Abstract
Background
Researchers have emphasized the importance of examining how different factors affect men’s and women’s functional status over time. To date, the literature is unclear about whether sex affects the rate of change in disability in middle to older age. Researchers have further emphasized the importance of examining how different factors affect men’s and women’s functional status over time. We examined (a) sex differences in disability trends and (b) the determinants of the rate of change in disability for men and women 50 years and older.
Methods
This study utilized the Taiwan Longitudinal Study on Aging Survey, a nationally representative database (four waves of survey data 1996–2007, N = 3429). We modeled and compared the differences in disability trends and the influences of determinants on trends among men and women using multiple-indicator and multiple-group latent growth curves modeling (LGCM). Equality constraints were imposed on 10 determinants across groups.
Results
Once disability began, women progressed toward greater disability 18% faster than men. Greater age added about 1.2 times the burden to the rate of change in disability for women than men (p < 0.001). More comorbidities also added significantly more burden to baseline disability and rate of change in disability among women than men (p < 0.001), but women benefited more from higher education levels in lower baseline disability and slower rate of change. Having a better social network was associated with lower baseline disability among women only (p < 0.05). For both men and women, physically active leisure-time activities were beneficial in lower baseline disability (p men and women < 0.001) and rate of change in disability (p men < 0.01; p women < 0.05), with no significant differences between groups.
Conclusions
Age may widen the sex gap in the rate of change in disability. However, both sexes benefit from participating in leisure-time activities. Promoting health literacy improves health outcomes and physical function among women.
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Background
Maintaining physical function has been a key public health priority for many fast-aging societies for some time. Over the past 10 years, researchers’ attention has been drawn to identifying factors associated with changes in physical function trends [10, 11, 16, 50]. Sex differences in the nature and range of health pathways over the life course are among these factors, and there have been calls to further delineate sex patterns and health-related consequences [33].
Studies have now shown that sex differences in functional status among older adults reflect not only biological differences but also differences in privilege and power based on sex identity and past decision making [13, 15, 27, 33, 39, 51]. Researchers have further emphasized the importance of examining how different factors affect men’s and women’s functional status over time [10, 27, 57, 58]. When Liang et al. [26] examined functional changes over time among middle-aged and older men and women from a life course perspective, they found that decreases in functional status were more accelerated—in terms of both baseline disability and rate of change in disabilities—among women than men. Chen et al. [10] reported that sex may not be a risk factor for developing initial disability, yet women who do develop disability may be at greater risk than men of faster increases in disability. However, how much faster women’s rate of change in disability may be remains unclear.
Latent growth curves modeling (LGCM) has been e recently advocated as a better method for addressing questions related to individual change over time because it provides estimates of an individual growth curve for each subject, including estimated baseline values and rates of change, while also taking individual variations into consideration [35, 36, 43]. In addition, LGCM gives researchers more flexibility to estimate patterns of change for its ability to establish nonlinear growth trajectories [14, 36].
Only a few determinants have yet been examined for their association with older adults’ disability trends. These determinants have included both mutable determinants, such as health behaviors and social support, and immutable determinants, such as age and number of comorbidities [2, 9, 10, 27, 48, 54]. However, the current literature remains unclear as to what extent these determinants affect disability trends among men and women, and especially how they affect rate of change in disability [47, 56]. Thus, our study aimed to examine both (1) sex differences in disability trends and (2) the different determinants of the rate of change in disability for men and women in middle age and older.
Methods
Data and sample
This study used the Taiwan Longitudinal Study on Aging (TLSA), which was a national population-representative survey launched in 1989, aged 50 and up, and followed up in 1993, 1996, 1999, 2003, and 2007. It was conducted by the Taiwan Provincial Institute of Family Planning (which later became the Bureau of Health Promotion of the Taiwan Department of Health) and the University of Michigan, with support from Taiwan’s government and the U.S. National Institute on Aging (Taiwan Provincial Institute of Family Planning et al., 1989). A second cohort, aged 50–67 years, was added in 1996 and followed in the subsequent waves. Data quality and details of the survey have been presented previously [10, 27, 56]. We included four waves of survey data—from the 1996 to 2007 surveys—in this study’s analysis, due to certain key variables are available only from the data collected in the 1996–2007 surveys. This study included 3429 people who survived to the 2007 survey and had completed at least one of the four surveys for analysis (please see Fig. 1 for details). All subjects provided written informed consent, and the ethical committee of the Bureau of Health Promotion, Taiwan, approved the national survey study.
Respondents were asked to choose between two options for sex: Male or Female. Sample weights representing Taiwan’s population aged 50 and older as of 1996 were included. Missing values were replaced using the multiple imputation procedure in Mplus 7.3 [25].
