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Article

Frequency of Dietary Intake and Physical Activity in Older Adults: A Cross-Sectional Study

1
Faculty of Kinesiology, Horvaćanski zavoj 15, University of Zagreb,10 000 Zagreb, Croatia
2
General Medical Hospital ‘Sveti Duh’, 10 000 Zagreb, Croatia
*
Author to whom correspondence should be addressed.
Nutrients 2018, 10(12), 1960; https://doi.org/10.3390/nu10121960
Submission received: 23 November 2018 / Revised: 9 December 2018 / Accepted: 10 December 2018 / Published: 11 December 2018
(This article belongs to the Special Issue Physical Activity And Diet For Health Optimisation)

Abstract

:
Background: Evidence shows that diet is associated with physical activity. However, there has been a lack of studies addressing it in a population of older adults. Therefore, the main purpose of this study was to explore associations between various frequencies of dietary intake and physical activity in older adults. Methods: In this cross-sectional study, the participants were 810 older adults aged ≥85. Frequency of dietary intake and the level of physical activity were assessed using the Elderly Diet Index score and International Physical Activity questionnaire. Mutual associations were examined using generalized estimating equations with a logistic regression model. Results: ”Optimal” intake of fish and seafood (OR (odds ratio) = 1.40; 95% CI (95 percent confidence interval) 1.01 to 2.00), fruits (OR = 2.10; 95% CI 1.45 to 3.02), legumes (OR = 1.73; 95% CI 1.19 to 2.50), olive oil (OR = 1.83; 95% CI 1.09 to 3.08) and bread (OR = 4.62; 95% CI 3.05 to 6.99) and the total Elderly Diet Index score (OR = 4.99; 95% CI 3.20 to 7.70) were associated with ”sufficient” physical activity. When all dietary components were entered simultaneously into the model, ”optimal” intakes of meat (OR = 1.73; 95% CI 1.10 to 2.71), fish and seafood (OR = 2.26; 95% CI 1.46 to 3.51), cereals (OR = 1.75; 95% CI 1.02 to 3.25), fruits (OR = 1.52; 95% CI 1.02 to 2.26), legumes (OR = 1.48; 95% CI 1.10 to 1.93), and bread (OR = 5.14; 95% CI 3.24 to 8.15) were associated with ”sufficient” physical activity. Conclusions: Our study shows that the total Elderly Diet Index score is the strongest predictor associated with ”sufficient” physical activity in a population of older adults. Thus, policies aiming to improve overall diet in order to achieve higher levels of physical activity are warranted.

1. Introduction

Physical activity is an important determinant of health in older adults [1]. Maintaining good health represents a crucial factor for functional independence due to high nursing costs and premature disability [2]. Despite the health benefits of physical activity [3], older adults are still physically inactive [4,5]. According to the World Health Organization [6], older adults should do ”at least 150 min of moderate-intensity aerobic physical activity throughout the week or do at least 75 min of vigorous-intensity aerobic physical activity throughout the week or an equivalent combination of moderate- and vigorous-intensity activity.” Regular physical activity works beneficially against cardiovascular, metabolic, and mental diseases, as well as overall mortality [2]. However, only 9% of men and 6% of women aged ≥75 in Great Britain meet the recommended levels, and these numbers are declining [7].
A study by Pronk et al. [8] showed that among numerous lifestyle factors associated with developing chronic diseases (hypertension, heart disease, diabetes, depression, stroke, arthritis) and affecting health, physical activity and diet-quality practices (including the consumption of fat, fiber, fruit, and vegetables) represented the most significant predictors that could have an impact on such conditions. Additionally, these two factors often coexist, and changing one of them can potentially lead to changing the other [8]. According to the World Health Organization [6], both inadequate diet and physical inactivity are the main risk factors for developing non-communicable diseases, leading to poor health and death. Specifically, evidence shows that the multi-morbidity (having ≥2 chronic diseases) prevalence rates in older adults range between 55% and 98% [9], pointing out that strategies and policies targeting healthy behaviors are crucial. Recently, great attention has been given to exploring the associations between diet and physical activity. Studies among children and adolescents have shown that more active male individuals have higher intake of vegetables, meat, fish, eggs, and vegetarian products, while higher intake of bread and cereal products are found in females [10,11]. Similar associations have been found in the adult population, where more frequent consumption of fruit and vegetable juices have been associated with moderate- to vigorous-intensity physical activity [12,13]. In older adults, existing literature shows that they consume an inadequate amount of fruits and vegetables, and in general consume less nutrients which can prevent the development of chronic diseases [14]. A handful of existing studies have presented conflicting results. Most recently, del Mar Bibiloni et al. [15] conducted a study among Spanish older adults and showed no significant associations between the adherence to the Mediterranean diet and physical activity. Another two studies showed that higher adherence to the Mediterranean diet was associated with lower risk of low physical activity [16,17]. However, all three studies used the adherence to the Mediterranean diet as a proxy of dietary patterns.
According to available literature, studies exploring the association between diet and physical activity in older adults are lacking. Since both behaviors are associated with each other and may prevent the development of chronic diseases and promote successful aging, it is necessary to explore whether a ”healthy” diet leads to recommended levels of physical activity. Therefore, the main purpose of the present study was to explore the association between various frequencies of dietary intake and physical activity in older adults.

