#PAGE_PARAMS# #ADS_HEAD_SCRIPTS# #MICRODATA#

Determinants of frailty development and progression using a multidimensional frailty index: Evidence from the English Longitudinal Study of Ageing


Authors: Nils Georg Niederstrasser aff001;  Nina Trivedy Rogers aff002;  Stephan Bandelow aff003
Authors place of work: School of Applied Social Sciences, De Montfort University, Leicester, England, United Kingdom aff001;  Department of Epidemiology and Public Health, University College London, London, England, United Kingdom aff002;  Department of Physiology, Neuroscience and Behavioural Sciences, St. George’s University, St. George’s, Grenada aff003
Published in the journal: PLoS ONE 14(10)
Category: Research Article
doi: https://doi.org/10.1371/journal.pone.0223799

Summary

Objective

To identify modifiable risk factors for development and progression of frailty in older adults living in England, as conceptualised by a multidimensional frailty index (FI).

Methods

Data from participants aged 50 and over from the English Longitudinal Study of Ageing (ELSA) was used to examine potential determinants of frailty, using a 56-item FI comprised of self-reported health conditions, disabilities, cognitive function, hearing, eyesight, depressive symptoms and ability to carry out activities of daily living. Cox proportional hazards regression models were used to measure frailty development (n = 7420) and linear regression models to measure frailty progression over 12 years follow-up (n = 8780).

Results

Increasing age (HR: 1.08 (CI: 1.08–1.09)), being in the lowest wealth quintile (HR: 1.79 (CI: 1.54–2.08)), lack of educational qualifications (HR: 1.19 (CI: 1.09–1.30)), obesity (HR: 1.33 (CI: 1.18–1.50) and a high waist-hip ratio (HR: 1.25 (CI: 1.13–1.38)), being a current or previous smoker (HR: 1.29 (CI: 1.18–1.41)), pain (HR: 1.39 (CI: 1.34–1.45)), sedentary behaviour (HR: 2.17 (CI: 1.76–2.78) and lower body strength (HR: 1.07 (CI: 1.06–1.08)), were all significant risk factors for frailty progression and incidence after simultaneous adjustment for all examined factors.

Conclusion

The findings of this study suggest that there may be scope to reduce both frailty incidence and progression by trialling interventions aimed at reducing obesity and sedentary behaviour, increasing intensity of physical activity, and improving success of smoking cessation tools. Furthermore, improving educational outcomes and reducing poverty may also reduce inequalities in frailty.

Keywords:

body mass index – Nurses – Physical activity – obesity – frailty – elderly – Smoking habits – Medical risk factors

Introduction

Frailty is a common geriatric state [1] which affects roughly 10% of over 65 year olds [1] and is forecast to present extensive problems for health and social care systems across the globe because of rising life expectancy [2]. Frailty occurs as a consequence of age-related physiological decline in multiple organ systems and leaves individuals vulnerable to relatively minor stressors (e.g.: low/high temperatures; minor infections) that can lead to sudden and disproportionate changes in their health (i.e.: from a state of independence to dependence) [1]. To date there is no universally agreed definition of frailty [3]. Numerous conceptualisations of frailty have been used in studies, but few have been examined for reliability and validity [4]. There are two widely used frailty measures. The frailty phenotype [5] comprises of five highly specific physical variables that include unintentional weight loss, exhaustion, low physical activity, and slow gait speed. However many studies have not been able to follow the exact definition which makes comparisons between different studies difficult [6]. Notably there have been calls from researchers to include a cognitive domain within frailty constructs but even commonly used frailty constructs such as the frailty phenotype [5] have omitted cognition. The frailty index (FI) [7] defines frailty as a state and is measured by the accumulation of age-related health deficits which includes a wide range of health problems, including hearing, eyesight, cognitive problems and general health [7,8]. The conceptualisation of frailty is still evolving, but frailty defined using the deficit accumulation model which encompasses all known aspects of frailty (physical, affective, and cognitive) has been demonstrated to provide an adequate multidimensional representation of frailty [911]. Research on frailty has largely focused on physical conceptualisations of frailty [5,12] despite the strong link between cognitive decline and frailty development [13]. While cognitive decline and frailty are often considered as separate constructs there is evidence that they share common pathologies [14]. Older adults showing signs of frailty are at greater risk of adverse health outcomes including reduced functional independence [15], increased disability [16,17], poor quality of life [16], dementia [18], institutionalisation [19], and mortality [16,20]. Exploring modifiable risk factors that might delay the onset or reduce the progression of frailty is therefore important, especially in the context of an ageing society.

Studies investigating both the progression and incidence of frailty in the same populations are scarce, perhaps due to the lack of frailty follow-up data in studies. It is therefore uncertain whether the same risk factors affect progression as well as incidence of frailty. In this study we use the English Longitudinal Study of Ageing (ELSA) and make use of a 56-item multidimensional FI and follow-up of 12 years, covering 7 time-points to investigate risk factors for development and progression of frailty.

Methods

Sample

ELSA is a panel study that comprises multidisciplinary data from a representative sample of adults aged 50 years and over living in England. Full details on the ELSA sample and data collection are available elsewhere [21]. Participants were initially drawn from the Health Survey for England. Data have been collected over eight waves, with two-year intervals between waves. This study drew its sample from waves 2 (baseline) through 8, as previous waves did not contain data on potential frailty risk factors. Data for waves 2 (2004/2005) to wave 8 (2016/2017) were collected through self-completion questionnaires and nurse assessments. The London Multicentre Research Ethics Committee (MREC/01/2/91) granted ethical approval.

Outcomes

Frailty index

A FI was created based on the procedure outlined by Searle et al. [7] and included disease-related symptoms, self-reported conditions, activities of daily living, mobility, cognition, chronic diseases, as well as self-rated health, vision, and hearing. All deficits were given a score of 0 to indicate no expression, 1 to indicate full expression and a score of between 0 and 1 for partial expression. The index was expressed as the number of deficits expressed divided by the number considered and had a range between 0 and 1. A score of 0.25 or lower [22] indicates the absence of frailty, while higher scores indicate frailty. The FI is comparable across studies, even when different numbers (> 30 deficits) or types of deficits are counted, as shown by a multitude of studies [11,2227].

