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Erschienen in: European Journal of Ageing 2/2015

Open Access 01.06.2015 | Original Investigation

Sleep duration and mortality among older adults in a 22-year follow-up study: an analysis of possible effect modifiers

verfasst von: Katarzyna Zawisza, Beata Tobiasz-Adamczyk, Aleksander Galas, Monika Brzyska

Erschienen in: European Journal of Ageing | Ausgabe 2/2015

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Abstract

The aim of this study was to assess the relationship of sleep duration and all-cause mortality among 2,449 Polish community-dwelling older citizens of Krakow observed during 22 years of follow-up. In particular, the role of some demographic, psychosocial and health-related conditions were investigated in terms of modification effect. In the prospective study, background information was gathered by face-to-face interview. Vital data were obtained from the population registry. Cox regression models were used to assess the role of sleep duration in mortality, in the analyses of potential effect modifiers and the shape of the relationship. Sleep duration was observed to be a significant predictor of all-cause mortality. Life-weariness, functional activity, total number of chronic diseases and age (65–79, 80+) were found to be effect modifiers for the relationship between sleep duration and mortality. Further investigation showed a U-shaped mortality risk associated with the duration of sleep among individuals with a high level of life-weariness, high functional activity and in individuals aged 80 and over. On the other hand, a linear relationship between longer sleep duration and mortality was observed among older people with no experience of life-weariness, without chronic diseases, with medium functional activity and aged 65–79, but also among those who reported three and more chronic conditions. Results of our study support available evidence showing the relationship between sleep duration and mortality among older adults and suggest that any public health intervention in this area should consider also other coexisting modifiable psychosocial and functional determinants.
Hinweise
Responsible editor: D. J. H. Deeg.

Introduction

Sleep, as a part of a healthy lifestyle, plays an important role in sustaining a high quality of life and good health (Faubel et al. 2009; Magee et al. 2011). There is a large body of scholarship showing the relationship between sleep duration and morbidity or mortality. It has been observed that either short or long habitual sleep is associated with hypertension (in different age groups including middle-aged and older individuals) (Gottlieb et al. 2006), with events of nonfatal and fatal cardiovascular disease (Elwood et al. 2006) and with depression (Patel et al. 2006). Additionally, extreme sleep duration in older adults was associated with lower health-related quality of life, also after adjustment for several covariates (Faubel et al. 2009).
Starting with one of the pioneer study in the topic, that is the Alameda study published by Kaplan (Kaplan et al. 1987), an increasing evidence that short or long sleep duration may be related to mortality risk has been observed (Burazeri et al. 2003; Cappuccio et al. 2010; Castro-Costa et al. 2011; Gallicchio and Kalesan 2009; Patel et al. 2004; Qiu et al. 2011). One comprehensive study suggested duration of sleep as an independent predictor of survival among older individuals from eight areas in Great Britain (Gale and Martyn 1998). Some studies showed that only long sleep (>8 h/day) was associated with high excess in mortality (Lan et al. 2007; Qureshi et al. 1997). Other results supported a U-shaped relationship between sleep duration and all-cause mortality (Kripke et al. 2002), but again another study showed this relationship only among adults aged 60–86 (Gangwisch et al. 2008) or only among those aged 50–59 (Kaplan et al. 1987). In contrast, some studies did not find any correlation (Ferrie et al. 2007).
Non-normative sleep duration may be related to several factors associated with increased mortality. It was observed that women who slept <6 or more than 7.5 hours per night if compared with women who slept 6.8–7.5 hours per night had higher odds of having a functional limitation (Goldman et al. 2007). Females with more disrupted sleep, as characterized by short sleep duration and longer awake time during the night, were at greater risk of poorer daily activities, and additionally, more fragmented sleep (as measured by minutes of wake after sleep onset) was associated with weaker neuromuscular performance and was a risk factor for functional impairment (Goldman et al. 2007). A Spanish study showed that women who had extreme sleep duration (either ≤5 h/day or ≥10 h/day) reported a worse score on the SF-36. The results of this study revealed also that long sleep duration was associated with poorer cognitive function in older adults from the general population (Faubel et al. 2009).
Although there is broad array of literature presenting the role of sleep in mortality, little is known about effect modifiers for this relationship. Gangwish and colleagues investigated whether age (ages 32–59 vs. 60–86 years) acted as an effect modifier in the relationship between short sleep duration (≤5 vs. 7 h) and mortality, and they found a significant interaction effect. In contrast, the interaction effect was not significant for long sleep duration (≥9 vs. 7 h) (Gangwisch et al. 2008). Similarly, it was observed that among the oldest old (meaning 80+ years), those who slept <7 hours or more than 9 hours had 18–21 % higher risks of mortality as compared to those who slept 8 hours. These results were not statistically significant in young elders (65–79 years) except for the category of 10 hours or more (Stamatakis et al. 2007). Another study performed among people aged 35+ did not support age as an effect modifier of the effects of sleep duration on all-cause mortality (Chien et al. 2010).
Considering gender, in a study in Mediterranean countries, long sleep duration was found to be a significant predictor of all-cause mortality among men aged 50 and over, whereas same-aged women were not affected (Burazeri et al. 2003). Analysis performed among Taiwanese older people (64+ years) showed a significant association between long sleep duration and mortality for both genders where the hazard ratio was higher among women (Lan et al. 2007). The Shirakawa study (Japan) showed that longer and shorter sleep controlled for several confounders (like present and past medical history, use of sleep pills, smoking and drinking habits) was significantly related to an increased risk of total mortality among males (Kojima et al. 2000). The study performed among 104,010 Japanese people aged from 40 to 79 years showed that sleep duration was a predictor of all-cause mortality among men and women (hazard ratios were slightly higher among females), but finally, in fully adjusted model, relation between short sleep duration and mortality was observed only among women (Tamakoshi and Ohno 2004). A later report of the Japanese cohort study showed a U-shaped relationship between sleep duration and all-cause mortality for both genders (Ikehara 2009). In one large study performed among people aged 30 and over in the USA, the results for males and females were also similar (Kripke et al. 2002), and the most recent critical review published by Kurina et al. (2013) has shown a lack of consistent differences between genders with regard to the association between sleep duration and mortality.
The association between sleep duration and all-cause mortality was shown to vary according to health status as assessed by a presence of preexisting illness and a functional limitation measured by MOS PF scale. Those who were healthy at baseline did not show the association, whereas among individuals in the less healthy group, higher risk of death was associated with short and long sleep duration. The authors additionally suggested that the aforementioned association might be the result of a residual confounding with poor baseline health (Magee et al. 2013).
There are also some other personal and environmental factors associated with the nature of sleep and related to mortality. “Sleep architecture” significantly changes with a number of psychosocial factors, such as the end of one’s career and the beginning of retirement or a death of a spouse, relatives or friends (Doghramji 2006; Ohayon 2004). Shorter sleep duration may also be the result of waking physical and psychological stressors. Alterations in the structure of sleep among older adults can result from previous occupational activity (like shift work), as well as from a number of stressful life events, which are common in older age. Low mood has been observed as significant determinant of quantity and quality of sleep in older age (Doghramji 2006).
Some epidemiological studies have shown that about 7–42 % of older adults report the presence of feelings related to prolonged fatigue—depending on the characteristics of the study population and the measurement tool used (Lewis and Wessely 1992; Prescott et al. 2003). There is also some evidence supporting the role of prolonged fatigue and tiredness in the development of chronic diseases (Ekmann et al. 2013) and mortality (Hardy and Studenski, 2008). Thus, both sleep duration and prolonged fatigue seem to be associated with morbidity and mortality; however, their interplay has not been investigated.
Additionally, work done by Garde and colleagues showed that perceived psychological pressure during work and leisure time was not a significant effect modifier for the association between sleep duration and ischemic heart disease mortality (Garde et al. 2013). Results of other studies suggested that SES, social and family support, and health practices did very little to modify the association between sleep duration and mortality (Mesas 2010; Stamatakis et al. 2007).
All in all, study results are somewhat inconsistent, and more importantly, data regarding possible effect modifiers for the relationship between duration of sleep and mortality, especially among older adults, are scarce. Thus, the aim of this study was to assess the relationship of sleep duration and all-cause mortality among 2,439 Polish community-dwelling older citizens of Krakow observed during 22 years of follow-up. In particular, the role of some demographic, psychosocial and health-related conditions was investigated in terms of modification effect.

