Faes Luca, Marinazzo Daniele, Stramaglia Sebastiano, Jurysta Fabrice, Porta Alberto, Giandomenico Nollo
Biotech, Department of Industrial Engineering, University of Trento, Trento, Italy IRCS Program, PAT-FBK Trento, Italy
Department of Data Analysis, University of Ghent, Ghent, Belgium.
Philos Trans A Math Phys Eng Sci. 2016 May 13;374(2067). doi: 10.1098/rsta.2015.0177.
This work introduces a framework to study the network formed by the autonomic component of heart rate variability (cardiac processη) and the amplitude of the different electroencephalographic waves (brain processes δ, θ, α, σ, β) during sleep. The framework exploits multivariate linear models to decompose the predictability of any given target process into measures of self-, causal and interaction predictability reflecting respectively the information retained in the process and related to its physiological complexity, the information transferred from the other source processes, and the information modified during the transfer according to redundant or synergistic interaction between the sources. The framework is here applied to theη,δ,θ,α,σ,βtime series measured from the sleep recordings of eight severe sleep apnoea-hypopnoea syndrome (SAHS) patients studied before and after long-term treatment with continuous positive airway pressure (CPAP) therapy, and 14 healthy controls. Results show that the full and self-predictability of η, δ and θ decreased significantly in SAHS compared with controls, and were restored with CPAP forδandθbut not forη The causal predictability of η and δ occurred through significantly redundant source interaction during healthy sleep, which was lost in SAHS and recovered after CPAP. These results indicate that predictability analysis is a viable tool to assess the modifications of complexity and causality of the cerebral and cardiac processes induced by sleep disorders, and to monitor the restoration of the neuroautonomic control of these processes during long-term treatment.
这项研究提出了一个框架,用于研究睡眠期间心率变异性的自主成分(心脏过程η)与不同脑电图波幅(大脑过程δ、θ、α、σ、β)所形成的网络。该框架利用多元线性模型,将任何给定目标过程的可预测性分解为自我、因果和交互可预测性度量,分别反映过程中保留的与其生理复杂性相关的信息、从其他源过程传递的信息,以及根据源之间的冗余或协同交互在传递过程中修改的信息。该框架应用于八名重度睡眠呼吸暂停低通气综合征(SAHS)患者在持续气道正压通气(CPAP)长期治疗前后的睡眠记录中测量的η、δ、θ、α、σ、β时间序列,以及14名健康对照者。结果表明,与对照组相比,SAHS患者中η、δ和θ的完全可预测性和自我可预测性显著降低,CPAP治疗后δ和θ恢复,但η未恢复。在健康睡眠期间,η和δ的因果可预测性通过显著冗余的源交互作用产生,在SAHS中丧失,CPAP治疗后恢复。这些结果表明,可预测性分析是评估睡眠障碍引起的大脑和心脏过程的复杂性和因果关系变化,以及监测长期治疗期间这些过程的神经自主控制恢复的可行工具。