Literature DB >> 20149238

Multilevel analysis of covariation in socioeconomic predictors of physical functioning and psychological well-being among older people in rural Vietnam.

Van Minh Hoang1, Lan Huong Dao, Stig Wall, Thi Kim Chuc Nguyen, Peter Byass.   

Abstract

BACKGROUND: There remains a lack of research on co-variation of multiple health outcomes and their socio-economic co-patterning, especially among the elderly. This papers aims to 1) examine the effects of different socio-economic factors on physical functioning and psychological well-being among older adults in a rural community in northern Vietnam; and 2) investigate the extent to which the two outcomes variables co-vary within individuals.
METHODS: We analyzed the data from the WHO/INDEPTH study on global ageing and adult health conducted on 8535 people aged 50 years old and over in Bavi district of Vietnam in 2006. A multivariate response model was constructed to answer our research questions. The model treats the individual as a level two unit and the multiple measurements observed within an individual as a level one unit.
RESULTS: Lower physical functioning and psychological well-being were found in 1) women; 2) older people; 3) people with lower education level; 4) people who were currently single; 5) respondents from poorer household; and 6) mountainous dwellers compared to that in those of other category(ies) of the same variable. Socioeconomic factors accounted for about 24% and 7% of variation in physical functioning and psychological well-being scores, respectively. The adjusted correlation coefficient (0.35) indicates that physical functioning and psychological well-being did not strongly co-vary.
CONCLUSIONS: The present study shows that there exist problems of inequality in health among older adults in the study setting. This finding highlights the importance of analyzing multiple dimensions of health status simultaneously in inequality investigations.

Entities:  

Mesh:

Year:  2010        PMID: 20149238      PMCID: PMC2829473          DOI: 10.1186/1471-2318-10-7

Source DB:  PubMed          Journal:  BMC Geriatr        ISSN: 1471-2318            Impact factor:   3.921


Background

The past century has witnessed a demographic transition characterized by a rapid ageing process. Population projections for the coming years show a considerable increase in the proportion of older people worldwide [1-3]. To effectively and efficiently respond to the growing health needs of elderly populations, it is critical to have in-depth understandings about their health conditions and related socioeconomic factors. Literature from developed countries has consistently shown that socioeconomic disparities in health existed in general populations as well as among the elderly. Individuals with lower socioeconomic positions are more likely to suffer from both morbidity and mortality [4,5]. Similarly, elders who had higher education and socioeconomic status experienced less depression [6]. However, studies from developing countries have shown inconsistent findings on the effects of socioeconomic status on elderly health. Some studies show that older adults in lower socio-economic positions generally experience worse health than those in better-off groups [7-11]. Some other studies showed that the strength of associations between socioeconomic status and elderly health were less clear or non-existent [12,13]. Although many studies have been conducted to examine inequalities in health status across socioeconomic groups, almost all of them have investigated different aspects of health status separately [14]. There remains lack of research on co-variation of multiple health outcomes and their socio-economic co-patterning, especially among the elderly. As "health" is defined by WHO as "a state of complete physical, mental and social well-being and not merely the absence of disease or infirmity" [15], it is important to explore co-morbidity of physical functioning and psychological well-being among the elderly. Vietnam, a developing country in South-East Asia, has experienced the population aging phenomenon. The proportion of people aged 50 years and over rose from 12.6% in 2000 to 14.1% in 2005 and will account for 18.9% of total population in 2015 [3]. Similar to other low-and middle-income countries, little research has been conducted in Vietnam on the issues of elderly health, particularly in regard to the co-variation of different health outcomes. In response to the necessity and urgency of having scientific evidence on the issues of socioeconomic determinants of elderly health, this paper, using a multivariate multilevel modelling approach, aims to 1) examine the effects of different socio-economic factors on physical functioning and psychological well-being among older adults in a rural community in northern Vietnam; and 2) investigate the extent to which the two outcome variables co-vary within individuals.

Methods

Data source

We used data from the WHO/INDEPTH study on global ageing and adult health. The overall study, conducted during 2006-2007, gathered information on health state and quality of life among people aged 50 years old and over in nine demographic surveillance sites from the International Network for the continuous Demographic Evaluation of Populations and Their Health in developing countries (INDEPTH) http://www.indepth-network.net: South Africa (Agincourt and Hlabisa), Viet Nam (Filabavi), Tanzania (Ifakara), Bangladesh (Matlab), Kenya (Nairobi), Ghana (Navrongo), Indonesia (Purworejo), and India (Vadu). The total sample size was over 46,000 respondents [16]. In Vietnam, this study was conducted in 2006 in a rural district in Northern Vietnam, Bavi district, within the framework of a Demographic Surveillance System called FilaBavi (Epidemiological Field Laboratory of Bavi). Face-to-face household interviews were conducted with all the people aged 50 years old and over who lived in FilaBavi areas. The interviews were done by trained surveyors of the FilaBavi using standard WHO/INDEPTH questionnaire- summary version. More detailed descriptions of the Bavi district and FilaBavi can be found elsewhere [17].

