| Literature DB >> 28760786 |
Andrew Gadie1, Meredith Shafto2, Yue Leng3, Rogier A Kievit1.
Abstract
OBJECTIVES: To examine age-related differences in self-reported sleep quality and their associations with health outcomes across four domains: physical health, cognitive health, mental health and neural health.Entities:
Keywords: ageing; cognition; healthy ageing; mental health; physical health; sleep quality; white matter
Mesh:
Year: 2017 PMID: 28760786 PMCID: PMC5642766 DOI: 10.1136/bmjopen-2016-014920
Source DB: PubMed Journal: BMJ Open ISSN: 2044-6055 Impact factor: 2.692
Description of health variables across each of four domains (cognitive, neural, physical, mental)
| Health domain | Task and description | Variable | Descriptives | References |
| Cognitive | Story Recall Immediate: | Recall manually scored for similarity and precision (min=0, max=24) | n=2379, M=13.14, SD=4.66, range=0–24 |
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| Cognitive | Story Recall Delayed: | Recall manually scored for similarity and precision (min=0, max=24) | n=2366, M=11.47, SD=4.92, range=0–24 |
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| Cognitive | Letter Fluency (phonemic fluency): | Total words generated (min=0,max=30) | n=2360, M=25.38, SD=3.96, range=0–30 |
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| Cognitive | Animal Fluency (semantic fluency): | Total words generated (min=0,max=30) | n=2346, M=25.85, SD=4.47, range=0–30 |
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| Cognitive | Cattell Culture Fair: | Total correct summed across four subtests (min=0, max=46) | n=658, M=31.8, SD=6.79, range=11–44 |
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| Cognitive | Simple reaction time: | 1/response time in seconds | n=657, M=0.37, SD=0.08, range=0.24–0.93 |
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| Cognitive | Addenbrooke's Cognitive Examination, Revised: | Performance on multiple tests converted to min=0, max=100 range | n=2406, M=89.25, SD=13.4, range=0–100 |
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| Neural | White matter health: | Fractional anisotropy (min=0, max=1, averaged across 10 tracts) | n=641, M=0.5, SD=0.03, range=0.3–0.56 |
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| Physical | Self-reported health, in general: | Score from 1=excellent to 4=poor | n=2404, M=2.02, SD=0.79, range=1–3 |
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| Physical | Self-reported health, last 12 months: | Score from 1=good to 3=poor | n=2398, M=1.46, SD=0.71, range=1–3 |
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| Physical | Systolic blood pressure | Mean systolic blood pressure in mm Hg, averaged across three consecutive measurements | n=577, M=120.11, SD=17, range=78.5–186 | |
| Physical | Diastolic blood pressure | Mean diastolic blood pressure in mm Hg, averaged across three consecutive measurements | n=577, M=73.14, SD=10.48, range=49–115.5 | |
| Physical | Resting pulse | Mean pulse in beats per minute, averaged across three consecutive measurements | n=578, M=65.69, SD=10.5, range=40–110.5 | |
| Physical | Body Mass Index (BMI) | (weight in kg)/(height in m2) | n=584, M=25.77, SD=4.59, range=16.75–48.32 |
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| Mental health | Anxiety Subscale (Hospital Anxiety and Depression Scale (HADS)): | Seven questions rated on 0–3 scale (‘often’ to ‘very seldom’) (min=0, max=21) | n=2391, M=5.13, SD=3.31, range=0–17 |
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| Mental health | Depression Subscale (HADS): participant's response to seven questions about depression-related behaviours | Seven questions rated on 0–3 scale (‘often’ to ‘very seldom’) (min=0, max=21) | n=2373, M=3.32, SD=2.91, range=0–14 |
For each variable, details are given including a description of the task it is derived from, relevant citations, a brief definition and descriptive statistics.
Figure 1Descriptive interpretation of Bayes factors.
Figure 2Latent class analysis. Panel (A) shows the sleep quality profiles for each of the four classes. Panel (B) shows the conditional probability of belonging to each class across the lifespan.
Figure 3Multiple regressions between sleep components and cognitive health. The strength of the effect is colour coded by Bayes factor and the effect size is shown as r-squared (as a percentage out of 100). Sample varies across components and measures due to varying missingness. Cattell and reaction time were measured only in the imaging cohort: mean N=648, N=11.11. Sample sizes for five other domains are similar (mean n=2300.25, SD=65.57). ACE-R, Addenbrooke's CognitiveExamination Revised.
Figure 4Multiple regressions between sleep components and neural health. Each cell represents the relationship between a sleep component and the mean neural health in a given tract as index by fractional anisotrophy. Numbers represented in r-squared. Strong associations are observed between measures of Sleep Medication usage and multiple tracts, along with sporadic associations between other components and tracts. White matter tracts abbreviations: uncinated fasciculus (UNC), superior longitudinal fasciculus (SLF), inferior longitudinal fasciculus (ILF), inferior fronto-occipital fasciculus (IFOF), forceps minor (FMin), forceps major (FMaj), cerebrospinal tract (CST), the ventral cingulate gyrus (CINGHipp), the dorsal cingulate gyrus (CING) and the anterior thalamic radiations (ATR). N varies slightly across components due to varying missingness (N mean=631.325, SD=10.32).
Figure 5Physical health and sleep quality. Numbers represent r-squared. Strong associations between general indices of health and sleep quality are found, and several modest relationships with BMI and sleep quality. Self-reported health (12 months and general) were measured in the full cohort (mean=2315.37, SD=66.29), the other indicators were measured in the imaging cohort only (mean=569.87, SD=11.16). BMI, body mass index.
Figure 6Interaction between sleep quality and anxiety in the youngest third (n=723, age 18.48–46.2) compared with the oldest third of participants (n=724, age 71.79–98.88). HADS, Hospital Anxiety and Depression Scale; PSQI, Pittsburgh Sleep Quality Index.
Figure 7Curvilinear associations between sleep duration in hours and (A) Hospital Anxiety and Depression Scale (HADS) depression and (B) general health (self-reported). For visual clarity, a small amount of random jitter was added to the data points.