Measures
Disability trends
In this study, we applied multiple-indicator latent growth curve modeling (LGCM), and included a latent variable for disability trends assessed by three indicators—activities of daily living (ADLs [22];), instrumental activities of daily living (IADLs [21];), and Nagi’s functional limitations [37]. These three indicators were all measured at 1996, 1999, 2003, and 2007 four time points (Disability 1996 to Disability 2007; please see Fig. 2 for illustration).
Using multiple functional outcome measures to assess functional limitations in the older population has been recommended in the literature [10, 23, 57]. The National Research Council has suggested including functional limitations in addition to ADL and IADL limitations to better enable researchers to understand the disability process [38]. LGCM allows researchers to include multiple indicators to estimate the growth curve of the general process of functional disability and the advantages of using multiple-indicator LCGM has been addressed in previous studies [4, 10, 18, 44].
Details regarding the interview contents of TLSA data have been presented previously [10, 11]. The three indicators we included—Nagi’s functional limitations, ADL disability, and IADL disability—assess physical function from multiple perspectives [44]. The severity level for each activity in these three indicators was assessed with four grades, from 0 (no limitation) to 3 (unable to do). The severity level for each category was then summed (see Table 1).
Factors that influence disability trends by sex
Our analysis examined 10 determinants—age, education level, number of comorbidities, depression, alcohol consumption (yes or no), recreational and physically active leisure-time activities, social network, social relations, and use of assistive devices—that have been reported in earlier studies to influence older adults’ disability trends [10]. Data on these factors were drawn from the baseline TLSA survey (the 1996 survey).
Age and education level were measured by the actual year of age and education received. Comorbidities were measured as number of reported chronic health conditions (e.g., hypertension, diabetes mellitus, heart disease, stroke, cancer, pulmonary disease, arthritis, gastric ulcer, liver disease, hip fracture, cataract, renal disease, gout, and spinal spurs). Depression was assessed by the 10-item version of the Center for Epidemiologic Studies Depression Scale (CES-D), which represents levels of depressive symptoms ranging from 0 to 30 [42]. Presence or absence of alcohol consumption was assessed by a question about drinking habits.
Leisure-time activities include the following: (1) watching television, (2) listening to music or radio, (3) reading, (4) playing mahjongg or chess, (5) gathering with friends or family, (6) gardening, (7) taking a walk, (8) outdoor activities such as tai chi, and (9) group activities. Factor loadings ranged from .500 to .863 [8]. Based on information from previous studies, we grouped the first five activities into recreational leisure-time activities and the latter four activities into physically active leisure-time activities [1, 8, 19, 55]. Please see Supplementary Table 1 for detailed information about our categorization of leisure-time activities.
Social network was assessed by frequency of contact with relatives and friends per week [59]. Social support was assessed with four items measuring level of satisfaction (1–5) with emotional support, resulting in a sum score ranging from 4 to 20 (higher scores represent greater satisfaction with support). The four items were “Someone listens to me,” “Someone cares about me,” “My family cares about me” (level of satisfaction), and “Someone will take care of me if I become ill.” The internal consistency was 0.822. and the factor loading ranged from .733 to .800. Use of assistive devices was assessed by individual’s use of four types of devices (0–4): glasses, hearing aids, dentures, and wheelchairs, resulting a sum score ranging from 0 to 4.
Latent growth curve modeling and analysis
We used both multiple-indicator and multiple-group LGCM to test the different influences of the determinants for both groups (men and women) and applied testing for partial invariance [6]. We applied the second-order growth model [30] with the assumption that all indicators shared the same trait and the same trait growth process, and all indicators shared the same state residual component within scaling differences [4]. Figure 2 shows the setup of our multiple-group LGCM. Each latent variable of disability was identified by three physical function measures: ADLs, IADLs, and functional limitations. The upper half and lower half of Fig. 2 indicate the baseline and rate of change in disability, which indicates speed of progression toward disability in each group. This growth process contains two latent factors of baseline disability and two latent factors of disability slope (i.e., rate of change in disability per year from 1996 to 2007) over the 11 years of the study period, for men and women respectively. Baseline and rate of change in disability were thus measured by four latent variables, Disability 1996 to Disability 2007. The determinants were included to assess the impact on disability baselines and slopes across sex. The measurement errors were set to be correlated.
Our analysis was based on comparisons of different models in which parameters were constrained or not constrained to be equal. The analysis procedure was multi-stepped and included (1) testing unconditional multiple-group nonlinear and linear growth models to disability trends among men and women and comparing the model fit; (2) testing unconstrained models allowing all parameters to be freely estimated across groups; (3) testing constrained models assuming that parameters are equal across groups, and comparing by using chi-square difference tests between fully constrained and unconstrained models; and (4) comparing structural parameters by systematically constraining and unconstraining specific paths to determine which paths contribute to significant differences between the two. Equality constraints were imposed on the 10 determinants assessed across groups [40, 43].
