De Carli F, Nobili L, Gelcich P, Ferrillo F
Center for Cerebral Neurophysiology, National Research Council, Genoa, Italy.
Sleep. 1999 Aug 1;22(5):561-72. doi: 10.1093/sleep/22.5.561.
A method for the automatic detection of arousals in digital polysomnographic recordings is described. The computer program analyzed two EEG and one EMG derivations marking variable length segments as arousals. The processing of EEG data started from the wavelet transform, which characterizes the signal in the time-frequency domain, and resulted in a set of indices used to discriminate possible arousal segments. Transient increases in muscle activity were also identified, while a multichannel and context sensitive analysis allowed arousal detection. Out of 11 overnight recordings, 3 were used as the training set and 8 as the program testing set. In the first stage of the study two EEG experts inspected the tracings independently to score arousals. They then reviewed all recordings and jointly examined each event for validation, both those scored by themselves and those scored by the computer. A reference set of definite arousals (1125 in the testing set) and a number of uncertain events (266) were thus obtained. The sensitivity of the automatic system (88.1%) was higher than that of the human experts (72.4 and 78.4%) while the selectivity was lower (74.5% for the automatic system, 83.0 and 82.0% for the experts). This suggested that automatic detection, followed by an expert's validation, may render the analysis of arousals more widely feasible as well as support the study of arousal features.
本文描述了一种在数字多导睡眠图记录中自动检测觉醒的方法。该计算机程序分析了两个脑电图(EEG)和一个肌电图(EMG)导联,将可变长度的片段标记为觉醒。EEG数据的处理从小波变换开始,小波变换在时频域中表征信号,并产生一组用于区分可能的觉醒片段的指标。还识别出肌肉活动的短暂增加,同时通过多通道和上下文敏感分析实现觉醒检测。在11份夜间记录中,3份用作训练集,8份用作程序测试集。在研究的第一阶段,两名EEG专家独立检查记录以对觉醒进行评分。然后他们复查了所有记录,并共同检查每个事件以进行验证,包括他们自己评分的事件和计算机评分的事件。由此获得了一组确定的觉醒参考集(测试集中有1125个)和一些不确定事件(266个)。自动系统的敏感性(88.1%)高于人类专家(分别为72.4%和78.4%),而选择性较低(自动系统为74.5%,专家为83.0%和82.0%)。这表明自动检测之后由专家进行验证,可能会使觉醒分析更广泛地可行,并有助于对觉醒特征的研究。