IEEE Trans Biomed Eng. 2014 Feb;61(2):426-34. doi: 10.1109/TBME.2013.2280538.
Wrist actigraphy (ACT) is a low-cost and well-established technique for long-term monitoring of human activity. It has a special relevance in sleep studies, where its noninvasive nature makes it a valuable tool for behavioral characterization and for the detection and diagnosis of some sleep disorders. The traditional sleep/wakefulness state estimation algorithms from the nocturnal ACT data are unbalanced from a sensitivity and specificity points of view since they tend to overestimate sleep state, with severe consequences from a diagnosis point of view. They usually maximize the overall accuracy that does not take into account the highly unbalanced state distribution. In this paper, a method is proposed to appropriately deal with this unbalanced problem, achieving similar sensitivity and specificity scores in the state estimation process. The proposed method combines two linear discriminant classifiers, trained with two different criteria involving movement detection to generate a first state estimate. This result is then refined by a Hidden Markov Model-based algorithm. The global accuracy, the sensitivity, and the specificity of the method are 77.8%, 75.6%, and 81.6%, respectively, performing better than the tested algorithms. If the performance is assessed only for movement periods, this improvement is even higher.
腕动描记法(ACT)是一种用于长期监测人类活动的低成本且成熟的技术。它在睡眠研究中具有特殊的意义,由于其非侵入性,它是行为特征描述以及某些睡眠障碍的检测和诊断的有价值的工具。从灵敏度和特异性的角度来看,传统的从夜间 ACT 数据中估计睡眠/觉醒状态的算法是不平衡的,因为它们往往会高估睡眠状态,从诊断的角度来看,这会产生严重的后果。它们通常会最大化整体准确性,而不考虑高度不平衡的状态分布。在本文中,提出了一种方法来适当处理这个不平衡问题,在状态估计过程中实现类似的灵敏度和特异性评分。该方法结合了两个线性判别分类器,使用涉及运动检测的两个不同标准进行训练,以生成第一个状态估计。然后,通过基于隐马尔可夫模型的算法对该结果进行细化。该方法的整体准确性、灵敏度和特异性分别为 77.8%、75.6%和 81.6%,优于测试的算法。如果仅评估运动期的性能,这种改进甚至更高。