In this study, the LGCM was fit to data using Mplus (version 7.1) with a robust maximum likelihood estimator. Four model fit indexes were applied to evaluate the adequacy of model fit [24]: (a) chi-square statistics [20], (b) the Bentler Comparative Fit Index (i.e., CFI ≥ 0.9 [3, 5];, and (c) root mean square error of approximation (i.e., RMSEA ≤0.05) with 90% confidence interval [45]. Significant chi-square difference (∆χ2) tests, which were used to determine significant differences between constrained and unconstrained models, indicated determinants that showed significantly different influences on men’s and women’s disability trends [36].
Results
Sample characteristics
The sample was about 50% women, with a mean age in 1996 of 63.96 (SD = 8.113) years for men and 63.88 (SD = 8.409) years for women. Detailed information regarding the sample included for analysis is presented in Table 1, which also shows that the level of disability among men and women continually increased over time.
Both men and women started out with less severe disabilities in 1996, with grades of 0.83 (SD = 2.54) and 2.18 (SD = 3.71) for Nagi’s functional limitations, 0.42 (SD = 1.66) and 1.22 (SD = 2.67) for IADLs, and 0.08 (SD = 0.94) and 0.12 (SD = 1.00) for ADLs. Baseline grades for men and women were significantly different for Nagi’s functional limitations (p < 0.001) and IADLs (p < 0.001). Functional disabilities among these groups increased over the years; in 2007, more severe disability was measured in Nagi’s functional limitations (men: 1.04, SD = 6.19 vs. women: 6.99, SD = 7.04), IADLs (2.62, SD = 4.94; 4.43, SD = 5.77), and ADLs (1.19, SD = 3.80; 1.9, SD = 4.59).
Latent growth curve model
The unconditional modeling results showed that the nonlinear models fit better to each group’s disability trends (χ2 [66, N = 3429] = 768.275 [men 303.501 vs. women 464.774], p < 0.001; CFI = .941; RMSEA = .058). The multiple-group model showed that disabilities increased more slowly among women than men at Wave 3 of the survey, but increased at a faster rate among women at the Wave 4 survey. Baseline disability levels and rate of change in disability were constrained in separate models and compared to the unconditional and unconstrained model. The baseline disability levels showed no significant difference between the two groups, but once disability began, the progression toward greater disability was almost 18% faster among women than men (B: 0.694 men vs. 0.817 women; p < 0.01). The detailed results of the nonlinear LGCM for disability are presented in Supplementary Table 2 and Supplementary Fig. 1.
Factors that influence men and Women’s rate of change in disability differently
The conditional nonlinear LGCM also fit well to the disability trends (χ2 [303, N = 3429] = 1824.20 [745.343 men vs. 1078.857 women], p < 0.001; CFI = .928; RMSEA = .054). Among women compared to men, greater age added 1.23 times the burden to the rate of change in disability (βAge slope: 0.380, p < 0.001 men vs. 0.467, p < 0.01 women, ∆χ2 = 11.997, p < 0.001). Higher education level was associated with lower rate of change in disability for women but not men, although the differential impact between the two groups was only marginally significant (β Education slope: −0.061, p > 0.05 men vs. -0.066, p < 0.01 women, ∆χ2 = 3.623, p = 0.057). Number of comorbidities was found to add burden to the rate of change in disability in both groups, but the impact of not significantly different between groups (β Comorbidities slope: 0.108, p < 0.01 men vs. 0.146, p < 0.001 women, ∆χ = 2.236, p > 0.05). Finally, both men and women benefited from the effect of physically active leisure-time activity on slowing the rate of change toward greater disability. Although the differential impact between the two groups on the rate of change was again only marginally significant, men tended to benefit more than women from physically active leisure-time activities (β Physically active LTA slope: −0.092, p < 0.01 men vs. -0.063, p < 0.05 women, ∆χ2 = 3.672, p = 0.055).
Other factors studied, such as depression, alcohol habits, and having better social networks, showed differential impacts between the two groups only on baseline disabilities and not the rate of change in disability. Please see Table 2 for details.
Discussion
Past studies have returned inconsistent results on whether sex is associated with different levels of burden on disability trends among middle-aged and older adults [10, 26, 27, 46, 56]. Our study findings advance this body of knowledge by confirming that while middle-aged and older men and women demonstrate no differences in baseline disability, once disability has begun, the rate of change in disability is faster among women than men—18% faster in our study. However, it is necessary to be cautious when interpreting difference in rate of change between groups. In this case, since both men’s and women’s trends progressed in a curved manner, the differences in rate of change may also be different across time.
