利用深度学习从生理波形中自动识别睡眠唤醒

Daniel Miller, Andrew Ward, N. Bambos
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引用次数: 13

摘要

2018年PhysioNet心脏病学计算挑战赛的重点是诊断睡眠障碍,其动机是使治疗能够减轻相关的身心健康后果。该数据集包括在MGH睡眠实验室监测的1985名患者,在那里记录生命体征,并由专家注释唤醒区域。这项工作提出了一种深度学习方法来识别睡眠唤醒。在传统的机器学习中,特征提取是最耗时的考虑因素之一,需要大量的领域专业知识和实验。相比之下,深度学习技术会自动学习信号对或信号组之间的变量交互,以及任何相关的时间依赖性。这使得这种算法可以从丰富的生理时间序列中自动提取睡眠模式。本文提出的模型集成了几个成功的深度学习模型的思想,构建了一个多通道时间序列卷积-反卷积神经网络。该网络使用交叉熵损失进行训练,并在20%的持有验证集上进行评估。在AUPRC度量上选择超参数,训练利用早期停止来防止过拟合。在最终的竞争测试集上,所得模型的AUPRC为0.369,AUROC为0.855。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Sleep Arousal Identification From Physiological Waveforms Using Deep Learning
The 2018 PhysioNet Computing in Cardiology Challenge focused on diagnosing sleep disorders, motivated by enabling treatment to alleviate the associated mental and physical health consequences. The dataset consists of 1,985 patients monitored at an MGH sleep laboratory where vital signs were recorded, and arousal regions were annotated by experts. This work presents a deep-learning method to identify sleep arousals. In traditional machine learning, feature extraction is one of the most time-intensive considerations, requiring a great deal of domain expertise and experimentation. In contrast, deep learning techniques automatically learn variable interactions between pairs or groups of signals, and any relevant temporal dependencies. This allows such algorithms to automatically extract sleep patterns from rich physiological time series. The model presented here integrates ideas from several successful deep learning models to construct a multi-channel time-series convolutional-deconvolutional neural network. This network was trained using crossentropy loss, and evaluated on a 20% held-out validation set. Hyper-parameters were selected on the AUPRC metric, and training utilized early stopping to prevent overfitting. The resultant model achieved an AUPRC of 0.369 and an AUROC of 0.855 on the final competition test set.
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