Candidate variables

Based on the literature, candidate variables were selected as potential predictors of frailty. The variables did not form part of the FI and included: sex, age, pain, physical activity level, wealth quintiles, educational qualifications, smoking, lower body strength, social isolation, loneliness and BMI and waist-hip ratio as indicators of obesity. See appendix for a detailed description of the candidate variables.

Statistical approach

Missing data were imputed using the R-package missFOREST [28]. Descriptive statistics were computed on sample characteristics and questionnaire scores using the imputed data set. All analyses were performed using R version 3.2. To explore the relationship between the predictors and the FI, partial correlations, correcting for participants’ age, were computed. The linear regression analysis was conducted on the entire data set (n = 8780) to measure frailty progression, while the Cox proportional hazards regression excluded those already classified as frail (FI > 0.25; n = 7420; events = 2441) at baseline.

For the Cox proportional hazards regression, FIs from waves 2 through 8 were combined in a data set with baseline predictors. Wave was used to denote survival time until development of frailty. Frailty development was operationalised by dichotomising the FI, with values ≥ 0.25 indicating frailty and < 0.25 indicating absence of frailty [22]. The R-package “survival” was used to compute the proportional hazards regression and “survminer” for visualising the results [29]. Univariate proportional hazards regression analyses were used to determine which predictors were added to the final multivariate model. To rule out potential reverse causation, sensitivity analyses were carried out, excluding participants who were defined as frail at baseline (wave 2) and those who became frail in wave 3.

Prior to the regression analyses, correlational analyses (spearman) were conducted to examine the bivariate relationships among the predictor variables and the FI. The baseline FI was entered into the regression equation as a covariate in step 1. All candidate variables were entered in the regression equation during step 2 (except social isolation, which was not correlated with the FI). Diagnostic tests of tolerance and variance inflation revealed that all of the measures fell within acceptable ranges of collinearity (variance inflation factors < 4).

Reference categories and units for the candidate variables were as follows: Pain “no, mild, moderate, or severe pain”), Physical activity level (sedentary (reference category), mild, moderate, and vigorous), Wealth (quintiles; lowest quintile is reference category), Smoking (current or previous smoker (reference category) vs. abstinence), Lower body strength (time to perform five chair rises; higher values indicated poorer strength), Sex (male (reference category) vs. female), Age, general obesity (Body Mass Index (BMI): measured as “kg/m2” and defined as underweight (BMI < 18.5), normal weight (reference category; BMI between 18.5 and 25), overweight (BMI between 25 and 30), and obese (BMI > 30), Social isolation (as described in [30], higher values indicated greater social isolation), Loneliness (Revised UCLA Loneliness Scale [31], higher values indicated greater loneliness), abdominal obesity (Waist-hip ratios exceeding 0.90 for men and 0.85 for women were counted as obesity [32]; normal weight was the reference category), and educational qualifications (no educational qualification (reference category) vs. any educational qualification).

Results

Sample characteristics

Baseline (wave 2) comprised of data from 8780 individuals (mean age 66.93, SD = 10.08; 3949 males, 44.98%). Table 1 presents the means and standard deviations as well as counts for the FIs and candidate variables at baseline for the complete dataset. Table 2 shows the partial correlations between the FI and the candidate variables that were measured on either interval or ratio scale corrected for participants’ age. The partial correlations, accounting for differences in participants’ ages, revealed that social isolation did not correlate with lower body strength.

Tab. 1. Sample overview.
Sample overview.
Tab. 2. Partial relationships (corrected for participants’ age).
Partial relationships (corrected for participants’ age).

Development of frailty

In unadjusted models, social isolation did not influence frailty development and was therefore omitted from further models. Next, we fitted a multivariate Cox hazards ratio analysis using the significant univariate predictor variables to describe how the factors jointly impacted on the incidence of frailty. Visual inspection of each covariate’s scaled Schoenfeld residuals plotted against survival time supported the assumption of proportional hazards.

A total of 7240 non-frail participants were included in the analysis, of which 2441 developed frailty over the course of 12 years (Fig 1). Age was associated with quicker development of frailty (HR = 1.08, CI = 1.08–1.09). Compared to those with a BMI in the normal range, participants classed as obese (HR = 1.33, CI = 1.18–1.50) had a higher risk of becoming frail. Participants with a high waist-hip ratio had a 1.25-increased risk (CI = 1.13–1.38) of becoming frail compared to those with healthy ratios. Higher wealth was associated with lower frailty incidence (e.g. 5th quintile HR = 0.56, CI = 0.48–0.65). Any education compared to no education showed a protective effect against early development of frailty (HR = 0.84, CI = 0.77–0.92). Compared to males, females were more likely to become frail (HR = 1.28, CI = 1.17–1.40). Poor lower body strength was identified as being associated with higher frailty incidence (HR = 1.07, CI = 1.06–1.08). Abstinence from tobacco (HR = 0.78, CI = 0.71–0.85) was associated with slower development of frailty, while higher levels of pain intensity (HR = 1.39, CI = 1.34–1.45) and loneliness (HR = 1.19, CI = 1.16–1.22) were associated with higher risk of developing frailty. Compared to sedentary individuals, those engaging in moderate (HR = 0.59, CI = 0.48–0.71) or vigorous physical activity (HR = 0.46, CI = 0.36–0.57) were less likely to become frail. These results show that a person with an average age of 67, who takes part in mild physical activity or is sedentary and is a current or previous smoker has a 59% chance of becoming frail by the time they are roughly 79 years old. In contrast, a person of the same age, who takes part in moderate or vigorous physical activity and has never smoked has a 22% chance of becoming frail over the same period. Similarly, a 67-year-old individual who is overweight or obese and smokes or has a smoking history has a 37% chance of becoming frail, whereas a person with a healthy weight that has never smoked has a 19% chance of developing frailty.