Another key contribution from this research lies in its focus on how mutable and immutable determinants associate with disability trends differently by sex. Age posed greater risks to disability progression among women than men, while women received marginally more benefit than men from education. However, both women and men benefited from engaging with physically active leisure-time activities through a slower progression in disability.
Age adds more burden for women than men
Age and comorbidities are known to be significant factors for disability ([12, 13, 15, 27, 29, 46, 54]). Most determinants identified in past studies [17, 32, 47, 48, 54, 56] showed significantly different influences by sex only on baseline disabilities in the current study. Age was the only determinant that our study showed to have different influences on change in disability among middle-aged and older men and women. We found that age added 1.23 times the burden in rate of change in disability on women. This indicates that age may also widen the existing gap between men and women in the rate of change in disability.
Some may argue that women have longer life expectancies, and therefore may experience faster increases in disability simply due to their older age. However, in our analysis, the mean age of the groups of men and women in all four waves of data was not significantly different (see Supplementary Table 1). In addition, past studies have suggested that if chronic illness is well controlled, aging is not inevitably related to functional decline [10, 46].
Our study further indicates that while age adds more burden to women than to men in terms of rate of change in disability, comorbidities add burden to both groups. Our results showed that even with age controlled in the model, number of chronic illnesses still added as much as two times the burden to women’s baseline disability as to men’s baseline disability. However, the number of chronic illnesses added burden to rate of change in disability equally for men and women. Thus, preventing the development of chronic illness and decreasing the numbers of chronic illnesses should be the first priority for maintaining physical function for both men and women. Preventing disability during aging, especially for women, should be a focus in future policy-making [12].
The influence of age on the overall disability trend may also be different between adults in middle age and older. An earlier study [56] that used the same dataset as our study also examined trends among adults age 50 years and older. That study found that those who were 50 to 59 years old at baseline showed similar patterns of disability trends as those in other age ranges, but had different probabilities of entering into different disability trend patterns [56]. Yu et al.[54] also indicated that those who are younger are more likely to enter a heathier trend. Careful attention and explanation of participants’ age ranges is necessary, and further studies are recommended to examine the influence of age on disability trends between middle-aged and older adults.
Higher education may benefit women but not men
Past studies have shown that a higher education can be a protective factor against developing disability in later life. More-educated older adults invest in late-life health through healthier behaviors and are thus at less risk of developing and increasing functional limitations or physical disabilities [11, 29]. However, the role of education on disability for men versus women has been controversial in the literature. In our study, women with higher education levels not only had lower baseline disability but also tended to show slower progression toward greater disability. No beneficial effects of education were observed among men, on baseline or progression toward disability.
These findings are not consistent with those of past studies. Zimmer et al. [56] pointed out the possibility of an intertwined influence between sex and education on older adults’ disabilities, noting that education seems to be less important to predicting disability trajectory among women than it is among men, and that women with less education than their husbands may benefit in part from influences tied to the husbands’ characteristics. In contrast, we found education had a beneficial effect on disability only for women and not for men, though the difference was only marginally significant. Other past studies have emphasized that women’s health behaviors are associated with their levels of education and health literacy [28]. Women with higher education may particularly benefit from such characteristics and therefore benefit from lower baseline and slower progression toward disabilities [11].
Based on our study findings, then, continuing to promote higher education levels for women in Taiwan should be considered in future health policy-making. Past studies have also suggested that promoting health literacy among women promotes better health outcomes and physical function, so this could also be considered a policy priority [11, 31, 52].
As to why men did not benefit from higher education in this study, a review study has pointed out that men responded better toward male-specific health-related information, rather than assuming all health education efforts are equally effective with everyone [41]. Planning different health education campaigns for women and men is recommended.
Leisure-time activities benefit both women and men
Many past studies have reported that being physically active reduces disability in older adults and prevents new-onset ADL disabilities [17, 47, 48, 54, 56]. Strobl et al. [47] suggested that men benefit more than women from physically active leisure-time activities in terms of developing late-life disability, but that once disability begins, there appears to be no further association with the severity of disability. Our findings were thus partly in line with the results of previous studies [11, 47].
