Salsone Maria, Quattrone Andrea, Vescio Basilio, Ferini-Strambi Luigi, Quattrone Aldo
Institute of Molecular Bioimaging and Physiology, National Research Council, 20054 Segrate, Italy.
Sleep Disorders Center, Division of Neuroscience, San Raffaele Scientific Institute, 20127 Milan, Italy.
Diagnostics (Basel). 2022 Nov 4;12(11):2689. doi: 10.3390/diagnostics12112689.
Growing evidence suggests that Machine Learning (ML) models can assist the diagnosis of neurological disorders. However, little is known about the potential application of ML in diagnosing idiopathic REM sleep behavior disorder (iRBD), a parasomnia characterized by a high risk of phenoconversion to synucleinopathies. This study aimed to develop a model using ML algorithms to identify iRBD patients and test its accuracy. Data were acquired from 32 participants (20 iRBD patients and 12 controls). All subjects underwent a video-polysomnography. In all subjects, we measured the components of heart rate variability (HRV) during 24 h recordings and calculated night-to-day ratios (cardiac autonomic indices). Discriminating performances of single HRV features were assessed. ML models based on Logistic Regression (LR), Random Forest (RF) and eXtreme Gradient Boosting (XGBoost) were trained on HRV data. The utility of HRV features and ML models for detecting iRBD was evaluated by area under the ROC curve (AUC), sensitivity, specificity and accuracy corresponding to optimal models. Cardiac autonomic indices had low performances (accuracy 63-69%) in distinguishing iRBD from control subjects. By contrast, the RF model performed the best, with excellent accuracy (94%), sensitivity (95%) and specificity (92%), while XGBoost showed accuracy (91%), specificity (83%) and sensitivity (95%). The mean triangular index during wake (TIw) was the best discriminating feature between iRBD and HC, with 81% accuracy, reaching 84% accuracy when combined with VLF power during sleep using an LR model. Our findings demonstrated that ML algorithms can accurately identify iRBD patients. Our model could be used in clinical practice to facilitate the early detection of this form of RBD.
越来越多的证据表明,机器学习(ML)模型可以辅助神经系统疾病的诊断。然而,关于ML在诊断特发性快速眼动睡眠行为障碍(iRBD)中的潜在应用知之甚少,iRBD是一种以向突触核蛋白病转化风险高为特征的异态睡眠。本研究旨在使用ML算法开发一个模型,以识别iRBD患者并测试其准确性。数据来自32名参与者(20名iRBD患者和12名对照)。所有受试者均接受了视频多导睡眠图检查。在所有受试者中,我们在24小时记录期间测量了心率变异性(HRV)的组成部分,并计算了夜间与白天的比率(心脏自主指数)。评估了单个HRV特征的鉴别性能。基于逻辑回归(LR)、随机森林(RF)和极端梯度提升(XGBoost)的ML模型在HRV数据上进行了训练。通过对应于最佳模型的ROC曲线下面积(AUC)、敏感性、特异性和准确性,评估了HRV特征和ML模型检测iRBD的效用。心脏自主指数在区分iRBD和对照受试者方面表现不佳(准确性为63 - 69%)。相比之下,RF模型表现最佳,具有出色的准确性(94%)、敏感性(95%)和特异性(92%),而XGBoost的准确性为(91%)、特异性为(83%)、敏感性为(95%)。清醒时的平均三角指数(TIw)是iRBD和健康对照之间最佳的鉴别特征,准确性为81%,使用LR模型与睡眠期间的超低频功率相结合时,准确性达到84%。我们的研究结果表明,ML算法可以准确识别iRBD患者。我们的模型可用于临床实践,以促进这种形式的RBD的早期检测。