Domingues Alexandre, Adamec Ondrej, Paiva Teresa, Sanches J Miguel
Institute for Systems and Robotics / Instituto Superior Técnico, Czech Republic.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:5081-4. doi: 10.1109/IEMBS.2010.5626207.
The diagnosis of Sleep disorders, highly prevalent in the western countries, typically involves sophisticated procedures and equipments that are intrusive to the patient. Wrist actigraphy, on the contrary, is a non-invasive and low cost solution to gather data which can provide valuable information in the diagnosis of these disorders. The acquired data may be used to infer the Sleep/Wakefulness (SW) state of the patient during the circadian cycle and detect abnormal behavioral patterns associated with these disorders. In this paper a classifier based on Autoregressive (AR) model coefficients, among other features, is proposed to estimate the SW state. The real data, acquired from 23 healthy subjects during fourteen days each, was segmented by expert medical personal with the help of complementary information such as light intensity and Sleep e-Diary information. Monte Carlo tests with a Leave-One-Out Cross Validation (LOOCV) strategy were used to assess the performance of the classifier which achieves an accuracy of 96%.
睡眠障碍在西方国家极为普遍,其诊断通常需要复杂的程序和设备,而这些对患者来说具有侵入性。相反,手腕活动记录仪是一种非侵入性且低成本的数据收集解决方案,可为这些障碍的诊断提供有价值的信息。采集到的数据可用于推断患者在昼夜节律周期中的睡眠/清醒(SW)状态,并检测与这些障碍相关的异常行为模式。本文提出了一种基于自回归(AR)模型系数以及其他特征的分类器,用于估计SW状态。从23名健康受试者身上采集的真实数据,每位受试者为期14天,由专业医疗人员借助诸如光照强度和睡眠电子日记信息等补充信息进行分段。采用留一法交叉验证(LOOCV)策略的蒙特卡洛测试用于评估该分类器的性能,其准确率达到了96%。