Dos Santos Rafael Rodrigues, da Silva Thais Marques, Silva Luiz Eduardo Virgilio, Eckeli Alan Luiz, Salgado Helio Cesar, Fazan Rubens
Department of Physiology, School of Medicine of Ribeirão Preto, University of São Paulo, Ribeirão Preto, Brazil.
Department of Neuroscience and Sciences of Behavior, Division of Neurology, School of Medicine of Ribeirão Preto, University of São Paulo, Ribeirão Preto, Brazil.
Front Netw Physiol. 2022 Sep 6;2:958550. doi: 10.3389/fnetp.2022.958550. eCollection 2022.
Obstructive sleep apnea (OSA) is one of the most common sleep disorders and affects nearly a billion people worldwide. Furthermore, it is estimated that many patients with OSA are underdiagnosed, which contributes to the development of comorbidities, such as cardiac autonomic imbalance, leading to high cardiac risk. Heart rate variability (HRV) is a non-invasive, widely used approach to evaluating neural control of the heart. This study evaluates the relationship between HRV indices and the presence and severity of OSA. We hypothesize that HRV, especially the nonlinear methods, can serve as an easy-to-collect marker for OSA early risk stratification. Polysomnography (PSG) exams of 157 patients were classified into four groups: OSA-free ( = 26), OSA-mild ( = 39), OSA-moderate ( = 37), and OSA-severe ( = 55). The electrocardiogram was extracted from the PSG recordings, and a 15-min beat-by-beat series of RR intervals were generated every hour during the first 6 h of sleep. Linear and nonlinear HRV approaches were employed to calculate 32 indices of HRV. Specifically, time- and frequency-domain, symbolic analysis, entropy measures, heart rate fragmentation, acceleration and deceleration capacities, asymmetry measures, and fractal analysis. Results with indices of sympathovagal balance provided support to reinforce previous knowledge that patients with OSA have sympathetic overactivity. Nonlinear indices showed that HRV dynamics of patients with OSA display a loss of physiologic complexity that could contribute to their higher risk of development of cardiovascular disease. Moreover, many HRV indices were found to be linked with clinical scores of PSG. Therefore, a complete set of HRV indices, especially the ones obtained by the nonlinear approaches, can bring valuable information about the presence and severity of OSA, suggesting that HRV can be helpful for in a quick diagnosis of OSA, and supporting early interventions that could potentially reduce the development of comorbidities.
阻塞性睡眠呼吸暂停(OSA)是最常见的睡眠障碍之一,全球近10亿人受其影响。此外,据估计,许多OSA患者未得到充分诊断,这促使了诸如心脏自主神经失衡等合并症的发展,进而导致高心脏风险。心率变异性(HRV)是一种评估心脏神经控制的非侵入性、广泛应用的方法。本研究评估了HRV指标与OSA的存在及严重程度之间的关系。我们假设HRV,尤其是非线性方法,可作为一种易于收集的指标用于OSA早期风险分层。157例患者的多导睡眠图(PSG)检查被分为四组:无OSA组(n = 26)、轻度OSA组(n = 39)、中度OSA组(n = 37)和重度OSA组(n = 55)。从PSG记录中提取心电图,并在睡眠的前6小时内每小时生成一个15分钟的逐搏RR间期序列。采用线性和非线性HRV方法计算32个HRV指标。具体包括时域和频域、符号分析、熵测量、心率碎裂、加速和减速能力、不对称测量以及分形分析。交感迷走神经平衡指标的结果支持并强化了先前的认知,即OSA患者存在交感神经活动亢进。非线性指标显示,OSA患者的HRV动态表现出生理复杂性的丧失,这可能导致他们患心血管疾病的风险更高。此外,许多HRV指标被发现与PSG的临床评分相关。因此,一套完整 的HRV指标,尤其是通过非线性方法获得的指标,能够提供有关OSA的存在及严重程度的有价值信息,这表明HRV有助于快速诊断OSA,并支持可能减少合并症发生的早期干预措施。