Methods

Study design

The detailed study design has been described elsewhere (Jedrychowski 1990; Tobiasz-Adamczyk et al. 2008). In brief, the baseline study evaluating the health status of older residents of Krakow city centre (south of Poland) was conducted in 1986–87. A group of 1,021 men and 1978 women was randomly sampled from a population of 8,055 noninstitutionalized residents (2,529 men and 5,526 women) of Krakow city centre, aged 65 and over. Vital status and the date of death were verified concurrently by the use of the national death register. 394 individuals (119 men and 275 women) were lost because of death or migration outside the study area before the interview or due to a refusal to participate. The final baseline sample (n = 2,605) represented 86.9 % of the original sample. From the 2,605 participants, 133 respondents were excluded because no information was available on their vital status at any time during the follow-up and 23 persons were also excluded due to missing data in the duration of sleep. Additionally, 52 individuals had been missing during the follow-up period. They were analyzed as ‘lost-to-follow-up’ (their final status remained unknown, although they contributed to the total person-time of the observation). The final sample available for the analysis did not vary significantly from the source population regarding basic demographic characteristic except age (final sample 72 years, drop outs 71 years, p = 0.001). The mean observation period in the cohort was 10.8 years (SD = 6.6), for a total of 26,415 person-years. A total of 2,093 deaths (765 men and 1,328 women) occurred until the end of 2008 (Fig. 1).

Measures

At baseline, respondents were face-to-face interviewed using a structured questionnaire administered by trained interviewers. The interview included questions regarding demographic characteristics, health status, smoking history and daily activities. Self-reported average sleep duration was ascertained by the question: ‘‘How many hours of sleep do you get usually in a 24-h period?’’ An open-ended question was used, although the majority of respondents reported the time in 1-hour increments. Thus, the categories used in the analysis represent the center for the reporting time covering the period of 30 min around the value (e.g., 7 h ± 30 min). Next, for the descriptive part of the analysis, this variable was classified into 5 categories: 5 or fewer, 6, 7, 8, 9 or more hours of sleep.
The feeling of life-weariness was ascertained by the question expressing—in the native language—the long-lasting psychosocial condition considering several experiences like general life dissatisfaction, long-lasting physical and mental tiredness, loss of energy and general lack of “internal drive” regardless of its background (economical, psychosocial or medical). The wording of the question was: “Do you experience feelings of life-weariness?”, and respondents might answer “definitely no”, “yes, to a certain extent (sometimes)” or “definitely yes”. In the Polish language, the construct is similar in its meaning to prolonged fatigue or tiredness (but not depression). Although both ‘fatigue’ and ‘tiredness’ have their own native Polish names, they do not describe (in their colloquial usage) as much a generalized attitude to life.
Other information was also collected and considered as potential covariates. There were: (1) socio-demographic factors including gender, age (continuous variable, for the analysis of interaction considered as categorical <80 and 80+ years), education (primary or lower, vocational, high school and university degree); (2) the number of years of smoking ascertained by the question: “How many years have you smoked in total?”, where “never smokers” were indicated as 0; (3) the level of functional activity—created as a sum score reflecting participation in the following activities: (a) doing light household chores (Yes = 1; No = 0); (b) daily shopping (Yes = 3; No = 0), (c) doing heavy housework (Yes = 4; No = 0); (d) frequency of leaving home during a day and (e) the floor respondent lives on (from 0 to ground floor, at home all the time to 6.5—fifth floor (at least) and subject left their home at least three times a day due to different reasons including walking. The presented scoring system was prepared to achieve comparability with the ADL and IADL scores (Tobiasz-Adamczyk et al. 2005)—the continuous variable obtained in this way was categorized by tertiles into an ordinal variable with three categories: low, medium and high functional activity; (4) self-rated health status evaluated by the question: “How do you generally evaluate your health status?”—respondents might choose only one from five possible answers, ranging from very good through good, fair, poor to very poor. As the variable has shown relatively high correlation with the total number of diseases (gamma = 0.51; p < 0.001) and was observed to be redundant in the multivariable models it was used only in descriptive part; (5) to obtain a more precise picture of health status, respondents were also asked to indicate chronic diseases they were ever treated for (including asthma, emphysema, hypertension, cardiovascular disease and/or myocardial infarction, other heart disease, diabetes and chronic arthritis). If they answered “yes”, the respondent was considered as having the disease. Diseases were coded dichotomously. Finally, the total number of chronic conditions (categorized as 0, 1, 2, 3+) was considered as a covariate.

Statistical analysis

The relations between self-reported average sleep duration and nominal variables were analyzed using the χ 2 test. Interval scale variables were tested for normal distribution by the Shapiro–Wilk test. When analyses failed to show normal distributions the Kruskal–Wallis test was used to test for significance.
The role of sleep duration (continuous), as well as gender, age (continuous), level of education (primary or lower, vocational, high school, university), functional activity (low, medium, high), total number of chronic diseases (0, 1 or 2, 3+), and number of years of smoking were assessed by Cox proportional hazard regression models. Firstly, univariate models were investigated. Next, the fully adjusted model was analyzed. Subsequently, the significance level for interaction between sleep duration and other covariates was tested. As published results suggest differences in the effect of sleep in mortality among younger (<80 years) and older (80+ years) (Qiu et al. 2011) the interaction term for age was investigated after such categorization. To verify a U-shaped relationship between sleep duration and mortality, a quadratic term of sleep duration was also added. Additionally, to limit the influence of sleep duration due to preexisting illness Cox regression models were performed after exclusion of subjects if deaths occurred within 2 years after entry. All statistical analyses were performed with IBM SPSS Statistics 21 for Windows.