Hazard ratios for frailty development.
Fig. 1. Hazard ratios for frailty development.
***values are rounded.

In the sensitivity analysis, participants were excluded if they became frail in the 24 months following baseline measurements, but this had a negligible effect on the associations between the potential frailty determinants and frailty incidence.

Frailty progression

Spearman correlation coefficients between the FI and the candidate variables that were measured on either interval or ratio scale were calculated to determine their inclusion into the regression analysis.

Linear regression analysis

As shown in Table 3, baseline frailty levels contributed significantly to the prediction of frailty levels at wave 8, explaining 56% of the variance. Addition of the candidate variables in the final step of the analysis yielded a 19% increase in explained variance in frailty at wave 8. Beta weights for the final regression equation indicated that frailty at baseline (β = .45, p < .01), age (β = 0.36, p < .01), pain intensity (β = .03, p < .01), lower body strength (β = .13, p < .01), and loneliness (β = 0.04, p < .01) contributed significant unique variance to the prediction of frailty at wave 8. Differences in frailty at wave 8 were found for several variables. Individuals with a high waist-hip ratio reported greater frailty at wave 8 compared to those with normal waist-hip ratio (β = .04, p < .01). Similarly, participants whose BMI was classed as obese (β = .02, p < .01) were significantly more frail at wave 8 compared to participants with BMI in the healthy range. Overweight and underweight as indicated by BMI were not predictors of frailty (overweight: β = -.01, p = .15; underweight: β = .01, p = .24). Participants in higher wealth quintiles were significantly less frail compared to those in the lowest quintile (2nd quintile: β = -.03, p < .01, 3rd quintile: β = -.05, p < .01, 4th quintile: β = -.05, p < .01, 5th quintile: β = -.08, p < .01). Participants with any completed formal education at baseline had lower levels of frailty 12 years later (β = -.03, p < .01). Furthermore, male participants were less frail than female participants at wave 8 (β = .02, p < .01) even after taking account of baseline frailty. Abstinence from tobacco smoking at baseline was associated with less frailty 12 years later (β = -.03, p < .01). Moderate (β = -.07, p < .01) or vigorous (β = -.07, p < .01) physical activity was associated with less frailty compared to a sedentary lifestyle.

Tab. 3. Regression analysis predicting frailty at Wave 8.
Regression analysis predicting frailty at Wave 8.

Discussion

In this study, we found that higher baseline frailty score, increasing age, low wealth, low levels of education, obesity, high waist-hip ratio, being female, lower body strength, being a smoker or having a history of smoking, pain, low intensity of physical activity or sedentary behaviour, and loneliness were predictors of both frailty progression and development. Social isolation was not a predictor of frailty development and progression.

The strengths of the study included the use of a large representative sample of older adults living in England, use of a validated multidimensional FI, a range of objective and self-reported predictor variables and a follow-up period of up to 12 years. Caution must be used when interpreting the study findings. Given the study’s longitudinal nature it is possible that the frailest participants died or were lost to follow-up between assessment points. To counteract this survivor bias, data were imputed for all participants taking part from wave 2 onwards. Nevertheless, data imputation methods, while sophisticated, are not capable to perfectly reproduce missing data. The current FI did not contain deficits pertaining to social frailty [33], such as perceived social isolation or loneliness (considered as exposures in this study), although these have previously been recommended for inclusion in a multidimensional frailty index [34]. The identified risk factors explain significant chunks of variance above what is explained by existing symptomology and therefore make a meaningful contribution to the outcome predictions; however residual confounding cannot be excluded.

Age was the strongest predictor of frailty, corroborating previous research demonstrating a strong positive relationship between age and frailty [3537]. Nevertheless, other variables including modifiable risk factors (e.g.: obesity and sedentary lifestyle) were independently associated with frailty development and progression. Obesity and abdominal (waist-hip ratio) obesity but not overweight predicted greater progression and higher risk of becoming frail [38,39]. These findings are in line with previous studies on midlife physical functioning demonstrating that it is the magnitude of adiposity that is of prime importance, with highest levels of BMI being particularly deleterious to physical health [40]. Lipid depositions and lipid infiltration in muscle fibres may contribute to frailty by reducing mobility and promoting the loss of muscle strength [41]. Furthermore, excess body fat puts individuals at risk of developing proinflammatory [42] and prothrombotic states [43], as well as vascular events and hyperinsulinemia [44]. The independent contribution of BMI and abdominal obesity on frailty progression and incidence may be rooted in waist-hip ratio better reflecting body fat deposits, compared to BMI. Greater BMI does not necessarily reflect poor health, because it does not distinguish between fat mass and muscle mass. Furthermore, BMI categories used to determine obesity have been challenged by previous investigations, suggesting different cut-offs depending on age [45]. A state of obesity may also lead to more joint wear and tear and reduced physical activity [46]. Sedentary levels of physical activity predicted frailty after 12 years and quicker progression compared to moderate or vigorous physical activity, corroborating findings from previous research [47]. Physical activity may improve physical function, promote healthy weight, bone mass, muscle function, prevent falls, as well as improve general health [48], thereby slowing the onset and progression of frailty. Increasing physical activity can have beneficial effects on obesity, stress, loneliness in the case of group exercises, and muscular strength, which have been suggested as potential risk factors of increased frailty [49].

Low muscular strength was associated with increased frailty and quicker development of frailty, consistent with existing findings suggesting a negative association between muscular strength and frailty [5052]. Low physical strength in advanced age is often the result of sarcopenia, which is the age-related loss of muscle mass [53]. Sarcopenia is essential in the pathogenesis of frailty and renders individuals at greater risk for adverse health effects, such as falls; however there is evidence that exercise interventions may help to slow or reverse sarcopenia and resultant strength loss [54].