Our study findings indicated that once disability began, physically active leisure-time activities were strongly associated with slower progress toward severe disability among both men and women. Our study further showed that men seemed to benefit more than women from physically active leisure-time activities in terms of slower progression toward disability. Past studies have suggested that sex differences might contribute to different outcomes from physical activities, such as non-fatal chronic conditions, lower muscle strength, and lower bone density in women [39].. Past studies have also shown that men and women age 50 and older prefer different physical activities [34, 49] and that the percentage of women reporting high levels of physical activity was significantly lower than the percentage of men reporting high activity levels [7, 47]. These may also lead to fewer disadvantages in making slower progression in disabilities among women. Further research is needed to understand to what extent the level of physical activity affects middle-aged and older men’s and women’s rate of change in disability.
Strobl et al. [47] have pointed out that their study sample cannot be representative of all older people, particularly those who do not choose to participate in research due to disabling conditions. Our study was based on a representative survey of the population, which included people who had and had not participated in leisure-time activities. Different target samples might also contribute different findings from the current study and past studies [47]. However, promoting physically active leisure-time activities for both sexes is a promising strategy.
Limitations
Several limitations need to be addressed. The first is that for parsimony of the model, we investigated only 10 of the commonly studied determinants of sex disparities. A number of other variables known to influence the development of disability (e.g., cognitive impairments and economic status) were not included due to data availability. The current study can still serve as a foundation for further studies that examine a more comprehensive set of determinants and their associations with different functional outcomes in men and women. The second limitation is that, as with many longitudinal studies, this study had selective attrition. We included in the analysis only those men and women who survived the 11-year period from 1996 to 2007.
In addition, although differences in mean age of the men and women included in our analysis remained nonsignificant across all four waves of data, those who were not included were more likely to be older and have more severe disabilities. Thus, our results shall be interpreted with caution.
The advantage of LGCM is in examining the distribution of trajectories that vary continuously across individuals [57]. The disadvantage is that including deceased individuals may lead to sampling error and bias the estimation of the disability trajectory, particularly for those who experience early onset of disability [56]. As a result, LGCM tends to favor separate estimates for surviving and deceased respondents [53], and we decided not to include the deceased in our analyses. However, this may limit our ability to generalize our findings to those who died, and our results should thus be interpreted with caution.
Conclusions
To date, very few population-based studies have aimed to understand the issue of sex-specific differences in the impact of determinants on the rate of change in disability among men and women in middle aged and older. We found that while women did not bear a larger burden of baseline disability than men, once disability began, women’s progression toward greater disability occurred faster. Only age had a different impact by sex on the rate of change in disability; while education and physically active leisure-time activities marginally benefited both women and men through slower progression toward disabilities. Physically active leisure-time activities are mutable determinants that promise to be beneficial for both sexes, though men seemed to benefit more than women from participating in these activities. Promoting physically active leisure-time activities should be a priority for future policy and interventions aimed at maintaining adults’ physical functioning over time—for both men and women. Better control of chronic illness, preventing disability at earlier ages, and promoting middle-aged and older women’s education also remain important policy goals.
Availability of data and materials
The data that support the findings of this study are available from Taiwan’s Health and Welfare Data Science Center but restrictions apply to the availability of these data, which were used under license for the current study, and so are not publicly available. Data are however available from the authors upon reasonable request and with permission of Taiwan’s Health and Welfare Data Science Center. Further contact information is available through the following URL: https://dep.mohw.gov.tw/dos/cp-5119-59201-113.html.
Abbreviations
- FL :
-
Functional limitation
- IADL :
-
Instrumental activities of daily living
- ADL:
-
Activities of daily living
References
Adams KB, Leibbrandt S, Moon H. A critical review of the literature on social and leisure activity and wellbeing in later life. Ageing Soc. 2011;31(4):683–712. https://doi.org/10.1017/S0144686X10001091.
Aday LA, Andersen R. A framework for the study of access to medical care. Health Serv Res. 1974;9(3):208–20.
Bentler PM. Comparative fit indexes in structural models. Psychol Bull. 1990;107(2):238–46. https://doi.org/10.1037/0033-2909.107.2.238.
Bishop J, Geiser C, Cole DA. Modeling latent growth with multiple indicators: a comparison of three approaches. Psychol Methods. 2014. https://doi.org/10.1037/met0000018.
Bollen KA. A new incremental fit index for general structural equations models. Sociol Methods Res. 1989;17:303–16.
Byrne BM. Structural equation modeling with Mplus: Basic concepts, applications, and programming. New York: Routledge; 2013.
Cawthon PM, Fink HA, Barrett-Connor E, Cauley JA, Dam TT, Lewis CE, et al. Alcohol use, physical performance, and functional limitations in older men. J Am Geriatr Soc. 2007;55(2):212–20. https://doi.org/10.1111/j.1532-5415.2007.01062.x.
Chao S-F. Changes in leisure activities and dimensions of depressive symptoms in later life: a 12-year follow-up. Gerontologist. 2014a;56(3):397–407. https://doi.org/10.1093/geront/.