Results

Demographic and social as well as health characteristics of the baseline sample are presented in Table 1. The average age of men and women was nearly the same (72.0 (SD = 5.8), 72.5 (SD = 5.7), respectively). The average self-reported time of sleep was 7.6 (SD = 1.4) hours per day. A higher percentage of females was observed among those with short sleep duration (≤5 or 6 h/day). People who reported extreme sleep duration (≤5 or ≥9 h/day) compared with those who slept between 6 and 8 hours were slightly older, had a lower level of education and had worse functional activity, more frequently reported three or more chronic conditions and poorer self-rated health. Those who slept fewer hours more often reported the presence of feelings of life-weariness. A statistically significant difference was also found between sleep duration and number of years of smoking (see Table 1).
Table 1
Characteristics of population during the baseline study 1980–1987
 
Categories of sleep duration
p
≤5
6
7
8
≥9
N = 110
N = 540
N = 184
N = 1,310
N = 305
Age (years)a
73.3 ± 6.2
72.0 ± 6.0
72.1 ± 6.0
72.3 ± 5.6
73.6 ± 5.9
0.007b
Females N(%)
79 (71.8)
376 (69.6)
105 (57.1)
835 (63.7)
198 (64.9)
df = 4; p = 0.010
Level of education N (%)
      
 Primary or lower
52 (47.3)
195 (36.2)
53 (28.8)
516 (39.4)
145 (47.5)
df = 12; p < 0.001
 Vocational
12 (10.9)
54 (10.0)
18 (9.8)
147 (11.2)
45 (14.8)
 
 High school
26 (23.6)
197 (36.5)
57 (31.0)
419 (32.0)
79 (25.9)
 
 University
20 (18.2)
93 (17.3)
56 (30.4)
227 (17.3)
36 (11.8)
 
Feelings of life-weariness N (%)
      
 Definitely no
32 (29.1)
131 (24.3)
126 (68.5)
441 (33.8)
184 (60.7)
df = 8; p < 0.001
 Sometimes
71 (64.5)
372 (69.1)
47 (25.5)
828 (63.5)
104 (34.3)
 
 Definitely yes
7 (6.4)
35 (6.5)
11 (6.0)
35 (2.7)
15 (5.0)
 
Functional activity N (%)
      
 Low
44 (28.4)
201 (17.1)
50 (23.7)
470 (15.6)
102 (32.7)
df = 8; p < 0.001
 Medium
26 (36.7)
200 (51.8)
32 (23.2)
426 (50.7)
52 (29.9)
 
 High
39 (34.9)
136 (31.1)
95 (53.1)
387 (33.7)
140 (37.4)
 
Number of chronic diseases N (%)
      
 0
10 (9.6)
59 (11.0)
22 (12.4)
162 (12.5)
26 (8.7)
df = 12; p < 0.001
 1e
23 (22.1)
124 (23.2)
51 (28.7)
355 (27.3)
44 (14.7)
 
 2e
21 (20.2)
177(33.1)
32 (18.0)
404 (31.1)
69 (23.0)
 
 3 and more
50 (48.1)
174 (32.6)
73 (41.0)
379 (29.2)
161 (53.7)
 
Self-reported health status N (%)
      
 Very good
1 (0.9)
14 (2.6)
14 (7.6)
37 (2.8)
10 (3.3)
df = 16; p < 0.001f
 Good
75 (68.2)
466 (86.5)
104 (56.5)
1,076 (82.5)
119 (39.0)
 
 Fair
19 (17.3)
47 (8.7)
51 (27.7)
145 (11.1)
119 (39.0)
 
 Poor
9 (8.2)
10 (1.9)
10 (5.4)
38 (2.9)
44 (14.4)
 
 Very poor
6 (5.5)
2 (0.4)
5 (2.7)
9 (0.7)
13 (4.3)
 
Number of years of smokinga
28.2 ± 12.3
28.5 ± 11.1
34.2 ± 13.5
29.0 ± 11.0
33.2 ± 13.4
p < 0.001d
aContinuous variable—data are presented as mean ± SD
bKruskal–Wallis, post hoc analysis, significance observed only between: 6 versus ≥9 h/day (p = 0.003); 8 versus ≥9 h/day (p = 0.030)
cKruskal–Wallis, post hoc analysis, significance observed only between: 8 versus ≥9 h/day (p < 0.001); 8 versus 7 h/day (p < 0.001); 6 versus ≥9 h/day (p < 0.001); 6 versus 7 h/day (p < 0.001); ≤5 versus ≥9 h/day (p = 0.008); ≤5 versus 7 h/day (p = 0.002)
dKruskal–Wallis, post hoc analysis: ≤5 versus ≥9 h/day (p = 0.004), ≤5 versus 7 h/day (p < 0.001); 6 versus ≥9 h/day (p < 0.001); 6 versus 7 h/day (p < 0.001); 8 versus ≥9 h/day (p < 0.001); 8 versus 7 h/day (p < 0.001)
eFor the further analyzes due to smaller sample sizes in some subgroups these categories were combined
fFisher exact test was used
Cox regression analysis revealed a statistically significant increase in the risk of death associated with an increase in sleep duration (HR = 1.04). A lower risk of death was found for women (HR = 0.68) and for respondents with a university degree (HR = 0.78). In contrast, older age (HR = 1.08) and an increase in the number of years of smoking (HR = 1.008) increased the risk. Considering life-weariness, individuals reporting no feelings of life-weariness had about 10 % decreased risk of death as compared to the group reporting low level of life-weariness. Older people reported high functional activity had a 16–17 % decreased risk of death in comparison with those who reported low functional activity. Having more than three chronic diseases was associated with an about 35 % higher risk of death (see Table 2, Model 2).
Table 2
Risk (Hazards Ratios, HRs) of dying over the 22-year of follow-up across different characteristics
 
Model 1
Model 2
Model 3
HR (95 % CI)
p
HR (95 % CI)
p
HR (95 % CI)
p
Sleep duration (hours)
1.06 (1.03–1.10)
<0.001
1.04 (1.01–1.07)
0.024
1.04 (1.003–1.075)
0.035
Gender (females vs. males)
0.73 (0.67–0.81)
<0.001
0.68 (0.61–0.75)
<0.001
0.71 (0.64–0.79)
<0.001
Age (years)
1.08 (1.07–1.09)
<0.001
1.08 (1.07–1.09)
<0.001
1.08 (1.07–1.09)
<0.001
Level of education: primary or lower
1
 
1
 
1
 
Vocational
1.08 (0.93–1.24)
0.324
1.05 (0.91–1.22)
0.491
1.05 (0.86–1.19)
0.883
High school
0.91 (0.83–1.01)
0.082
0.95 (0.85–1.06)
0.340
0.96 (0.86–1.08)
0.516
University
0.87 (0.77–0.99)
0.032
0.78 (0.68–0.89)
<0.001
0.77 (0.66–0.89)
<0.001
No experience of life-weariness
1
 