2. Methods

2.1. Study Participants

Of 1040 individuals willing to participate, 810 (16.0% of men; mean age: 87.60 ± 2.44 years; mean height: 1.63 ± 0.09 m, mean weight: 71.60 ± 13.14 kg, mean body-mass index: 26.88 ± 4.34 kg/m2) met the inclusion criteria and were eligible for further analysis. More detailed information about the participants are described elsewhere [18]. Participants were selected from six conveniently selected neighborhoods in the city of Zagreb. After neighborhood selection, we spread information about the study using flyers and posters to inform future participants about the main aims and hypothesis. The inclusion criteria were: (1) age ≥ 85, (2) be free of cognitive diseases (the information about their cognitive functioning was confirmed through evidence provided by their physicians), and (3) be able to read and write individually. The testing protocol was conducted between August and September of 2018. All the procedures performed in this study were anonymous and in accordance with the Declaration of Helsinki. The Institutional Review Board of the Faculty of Kinesiology approved the study (Ethics code: 10/7/2018). Before the study, each participant gave their written informed consent to participate.

2.2. Physical Activity (Dependent Variable)

To assess physical activity in the last 7 days, we used the adapted version of the International Physical Activity Questionnaire - Short Form, a reliable and valid instrument designed to measure physical activity in respondents aged ≥65 [19]. The questionnaire provides information about the time and number of days spent in physical activity of light, moderate, and vigorous intensity. For each participant, we calculated the time spent in moderate and vigorous physical activity. The questionnaire has weak to moderate correlation with objectively measured physical activity (0.28–0.47), with observed systematic error. Its ability to identify low-active participants was 85%, yet its sensitivity to detect high-active participants was 81% [19]. According to the World Health Organization [6], those participants who participated in at least 150 min of moderate-intensity aerobic physical activity or at least 75 min of vigorous-intensity aerobic physical activity throughout the week were categorized as ”sufficiently” active, compared to those who did not meet the aforementioned criteria as ”insufficiently” active.

2.3. Diet (Independent Variable)

To assess dietary patterns, we used the Elderly Dietary Index score [20]. It consists of ten dietary groups (i.e., meat, fish, fruits, vegetables, grains, legumes, olive oil, alcohol, bread, and dairy products). Scores from 1 to 4 are assigned to all components of the index. The Elderly Dietary Index total score ranges between 10 and 40, with higher values indicating healthier adherence to dietary recommendations for older adults. A study by Kourlaba et al. [20] showed that the Elderly Dietary Index score was associated with several health-related outcomes; that is, a higher score was associated with a lower likelihood of having at least one cardiovascular disease risk factor and obesity. More detailed information about the scoring protocol and dichotomization is presented in Table 1.