Chen CM, Mullan J, Su YY, Griffiths D, Kreis IA, Chiu HC. The longitudinal relationship between depressive symptoms and disability for older adults: a population-based study. J Gerontol A Biol Sci Med Sci. 2012. https://doi.org/10.1093/gerona/gls074.
Chen YM, Chen DR, Chiang TL, Tu YK, Yu HW. Determinants of rate of change in functional disability: an application of latent growth curve modeling. Arch Gerontol Geriatr. 2016;64:21–8. https://doi.org/10.1016/j.archger.2015.11.012.
Chen YM, Tu YK, Yu HW, Chiu TY, Chiang TL, Chen DR, et al. Leisure time activities as mediating variables in functional disability progression: an application of parallel latent growth curve modeling. PLoS One. 2018;13(10):e0203757. https://doi.org/10.1371/journal.pone.0203757.
Chiu CJ, Wray LA, Ofstedal MB. Diabetes-related change in physical disability from midlife to older adulthood: evidence from 1996-2003 survey of health and living status of the elderly in Taiwan. Diabetes Res Clin Pract. 2011;91(3):413–23. https://doi.org/10.1016/j.diabres.2010.12.003.
Chou KL, Leung JCB. Disability trends in Hong Kong community-dwelling Chinese older adults: 1996, 2000, and 2004. J Aging Health. 2008;20(4):385–404. https://doi.org/10.1177/0898264308315852.
Duncan TE, Duncan SC, Strycker LA. An introduction to latent variable growth curve modeling: concepts, issues, and publication. 2nd ed. Mahwah; 2006.
Freedman VA, Martin LG, Schoeni RF. Recent trends in disability and functioning among older adults in the United States: a systematic review. JAMA. 2002;288(24):3137–46 https://doi.org/jrv20048 [pii].
Fried LP, Ferrucci L, Darer J, Williamson JD, Anderson G. Untangling the concepts of disability, frailty, and comorbidity: implications for improved targeting and care. J Gerontol A Biol Sci Med Sci. 2004;59(3):255–63 http://www.ncbi.nlm.nih.gov/pubmed/15031310.
Hamer M, Lavoie KL, Bacon SL. Taking up physical activity in later life and healthy ageing: the English longitudinal study of ageing. Br J Sports Med. 2014;48(3):239–43. https://doi.org/10.1136/bjsports-2013-092993.
Hancock G, Kuo W-L, Lawrence F. An illustration of second-order latent growth models. Struct Equ Model Multidiscip J. 2001;8(3):470–89. https://doi.org/10.1207/s15328007sem0803_7.
Hu Y-H, Chiu C-J, Wong JD, Lin D-C, Wray LA. The role of leisure activities in the relationship between marital transition in later midlife and psychological well-being trajectories. Int J Aging Hum Dev. 2017;86(4):327–46. https://doi.org/10.1177/0091415017729683.
Jöreskog KG, Sörbom D. Advanced in factor analysis and structural equation models; 1979.
Kane RA, Kane RL. Assessing the elderly: a practical guide to measurement: Lexington Books; 1981.
Katz S, Akpom CA. Index of ADL. Med Care. 1976;14(5 Suppl):116–8.
Keysor J. Does late-life physical activity or exercise prevent or minimize disablement? A critical review of the scientific evidence. Am J Prev Med. 2003;25(3):129–36. https://doi.org/10.1016/s0749-3797(03)00176-4.
Kline RB. Principles and practice of structural equation modeling: Guilford; 2011.
Kmetic A, Joseph L, Berger C, Tenenhouse A. Multiple imputation to account for missing data in a survey: estimating the prevalence of osteoporosis. Epidemiology. 2002;13(4):437–44 http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?cmd=Retrieve&db=PubMed&dopt=Citation&list_uids=12094099.
Liang J, Bennett JM, Shaw BA, Quinones AR, Ye W, Xu X, et al. Gender differences in functional status in middle and older age: are there any age variations? J Gerontol B Psychol Sci Soc Sci. 2008;63(5):S282–92 http://www.ncbi.nlm.nih.gov/pubmed/18818448.
Liang J, Wang CN, Xu X, Hsu HC, Lin HS, Lin YH. Trajectory of functional status among older Taiwanese: gender and age variations. Soc Sci Med. 2010;71(6):1208–17. https://doi.org/10.1016/j.socscimed.2010.05.007.
Liu YB, Liu L, Li YF, Chen YL. Relationship between health literacy, health-related behaviors and health status: a survey of elderly Chinese. Int J Environ Res Public Health. 2015;12(8):9714–25. https://doi.org/10.3390/ijerph120809714.