1
 
1
 
Low level of life-weariness
1.13 (1.03–1.24)
0.008
1.11 (1.01–1.23)
0.036
1.10 (0.99–1.22)
0.073
High level of life-weariness
1.12 (0.90–1.40)
0.298
1.20 (0.95–1.51)
0.202
1.16 (0.91–1.48)
0.227
Low functional activity
1
 
1
 
1
 
Medium
0.90 (0.81–1.00)
0.042
1.01 (0.91–1.13)
0.846
1.01 (0.90–1.12)
0.962
High
0.71 (0.64–0.79)
<0.001
0.84 (0.75–0.94)
0.002
0.83 (0.74–0.94)
0.002
Number of chronic diseases: 0
1
 
1
 
1
 
1–2
1.13 (0.97–1.32)
0.126
1.08 (0.93–1.25)
0.321
1.07 (0.92–1.25)
0.387
3 and more
1.36 (1.17–1.58)
<0.001
1.37 (1.18–1.60)
<0.001
1.34 (1.14–1.57)
<0.001
Number of years of smoking
1.007 (1.005–1.010)
<0.001
1.008 (1.005–1.010)
<0.001
1.007 (1.004–1.010)
<0.001
Model 1—unadjusted models
Model 2—adjusted for every variable presented in the table
Model 3—adjusted for every variable in the table. Analysis performed after exclusion of subjects if deaths occurred within 2 years after entry
Next, gender, age, level of education, number of years of smoking, life-weariness, functional activity and total number of chronic diseases were verified as potential effect modifiers for the relationship between sleep duration and mortality (Table 3). An interaction term was observed to be significant between age and sleep duration, life-weariness and sleep duration (between group with no experience of life-weariness and high level of life-weariness) suggesting that the effect of sleep duration depends on the level of life-weariness. Also, significant interaction effect was found between functional activity and sleep duration. Analysis performed after exclusion of subjects who died within 2 years after entry supported the results and, additionally, revealed significant interaction effect between sleep duration and number of chronic diseases (see Table 3).
Table 3
Hazards ratios for death associated with the interaction between sleep duration and potential effect modifiers: feelings of life-weariness, functional activity, total number of chronic diseases and age groups
Sleep duration (hours) interaction with:
Model 1
Model 2
HR (95 % CI)
p for interaction
HR (95 % CI)
p for interaction
Age (80 and over vs. 65–79 years)a
0.89 (0.81–0.98)
0.022
0.86 (0.77–0.96)
0.006
No experience of life-wearinessb
1
 
1
 
Low level of life-weariness
0.97 (0.91–1.04)
0.355
0.96 (0.89–1.03)
0.224
High level of life-weariness
0.83 (0.69–0.99)
0.040
0.79 (0.65–0.96)
0.016
Low functional activityc
1
 
1
 
Medium functional activity
1.11 (1.03–1.20)
0.010
1.12 (1.02–1.21)
0.012
High functional activity
1.04 (0.96–1.12)
0.336
1.06 (0.98–1.15)
0.162
Without chronic conditionsd
1
 
1
 
One-two chronic condition
0.91 (0.81–1.01)
0.086
0.89 (0.79–0.998)
0.045
Three or more chronic conditions
0.97 (0.87–1.08)
0.564
0.94 (0.84–1.05)
0.284
aAdjusted for gender, level of education, functional activity, life-weariness, number of chronic diseases and number of years of smoking
bAdjusted for gender, age, level of education, functional activity, number of chronic diseases and number of years of smoking
cAdjusted for gender, age, level of education, life-weariness, number of chronic diseases and number of years of smoking
dAdjusted for gender, age, level of education, functional activity, life-weariness and number of years of smoking
Model 2 analysis performed after exclusion of subjects if deaths occurred within 2 years after entry
As the next step, we investigated the shape of mortality risk across different levels of life-weariness, functional activity, number of chronic diseases and age groups. As the risk estimates suggested a U-shaped association, two methods of data analysis using sleep duration as a continuous variable with: (1) linear (sleep duration) and (2) quadratic term (sleep duration squared) were performed.
The analysis showed a significant linear relationship for respondents aged from 65 to 79 at baseline and a U-shaped one for the oldest olds (80+). The expected U-shaped mortality risk associated with sleep duration was observed among individuals with high level of life-weariness, whereas among those who reported no experience of life-weariness the relation between sleep duration and mortality was linear. Similarly, a U-shaped relationship between sleep duration and mortality was shown for older people with high functional activity, while among those with medium functional activity only the linear component was significant. Analyses performed in subgroups considering the number of chronic diseases showed a linear relationship between sleep duration and mortality among people who did not reported any chronic condition as well as among these who reported three or more chronic diseases, suggesting that longer sleep duration was associated with increased mortality. Quadratic terms were insignificant for all analyzed subgroups of chronic diseases. The results of the aforementioned models for the whole sample as well as these performed after exclusion of respondents who died within 2 years after entry were similar, whereas for ages 80+ the omission of the first 2 years of follow-up results in nonsignificant linear and quadratic terms (see Table 4).
Table 4
Hazards Ratios for death associated with sleep duration by age, life-weariness, functional activity and number of chronic diseases (linear and quadratic models)
  