2.4. Covariates

Height and weight of the participants were self-reported. We categorized the participants as normal (<25 kg/m2) compared to overweight/obese (≥25 kg/m2). Health was also self-reported and assessed by one question: ”How would you rate your health?“ with five possible answers: (1) very poor, (2) poor, (3) fair, (4) good, and (5) excellent. We categorized the outcome variable into ”good” (fair, good, and excellent) compared to ”poor” (poor and very poor) self-rated health perception. To assess sleep quality, we asked participants the following question: ”How would you rate your sleep quality?” with four possible answers: (1) very poor, (2) poor, (3) good, and (4) very good. We categorized the outcome as ”poor” (very poor and poor) compared to ”good” (good and very good) sleep quality. Psychological distress was assessed by using Kessler’s six-item questionnaire [21]. More detailed information about the scoring protocol is described elsewhere [21]. Socioeconomic status was categorized as (1) low vs. (2) middle/high. Whether or not participants had a chronic disease was collected by asking the question as follows: ”Have you ever been told by a doctor that you suffer from any kind of chronic disease?“ to be followed by a categorical yes/no response.

2.5. Data Analysis

Basic descriptive statistics of the study participants are presented as frequencies (n) and percentages (%). Differences between categorical variables were analyzed using the Chi-square test. To examine the associations between dietary patterns and physical activity, we calculated odds ratios (ORs) with 95% confident intervals (95% CIs) by using generalized estimating equations with Pearson’s deviance model to correct for potential neighborhood clustering. For the univariate model, we entered all ten components of the Elderly Diet Index separately into the model. For the multivariate model, we re-entered all ten components simultaneously into the model. For the univariate model, we additionally entered the total Elderly Diet Index score, but because of high multicollinearity with other components, we dropped it from the multivariate model. In both models, the ”outcome” variable was ”sufficient” physical activity and the ”referent” value was ”non-optimal” frequency of dietary intake. Both models were adjusted for body-mass index, self-rated health, sleep quality, socioeconomic status, psychological distress, and chronic diseases. The interaction effects between sex and physical activity (p = 0.344) and sex and diet (p = 0.278) were not statistically significant, so we dropped sex-stratified analyses. Significance was set up at α = 0.05. All the analyses were performed in the Statistical Package for Social Sciences Software, V.22 (Armonk, New York, United States of America; IBM corporation group).

3. Results

Basic descriptive statistics of the study participants are presented in Table 2. The majority of the sample had ”non-optimal” intakes of meat, fish and seafood, fruits, legumes, and olive oil. The higher percentage of participants reporting ”optimal” dietary intake of meat, fish and seafood, fruits, legumes, olive oil, dairy products, and bread were categorized as ”sufficiently” active. The Elderly Diet Index showed that the higher percentage of participants being in ”moderate-to-high” healthy diet were categorized as ”sufficiently” active (p < 0.001). Moreover, a higher percentage of participants with ”normal” body-mass index, ”good” self-rated health, ”good” sleep quality, and ”low” psychological distress were ”sufficiently” active.
Table 3 shows the associations between the frequency of dietary intake and physical activity. In the univariate model, “optimal” intake of fish and seafood (OR = 1.40; 95% CI 1.01 to 2.00), fruits (OR = 2.10; 95% CI 1.45 to 3.02), legumes (OR = 1.73; 95% CI 1.19 to 2.50), olive oil (OR = 1.83; 95% CI 1.09 to 3.08), and bread (OR = 4.62; 95% CI 3.05 to 6.99) and the total Elderly Diet Index score (OR = 4.99; 95% CI 3.20 to 7.70) were associated with “sufficient” physical activity. In the multivariate model, “optimal” intake of meat (OR = 1.73; 95% CI 1.10 to 2.71), fish and seafood (OR = 2.26; 95% CI 1.46 to 3.51), cereals (OR = 1.75; 95% CI 1.02 to 3.25), fruits (OR = 1.52; 95% CI 1.02 to 2.26), legumes (OR = 1.48; 95% CI 1.10 to 1.93), and bread (OR = 5.14; 95% CI 3.24 to 8.15) were associated with “sufficient” physical activity. Both models were adjusted for body-mass index, self-rated health, sleep quality, socioeconomic status, psychological distress, and chronic diseases.