Martin LG, Zimmer Z, Hurng B-S. Trends in late-life disability in Taiwan, 1989–2007: the roles of education, environment, and technology. Popul Stud. 2011;65(3):289–304. https://doi.org/10.1080/00324728.2011.604730.
McArdle JJ. Causal modeling applied to psychonomic systems simulation. Behav Res Methods Instrum. 1980;12:193–209.
McDougall GJ Jr, Mackert M, Becker H. Memory performance, health literacy, and instrumental activities of daily living of community residing older adults. Nurs Res. 2012;61(1):70–5. https://doi.org/10.1097/NNR.0b013e31823b18f4.
McLaughlin D, Leung J, Pachana N, Flicker L, Hankey G, Dobson A. Social support and subsequent disability: it is not the size of your network that counts. Age Ageing. 2012. https://doi.org/10.1093/ageing/afs036.
Moen P, Chermack K. Gender disparities in health: strategic selection, careers, and cycles of control. J Gerontol B Psychol Sci Soc Sci. 2005;60 Spec No 2:99–108. https://doi.org/10.1093/geronb/60.special_issue_2.s99.
Moschny A, Platen P, Klaassen-Mielke R, Trampisch U, Hinrichs T. Physical activity patterns in older men and women in Germany: a cross-sectional study. BMC Public Health. 2011;11:559. https://doi.org/10.1186/1471-2458-11-559.
Muthen B, Asparouhov T. Growth mixture modeling: analysis with non-Gaussian random effects. In: Fitzmaurice MG, Davidian GV, Molenberghs G, editors. Longitudinal data analysis: Chapman & Hall/CRC; 2009. p. 143–65.
Muthen L, Muthen B. Mplus User's guide. 4th ed; 2012. Muthen & Muthen
Nagi SZ. An epidemiology of disability among adults in the United States. Milbank Mem Fund Q Health Soc. 1976;54(4):439–67.
National Research Council. Improving the measurement of late-life disability in population surveys: beyond ADLs and IADLs, summary of a workshop: The National Academies Press; 2009.
Oksuzyan A, Petersen I, Stovring H, Bingley P, Vaupel JW, Christensen K. The male-female health-survival paradox: a survey and register study of the impact of sex-specific selection and information bias. Ann Epidemiol. 2009;19(7):504–11. https://doi.org/10.1016/j.annepidem.2009.03.014.
Park I, Schutz RW. An introduction to latent growth models: analysis of repeated measures physical performance data. Res Q Exerc Sport. 2005;76(2):176–92 http://www.ncbi.nlm.nih.gov/pubmed/16128485.
Peak T, Gast JA. Aging Men’s health-related behaviors. SAGE Open. 2014;4(4). https://doi.org/10.1177/2158244014558044.
Radloff LS. The use of the Center for Epidemiologic Studies Depression Scale in adolescents and young adults. J Youth Adolesc. 1991;20(2):149–66. https://doi.org/10.1007/BF01537606.
Rogosa D, Brandt D, SZimowski M. A growth curve approach to the measurement of change. Psychol Bull. 1982;92(3):726–48.
Spector WD, Fleishman JA. Combining activities of daily living with instrumental activities of daily living to measure functional disability. J Gerontol B Psychol Sci Soc Sci. 1998;53(1):S46–57. https://doi.org/10.1093/geronb/53b.1.s46.
Steiger JH. Structural model evaluation and modification. Multivar Behav Res. 1990;25:173–80.
Stenholm S, Westerlund H, Head J, Hyde M, Kawachi I, Pentti J, et al. Comorbidity and functional trajectories from midlife to old age: the health and retirement study. J Gerontol A Biol Sci Med Sci. 2015;70(3):332–8. https://doi.org/10.1093/gerona/glu113.
Strobl R, Muller M, Thorand B, Linkohr B, Autenrieth CS, Peters A, et al. Men benefit more from midlife leisure-time physical activity than women regarding the development of late-life disability--results of the KORA-age study. Prev Med. 2014;62:8–13. https://doi.org/10.1016/j.ypmed.2014.01.017.
Tak E, Kuiper R, Chorus A, Hopman-Rock M. Prevention of onset and progression of basic ADL disability by physical activity in community dwelling older adults: a meta-analysis. Ageing Res Rev. 2013;12(1):329–38. https://doi.org/10.1016/j.arr.2012.10.001.
Thandi MKG, Phinney A, Oliffe JL, Wong S, McKay H, Sims-Gould J, et al. Engaging older men in physical activity: implications for health promotion practice. Am J Mens Health. 2018;12(6):2064–75. https://doi.org/10.1177/1557988318792158.