Agea
Life-wearinessb
Functional activityc
Number of chronic diseasesd
65–79 years
80 and over
No experience
Low level
High level
Low
Medium
High
None
1–2
3 or more
Model 1a—linear model
Sleep duration (hours) (Linear component)
HR
95 % CI
1.06
1.03–1.11
0.98
0.89–1.07
1.06
1.01–1.12
1.04
0.99–1.08
0.85
0.71–1.03
1.00
0.95–1.05
1.10
1.04–1.18
1.03
0.97–1.10
1.12
1.004–1.24
0.97
0.95–1.05
1.06
1.01–1.11
p
0.001
0.669
0.023
0.117
0.099
0.934
0.002
0.277
0.042
0.871
0.013
Model 1b—quadratic model
Sleep duration (hours) (Linear component)
HR
95 % CI
0.94
0.77–1.15
0.71
0.51–0.99
1.03
0.75–1.41
0.95
0.77–1.18
0.24
0.09–0.68
0.94
0.74–1.20
1.28
0.85–1.93
0.71
0.52–0.97
1.12
0.61–2.06
0.86
0.62–1.20
1.05
0.85–1.31
p
0.552
0.045
0.850
0.666
0.007
0.601
0.248
0.030
0.720
0.376
0.640
Sleep duration (hours) (Quadratic component)
HR
95 % CI
1.01
0.995–1.02
1.02
1.001–1.39
1.00
0.98–1.02
1.01
0.99–1.02
1.09
1.02–1.16
1.00
0.99–1.02
0.99
0.96–1.02
1.02
1.01–1.05
1.00
0.96–1.04
1.01
0.99–1.03
1.00
0.99–1.01
p
0.222
0.042
0.844
0.442
0.014
0.604
0.490
0.015
0.991
0.384
0.947
Model 2a—linear model
Sleep duration (hours) (Linear component)
HR
95 % CI
1.07
1.03–1.11
0.95
0.86–1.06
1.07
1.01–1.13
1.03
0.99–1.08
0.83
0.67–1.02
0.99
0.94–1.05
1.10
1.03–1.18
1.05
0.98–1.11
1.14
1.02–1.27
1.00
0.95–1.50
1.06
1.003–1.11
p
0.001
0.359
0.015
0.184
0.070
0.755
0.006
0.165
0.018
0.973
0.038
Model 2b—quadratic model
Sleep duration (hours) (Linear component)
HR
95 % CI
0.92
0.75–1.14
0.76
0.37–1.59
1.00
0.72–1.38
1.06
0.77–1.46
0.16
0.06–0.47
1.00
0.77–1.58
1.20
0.79–1.84
0.68
0.49–0.94
1.21
0.63–2.34
0.85
0.60–1.20
1.06
0.78–1.44
p
0.435
0.467
0.987
0.707
0.001
0.598
0.392
0.020
0.573
0.362
0.720
Sleep duration (hours) (Quadratic component)
HR
95 % CI
1.01
0.996–1.02
1.02
0.97–1.06
1.00
0.99–1.03
1.00
0.98–1.02
1.12
1.04–1.20
0.99
0.97–1.02
0.99
0.97–1.02
1.03
1.03–1.01
1.00
0.96–1.04
1.01
0.99–1.04
1.00
0.98–1.02
p
0.159
0.546
0.661
0.854
0.002
0.561
0.669
0.008
0.860
0.359
0.976
aModels adjusted for gender, level of education, functional activity, life-weariness, number of chronic diseases and number of years of smoking; bmodels adjusted for gender, age, level of education, functional activity, number of chronic diseases and number of years of smoking; cmodels adjusted for gender, age, level of education, life-weariness, number of chronic diseases and number of years of smoking; dmodels adjusted for gender, age, level of education, functional activity, life-weariness and number of years of smoking; Model 2a and 2b analysis performed after exclusion of subjects if deaths occurred within 2 years after entry

Discussion

Our study showed an increase in the risk of dying associated with the duration of sleep, age, number of smoking years, number of chronic diseases, and a decrease in the risk among females, individuals with university level of education, and those with high functional activity, also after mutual statistical adjustment. Further analyses showed the presence of interaction between sleep duration and categories of age, experience of life-weariness, functional activity, and total number of chronic diseases. Finally, we observed differences in the shape of the relationship between sleep duration and mortality depending on the investigated characteristics of participants including different levels of functional activity and life-weariness. A linear relationship was suggested among elders with no experience of life-weariness, whereas in those with high level of life-weariness a U-shaped relationship was observed.
The linear relationship is in line with existing concepts explaining it by increased sleep fragmentation, feeling of lethargy observed in long sleepers or lack of physiologic challenge (Grandner and Drummond 2007). The point requiring elucidation is why we observed the difference in shapes for different levels of life-weariness. We propose that the increase in the risk of death among people experiencing high level of life-weariness is the effect of prolonged stress present in this group. Prolonged stress is one of well known physiological factors responsible for continuous activation of sympathetic nervous system and consequently for the development of some diseases, especially cardiovascular and subsequent increased risk of dying. If people are lacking coping strategies dealing with stress, they might have a short duration of sleep and this might be responsible for the U-shaped association observed in the ‘high level of life-weariness’ group. One should notice that at the time of data collection high level of social stress linked to the lack of financial and material resources, and low income, with limited access to goods was observed in Poland. Thus, the social environment of individuals under study was different that in any other study on sleep published to date. Additionally, some other social stressors, such as lack of social security, might contribute to the experience of life-weariness. These stressors might contribute to a very high risk of death among individuals with strong feelings of life-weariness and a very short sleep duration (sleep ≤5 h/day, HR = 9.04, 95 % CI = (2.55–32.12)).
Another modifying variable recognized in our study was functional activity. In the ‘medium functional activity’ group the sleep duration—mortality association was linear and in the ‘high functional activity’ a U-shape was observed. We observed no association between sleep duration and mortality among individuals in the ‘low functional activity’ group—this suggests the presence of some other unknown confounding variables (e.g., the presence of chronic condition as a determinant of low functional activity may confound the relationship and its very strong effect outweighs the role of sleep duration). It is not clear what are the underlying causes for the differences in shapes. One possible explanation is the aforementioned role of unmeasured stress. People who were still highly active (in our study we have measured a real performance, not an ability) had their own plans, aims to reach or things they had to do which might be the source of stress. Sleep deprivation itself is also a stressor and in some subgroups its consequences may be more clearly observed.
The sleep research literature also discusses the possibility of systematic response bias, as individuals with good health are more likely to report ‘normative’ values (meaning 7–8 hours of sleep). We believe that this type of bias is less likely in our study, as we observed the U-shaped association in the ‘high functional activity’ group. These are people who are more likely to have better general health. If the bias was present, we would observe no increase in the risk among people with lower duration of sleep. These people would report a higher than the real time of sleep duration and consequently the ‘short sleeper’ group would change in ‘the normal sleeper’ group resulting in a decrease in the risk among ‘short sleepers’ and in an increase in the risk of death in ‘normal sleepers’—but this was not observed.
Finally, our study has shown age as another possible effect modifier. We decided to verify the effect of a threshold of 80 years. This decision was driven by the results observed in published literature (Stamatakis et al. 2007). Individuals at age 80 and over presented a U-shaped association. This was not statistically significant after exclusion of subjects if death occurred within 2 years after entry. This does not necessarily contradict our results, as we argue that the significance was lost due to relatively short life expectancy in this group and a limitation of the sample size.
Our study has also some limitations: first, sleep duration might vary over the years of follow-up. As it was observed in other studies, however, for the majority of adults the time of habitual sleep remained unchanged, and a change in duration of >1 hour was observed in only 7 % of women and 4 % of men (Ferrie et al. 2011). Besides, feelings of life-weariness change with age, with the experiences of life events or with the change of economical or social status of a country (Ray et al. 1995). Functional activity changes too. In our study, data regarding variability over the follow-up were not available; subsequently, some unknown changes in time might distort our results. Second, all variables involved in the analysis were based on self-reported information; thus, we evaluate the subjective duration of sleep. There is evidence that subjective, self-reported sleep duration varies from sleep duration that is objective physiologically recorded (Lauderdale et al. 2008). Third, in our study we were not able to assess directly the validity and reliability of the life-weariness construct. We used the concept of “the feelings of life-weariness” which is very close to vital exhaustion characterized by unusual fatigue, loss of energy, increased irritability, and feelings of demoralization, assessed by the Maastricht Interview for Vital Exhaustion (Meesters and Appels 1996). There are also more related concepts like “feeling of tiredness” or “fatigue” used in the literature. To avoid misinterpretation we have decided to use the term “life-weariness”, which describes in the best way the expression used in our study and is very close but not the same as vital exhaustion. The use of one question only may also rise some concerns. Some other studies have shown, however, that single simple questions assessing general fatigue have very high test–retest reliability with interclass correlation of at least 0.9 (Hardy and Studenski 2008). Fourth, feelings of life-weariness are correlated with depression and both have much in common. We were unable to distinguish depression from feelings of life-weariness and to exclude the confounding effect of depression, depression-like disorders or low mood related to poor psychological and social well-being. Fifth, in our study we were also unable to remove the potential confounding effect of quality of sleep, taking sleep pills, or having a nap. Sixth, it is still open for discussion what the appropriate sleep duration is for older adults in Central Europe. We decided to use 7-hour sleep time as a reference period in our investigation. The same average sleep length of about 7 hours was observed in the investigation of community-dwelling elderly sample representative of the general population of seven European countries (Ohayon 2004), in the US Nurses’ Health Study (Burazeri et al. 2003) and in the NHANES (Gangwisch et al. 2008).
Although the presented study has some limitations, it provides a valuable contribution to the existing evidence. First, the study cohort consisted of a relatively large sample size of older adults living in the urban area, and it is the first such study performed in Central Europe considering people living in under specific social circumstances. In the analysis, we were able to control for most important covariates like gender, age, level of education, functional activity, and the number of chronic illnesses, as well as the number of years of smoking, which might confound an existing relationship. The presented results are also strengthened by a long follow-up and the fact that to make the observed relationships more likely, we excluded deaths which appeared in a short time after the beginning of the study, as they might be a result of some other underlying or subclinical conditions present at the time of recruitment. And finally, we provided evidence regarding possible effect modification by some important covariates, which is novel to our knowledge.
In summary, our study showed a relationship between the duration of reported habitual sleep and all-cause mortality among community-dwelling older individuals providing evidence regarding some parts of Central Europe. Modifying effects by the level of life-weariness, the level of functional activity, number of chronic conditions and age showed differences in the nature (either linear or U-shaped) of the association across these characteristics. Results of our study support available evidence showing the relationship between sleep duration and mortality among older adults and suggest that any public health intervention in this area should consider also other coexisting modifiable psychosocial and functional determinants.
Open AccessThis article is distributed under the terms of the Creative Commons Attribution License which permits any use, distribution, and reproduction in any medium, provided the original author(s) and the source are credited.