Non-smokers were less likely to become frail or have severe frailty compared to current or previous smokers, confirming previous research showing that smoking is detrimental for frailty [5557]. Smoking is associated with an increased risk of developing numerous diseases, including arterial vascular disease [58], obstructive pulmonary disease (COPD) [59], stroke [60], and coronary heart disease [61]. Furthermore, these debilitating diseases have a knock-on negative effect on physical, psychological and social health which all contribute to frailty [57].

High levels of pain were a significant risk factor for frailty. We are aware of only one study that has examined the links between pain and physical frailty [62] but it has been suggested that pain may predispose individuals to lead a sedentary lifestyle, as individuals’ inclination to move is reduced, due to fear of experiencing pain [63]. Pain contributes to deteriorations in physical function and capacity [64], which are integral contributors to frailty. Furthermore, chronic pain is associated with increased levels of depression [65] and anxiety [66], which may affect psychosocial aspects of frailty.

Loneliness was a significant predictor of incidence and progression of frailty, corroborating previous findings [67,68]. On the other hand, social isolation was not associated with the progression or development of frailty, confirming that loneliness and social isolation are distinct states [69]. Further, it implies that social isolation must not necessarily be interpreted as a negative state, as there is variation in the amount of social inclusion individuals seek (i.e.: socially isolated individuals may not be unhappy). Social isolation was quantified as the frequency of contacts and thus did not contain an affective component. Perceived social isolation, which does contain an affective component, might be a better representation of individuals’ social isolation. Furthermore, the current FI did not include social aspects of frailty [33,34], which may explain why social isolation did not predict frailty. It remains elusive whether loneliness is a result of increased frailty or a causal antecedent. The current study, due to its longitudinal nature, suggests that loneliness precedes frailty. Nevertheless, intervention studies aimed at reducing loneliness are warranted to confirm a causal link.

Education and wealth emerged as strong non-modifiable risk factors for quicker development of frailty, suggesting a link between lower wealth and frailty [70,71] and highlighting the importance of making available health care and education for all strata of society. Negative health outcomes and behaviours have been linked with lower wealth, such as low use of preventive care [72], which may contribute to frailty, especially at older age when individuals are more vulnerable to stressors [73,74]. Previous investigations have suggested that higher education protects against cognitive decline [75], but less so physical frailty [76], when other factors were taken into account. The protective effect of educational attainment lends credence to the cognitive reserve hypothesis [77] and the link between lower wealth, low educational attainment and negative health outcomes [78]. It further highlights the importance of including cognitive aspects in a multidimensional concept of frailty.

Consistent with other studies, this study shows that females are more likely to be frail than males, suggesting that male gender is a protective factor when it comes to development and progression of frailty. Difference in muscle mass, physical activity, higher fat percentages, and widowed status may account for gender differences in frailty [7981]. Intervention studies are needed to understand the pathways that lead to a gender effect on frailty status in older adults.

In conclusion, this study shows a range of modifiable social and behavioural risk factors are important for the development and progression of frailty. Cessation of smoking, promotion of physical activity and weight loss in obese adults may be beneficial for preventing frailty in older adults. Recent evidence suggests that multi-modal interventions that offer multiple health-promoting components such as cognitive stimulation, stress reduction, reduction in sedentary behaviour and loneliness are associated with improved frailty outcomes [82]. Carefully designed intervention studies are required to understand the most cost-effective solutions to protect against frailty development and progression.

Appendix

Pain

Participants were asked to rate the intensity of the pain they perceive most of the time, ranging from “mild” (1) to “severe” (3). Participants who indicated not experiencing recurrent or frequent pain were recorded as scoring “no pain” (0).

Physical activity level

To determine physical activity levels, participants were shown a series of prompt cards depicting activities of various intensities, e.g. vigorous (swimming or tennis), moderate (gardening or washing the car), and mild (laundry). These prompt cards were designed to aid the process of participants indicating how often they engage in that type of physical activity in their leisure time. Participants had the following response options: more than once per week, once per week, one to three times per month, and hardly ever. Participants were then divided into four categories of physical activity level (sedentary, mild, moderate, and vigorous), based on the highest intensity activity they perform at least once per week.

Wealth quintiles

Wealth was determined by dividing participants into quintiles based on their net wealth. Net wealth was quantified as the net sums of housing wealth, physical wealth (including additional property wealth, wealth related to business and other physical assets) and financial wealth.

Smoking

Participants were asked regarding their current cigarette smoking habits and whether they had a history of cigarette smoking.

Lower body strength

Chair rises were used as a measure of lower body strength. A nurse instructed participants to stand up from a chair without the use of their arms, as quickly as possible five or ten times, depending on age. Instructions specified that participants aged 70 and over attempt five rises, while those younger than 70 attempt ten rises. The time it took participants to perform these rises was recorded. For participants who performed ten rises, the time it took to perform five rises was noted also. Therefore, the time it took it took all participants to complete five rises was included in the analysis. Consequently, lower values on this variable represent greater lower body strength.

Sex

Sex was self-reported by participants during interviews.

Age

Ages over 90 were collapsed into a single age group, as to protect participants’ identities.

Body mass index (BMI)

BMI (kg/m2) was calculated by dividing body weight (kg) by standing height (meters) squared. Weight and height were measured by a trained nurse. The scales used during the nurse visits had a maximum weight capacity of 130 kg and so participants whose weight exceeded 130 kg could not be measured. Participants were categorised as underweight (BMI < 18.5), normal weight (BMI between 18.5 and 25), overweight (BMI between 25 and 30), and obese (BMI > 30).

Social isolation

As described in [30], social isolation was derived as follows: being unmarried or not living with a partner (scored as 1), less than monthly contact with other family, friends and children (each scored as 1), and non-participation in any social activities (scored as 1). Resultant scores ranged between 0 and 5, with higher scores indicating greater social isolation.

