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Using hidden Markov models with raw, triaxial wrist accelerometry data to determine sleep stages

机译:使用带有原始的三轴手腕加速度的隐马尔可夫模型来确定睡眠阶段

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摘要

Accelerometry is a low-cost and noninvasive method that has been used to discriminate sleep from wake, however, its utility to detect sleep stages is unclear. We detail the development and comparison of methods which utilise raw, triaxial accelerometry data to classify varying stages of sleep, ranging from sleep/wake detection to discriminating rapid eye movement sleep, stage one sleep, stage two sleep, deep sleep and wake. First- and second-order hidden Markov models (HMMs) with time-homogeneous and time-varying transition probability matrices, along with continuous acceleration observations in the form of a Gaussian-observation HMM and K-means classified acceleration in a discrete-observation HMM were explored. In addition, generalised linear mixed models (GLMMs) with binary and multinomial responses and logit link functions were considered as was whether incorporating adjoining acceleration information into the models improved prediction. Model predictions were compared to the reference-standard in sleep detection (polysomnography) and outcome accuracies were calculated. Consistently, HMMs yielded greater sleep stage detection than GLMMs but there was little difference between first- and second-order HMMs. Varying degrees of difference were observed when comparing Gaussian-observation HMMs to discrete-observation HMMs, and time-varying HMMs yielded greater discrimination than time-homogeneous HMMs, as did models which considered adjoining acceleration information. These results suggest that wrist-worn accelerometry data may be able to detect sleep stages but that further investigation is required to optimise classification accuracy.
机译:加速度是一种低成本和非侵入性的方法,用于从唤醒中辨别睡眠,但是它检测睡眠阶段的实用性尚不清楚。我们详细介绍了利用原始的三轴加速度数据来分类睡眠不同阶段的方法的开发和比较,从睡眠/醒目检测范围内辨别快速眼睛运动睡眠,阶段睡眠,阶段两睡眠,深睡眠和醒来。具有时间均匀和时变概率矩阵的第一和二阶隐马尔可夫模型(HMMS),以及在离散观察HMM中以高斯观察HMM和K-Meansied加速的形式的连续加速观察探索了。另外,具有二进制和多项响应和Logit链路功能的广义线性混合模型(GLMM)是载入模型改进预测的邻接加速信息。将模型预测与睡眠检测的参考标准进行比较(多重创术),并计算结果准确性。始终如一地,HMMS比GLMMS产生更大的睡眠阶段检测,但第一阶和二阶HMMS之间几乎没有差异。当将高斯观察HMMS与离散观察HMMS比较时,观察到不同程度的差异,并且时间变化的HMMS产生比时间 - 均匀的HMMS更大的识别,以及考虑相邻加速信息的模型。这些结果表明,腕带的加速度数据可能能够检测睡眠阶段,但需要进一步调查来优化分类准确性。

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