Facultat de Psicología, Ciències de l'Educació i de l'Esport (FPCEE), Blanquerna, Universitat Ramon Llull, 08022 Barcelona, Spain.
Human Neurobehavioral Laboratory (HNL), Research Centre for Human Development (CEDH), Faculty of Education and Psychology, Universidade Católica Portuguesa, 4169-005 Porto, Portugal.
Sensors (Basel). 2024 Apr 28;24(9):2811. doi: 10.3390/s24092811.
Understanding and classifying brain states as a function of sleep quality and age has important implications for developing lifestyle-based interventions involving sleep hygiene. Current studies use an algorithm that captures non-linear features of brain complexity to differentiate awake electroencephalography (EEG) states, as a function of age and sleep quality. Fifty-eight participants were assessed using the Pittsburgh Sleep Quality Inventory (PSQI) and awake resting state EEG. Groups were formed based on age and sleep quality (younger adults = 24, mean age = 24.7 years, = 3.43, good sleepers = 11; older adults = 34, mean age = 72.87; = 4.18, good sleepers = 9). Ten non-linear features were extracted from multiband EEG analysis to feed several classifiers followed by a leave-one-out cross-validation. Brain state complexity accurately predicted (i) age in good sleepers, with 75% mean accuracy (across all channels) for lower frequencies (alpha, theta, and delta) and 95% accuracy at specific channels (temporal, parietal); and (ii) sleep quality in older groups with moderate accuracy (70 and 72%) across sub-bands with some regions showing greater differences. It also differentiated younger good sleepers from older poor sleepers with 85% mean accuracy across all sub-bands, and 92% at specific channels. Lower accuracy levels (<50%) were achieved in predicting sleep quality in younger adults. The algorithm discriminated older vs. younger groups excellently and could be used to explore intragroup differences in older adults to predict sleep intervention efficiency depending on their brain complexity.
理解和分类大脑状态是睡眠质量和年龄的函数,这对于开发涉及睡眠卫生的基于生活方式的干预措施具有重要意义。目前的研究使用一种算法来捕捉大脑复杂性的非线性特征,以区分清醒状态下的脑电图(EEG)状态,这是年龄和睡眠质量的函数。58 名参与者接受了匹兹堡睡眠质量指数(PSQI)和清醒静息状态 EEG 的评估。根据年龄和睡眠质量将参与者分为两组(年轻组=24 人,平均年龄为 24.7 岁,=3.43,睡眠质量好者=11 人;老年组=34 人,平均年龄为 72.87 岁,=4.18,睡眠质量好者=9 人)。从多波段 EEG 分析中提取了 10 个非线性特征,用于为几个分类器提供输入,然后进行一次留一交叉验证。大脑状态的复杂性可以准确地预测(i)睡眠质量好的年轻人的年龄,在低频(alpha、theta 和 delta)下的平均准确率为 75%(所有通道),在特定通道(颞部、顶叶)的准确率为 95%;(ii)在老年组中,对睡眠质量的预测具有中等准确性(子带准确率为 70%和 72%),一些区域显示出更大的差异。它还可以区分年轻的睡眠质量好的人与年长的睡眠质量差的人,所有子带的平均准确率为 85%,特定通道的准确率为 92%。在预测年轻成年人的睡眠质量方面,准确率水平较低(<50%)。该算法可以极好地区分老年人和年轻人,并且可以用于探索老年人的组内差异,以根据其大脑复杂性预测睡眠干预的效率。