Loneliness

Loneliness was assessed using the Revised UCLA Loneliness Scale [31]. This 3-item instrument yielded scores between 3 and 9, whereby higher scores indicated greater loneliness.

Waist-hip ratio

The ratio between hip and waist circumference was reported as an indication of abdominal obesity. Waist-hip ratios exceeding 0.90 for men and 0.85 for women were counted as obesity [32]. A trained nurse measured participants’ waist and hip circumferences twice, to ensure precision and the mean of both measurements was reported in centimetres and the ratio calculated.

Education

This dichotomous variable was coded as “1” for any educational attainment by the end of the respective wave and “0” to signify no formal education.


Zdroje

1. Clegg A, Young J, Iliffe S, Rikkert MO, Rockwood K. Frailty in elderly people. Lancet. Elsevier; 2013;381: 752–762. doi: 10.1016/S0140-6736(12)62167-9 23395245

2. Cesari M, Prince M, Thiyagarajan JA, De Carvalho IA, Bernabei R, Chan P, et al. Frailty: An Emerging Public Health Priority. J Am Med Dir Assoc. 2016;17: 188–192. doi: 10.1016/j.jamda.2015.12.016 26805753

3. Rodríguez-Mañas L, Féart C, Mann G, Viña J, Chatterji S, Chodzko-Zajko W, et al. Searching for an operational definition of frailty: A delphi method based consensus statement. the frailty operative definition-consensus conference project. Journals Gerontol—Ser A Biol Sci Med Sci. Oxford University Press; 2013;68: 62–67. doi: 10.1093/gerona/gls119

4. Bouillon K, Kivimaki M, Hamer M, Sabia S, Fransson EI, Singh-Manoux A, et al. Measures of frailty in population-based studies: an overview. BMC Geriatr. 2013;13: 64. doi: 10.1186/1471-2318-13-64 23786540

5. Fried LP, Tangen CM, Walston J, Newman ABA, Hirsch C, Gottdiener J, et al. Frailty in older adults: evidence for a phenotype. J Gerontol A Biol Sci Med Sci. 2001;56: 46–56. doi: 10.1093/gerona/56.3.M146

6. Aguayo GA, Donneau A-F, Vaillant MT, Schritz A, Franco OH, Stranges S, et al. Agreement Between 35 Published Frailty Scores in the General Population. Am J Epidemiol. Narnia; 2017;186: 420–434. doi: 10.1093/aje/kwx061 28633404

7. Searle SD, Mitnitski A, Gahbauer EA, Gill TM, Rockwood K. A standard procedure for creating a frailty index. BMC Geriatr. BioMed Central; 2008;8: 24. doi: 10.1186/1471-2318-8-24 18826625

8. Mitnitski AB, Mogilner AJ, Rockwood K. Accumulation of deficits as a proxy measure of aging. ScientificWorldJournal. 2001;

9. Rockwood K, Howlett SE. Fifteen years of progress in understanding frailty and health in aging. BMC Medicine. 2018. doi: 10.1186/s12916-018-1223-3

10. Walston JD, Bandeen-Roche K. Frailty: A tale of two concepts. BMC Medicine. 2015. doi: 10.1186/s12916-015-0420-6

11. Rockwood K, Andrew M, Mitnitski A. A Comparison of Two Approaches to Measuring Frailty in Elderly People. Journals Gerontol Ser A Biol Sci Med Sci. 2007;62: 738–743. doi: 10.1093/gerona/62.7.738

12. Ding YY, Kuha J, Murphy M. Multidimensional predictors of physical frailty in older people: identifying how and for whom they exert their effects. Biogerontology. 2017;18: 237–252. doi: 10.1007/s10522-017-9677-9 28160113

13. Robertson DA, Savva GM, Kenny RA. Frailty and cognitive impairment-A review of the evidence and causal mechanisms. Ageing Res Rev. 2013;12: 840–851. doi: 10.1016/j.arr.2013.06.004 23831959

14. Buchman AS, Yu L, Wilson RS, Boyle PA, Schneider JA, Bennett DA. Brain pathology contributes to simultaneous change in physical frailty and cognition in old age. Journals Gerontol—Ser A Biol Sci Med Sci. Oxford University Press; 2014;69: 1536–1544. doi: 10.1093/gerona/glu117

15. Shimada H, Makizako H, Lee S, Doi T, Lee S, Tsutsumimoto K, et al. Impact of cognitive frailty on daily activities in older persons. J Nutr Heal Aging. Springer Paris; 2016;20: 729–735. doi: 10.1007/s12603-016-0685-2

16. Feng L, Zin Nyunt MS, Gao Q, Feng L, Yap KB, Ng TP. Cognitive Frailty and Adverse Health Outcomes: Findings From the Singapore Longitudinal Ageing Studies (SLAS). J Am Med Dir Assoc. Elsevier; 2017;18: 252–258. doi: 10.1016/j.jamda.2016.09.015 27838339

17. Roppolo M, Mulasso A, Rabaglietti E. Cognitive frailty in Italian community-dwelling older adults: Prevalence rate and its association with disability. J Nutr Heal Aging. Springer Paris; 2017;21: 631–636. doi: 10.1007/s12603-016-0828-5

18. Ruan Q, D’Onofrio G, Sancarlo D, Greco A, Lozupone M, Seripa D, et al. Emerging biomarkers and screening for cognitive frailty. Aging Clinical and Experimental Research. 2017. pp. 1075–1086. doi: 10.1007/s40520-017-0741-8 28260159

19. Luppa M, Luck T, Weyerer S, König HH, Brähler E, Riedel-Heller SG. Prediction of institutionalization in the elderly. A systematic review. Age Ageing. Narnia; 2009;39: 31–38. doi: 10.1093/ageing/afp202 19934075

20. Hao Q, Dong B, Yang M, Dong B, Wei Y. Frailty and Cognitive Impairment in Predicting Mortality Among Oldest-Old People. Front Aging Neurosci. Frontiers; 2018;10: 295. doi: 10.3389/fnagi.2018.00295 30405390