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Literatur
Zurück zum Zitat Burazeri G, Gofin J, Kark JD (2003) Over 8 hours of sleep–marker of increased mortality in mediterranean population: follow-up population study. Croat Med J 44(2):193–198 Burazeri G, Gofin J, Kark JD (2003) Over 8 hours of sleep–marker of increased mortality in mediterranean population: follow-up population study. Croat Med J 44(2):193–198
Zurück zum Zitat Cappuccio FP, D’Elia L, Strazzullo P, Strazzullo P, Miller MA (2010) Sleep duration and all-cause mortality: a systematic review and meta-analysis of prospective studies. Sleep 33(5):585–592 Cappuccio FP, D’Elia L, Strazzullo P, Strazzullo P, Miller MA (2010) Sleep duration and all-cause mortality: a systematic review and meta-analysis of prospective studies. Sleep 33(5):585–592
Zurück zum Zitat Castro-Costa É, Dewey ME, Ferri CP, Uchoa E, Firmo JO, Rocha FL et al (2011) Association between sleep duration and all-cause mortality in old age: 9year follow-up of the Bambuí Cohort Study Brazil. J Sleep Res 20(2):303–310CrossRef Castro-Costa É, Dewey ME, Ferri CP, Uchoa E, Firmo JO, Rocha FL et al (2011) Association between sleep duration and all-cause mortality in old age: 9year follow-up of the Bambuí Cohort Study Brazil. J Sleep Res 20(2):303–310CrossRef
Zurück zum Zitat Chien KL, Chen PC, Hsu HC, Su TC, Sung FC, Chen MF, Lee YT (2010) Habitual sleep duration and insomnia and the risk of cardiovascular events and all-cause death: report from a community-based cohort. Sleep 33(2):177 Chien KL, Chen PC, Hsu HC, Su TC, Sung FC, Chen MF, Lee YT (2010) Habitual sleep duration and insomnia and the risk of cardiovascular events and all-cause death: report from a community-based cohort. Sleep 33(2):177
Zurück zum Zitat Doghramji K (2006) The epidemiology and diagnosis of insomnia. Am J Manag Care 12(8 Suppl):S214–S220 Doghramji K (2006) The epidemiology and diagnosis of insomnia. Am J Manag Care 12(8 Suppl):S214–S220
Zurück zum Zitat Ekmann A, Petersen I, Manty M, Christensen K, Avlund K (2013) Fatigue, general health, and ischemic heart disease in older adults. J Gerontol A Biol Sci Med Sci 68(3):279–285CrossRef Ekmann A, Petersen I, Manty M, Christensen K, Avlund K (2013) Fatigue, general health, and ischemic heart disease in older adults. J Gerontol A Biol Sci Med Sci 68(3):279–285CrossRef
Zurück zum Zitat Elwood P, Hack M, Pickering J, Hughes J, Gallacher J (2006) disturbance, stroke, and heart disease events: evidence from the caerphilly cohort. J Epidemiol Community Health 60(1):69–73CrossRef Elwood P, Hack M, Pickering J, Hughes J, Gallacher J (2006) disturbance, stroke, and heart disease events: evidence from the caerphilly cohort. J Epidemiol Community Health 60(1):69–73CrossRef
Zurück zum Zitat Faubel R, Lopez-Garcia E, Guallar-Castillon P, Balboa-Castillo T, Gutierrez-Fisac JL, Banegas JR et al (2009) Sleep duration and health-related quality of life among older adults: a population-based cohort in Spain. Sleep 32(8):1059–1068 Faubel R, Lopez-Garcia E, Guallar-Castillon P, Balboa-Castillo T, Gutierrez-Fisac JL, Banegas JR et al (2009) Sleep duration and health-related quality of life among older adults: a population-based cohort in Spain. Sleep 32(8):1059–1068
Zurück zum Zitat Ferrie JE, Shipley MJ, Cappuccio FP, Brunner E, Miller MA, Kumari M et al (2007) A prospective study of change in sleep duration: associations with mortality in the whitehall II cohort. Sleep 30(12):1659–1666 Ferrie JE, Shipley MJ, Cappuccio FP, Brunner E, Miller MA, Kumari M et al (2007) A prospective study of change in sleep duration: associations with mortality in the whitehall II cohort. Sleep 30(12):1659–1666
Zurück zum Zitat Ferrie JE, Shipley MJ, Akbaraly TN, Marmot MG, Kivimäki M, Singh-Manoux A (2011) Change in sleep duration and cognitive function: findings from the Whitehall II Study. Sleep 34(5):565–573 Ferrie JE, Shipley MJ, Akbaraly TN, Marmot MG, Kivimäki M, Singh-Manoux A (2011) Change in sleep duration and cognitive function: findings from the Whitehall II Study. Sleep 34(5):565–573
Zurück zum Zitat Gale C, Martyn C (1998) Larks and owls and health, wealth, and wisdom. BMJ 317(7174):1675–1677CrossRef Gale C, Martyn C (1998) Larks and owls and health, wealth, and wisdom. BMJ 317(7174):1675–1677CrossRef
Zurück zum Zitat Gallicchio L, Kalesan B (2009) Sleep duration and mortality: a systematic review and meta-analysis. J Sleep Res 18(2):148–158CrossRef Gallicchio L, Kalesan B (2009) Sleep duration and mortality: a systematic review and meta-analysis. J Sleep Res 18(2):148–158CrossRef
Zurück zum Zitat Gangwisch JE, Heymsfield SB, Boden-Albala B, Buijs RM, Kreier F, Opler MG et al (2008) Sleep duration associated with mortality in elderly, but not middle-aged, adults in a large US sample. Sleep 31(8):1087–1096 Gangwisch JE, Heymsfield SB, Boden-Albala B, Buijs RM, Kreier F, Opler MG et al (2008) Sleep duration associated with mortality in elderly, but not middle-aged, adults in a large US sample. Sleep 31(8):1087–1096
Zurück zum Zitat Garde AH, Hansen ÅM, Holtermann A, Gyntelberg F, Suadicani P (2013) Sleep duration and ischemic heart disease and all-cause mortality: prospective cohort study on effects of tranquilizers/hypnotics and perceived stress. Heart Dis (IHD) 1(4):15–17 Garde AH, Hansen ÅM, Holtermann A, Gyntelberg F, Suadicani P (2013) Sleep duration and ischemic heart disease and all-cause mortality: prospective cohort study on effects of tranquilizers/hypnotics and perceived stress. Heart Dis (IHD) 1(4):15–17
