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Sleep-States-Transition Model by Body Movement and Estimation of Sleep-Stage-Appearance Probabilities by Kalman Filter

机译:身体运动的睡眠状态转换模型和卡尔曼滤波估计睡眠阶段出现概率

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摘要

The judgment standards of R–K method include ambiguities and are thus compensated by subjective interpretations of sleep-stage scorers. This paper presents a novel method to compensate uncertainties in judgments by the subjective interpretations by the sleep-model estimation approach and by describing the judgments in probabilistic terms. Kalman filter based on the two sleep models with no body movement and with body movement was designed. Sleep stages judged by three different scorers were rejudged by the filter. The two sleep models were stochastically estimated from biosignals from 15 nights’ data and the rejudged scores by the filter were evaluated by the data from 5 nights. The average values of kappa statistics, which show the degree of agreement, were 0.85, 0.89, and 0.81, respectively, for the original sleep stages. Because the new method provides probabilities on how surely the sleep belongs to each sleep stage, we were able to determine the most, second most, and third most probable sleep stage. The kappa statistics between the most probable sleep stages were improved to 0.90, 0.93, and 0.84, respectively. Those of sleep stages determined from the most and second most probable were 0.92, 0.94, and 0.89 and those from the most, second most, and third most probable were 0.95, 0.97, and 0.92. The sleep stages estimated by the filter are expressed by probabilistic manner, which are more reasonable in expression than those given by deterministic manner. The expression could compensate the uncertainties in each judgments and thus were more accurate than the direct judgments.
机译:RK方法的判断标准包括歧义,因此可以通过对睡眠阶段记分员的主观解释来弥补。本文提出了一种新的方法来补偿判断中的不确定性,该方法通过睡眠模型估计方法的主观解释并以概率形式描述这些判断。设计了基于两种不带体动和带体动的睡眠模型的卡尔曼滤波器。由三个不同评分者判断的睡眠阶段由过滤器重新判断。根据15个晚上的数据从生物信号中随机估算了这两种睡眠模型,并根据5个晚上的数据对过滤器重新判断的得分进行了评估。原始睡眠阶段的kappa统计量平均值(分别表示一致程度)分别为0.85、0.89和0.81。由于新方法提供了有关睡眠属于每个睡眠阶段的确定性的概率,因此我们能够确定最大,第二大和第三大可能的睡眠阶段。最可能的睡眠阶段之间的kappa统计分别提高到0.90、0.93和0.84。从最高和第二高的可能性确定的睡眠阶段的睡眠阶段分别为0.92、0.94和0.89,从最高,第二高和第三高的可能性确定的睡眠阶段分别为0.95、0.97和0.92。由滤波器估计的睡眠阶段用概率方式表示,在表达方式上比通过确定性方式给出的方式更合理。该表达式可以补偿每个判断中的不确定性,因此比直接判断更准确。

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