ± 0.06). Features describing EEG slowing had high importance for the machine learning model. This is the first study employing machine learning applied to PSG to predict phenoconversion in patients with iRBD. If confirmed in larger cohorts, these findings might contribute to improving the design of clinical trials for neuroprotective treatments.
孤立性快速眼动(REM)睡眠行为障碍(iRBD)是α-突触核蛋白病的前驱阶段。本研究旨在开发一种全自动机器学习框架,通过使用多导睡眠图(PSG)记录的数据来预测iRBD患者的表型转化。共纳入66例iRBD患者,其中18例在2.7±1.0年内转化为明显的α-突触核蛋白病。每位患者均有一份基线PSG。睡眠阶段自动评分,并从REM睡眠和非REM睡眠中的肌电图(EMG)和脑电图(EEG)信号中提取时域和频域特征。采用随机生存森林预测表型转化时间,使用四重交叉验证方案并测试多种特征组合。仅考虑REM睡眠中的EEG特征时获得了最佳测试性能(Harrel's C指数:0.723±0.113;Uno's C指数:0.741±0.11;综合Brier评分:0.174±0.06)。描述EEG减慢的特征对机器学习模型非常重要。这是第一项将机器学习应用于PSG来预测iRBD患者表型转化的研究。如果在更大的队列中得到证实,这些发现可能有助于改进神经保护治疗临床试验的设计。