Zurück zum Zitat Goldman SE, Stone KL, Ancoli-Israel S, Blackwell T, Ewing SK, Boudreau R et al (2007) Poor sleep is associated with poorer physical performance and greater functional limitations in older women. Sleep 30(10):1317–1324 Goldman SE, Stone KL, Ancoli-Israel S, Blackwell T, Ewing SK, Boudreau R et al (2007) Poor sleep is associated with poorer physical performance and greater functional limitations in older women. Sleep 30(10):1317–1324
Zurück zum Zitat Gottlieb DJ, Redline S, Nieto FJ, Baldwin CM, Newman AB, Resnick HE et al (2006) Association of usual sleep duration with hypertension: the sleep heart health study. Sleep 29(8):1009–1014 Gottlieb DJ, Redline S, Nieto FJ, Baldwin CM, Newman AB, Resnick HE et al (2006) Association of usual sleep duration with hypertension: the sleep heart health study. Sleep 29(8):1009–1014
Zurück zum Zitat Grandner MA, Drummond SP (2007) Who are the long sleepers? Towards an understanding of the mortality relationship. Sleep Med Rev 11:341–360CrossRef Grandner MA, Drummond SP (2007) Who are the long sleepers? Towards an understanding of the mortality relationship. Sleep Med Rev 11:341–360CrossRef
Zurück zum Zitat Hardy SE, Studenski SA (2008) Fatigue predicts mortality in older adults. J Am Geriatr Soc 48:426–430 Hardy SE, Studenski SA (2008) Fatigue predicts mortality in older adults. J Am Geriatr Soc 48:426–430
Zurück zum Zitat Ikehara S, Iso H, Date C, Kikuchi S, Watanabe Y, Wada Y et al (2009) Association of sleep duration with mortality from cardiovascular disease and other causes for Japanese men and women: the JACC study. Sleep 32(3):295–301 Ikehara S, Iso H, Date C, Kikuchi S, Watanabe Y, Wada Y et al (2009) Association of sleep duration with mortality from cardiovascular disease and other causes for Japanese men and women: the JACC study. Sleep 32(3):295–301
Zurück zum Zitat Jedrychowski W (1990) Effects of smoking and longevity of parents on lung function in the apparently healthy elderly. Arch Gerontol Geriatr 10(1):19–26CrossRef Jedrychowski W (1990) Effects of smoking and longevity of parents on lung function in the apparently healthy elderly. Arch Gerontol Geriatr 10(1):19–26CrossRef
Zurück zum Zitat Kaplan GA, Seeman TE, Cohen RD, Knudsen LP, Guralnik J (1987) Mortality among the elderly in the alameda county study: behavioral and demographic risk factors. Am J Public Health 77(3):307–312CrossRef Kaplan GA, Seeman TE, Cohen RD, Knudsen LP, Guralnik J (1987) Mortality among the elderly in the alameda county study: behavioral and demographic risk factors. Am J Public Health 77(3):307–312CrossRef
Zurück zum Zitat Kojima M, Wakai K, Kawamura T, Tamakoshi A, Aoki R, Lin Y et al (2000) Sleep patterns and total mortality: a 12-year follow-up study in japan. J Epidemiol 10(2):87–93CrossRef Kojima M, Wakai K, Kawamura T, Tamakoshi A, Aoki R, Lin Y et al (2000) Sleep patterns and total mortality: a 12-year follow-up study in japan. J Epidemiol 10(2):87–93CrossRef
Zurück zum Zitat Kripke DF, Garfinkel L, Wingard DL, Klauber MR, Marler MR (2002) Mortality associated with sleep duration and insomnia. Arch Gen Psychiatry 59(2):131–136CrossRef Kripke DF, Garfinkel L, Wingard DL, Klauber MR, Marler MR (2002) Mortality associated with sleep duration and insomnia. Arch Gen Psychiatry 59(2):131–136CrossRef
Zurück zum Zitat Kurina LM, McClintock MK, Chen JH, Waite LJ, Thisted RA, Lauderdale DS (2013) Sleep duration and all-cause mortality: a critical review of measurement and associations. Ann Epidemiol 23:361–370CrossRef Kurina LM, McClintock MK, Chen JH, Waite LJ, Thisted RA, Lauderdale DS (2013) Sleep duration and all-cause mortality: a critical review of measurement and associations. Ann Epidemiol 23:361–370CrossRef
Zurück zum Zitat Lan TY, Lan TH, Wen CP, Lin YH, Chuang YL (2007) Nighttime sleep, chinese afternoon nap, and mortality in the elderly. Sleep 30(9):1105–1110 Lan TY, Lan TH, Wen CP, Lin YH, Chuang YL (2007) Nighttime sleep, chinese afternoon nap, and mortality in the elderly. Sleep 30(9):1105–1110
Zurück zum Zitat Lauderdale DS, Knutson KL, Yan LL, Kiang L, Rathouz PJ (2008) Self-reported and measured sleep duration. How similar are they? Epidemiology 19(6):838–845CrossRef Lauderdale DS, Knutson KL, Yan LL, Kiang L, Rathouz PJ (2008) Self-reported and measured sleep duration. How similar are they? Epidemiology 19(6):838–845CrossRef
Zurück zum Zitat Lewis G, Wessely S (1992) The epidemiology of fatigue: more questions than answers. J Epidemiol Community Health 46:92–97CrossRef Lewis G, Wessely S (1992) The epidemiology of fatigue: more questions than answers. J Epidemiol Community Health 46:92–97CrossRef
Zurück zum Zitat Magee CA, Caputi P, Iverson DC (2011) Relationships between self-rated health, quality of life and sleep duration in middle aged and elderly Australians. Sleep Med 12(4):346–350CrossRef Magee CA, Caputi P, Iverson DC (2011) Relationships between self-rated health, quality of life and sleep duration in middle aged and elderly Australians. Sleep Med 12(4):346–350CrossRef
Zurück zum Zitat Magee CA, Holliday EG, Attia J, Kritharides L, Banks E (2013) Investigation of the relationship between sleep duration, all-cause mortality, and preexisting disease. Sleep Med 14:591–596CrossRef Magee CA, Holliday EG, Attia J, Kritharides L, Banks E (2013) Investigation of the relationship between sleep duration, all-cause mortality, and preexisting disease. Sleep Med 14:591–596CrossRef
