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Detecting Respiratory Effort-Related Arousals in Polysomnographic Data Using LSTM Networks

机译:使用LSTM网络在多导睡眠图数据中检测与呼吸努力相关的唤醒

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To diagnose sleep disorders, hours of sleep data from lots of different physiological sensors have to be analyzed. To do so, experts have to look through all the data which is time-consuming and error-prone. Automatic detection and classification of sleep related breathing disorders and arousals would significantly simplify this task. This years Physionet/CinC Challenge deals with this topic. This paper examines the use of a Long Short-Term Memory network for automatic arousal detection. On the test set, an AUPRC score of 0.14 was achieved.
机译:为了诊断睡眠障碍,必须分析来自许多不同生理传感器的睡眠时间数据。为此,专家必须查看所有耗时且容易出错的数据。与睡眠有关的呼吸障碍和唤醒的自动检测和分类将大大简化此任务。今年的Physionet / CinC挑战赛解决了这一主题。本文研究了使用长短期记忆网络进行自动唤醒检测的方法。在测试集上,AUPRC得分达到0.14。

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