4. Discussion

The main purpose of the present study was to explore the associations between various frequencies of dietary intake and physical activity in older adults. Specifically, our study showed that the total Elderly Diet Index score was the strongest positive predictor for higher levels of “sufficient” physical activity. In the multivariate model, we found that “optimal” consumption of meat, fish and seafood, cereals, fruits, legumes, and bread was associated with “sufficient” physical activity. It is possible that higher intake of meat, legumes, and bread were needed in order to restore empty energy deposits in elderly individuals who engaged in more physical activity. Our results are in line with previous studies [15,16,17,22]. Specifically, a study by del Mar Bibiloni et al. [15] showed that participants in the highest quartile of the Mediterranean dietary pattern were more likely to be classified in the second and third tertiles of leisure-time physical activity, and these associations remained after adjustment for body composition variables. The authors showed that participants classified in the fourth quartile of the Mediterranean dietary pattern were characterized by a high intake of whole-grain bread, rice, fish, fruits, vegetables, potatoes, legumes, nuts, olives and extra-virgin olive oil, honey, jam, and spices, and were more likely to practice leisure-time physical activity [15]. In the same study, the authors also found that the Mediterranean dietary pattern was associated with physical fitness, such as gait speed in men [15]. Another cross-sectional study showed that a healthy diet is inversely associated with frailty [22]. Similar findings have been observed in longitudinal studies [16]. Since physical fitness is one of the components of physical activity, our results might be interpreted alongside/in accordance with previous studies aiming to explore the associations between dietary patterns and physical fitness [15,23,24,25]. Specifically, high consumption of fruits, vegetables, whole wheat bread, and fatty fish was associated with higher handgrip strength [23]. Similarly, another study presented similar results, where seafood but no fish consumption was associated with lower body strength, agility, and endurance [15]. However, the aforementioned association between diet and physical fitness obtained by previous studies could only partially explain our results, since we used self-reported measures to assess physical activity in comparison to objectively assessed physical fitness in other studies.
One previous study showed that the consumption of milk, yoghurt, and cheese was associated with higher levels of physical fitness and physical activity, which is contrary to our results [24]. Another study showed no association between dairy products and physical activity in a sample of older adults [15]. In the univariate model, we also observed that “optimal” consumption of meat and cereals was not significantly associated with “sufficient” physical activity. However, when all variables were entered simultaneously into the model, “optimal” consumption of meat and cereals became significantly associated with “sufficient” physical activity. Additionally, “optimal” olive oil consumption was significantly associated with “sufficient” physical activity, yet lost the effect in the multivariate model. Such findings could be explained by the fact that associations between the intakes of specific foods and nutrients and their interactive effects may be independent, and sometimes it is easier to detect the beneficial effects of a diet as a whole [25]. Such a statement could be confirmed by our findings, since the Elderly Diet Index (total score) was the strongest predictor of “sufficient” physical activity, compared to individual nutrients.
Our study has several strong points. Firstly, we conducted a study among a relatively large sample of older adults (n = 810). Secondly, we adjusted for numerous socio-demographic (socioeconomic status) and health-related (body-mass index, self-rated health, sleep quality, psychological distress, chronic diseases) covariates.
However, our study also has some limitations. Firstly, due to a cross-sectional design, we could not determine the direction of the association. It is possible that “sufficient” physical activity led to better dietary intake. Secondly, we used self-reported measures, which might have led to measurement error. Our results should be interpreted with caution, since participants could have over/under reported their levels of physical activity and dietary intake. Additionally, one previous study showed that older adults do not provide accurate information about their height and weight, so the prevalence of overweight/obesity status must be interpreted with caution [26]. Finally, we did not include energy intake as a potential covariate, since it might have led to different associations. Thus, future studies using objective methods (e.g., accelerometers) and more detailed questionnaires (e.g., food frequency questionnaire) in a longitudinal design should be conducted in order to establish the causality of the association between diet and physical activity in a sample of older adults.

5. Conclusions

This study shows that more favorable dietary intake is associated with physical activity in a sample of older adults. That is, “optimal” intake of meat, fish and seafood, legumes, cereals, fruit, and bread is associated with more favorable levels of physical activity. Although we cannot make a conclusion about the causality of the association, given the importance of diet and physical activity in overall health, future strategies and policies aiming to enhance healthy dietary intake and increase levels of physical activity should be implemented within community settings.

