Orellana G, Held C M, Estevez P A, Perez C A, Reyes S, Algarin C, Peirano P
Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:4188-91. doi: 10.1109/EMBC.2014.6944547.
Several research groups have developed automated sleep-wakefulness classifiers for night wrist actigraphic (ACT) data. These classifiers tend to be unbalanced, with a tendency to overestimate the detection of sleep, at the expense of poorer detection of wakefulness. The reason for this is that the measure of success in previous works was the maximization of the overall accuracy, disregarding the balance between sensitivity and specificity. The databases were usually sleep recordings, hence the over-representation of sleep samples. In this work an Artificial Neural Network (ANN), sleep-wakefulness classifier is presented. ACT data was collected every minute. An 11-min moving window was used as observing frame for data analysis, as applied in previous sleep ACT studies. However, our feature set adds new variables such as the time of the day, the median and the median absolute deviation. Sleep and Wakefulness data were balanced to improve the system training. A comparison with previous studies can still be done, by choosing the point in the ROC curve associated with the corresponding data balance. Our results are compared with a polysomnogram-based hypnogram as golden standard, rendering an accuracy of 92.8%, a sensitivity of 97.6% and a specificity of 73.4%. Geometric mean between sensitivity and specificity is 84.9%.
几个研究小组已经为夜间手腕活动记录仪(ACT)数据开发了自动睡眠-觉醒分类器。这些分类器往往不均衡,倾向于高估睡眠检测率,而以较低的觉醒检测率为代价。其原因在于,以往研究中的成功衡量标准是整体准确率的最大化,而忽略了敏感性和特异性之间的平衡。数据库通常是睡眠记录,因此睡眠样本占比过高。在这项工作中,提出了一种人工神经网络(ANN)睡眠-觉醒分类器。每分钟收集ACT数据。如先前的睡眠ACT研究那样,使用11分钟的移动窗口作为数据分析的观察框架。然而,我们的特征集增加了新的变量,如一天中的时间、中位数和中位数绝对偏差。对睡眠和觉醒数据进行了平衡处理,以改进系统训练。通过选择ROC曲线中与相应数据平衡相关的点,仍可与先前的研究进行比较。我们的结果与基于多导睡眠图的睡眠图作为金标准进行比较,准确率为92.8%,敏感性为97.6%,特异性为73.4%。敏感性和特异性之间的几何平均值为84.9%。