Hospices Civils de Lyon, Lyon, France.
Sleep Center, APHP Hôpital Raymond Poincaré, Université de Versailles Saint-Quentin en Yvelines, Garches, France.
JMIR Public Health Surveill. 2024 Jun 11;10:e51585. doi: 10.2196/51585.
Sleep health is a multidimensional construct that includes objective and subjective parameters and is influenced by individual sleep-related behaviors and sleep disorders. Symptom network analysis allows modeling of the interactions between variables, enabling both the visualization of relationships between different factors and the identification of the strength of those relationships. Given the known influence of sex and age on sleep health, network analysis can help explore sets of mutually interacting symptoms relative to these demographic variables.
This study aimed to study the centrality of symptoms and compare age and sex differences regarding sleep health using a symptom network approach in a large French population that feels concerned about their sleep.
Data were extracted from a questionnaire provided by the Réseau Morphée health network. A network analysis was conducted on 39 clinical variables related to sleep disorders and sleep health. After network estimation, statistical analyses consisted of calculating inferences of centrality, robustness (ie, testifying to a sufficient effect size), predictability, and network comparison. Sleep clinical variable centralities within the networks were analyzed by both sex and age using 4 age groups (18-30, 31-45, 46-55, and >55 years), and local symptom-by-symptom correlations determined.
Data of 35,808 participants were obtained. The mean age was 42.7 (SD 15.7) years, and 24,964 (69.7%) were women. Overall, there were no significant differences in the structure of the symptom networks between sexes or age groups. The most central symptoms across all groups were nonrestorative sleep and excessive daytime sleepiness. In the youngest group, additional central symptoms were chronic circadian misalignment and chronic sleep deprivation (related to sleep behaviors), particularly among women. In the oldest group, leg sensory discomfort and breath abnormality complaint were among the top 4 central symptoms. Symptoms of sleep disorders thus became more central with age than sleep behaviors. The high predictability of central nodes in one of the networks underlined its importance in influencing other nodes.
The absence of structural difference between networks is an important finding, given the known differences in sleep between sexes and across age groups. These similarities suggest comparable interactions between clinical sleep variables across sexes and age groups and highlight the implication of common sleep and wake neural circuits and circadian rhythms in understanding sleep health. More precisely, nonrestorative sleep and excessive daytime sleepiness are central symptoms in all groups. The behavioral component is particularly central in young people and women. Sleep-related respiratory and motor symptoms are prominent in older people. These results underscore the importance of comprehensive sleep promotion and screening strategies tailored to sex and age to impact sleep health.
睡眠健康是一个多维结构,包括客观和主观参数,并受到个体与睡眠相关的行为和睡眠障碍的影响。症状网络分析允许对变量之间的相互作用进行建模,从而能够可视化不同因素之间的关系,并确定这些关系的强度。鉴于性别和年龄对睡眠健康的已知影响,网络分析可以帮助探索与这些人口统计学变量相关的相互作用症状集。
本研究旨在使用症状网络方法研究法国一个对睡眠感到担忧的大型人群的睡眠健康的中心性,并比较年龄和性别差异。
数据取自 Morphée 健康网络提供的问卷。对 39 个与睡眠障碍和睡眠健康相关的临床变量进行了网络分析。在网络估计后,统计分析包括计算中心性、稳健性(即证明足够的效应大小)、可预测性和网络比较的推论。使用 4 个年龄组(18-30、31-45、46-55 和 >55 岁)分析网络中睡眠临床变量的中心性,并确定局部症状-症状相关性。
共获得 35808 名参与者的数据。平均年龄为 42.7(15.7)岁,24964 名(69.7%)为女性。总体而言,性别和年龄组之间的症状网络结构没有显著差异。所有组中最中心的症状是非恢复性睡眠和日间过度嗜睡。在最年轻的组中,慢性昼夜节律失调和慢性睡眠剥夺(与睡眠行为有关)是额外的中心症状,特别是在女性中。在最年长的组中,腿部感觉不适和呼吸异常投诉是前 4 个中心症状之一。因此,随着年龄的增长,睡眠障碍的症状比睡眠行为更成为中心症状。一个网络中的中心节点的高可预测性强调了它对影响其他节点的重要性。
鉴于性别和年龄组之间的睡眠差异已知,网络之间没有结构差异是一个重要的发现。这些相似性表明,在性别和年龄组之间,临床睡眠变量之间存在可比的相互作用,并强调了共同的睡眠和清醒神经回路和昼夜节律在理解睡眠健康方面的重要性。更具体地说,非恢复性睡眠和日间过度嗜睡是所有组的中心症状。行为成分在年轻人和女性中尤为突出。与睡眠相关的呼吸和运动症状在老年人中更为突出。这些结果强调了针对性别和年龄制定全面的睡眠促进和筛查策略的重要性,以影响睡眠健康。