Author Contributions

Conceptualization: L.Š. and L.P., Data curation: G.S and G.V., Formal analysis: L.Š., Funding acquisition: / Investigation: L.Š., Methodology: L.Š. and L.P., Project administration: L.Š., Resources: L.Š., Software: L.Š., Supervision: L.P. and G.S., Validation: G.S., Visualization: L.Š., Roles/Writing-original draft: L.Š., L.P., G.S. and G.V., Writing-review & editing: L.Š., L.P., G.S. and G.V.

Funding

This research received no external funding.

Acknowledgments

We would like to thank all the participants for their enthusiastic participation in the study.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. Dichotomization of the frequency of dietary intake.
Table 1. Dichotomization of the frequency of dietary intake.
Frequency of Dietary IntakeScore Given to Each Category *Dichotomized Score
Meat
1–2 times/week4Optimal
<1 time/week3
Never/rarely2Non-optimal
≥3 times/week1
Fish and Seafood
1–2 times/week4Optimal
≥3 times/week3
<1 time/week2Non-optimal
Never/rarely1
Vegetables
Daily4Optimal
3–5 times/week3
1–2 times/week2Non-optimal
<1 time/week1
Cereals
Daily4Optimal
3–5 times/week3
1–2 times/week2Non-optimal
<1 time/week1
Fruits
Daily4Optimal
3–5 times/week3
1–2 times/week2Non-optimal
<1 time/week1
Legumes
1–2 times/week4Optimal
<1 time/week3
Never/rarely2Non-optimal
≥3 times/week1
Olive oil
Daily4Optimal
3–5 times/week3
1–2 times/week2Non-optimal
<1 time/week1
Alcohol
0–2 glasses of wine/day4Optimal
No consumption3
3–4 glasses of wine/day2Non-optimal
>4 glasses of wine/day1
Dairy
Nonfat milk/low-fat milk and low-fat cheese4Optimal
Nonfat milk and white or yellow cheese3
Full-fat milk and white or yellow cheese2Non-optimal
Low-fat milk and white or yellowcheese/full-fat milk and low-fatcheese1
Bread
Whole-grain bread4Optimal
Combination of white and whole-grain bread3
White bread2Non-optimal
No consumption1
Elderly Dietary Index (Total Score)
≥32 points3Moderate-to-high
29–31 points2
10–28 points1Low
*Higher score is associated with healthier dietary intake.
Table 2. Basic descriptive statistics of the study participants; Croatia (n = 810).
Table 2. Basic descriptive statistics of the study participants; Croatia (n = 810).
Study VariablesTotal Sample (n = 810)“Insufficient” Physical Activity (n = 630)”Sufficient” Physical Activity (n = 180)p-Value *
n (%)n (%)n (%)
Meat
Non-optimal587 (72.5)461 (73.2)126 (70.0)
Optimal223 (27.5)169 (26.8)54 (30.0)0.396
Fish and Seafood
Non-optimal516 (63.7)419 (66.5)97 (53.9)
Optimal294 (36.3)211 (33.5)83 (46.1)<0.001
Vegetables
Non-optimal214 (26.4)164 (26.0)50 (27.8)
Optimal596 (73.6)466 (74.0)130 (72.2)0.633
Cereals
Non-optimal144 (17.8)112 (17.8)32 (17.8)
Optimal666 (82.2)518 (82.2)148 (82.2)1.000
Fruits
Non-optimal541 (66.8)445 (70.6)96 (53.3)
Optimal269 (33.2)185 (29.4)84 (46.7)<0.001
Legumes
Non-optimal458 (56.5)371 (58.9)87 (48.3)
Optimal352 (43.5)259 (41.1)93 (51.7)0.013
Olive oil
Non-optimal718 (88.6)564 (89.5)154 (85.6)
Optimal92 (11.4)66 (10.5)26 (14.4)0.144
Alcohol
Non-optimal26 (3.2)21 (3.3)5 (2.8)
Optimal784 (96.8)609 (96.7)175 (97.2)0.815
Dairy
Non-optimal348 (43.0)283 (44.9)65 (36.1)
Optimal462 (57.0)347 (55.1)115 (63.9)0.040
Bread
Non-optimal378 (46.7)338 (53.7)40 (22.2)