Measurements

Outcome variables

In this study, both physical functioning and psychological well-being were analysed as outcome variables. Physical functioning was measured by asking respondents about their functional difficulties in the last 30 days, including the level of difficulty 1) in standing for long periods; 2) in taking care of your household responsibilities; 3) in joining in community activities [for example, festivities, religious or other activities] in the same way as anyone else can; 4) in concentrating on doing something for 10 minutes; 5) in walking a long distance such as a kilometre; 6) in washing (bathing) the whole body; 7) in getting dressed; and 8) in day to day work. For psychological well-being, the study subjects were asked: 1) "Overall in the last 30 days, how much of a problem did you have with feeling sad, low or depressed?" and 2) "Overall in the last 30 days, how much of a problem did you have with worry or anxiety?" The response set for each question was a five-point scale where 1 = None, 2 = Mild, 3 = Moderate, 4 = Severe, 5 = Extreme/cannot do. The scale reliability coefficient (Cronbach's alpha) for physical functioning and psychological well-being questions was 0.89 and 0.86, respectively. Total score for each dimension (i.e. physical functioning and psychological well-being) was the sum of all the relevant question scores. Higher scores indicated a person with poorer status of physical functioning or psychological well-being.

Independent variables

We included a wide range of socioeconomic information as independent variables such as sex, age, educational level, marital status of the individual, household size, place of residence and economic status of the household. Educational level was categorized into three groups: I: No schooling; II: Less than six year of education; III: Graduated from primary school and higher. Marital status was categorized as: I: Currently in marital partnership (living with spouse or partner); II: Currently single (never married, divorced or widowed). Place of residence was defined I: Riverside/island; II: Highland; and III: Mountainous area. Economic status of the respondent's household was measured by asset-based wealth quintiles. The wealth quintiles were constructed using a principal component analysis technique [18].

Statistical analysis

A multivariate response model was constructed to answer our research questions. The model treats the individual as a level two unit and the multiple measurements observed within an individual as a level one unit. We developed a 2-level model of 17070 (two outcomes for each individual) at level 1 nested within 8535 individuals at level 2 (Figure 1). By treating multiple outcomes within the multivariate response model, we were able to estimate the covariance between two outcomes nested within individuals, as well as the variance for each outcome in a simultaneous manner.
Figure 1

Multilevel structure.

Multilevel structure. The two-level model can be written as follows: Where: Z2ij = 1 - Z lij, Xj = independent variables (gender, age, marital status, education, wealth status, place of residence, household size), var(U1j) = σ2u1 = variance in physical functioning, var(U2j) = σ2u2 = variance in psychological well-being, cov(U1j U2j) = σu12 = covariance of physical functioning and psychological well-being The modeling was done in two steps. In Model 1 (Empty model), no explanatory variable was included. Model 2 (Full model) had all independent variables. The results were presented as coefficient and standard errors (SE). A significance level of p < 0.05 was used. MLwiN software, version 2.02 http://www.cmm.bristol.ac.uk/MLwiN, was used for the analyses.

Ethical considerations

The protocol of this study was approved by the Scientific Board of the FilaBavi. All human subjects in the study were asked for their written informed consent before collecting data, and all had complete right to withdraw from the study at any time without having any threat or disadvantage.

Results

Characteristics of the study populations

Of the total of 8,874 people aged 50 years and over who lived in the study setting at the time of the survey, there were 8,535 who participated in the study (96%). 4% did not respond to the survey because they were away (2.3%) or were not healthy enough to take part in the survey (1.7%). There were no significant differences in socioeconomic characteristics between the respondents and the non-respondents. Of the final sample, 37.7% were aged 50-59 years, 36.5% 60-69 years, 24.4% 70-79 years and 11.4% 80 years and over. The characteristics of the final sample are described in Table 1.
Table 1