21. Steptoe A, Breeze E, Banks J, Nazroo J. Cohort profile: The English Longitudinal Study of Ageing. Int J Epidemiol. 2013;42: 1640–1648. doi: 10.1093/ije/dys168 23143611

22. Rockwood K, Mitnitski A. Frailty in relation to the accumulation of deficits. Journals Gerontol—Ser A Biol Sci Med Sci. 2007;62: 722–727. doi: 10.1093/gerona/62.7.722

23. Mitnitski AB, Mogilner AJ, Rockwood K. Accumulation of Deficits as a Proxy Measure of Aging. Sci World J. 2001;1: 323–336. doi: 10.1100/tsw.2001.58

24. Mitnitski A, Song X, Skoog I, Broe GA, Cox JL, Grunfeld E, et al. Relative fitness and frailty of elderly men and women in developed countries and their relationship with mortality. J Am Geriatr Soc. 2005;53: 2184–2189. doi: 10.1111/j.1532-5415.2005.00506.x 16398907

25. Kulminski A, Yashin A, Arbeev K, Akushevich I, Ukraintseva S, Land K, et al. Cumulative index of health disorders as an indicator of aging-associated processes in the elderly: Results from analyses of the National Long Term Care Survey. Mech Ageing Dev. 2007;128: 250–258. doi: 10.1016/j.mad.2006.12.004 17223183

26. Goggins WB, Woo J, Sham A, Ho SC. Frailty Index as a Measure of Biological Age in a Chinese Population. Journals Gerontol Ser A Biol Sci Med Sci. 2005;60: 1046–1051. doi: 10.1093/gerona/60.8.1046

27. Woo J, Goggins W, Sham A, Ho SC. Social determinants of frailty. Gerontology. 2005;51: 402–408. doi: 10.1159/000088705 16299422

28. Stekhoven DJ, Bühlmann P. Missforest-Non-parametric missing value imputation for mixed-type data. Bioinformatics. 2012; doi: 10.1093/bioinformatics/btr597

29. Terry M, Therneau M. Package “survival” Title Survival Analysis [Internet]. 2018. Available: https://github.com/therneau/survival

30. Shankar A, McMunn A, Banks J, Steptoe A. Loneliness, Social Isolation, and Behavioral and Biological Health Indicators in Older Adults. Heal Psychol. 2011;30: 377–385. doi: 10.1037/a0022826

31. Hughes ME, Waite LJ, Hawkley LC, Cacioppo JT. A short scale for measuring loneliness in large surveys: Results from two population-based studies. Research on Aging. 2004. doi: 10.1177/0164027504268574

32. Nishida C, Ko GT, Kumanyika S. Body fat distribution and noncommunicable diseases in populations: overview of the 2008 WHO Expert Consultation on Waist Circumference and Waist-Hip Ratio. Eur J Clin Nutr. 2010;64: 2–5. doi: 10.1038/ejcn.2009.139 19935820

33. Bunt S, Steverink N, Olthof J, van der Schans CP, Hobbelen JSM. Social frailty in older adults: a scoping review. European Journal of Ageing. 2017. doi: 10.1007/s10433-017-0414-7

34. Solfrizzi V, Scafato E, Lozupone M, Seripa D, Schilardi A, Custodero C, et al. Biopsychosocial frailty and the risk of incident dementia: The Italian longitudinal study on aging. Alzheimer’s Dement. 2019;15: 1019–1028. doi: 10.1016/j.jalz.2019.04.013

35. Fallah N, Mitnitski A, Searle SD, Gahbauer EA, Gill TM, Rockwood K. Transitions in frailty status in older adults in relation to mobility: A multistate modeling approach employing a deficit count. J Am Geriatr Soc. 2011;59: 524–529. doi: 10.1111/j.1532-5415.2011.03300.x 21391943

36. Samper-Ternent R, Karmarkar A, Graham J, Reistetter T, Ottenbacher K. Frailty as a predictor of falls in older Mexican Americans. J Aging Health. 2012;24: 641–653. doi: 10.1177/0898264311428490 22187090

37. Hajek A, Brettschneider C, Posselt T, Lange C, Mamone S, Wiese B, et al. Predictors of frailty in old age–results of a longitudinal study. J Nutr Heal Aging. 2016;20: 952–957. doi: 10.1007/s12603-015-0634-5

38. García-Esquinas E, José García-García F, Leõn-Muñoz LM, Carnicero JA, Guallar-Castillõn P, Gonzalez-Colaço Harmand M, et al. Obesity, fat distribution, and risk of frailty in two population-based cohorts of older adults in Spain. Obesity. John Wiley & Sons, Ltd; 2015;23: 847–855. doi: 10.1002/oby.21013 25683024

39. Liao Q, Zheng Z, Xiu S, Chan P. Waist circumference is a better predictor of risk for frailty than BMI in the community-dwelling elderly in Beijing. Aging Clin Exp Res. 2018;30: 1319–1325. doi: 10.1007/s40520-018-0933-x 29589287

40. Rogers NT, Power C, Pinto Pereira SM. Birthweight, lifetime obesity and physical functioning in mid-adulthood: a nationwide birth cohort study. Int J Epidemiol. 2019; doi: 10.1093/ije/dyz120

41. Porter Starr KN, McDonald SR, Bales CW. Obesity and physical frailty in older adults: A scoping review of lifestyle intervention trials. J Am Med Dir Assoc. NIH Public Access; 2014;15: 240–250. doi: 10.1016/j.jamda.2013.11.008 24445063

42. Shoelson SE, Herrero L, Naaz A. Obesity, Inflammation, and Insulin Resistance. Gastroenterology. Elsevier; 2007;132: 2169–2180. doi: 10.1053/j.gastro.2007.03.059 17498510

43. Bray GA. Medical consequences of obesity. J Clin Endocrinol Metab. Oxford University Press; 2004;89: 2583–2589. doi: 10.1210/jc.2004-0535 15181027

