Department of Engineering Science, Institute of Biomedical Engineering (IBME), University of Oxford, Oxford, United Kingdom.
J Neural Eng. 2018 Jun;15(3):036004. doi: 10.1088/1741-2552/aaab73. Epub 2018 Jan 30.
We develop a method for automated four-state sleep classification of preterm and term-born babies at term-age of 38-40 weeks postmenstrual age (the age since the last menstrual cycle of the mother) using multichannel electroencephalogram (EEG) recordings. At this critical age, EEG differentiates from broader quiet sleep (QS) and active sleep (AS) stages to four, more complex states, and the quality and timing of this differentiation is indicative of the level of brain development. However, existing methods for automated sleep classification remain focussed only on QS and AS sleep classification.
EEG features were calculated from 16 EEG recordings, in 30 s epochs, and personalized feature scaling used to correct for some of the inter-recording variability, by standardizing each recording's feature data using its mean and standard deviation. Hidden Markov models (HMMs) and Gaussian mixture models (GMMs) were trained, with the HMM incorporating knowledge of the sleep state transition probabilities. Performance of the GMM and HMM (with and without scaling) were compared, and Cohen's kappa agreement calculated between the estimates and clinicians' visual labels.
For four-state classification, the HMM proved superior to the GMM. With the inclusion of personalized feature scaling, mean kappa (±standard deviation) was 0.62 (±0.16) compared to the GMM value of 0.55 (±0.15). Without feature scaling, kappas for the HMM and GMM dropped to 0.56 (±0.18) and 0.51 (±0.15), respectively.
This is the first study to present a successful method for the automated staging of four states in term-age sleep using multichannel EEG. Results suggested a benefit in incorporating transition information using an HMM, and correcting for inter-recording variability through personalized feature scaling. Determining the timing and quality of these states are indicative of developmental delays in both preterm and term-born babies that may lead to learning problems by school age.
我们开发了一种方法,用于使用多通道脑电图(EEG)记录对胎龄为 38-40 周(母亲最后一次月经周期后的年龄)的早产儿和足月婴儿进行自动四状态睡眠分类。在这个关键时期,脑电图(EEG)从更广泛的安静睡眠(QS)和活跃睡眠(AS)阶段区分出四个更复杂的状态,这种区分的质量和时间表明大脑发育的水平。然而,现有的自动睡眠分类方法仍然只关注 QS 和 AS 睡眠分类。
从 16 个 EEG 记录中计算 EEG 特征,每个记录 30 秒的时段,并使用个性化特征缩放来纠正一些记录间的变异性,通过使用每个记录的均值和标准差对其特征数据进行标准化。训练了隐马尔可夫模型(HMM)和高斯混合模型(GMM),其中 HMM 结合了睡眠状态转移概率的知识。比较了 GMM 和 HMM 的性能(带和不带缩放),并计算了估计值和临床医生视觉标签之间的 Cohen's kappa 一致性。
对于四状态分类,HMM 优于 GMM。通过纳入个性化特征缩放,平均 kappa(±标准差)为 0.62(±0.16),而 GMM 值为 0.55(±0.15)。没有特征缩放,HMM 和 GMM 的 kappa 值分别下降到 0.56(±0.18)和 0.51(±0.15)。
这是第一项使用多通道 EEG 成功自动分期足月年龄睡眠四状态的研究。结果表明,使用 HMM 纳入转移信息和通过个性化特征缩放纠正记录间变异性有一定益处。确定这些状态的时间和质量可以指示早产儿和足月婴儿的发育迟缓,这可能导致他们在上学时出现学习问题。