Optimal432 (53.3)292 (46.3)140 (77.8)<0.001
Elderly Diet Index Score
Low666 (82.2)554 (87.9)112 (62.2)
Moderate/high144 (17.8)76 (12.1)68 (37.8)<0.001
Body-Mass Index
Overweight/obesity512 (63.2)410 (65.1)102 (56.7)
Normal298 (36.8)220 (34.9)78 (43.3)0.044
Self-Rated Health
Poor384 (47.4)302 (47.9)82 (45.6)
Good426 (52.6)328 (52.1)98 (54.4)0.612
Sleep Quality
Poor302 (37.3)254 (40.3)48 (26.7)
Good508 (62.7)376 (59.7)132 (73.3)<0.001
Socioeconomic Status
Low132 (16.3)77 (12.2)55 (30.6)
Medium/high678 (83.7)553 (87.8)125 (69.4)<0.001
Psychological Distress
High200 (22.2)176 (27.9)24 (13.3)
Low610 (77.8)454 (72.1)156 (86.7)<0.001
Chronic Diseases
Yes530 (65.4)403 (64.0)127 (70.6)
No280 (34.6)227 (36.0)53 (29.4)0.110
*Chi-square test.
Table 3. Odds ratios for “sufficient” physical activity in the study participants; Croatia (n = 810).
Table 3. Odds ratios for “sufficient” physical activity in the study participants; Croatia (n = 810).
Study VariablesUnivariate Model *Multivariate Model **
OR (95% CI)p-ValueOR (95% CI)p-Value
Meat
Non-optimalRef. Ref.
Optimal1.33 (0.90 to 1.96)0.1531.73 (1.10 to 2.71)0.017
Fish and seafood
Non-optimalRef. Ref.
Optimal1.40 (1.01 to 2.00)0.0492.26 (1.46 to 3.51)<0.001
Vegetables
Non-optimalRef. Ref.
Optimal0.98 (0.65 to 1.48)0.9380.81 (0.48 to 1.34)0.405
Cereals
Non-optimalRef. Ref.
Optimal0.97 (0.60 to 1.56)0.8981.75 (1.02 to 3.25)0.048
Fruits
Non-optimalRef. Ref.
Optimal2.10 (1.45 to 3.02)<0.0011.52 (1.02 to 2.26)0.041
Legumes
Non-optimalRef. Ref.
Optimal1.73 (1.19 to 2.50)0.0041.48 (1.10 to 1.93)0.035
Olive oil
Non-optimalRef. Ref.
Optimal1.83 (1.09 to 3.08)0.0231.13 (0.60 to 2.11)0.701
Alcohol
Non-optimalRef. Ref.
Optimal0.95 (0.34 to 2.68)0.9221.25 (0.41 to 3.86)0.692
Dairy
Non-optimalRef. Ref.
Optimal1.06 (0.73 to 1.55)0.7491.00 (0.65 to 1.54)0.994
Bread
Non-optimalRef. Ref.
Optimal4.62 (3.05 to 6.99)<0.0015.14 (3.24 to 8.15)<0.001
Elderly Diet Index score
LowRef. Ref.
Moderate/high4.99 (3.20 to 7.80)<0.001
* Examines separate associations between dietary habits and “sufficient” physical activity adjusted for body-mass index, self-rated health, sleep quality, socioeconomic status, psychological distress, and chronic diseases. ** Examines simultaneous associations between dietary habits and “sufficient” physical activity adjusted for body-mass index, self-rated health, sleep quality, socioeconomic status, psychological distress, and chronic diseases. p < 0.05.

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MDPI and ACS Style

Štefan, L.; Petrinović, L.; Sporiš, G.; Vrgoč, G. Frequency of Dietary Intake and Physical Activity in Older Adults: A Cross-Sectional Study. Nutrients 2018, 10, 1960. https://doi.org/10.3390/nu10121960

AMA Style

Štefan L, Petrinović L, Sporiš G, Vrgoč G. Frequency of Dietary Intake and Physical Activity in Older Adults: A Cross-Sectional Study. Nutrients. 2018; 10(12):1960. https://doi.org/10.3390/nu10121960

Chicago/Turabian Style

Štefan, Lovro, Lidija Petrinović, Goran Sporiš, and Goran Vrgoč. 2018. "Frequency of Dietary Intake and Physical Activity in Older Adults: A Cross-Sectional Study" Nutrients 10, no. 12: 1960. https://doi.org/10.3390/nu10121960

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