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自我报告的睡眠模式与健康、认知及淀粉样蛋白指标之间的关联:来自威斯康星州阿尔茨海默病预防登记处的结果。

Associations between self-reported sleep patterns and health, cognition and amyloid measures: results from the Wisconsin Registry for Alzheimer's Prevention.

作者信息

Du Lianlian, Langhough Rebecca, Hermann Bruce P, Jonaitis Erin, Betthauser Tobey J, Cody Karly Alex, Mueller Kimberly, Zuelsdorff Megan, Chin Nathaniel, Ennis Gilda E, Bendlin Barbara B, Gleason Carey E, Christian Bradley T, Plante David T, Chappell Rick, Johnson Sterling C

机构信息

Wisconsin Alzheimer's Institute, University of Wisconsin-Madison School of Medicine and Public Health, Madison, WI 53726, USA.

Department of Biostatistics and Medical Informatics, School of Medicine and Public Health, University of Wisconsin-Madison, Madison, WI 53792, USA.

出版信息

Brain Commun. 2023 Feb 24;5(2):fcad039. doi: 10.1093/braincomms/fcad039. eCollection 2023.

Abstract

Previous studies suggest associations between self-reported sleep problems and poorer health, cognition, Alzheimer's disease pathology and dementia-related outcomes. It is important to develop a deeper understanding of the relationship between these complications and sleep disturbance, a modifiable risk factor, in late midlife, a time when Alzheimer's disease pathology may be accruing. The objectives of this study included application of unsupervised machine learning procedures to identify distinct subgroups of persons with problematic sleep and the association of these subgroups with concurrent measures of mental and physical health, cognition and PET-identified amyloid. Dementia-free participants from the Wisconsin Registry for Alzheimer's Prevention ( = 619) completed sleep questionnaires including the Insomnia Severity Index, Epworth Sleepiness Scale and Medical Outcomes Study Sleep Scale. K-means clustering analysis identified discrete sleep problem groups who were then compared across concurrent health outcomes (e.g. depression, self-rated health and insulin resistance), cognitive composite indices including episodic memory and executive function and, in a subset, Pittsburgh Compound B PET imaging to assess amyloid burden. Significant omnibus tests ( < 0.05) were followed with pairwise comparisons. Mean (SD) sample baseline sleep assessment age was 62.6 (6.7). Cluster analysis identified three groups: healthy sleepers [ = 262 (42.3%)], intermediate sleepers [ = 229 (37.0%)] and poor sleepers [ = 128 (20.7%)]. All omnibus tests comparing demographics and health measures across sleep groups were significant except for age, sex and apolipoprotein E e4 carriers; the poor sleepers group was worse than one or both of the other groups on all other measures, including measures of depression, self-reported health and memory complaints. The poor sleepers group had higher average body mass index, waist-hip ratio and homeostatic model assessment of insulin resistance. After adjusting for covariates, the poor sleepers group also performed worse on all concurrent cognitive composites except working memory. There were no differences between sleep groups on PET-based measures of amyloid. Sensitivity analyses indicated that while different clustering approaches resulted in different group assignments for some (predominantly the intermediate group), between-group patterns in outcomes were consistent. In conclusion, distinct sleep characteristics groups were identified with a sizable minority (20.7%) exhibiting poor sleep characteristics, and this group also exhibited the poorest concurrent mental and physical health and cognition, indicating substantial multi-morbidity; sleep group was not associated with amyloid PET estimates. Precision-based management of sleep and related factors may provide an opportunity for early intervention that could serve to delay or prevent clinical impairment.

摘要

先前的研究表明,自我报告的睡眠问题与较差的健康状况、认知能力、阿尔茨海默病病理以及与痴呆相关的结果之间存在关联。在中年后期,阿尔茨海默病病理可能正在累积,此时深入了解这些并发症与睡眠障碍(一种可改变的风险因素)之间的关系非常重要。本研究的目的包括应用无监督机器学习程序来识别睡眠问题人群的不同亚组,以及这些亚组与心理和身体健康、认知以及PET识别的淀粉样蛋白的同时测量指标之间的关联。来自威斯康星州阿尔茨海默病预防登记处的无痴呆参与者(n = 619)完成了睡眠问卷,包括失眠严重程度指数、爱泼华嗜睡量表和医学结局研究睡眠量表。K均值聚类分析确定了离散的睡眠问题组,然后对这些组在同时期的健康结局(如抑郁、自评健康和胰岛素抵抗)、包括情景记忆和执行功能在内的认知综合指数以及在一个子集中进行匹兹堡化合物B PET成像以评估淀粉样蛋白负荷方面进行比较。显著的综合检验(P < 0.05)之后进行两两比较。样本基线睡眠评估的平均(标准差)年龄为62.6(6.7)岁。聚类分析确定了三组:睡眠良好者[n = 262(42.3%)]、中度睡眠者[n = 229(37.0%)]和睡眠不佳者[n = 128(20.7%)]。除年龄、性别和载脂蛋白E e4携带者外,所有比较睡眠组之间人口统计学和健康指标的综合检验均具有显著性;睡眠不佳者组在所有其他指标上比其他一组或两组都差,包括抑郁、自评健康和记忆问题的测量指标。睡眠不佳者组的平均体重指数、腰臀比和胰岛素抵抗的稳态模型评估更高。在调整协变量后,睡眠不佳者组在除工作记忆外的所有同时期认知综合指标上也表现更差。基于PET的淀粉样蛋白测量指标在睡眠组之间没有差异。敏感性分析表明,虽然不同的聚类方法导致一些人(主要是中度组)的分组不同,但结局的组间模式是一致的。总之,确定了不同的睡眠特征组,其中相当一部分少数人(20.7%)表现出不良的睡眠特征,并且该组同时还表现出最差的心理和身体健康以及认知能力,表明存在大量的多种疾病共存;睡眠组与淀粉样蛋白PET估计值无关。基于精准的睡眠及相关因素管理可能为早期干预提供机会,从而有助于延迟或预防临床损害。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a97d/9999364/4e1eda8a3d51/fcad039_ga1.jpg

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