Lazic Ivan, Pernice Riccardo, Loncar-Turukalo Tatjana, Mijatovic Gorana, Faes Luca
Department of Power, Electronic and Communication Engineering, Faculty of Technical Sciences, University of Novi Sad, 21000 Novi Sad, Serbia.
Department of Engineering, University of Palermo, 90128 Palermo, Italy.
Entropy (Basel). 2021 May 31;23(6):698. doi: 10.3390/e23060698.
Apnea and other breathing-related disorders have been linked to the development of hypertension or impairments of the cardiovascular, cognitive or metabolic systems. The combined assessment of multiple physiological signals acquired during sleep is of fundamental importance for providing additional insights about breathing disorder events and the associated impairments. In this work, we apply information-theoretic measures to describe the joint dynamics of cardiorespiratory physiological processes in a large group of patients reporting repeated episodes of hypopneas, apneas (central, obstructive, mixed) and respiratory effort related arousals (RERAs). We analyze the heart period as the target process and the airflow amplitude as the driver, computing the predictive information, the information storage, the information transfer, the internal information and the cross information, using a fuzzy kernel entropy estimator. The analyses were performed comparing the information measures among segments during, immediately before and after the respiratory event and with control segments. Results highlight a general tendency to decrease of predictive information and information storage of heart period, as well as of cross information and information transfer from respiration to heart period, during the breathing disordered events. The information-theoretic measures also vary according to the breathing disorder, and significant changes of information transfer can be detected during RERAs, suggesting that the latter could represent a risk factor for developing cardiovascular diseases. These findings reflect the impact of different sleep breathing disorders on respiratory sinus arrhythmia, suggesting overall higher complexity of the cardiac dynamics and weaker cardiorespiratory interactions which may have physiological and clinical relevance.
呼吸暂停及其他与呼吸相关的疾病已被证实与高血压的发展或心血管、认知或代谢系统的损害有关。对睡眠期间采集的多种生理信号进行综合评估,对于深入了解呼吸紊乱事件及相关损害至关重要。在这项研究中,我们运用信息论方法来描述一大组报告反复出现呼吸浅慢、呼吸暂停(中枢性、阻塞性、混合性)及呼吸努力相关唤醒(RERAs)的患者心肺生理过程的联合动态。我们将心动周期作为目标过程,气流幅度作为驱动因素,使用模糊核熵估计器计算预测信息、信息存储、信息传递、内部信息和交叉信息。分析是通过比较呼吸事件期间、紧接呼吸事件前后的时间段以及对照时间段之间的信息指标来进行的。结果表明,在呼吸紊乱事件期间,心动周期的预测信息和信息存储以及从呼吸到心动周期的交叉信息和信息传递普遍呈现下降趋势。信息论指标也因呼吸紊乱类型而异,在RERAs期间可检测到信息传递的显著变化,这表明RERAs可能是心血管疾病发展的一个危险因素。这些发现反映了不同睡眠呼吸紊乱对呼吸性窦性心律不齐的影响,表明心脏动力学总体上具有更高的复杂性,心肺相互作用较弱,这可能具有生理和临床意义。