44. Luchsinger JA, Gustafson DR. Adiposity and Alzheimer’s disease. Curr Opin Clin Nutr Metab Care. NIH Public Access; 2009;12: 15–21. doi: 10.1097/MCO.0b013e32831c8c71 19057182

45. Kim S, Kim Y, Park SM. Body mass index and decline of cognitive function. PLoS One. Public Library of Science; 2016;11: e0148908. doi: 10.1371/journal.pone.0148908 26867138

46. Bauman AE, Reis RS, Sallis JF, Wells JC, Loos RJF, Martin BW, et al. Correlates of physical activity: Why are some people physically active and others not? The Lancet. 2012. doi: 10.1016/S0140-6736(12)60735-1

47. Rogers NT, Marshall A, Roberts CH, Demakakos P, Steptoe A, Scholes S. Physical activity and trajectories of frailty among older adults: Evidence from the English Longitudinal Study of Ageing. Ginsberg SD, editor. PLoS One. 2017;12: e0170878. doi: 10.1371/journal.pone.0170878 28152084

48. Leblanc A, Taylor BA, Thompson PD, Capizzi JA, Clarkson PM, Michael White C, et al. Relationships between physical activity and muscular strength among healthy adults across the lifespan. Springerplus. Springer; 2015;4: 557. doi: 10.1186/s40064-015-1357-0 26435903

49. De Labra C, Guimaraes-Pinheiro C, Maseda A, Lorenzo T, Millán-Calenti JC. Effects of physical exercise interventions in frail older adults: A systematic review of randomized controlled trials Physical functioning, physical health and activity. BMC Geriatrics. 2015. doi: 10.1186/s12877-015-0155-4

50. Yoshida H, Nishi M, Watanabe N, Fujiwara Y, Fukaya T, Ogawa K, et al. [Predictors of frailty development in a general population of older adults in Japan using the Frailty Index for Japanese elderly patients]. Nihon Ronen Igakkai Zasshi. 2012;49: 442. Available: http://www.ncbi.nlm.nih.gov/pubmed/23269023 doi: 10.3143/geriatrics.49.442 23269023

51. Lally F, Crome P. Understanding frailty. Postgrad Med J. BMJ Publishing Group; 2007;83: 16–20. doi: 10.1136/pgmj.2006.048587 17267673

52. Batista FS, Gomes GA de O, D’Elboux MJ, Cintra FA, Neri AL, Guariento ME, et al. Relationship between lower-limb muscle strength and functional independence among elderly people according to frailty criteria: a cross-sectional study. Sao Paulo Med J. Associação Paulista de Medicina; 2014;132: 282–289. doi: 10.1590/1516-3180.2014.1325669 25054965

53. Rosenberg IH. Sarcopenia: Origins and clinical relevance. Clin Geriatr Med. 2011;27: 337–339. doi: 10.1016/j.cger.2011.03.003 21824550

54. Daniels R, Metzelthin S, van Rossum E, de Witte L, van den Heuvel W. Interventions to prevent disability in frail community-dwelling older persons: An overview. Eur J Ageing. BioMed Central; 2010;7: 37–55. doi: 10.1007/s10433-010-0141-9 28798616

55. Wang C, Song X, Mitnitski A, Yu P, Fang X, Tang Z, et al. Gender differences in the relationship between smoking and frailty: Results from the Beijing longitudinal study of aging. Journals Gerontol—Ser A Biol Sci Med Sci. Oxford University Press; 2013;68: 338–346. doi: 10.1093/gerona/gls166

56. Kojima G, Iliffe S, Walters K. Smoking as a predictor of frailty: A systematic review. BMC Geriatr. BioMed Central; 2015;15: 131. doi: 10.1186/s12877-015-0134-9 26489757

57. Kojima G, Iliffe S, Jivraj S, Liljas A, Walters K. Does current smoking predict future frailty? The English longitudinal study of ageing. Age Ageing. 2018; doi: 10.1093/ageing/afx136

58. Lu L, F Mackay D, Pell JP. Meta-analysis of the association between cigarette smoking and peripheral arterial disease. Heart. 2014; doi: 10.1136/heartjnl-2013-304082

59. Vestbo J, Hurd SS, Agustí AG, Jones PW, Vogelmeier C, Anzueto A, et al. Global Strategy for the Diagnosis, Management, and Prevention of Chronic Obstructive Pulmonary Disease. Am J Respir Crit Care Med. American Thoracic Society; 2013;187: 347–365. doi: 10.1164/rccm.201204-0596PP 22878278

60. Pan B, Jin X, Jun L, Qiu S, Zheng Q, Pan M. The relationship between smoking and stroke. Medicine (Baltimore). 2019;98: e14872. doi: 10.1097/MD.0000000000014872

61. Hackshaw A, Morris JK, Boniface S, Tang JL, Milenkovi D. Low cigarette consumption and risk of coronary heart disease and stroke: Meta-analysis of 141 cohort studies in 55 study reports. BMJ (Online). 2018. doi: 10.1136/bmj.j5855

62. Wade KF, Marshall A, Vanhoutte B, Wu FCW, O’Neill TW, Lee DM. Does pain predict frailty in older men and women? findings from the english longitudinal study of ageing (ELSA). Journals Gerontol—Ser A Biol Sci Med Sci. 2017; doi: 10.1093/gerona/glw226

63. Crombez G, Vlaeyen JWS, Heuts PHTG, Lysens R. Pain-related fear is more disabling than pain itself: Evidence on the role of pain-related fear in chronic back pain disability. Pain. 1999;80: 329–339. doi: 10.1016/s0304-3959(98)00229-2 10204746

64. Eggermont LHP, Swaab DF, Hol EM, Scherder EJA. Walking the line: A randomised trial on the effects of a short term walking programme on cognition in dementia. J Neurol Neurosurg Psychiatry. England; 2009;80: 802–804. doi: 10.1136/jnnp.2008.158444 19531688