Tsay S. The long-term care 2.0 version of the community-based model in Taiwan. Taipei: Ministry of Health and Welfare; 2016.
Johnsson-Latham G. Power and Privileges: Gender Discrimination and Poverty. Stockholm: The Ministry for Foreign Affairs, Sweden; 2004.
Wolf MS, Feinglass J, Thompson J, Baker DW. In search of 'low health literacy': threshold vs. gradient effect of literacy on health status and mortality. Soc Sci Med. 2010;70(9):1335–41. https://doi.org/10.1016/j.socscimed.2009.12.013.
Yang Y, Lee LC. Dynamics and heterogeneity in the process of human frailty and aging: evidence from the U.S. older adult population. J Gerontol B Psychol Sci Soc Sci. 2010;65b(2):246–55. https://doi.org/10.1093/geronb/gbp102.
Yu HW, Chen DR, Chiang TL, Tu YK, Chen YM. Disability trajectories and associated disablement process factors among older adults in Taiwan. Arch Gerontol Geriatr. 2015;60(2):272–80. https://doi.org/10.1016/j.archger.2014.12.005.
Yu HW, Chiang TL, Chen DR, Tu YK, Chen YM. Trajectories of leisure activity and disability in older adults over 11 years in Taiwan. J Appl Gerontol. 2018;37(6):706–27. https://doi.org/10.1177/0733464816650800.
Zimmer Z, Martin LG, Jones BL, Nagin DS. Examining late-life functional limitation trajectories and their associations with underlying onset, recovery, and mortality. J Gerontol B Psychol Sci Soc Sci. 2014;69(2):275–86. https://doi.org/10.1093/geronb/gbt099.
Zimmer Z, Martin LG, Nagin DS, Jones BL. Modeling disability trajectories and mortality of the oldest-old in China. Demography. 2012;49(1):291–314. https://doi.org/10.1007/s13524-011-0075-7.
Zimmer Z, Martin LG, Nagin DS, Jones BL, Hrung BS. Disability trajectories by age, sex, and education, among older adults in Taiwan. 2009. http://www.ined.fr/fichier/t_telechargement/37859/telechargement_fichier_fr_zimmer.pdf
Zunzunegui MV, Alvarado BE, Del Ser T, Otero A. Social networks, social integration, and social engagement determine cognitive decline in community-dwelling Spanish older adults. J Gerontol B Psychol Sci Soc Sci. 2003;58(2):S93–S100 http://www.ncbi.nlm.nih.gov/pubmed/12646598. http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3833829/pdf/S93.pdf.
Acknowledgements
The authors wish to express their gratitude to the National Science Council for its generous financial support and the Department of Statistics and the Social and Family Affairs Administration at the Ministry of Health and Welfare for its gracious help with data access.
Funding
This work was supported by the Ministry of Science and Technology (MOST105–2410-H-002-214-MY3, MOST108–2410-H-002-123-SS2, and MOST 109–2634-F- 002-044.). The funding body (MOST) has no influence on or contribution to the study design, data collection, analysis and interpretation of data, or writing the manuscript.
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YC planned the study, performed all statistical analyses, interpreted the results, and wrote the paper. YT supervised the data analysis, performed statistical analyses, interpreted the results, helped write the paper, and contributed to revising the paper. DC and TC helped plan the study and revise the manuscript. HY helped clear the data, performed part of the analysis, helped interpret the result, and contributing to revising the manuscript. WC performed statistical analysis, interpreted the results. All authors have read and approved the manuscript.
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The Taiwan Longitudinal Study on Aging (TLSA) was a national population-representative survey launched in 1989, aged 50 and up, and followed up in 1993, 1996, 1999, 2003, and 2007. The current study was approved by the Research Ethics Committee of National Taiwan University Hospital (2013HS064, 201503016 W); We had applied for accessing and using the TLSA data to the Taiwan’s Health and Welfare Data Science Center, Ministry of Health and Welfare (H102054).
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Supplementary Information
Additional file 1: Supplementary Table 1
. Detailed Descriptions of the Measures (N = 3249). Supplementary Table 2. Descriptive Results and Factor Loadings of Nonlinear Unconditional LGCM for Disability Trends in Four Waves of Survey Data (N = 3429).
Additional file 2: Supplementary Figure 1
. Disability Trends of Men and Women Over 11 years of study period.
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Chen, YM., Chiang, TL., Chen, DR. et al. Differing determinants of disability trends among men and women aged 50 years and older. BMC Geriatr 22, 11 (2022). https://doi.org/10.1186/s12877-021-02574-3
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DOI: https://doi.org/10.1186/s12877-021-02574-3