Zurück zum Zitat Meesters C, Appels A (1996) An interview to measure vital exhaustion. I. development and comparison with the maastricht questionnaire. Psychol Health 11(4):557–571CrossRef Meesters C, Appels A (1996) An interview to measure vital exhaustion. I. development and comparison with the maastricht questionnaire. Psychol Health 11(4):557–571CrossRef
Zurück zum Zitat Mesas AE (2010) Sleep duration and mortality according to health status in older adults. J Am Geriatr Soc 58:1870–1877CrossRef Mesas AE (2010) Sleep duration and mortality according to health status in older adults. J Am Geriatr Soc 58:1870–1877CrossRef
Zurück zum Zitat Ohayon MM (2004) Interactions between sleep normative data and sociocultural characteristics in the elderly. J Psychosom Res 56(5):479–486CrossRef Ohayon MM (2004) Interactions between sleep normative data and sociocultural characteristics in the elderly. J Psychosom Res 56(5):479–486CrossRef
Zurück zum Zitat Patel SR, Ayas NT, Malhotra MR, White DP, Schernhammer ES, Speizer FE et al (2004) A prospective study of sleep duration and mortality risk in women. Sleep 27(3):440–444 Patel SR, Ayas NT, Malhotra MR, White DP, Schernhammer ES, Speizer FE et al (2004) A prospective study of sleep duration and mortality risk in women. Sleep 27(3):440–444
Zurück zum Zitat Patel SR, Malhotra A, Gottlieb DJ, White DP, Hu FB (2006) Correlates of long sleep duration. Sleep 29(7):881–889 Patel SR, Malhotra A, Gottlieb DJ, White DP, Hu FB (2006) Correlates of long sleep duration. Sleep 29(7):881–889
Zurück zum Zitat Prescott E, Holst C, Gronbeak M, Schnohr P et al (2003) Vital exhaustion as a risk factor for ischemic heart disease and all-cause mortality in a community sample. A prospective study of 4084 men and 5479 women in the Copenhagen City Heart Study. Int J Epidemiol 32(6):990–997CrossRef Prescott E, Holst C, Gronbeak M, Schnohr P et al (2003) Vital exhaustion as a risk factor for ischemic heart disease and all-cause mortality in a community sample. A prospective study of 4084 men and 5479 women in the Copenhagen City Heart Study. Int J Epidemiol 32(6):990–997CrossRef
Zurück zum Zitat Qiu L, Sautter J, Liu Y, Gu D (2011) Age and gender differences in linkages of sleep with subsequent mortality and health among very old Chinese. Sleep Med 12(10):1008–1017CrossRef Qiu L, Sautter J, Liu Y, Gu D (2011) Age and gender differences in linkages of sleep with subsequent mortality and health among very old Chinese. Sleep Med 12(10):1008–1017CrossRef
Zurück zum Zitat Qureshi AI, Giles WH, Croft JB, Bliwise DL (1997) Habitual sleep patterns and risk for stroke and coronary heart disease: a 10-year follow-up from NHANES I. Neurology 48(4):904–911CrossRef Qureshi AI, Giles WH, Croft JB, Bliwise DL (1997) Habitual sleep patterns and risk for stroke and coronary heart disease: a 10-year follow-up from NHANES I. Neurology 48(4):904–911CrossRef
Zurück zum Zitat Ray C, Jefferies S, Weir WRC (1995) Life-events and the course of chronic fatigue syndrome. Brit J Med Psychol 68(4):323–331CrossRef Ray C, Jefferies S, Weir WRC (1995) Life-events and the course of chronic fatigue syndrome. Brit J Med Psychol 68(4):323–331CrossRef
Zurück zum Zitat Stamatakis KA, Kaplan GA, Roberts RE (2007) Short sleep duration across income, education, and race/ethnic groups: population prevalence and growing disparities during 34 years of follow-up. Ann Epidemiol 17(12):948–955CrossRef Stamatakis KA, Kaplan GA, Roberts RE (2007) Short sleep duration across income, education, and race/ethnic groups: population prevalence and growing disparities during 34 years of follow-up. Ann Epidemiol 17(12):948–955CrossRef
Zurück zum Zitat Tamakoshi A, Ohno Y (2004) Self-reported sleep duration as a predictor of all-cause mortality: results from the JACC study Japan. Sleep 27(1):51–54 Tamakoshi A, Ohno Y (2004) Self-reported sleep duration as a predictor of all-cause mortality: results from the JACC study Japan. Sleep 27(1):51–54
Zurück zum Zitat Tobiasz-Adamczyk B, Brzyski P (2005) Factors determining changes in self-rated health in the Polish community-dwelling elderly. Cent Eur J Public Health 13(3):17–24 Tobiasz-Adamczyk B, Brzyski P (2005) Factors determining changes in self-rated health in the Polish community-dwelling elderly. Cent Eur J Public Health 13(3):17–24
Zurück zum Zitat Tobiasz-Adamczyk B, Brzyski P, Kopacz MS (2008) Health attitudes and behaviour as predictors of self-rated health in relation to mortality patterns (17-year follow-up in a polish elderly population–Cracow study). Cent Eur J Public Health 16(2):47–53 Tobiasz-Adamczyk B, Brzyski P, Kopacz MS (2008) Health attitudes and behaviour as predictors of self-rated health in relation to mortality patterns (17-year follow-up in a polish elderly population–Cracow study). Cent Eur J Public Health 16(2):47–53
Metadaten
Titel
Sleep duration and mortality among older adults in a 22-year follow-up study: an analysis of possible effect modifiers
verfasst von
Katarzyna Zawisza
Beata Tobiasz-Adamczyk
Aleksander Galas
Monika Brzyska
Publikationsdatum
01.06.2015
Verlag
Springer Netherlands
Erschienen in
European Journal of Ageing / Ausgabe 2/2015
Print ISSN: 1613-9372
Elektronische ISSN: 1613-9380
DOI
https://doi.org/10.1007/s10433-014-0318-8

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