65. Agüera-Ortiz L, Failde I, Mico JA, Cervilla J, López-Ibor JJ. Pain as a symptom of depression: Prevalence and clinical correlates in patients attending psychiatric clinics. J Affect Disord. 2011; doi: 10.1016/j.jad.2010.10.022

66. Gerrits MMJG, Van Oppen P, Van Marwijk HWJ, Penninx BWJH, Van Der Horst HE. Pain and the onset of depressive and anxiety disorders. Pain. 2014; doi: 10.1016/j.pain.2013.09.005

67. Gale CR, Westbury L, Cooper C. Social isolation and loneliness as risk factors for the progression of frailty: the English Longitudinal Study of Ageing. Age Ageing. 2018;47: 392–397. doi: 10.1093/ageing/afx188 29309502

68. Cacioppo JT, Cacioppo S. Older adults reporting social isolation or loneliness show poorer cognitive function 4 years later. Evidence-Based Nursing. 2014. pp. 59–60. doi: 10.1136/eb-2013-101379

69. Weiss R. The Study of Loneliness. Loneliness: The Experience of Emotional and Social Isolation. 1974.

70. Szanton SL, Seplaki CL, Thorpe RJ, Allen JK, Fried LP. Socioeconomic status is associated with frailty: The Women’s Health and Aging Studies. J Epidemiol Community Health. NIH Public Access; 2010;64: 63–67. doi: 10.1136/jech.2008.078428 19692719

71. Myers V, Drory Y, Goldbourt U, Gerber Y. Multilevel socioeconomic status and incidence of frailty post myocardial infarction. Int J Cardiol. 2014;170: 338–343. doi: 10.1016/j.ijcard.2013.11.009 24275158

72. Cookson R, Propper C, Asaria M, Raine R. Socio-Economic Inequalities in Health Care in England. Fisc Stud. John Wiley & Sons, Ltd (10.1111); 2016;37: 371–403. doi: 10.1111/j.1475-5890.2016.12109

73. Mackenbach JP, Cavelaars AEJM, Kunst AE, Groenhof F, Andersen O, Borgan JK, et al. Socioeconomic inequalities in cardiovascular disease mortality. An international study. Eur Heart J. 2000;21: 1141–1151. doi: 10.1053/euhj.1999.1990 10924297

74. Singh V, Sahu PK, Sahu BC, Mobin SM. Diels-Alder cycloaddition and ring-closing metathesis: A versatile, stereoselective, and general route to embellished bridged bicyclic systems, carbocyclic framework of secoatisanes, and homologues. J Org Chem. 2009;74: 6092–6104. doi: 10.1021/jo901279g 19610638

75. Bennett DA, Wilson RS, Schneider JA, Evans DA, Mendes de Leon CF, Arnold SE, et al. Education modifies the relation of AD pathology to level of cognitive function in older persons. Neurology. 2003; doi: 10.1212/01.WNL.0000069923.64550.9F

76. Hoogendijk EO, van Hout HPJ, Heymans MW, van der Horst HE, Frijters DHM, Broese van Groenou MI, et al. Explaining the association between educational level and frailty in older adults: Results from a 13-year longitudinal study in the Netherlands. Ann Epidemiol. 2014;24: 538–44.e2. doi: 10.1016/j.annepidem.2014.05.002

77. Stern Y, Albert S, Tang M-X, Tsai W-Y. Rate of memory decline in AD is related to education and occupation: Cognitive reserve? Neurology. 1999; doi: 10.1212/wnl.53.9.1942

78. Everson SA, Maty SC, Lynch JW, Kaplan GA. Epidemiologic evidence for the relation between socioeconomic status and depression, obesity, and diabetes. Journal of Psychosomatic Research. 2002. doi: 10.1016/S0022-3999(02)00303-3

79. Waters DL, van Kan GA, Cesari M, Vidal K, Rolland Y, Vellas B. Gender Specific Associations between Frailty and Body Composition. J frailty aging. 2012;1: 18–23. doi: 10.14283/jfa.2012.4 27092933

80. Shibasaki K, Kin SK, Yamada S, Akishita M, Ogawa S. Sex-related differences in the association between frailty and dietary consumption in Japanese older people: a cross-sectional study. BMC Geriatr. BioMed Central; 2019;19: 211. doi: 10.1186/s12877-019-1229-5 31382881

81. Zhang Q, Guo H, Gu H, Zhao X. Gender-associated factors for frailty and their impact on hospitalization and mortality among community- dwelling older adults: A cross-sectional population-based study. PeerJ. 2018; doi: 10.7717/peerj.4326

82. Rogers NT, Fancourt D. Cultural Engagement Is a Risk-Reducing Factor for Frailty Incidence and Progression. Journals Gerontol Ser B. 2019; doi: 10.1093/geronb/gbz004


Článek vyšel v časopise

PLOS One


2019 Číslo 10
Nejčtenější tento týden
Nejčtenější v tomto čísle
Kurzy

Zvyšte si kvalifikaci online z pohodlí domova

Svět praktické medicíny 1/2024 (znalostní test z časopisu)
nový kurz

Koncepce osteologické péče pro gynekology a praktické lékaře
Autoři: MUDr. František Šenk

Sekvenční léčba schizofrenie
Autoři: MUDr. Jana Hořínková

Hypertenze a hypercholesterolémie – synergický efekt léčby
Autoři: prof. MUDr. Hana Rosolová, DrSc.

Význam metforminu pro „udržitelnou“ terapii diabetu
Autoři: prof. MUDr. Milan Kvapil, CSc., MBA

Všechny kurzy
Kurzy Podcasty Doporučená témata Časopisy
Přihlášení
Zapomenuté heslo

Zadejte e-mailovou adresu, se kterou jste vytvářel(a) účet, budou Vám na ni zaslány informace k nastavení nového hesla.

Přihlášení

Nemáte účet?  Registrujte se

#ADS_BOTTOM_SCRIPTS#