Characteristics of the study participants, FilaBavi, Vietnam 2006

Characteristics50-59n [%]60-69n [%]70-79n [%]80+n [%]All agesn [%]
Gender
- Male1436 [44.6]1023 [45.3]757 [36.3]253 [26.1]3469 [40.6]
- Female1785 [55.4]1235 [54.7]1329 [63.7]717 [73.9]5066 [59.4]
Education
- No schooling56 [1.7]110 [4.9]298 [14.3]414 [42.7]878 [10.3]
- Less than six year of education940 [29.2]1245 [55.1]1493 [71.6]512 [52.8]4190 [49.1]
- Graduated from primary school and higher2225 [69.1]903 [40.0]295 [14.1]44 [4.5]3467 [40.6]
Marital status
- Currently in marital partnership2772 [86.1]1714 [75.9]1152 [55.2]257 [26.5]5895 [69.1]
- Currently single449 [13.9]544 [24.1]934 [44.8]713 [73.5]2640 [30.9]
Socio-economic
- 1st quintile (poorest)277 [8.6]285 [12.7]467 [22.4]180 [18.6]1209 [14.2]
- 2nd quintile523 [16.3]436 [19.4]432 [20.8]157 [16.2]1548 [18.2]
- 3rd quintile694 [21.6]510 [22.6]405 [19.5]178 [18.4]1787 [21.0]
- 4th quintile853 [26.6]545 [24.2]375 [18.0]223 [23.0]1996 [23.4]
- 5th quintile (richest)866 [27.0]477 [21.2]403 [19.4]230 [23.8]1976 [23.2]
Place of residence
- Riverside/island1113 [34.6]753 [33.4]702 [33.7]355 [36.6]2923 [34.3]
- Highland1600 [49.7]1165 [51.6]991 [47.5]443 [45.7]4199 [49.2]
- Mountainous area508 [15.8]340 [15.1]393 [18.8]172 [17.7]1413 [16.6]

Total3221 [100]2258 [100]2086 [100]970 [100]8535 [100]
Characteristics of the study participants, FilaBavi, Vietnam 2006

Levels of physical functioning and psychological well-being

The scores of physical functioning ranged from 5 to 40. The psychological well-being levels were between 2 to 10. The means (and the corresponding standard deviations) of physical functioning and psychological well-being levels reported by the study respondents are presented in Table 2.
Table 2

Levels of physical functioning and psychological well-being among older adults, FilaBavi, Vietnam 2006.

Socioeconomic variablesPhysicalfunctioningmean [sd]Psychologicalwell-beingmean [sd]
Gender:
- Male13.7 [6.7]3.4 [1.9]
- Female15.5 [7.0]3.8 [2.2]
Age:
 50-5911.9 [4.9]3.5 [2.0]
 60-6913.7 [5.9]3.7 [2.1]
 70-7916.9 [7.2]3.7 [2.2]
 80+22.1 [7.9]3.8 [2.2]
Education:
- No schooling20.6 [8.1]4.2 [2.4]
- Less than six year of education15.5 [6.9]3.7 [2.1]
- Graduated from primary school and higher12.4 [5.5]3.4 [1.9]
Marital status:
- Currently in marital partnership13.6 [6.2]3.5 [2.0]
- Currently single17.5 [7.7]4.0 [2.3]
Socio-economic:
- 1st quintile [poorest]16.3 [7.3]4.2 [2.4]
- 2nd quintile15.1 [7.0]3.8 [2.1]
- 3rd quintile14.7 [6.8]3.6 [2.0]
- 4th quintile14.4 [7.0]3.5 [2.0]
- 5th quintile [richest]14.1 [6.7]3.3 [1.9]
Place of residence:
- Riverside/island15.6 [7.2]3.8 [2.1]
- Highland15.2 [6.8]3.3 [1.8]
- Mountainous area14.1 [6.8]3.6 [2.1]
Levels of physical functioning and psychological well-being among older adults, FilaBavi, Vietnam 2006. The variations in physical functioning and psychological well-being levels by socio-demographic variables were similar. Lower physical functioning and psychological well-being were found in 1) women; 2) older people; 3) people with lower education level; 4) people who were currently single; 5) respondents from poorer household; and 6) mountainous dwellers compared to those in other category(ies) of the same variable.

Multilevel modelling results

Table 3 shows the random part of the multivariate response model. The empty model indicates that there was significant variation in each outcome of interest. The variance in both physical functioning and psychological well-being became smaller after the socio-economic variables were included (Full model). The socioeconomic factors accounted for about 24% and 7% of variation in physical functioning and psychological well-being scores, respectively. There was a significant correlation between these two independent variables. About 14% of the covariance between these two outcomes of interest was attributable to the socioeconomic factors. However, the adjusted correlation coefficient of 0.35 in the full model indicates that physical functioning and psychological well-being did not strongly co-vary (i.e. an individual with poorer physical functioning did not necessarily have a lower level of psychological well-being and vice versa) (Figure 2).
Table 3

Random part of the multivariate response model, FilaBavi, Vietnam 2006

Empty modelFull modelChange in estimate
EstimateSEEstimateSE
Variance in Physicalcapacity4.40.064.10.067%
Variance in Psychologicalwell-being48.40.7436.60.5624%
Covariance5.00.174.30.1414%
Figure 2

Correlation between physical functioning and psychological well-being. Correlation coefficient = 0.35, after adjusting for socio-economic variables.

Correlation between physical functioning and psychological well-being. Correlation coefficient = 0.35, after adjusting for socio-economic variables. Random part of the multivariate response model, FilaBavi, Vietnam 2006 Table 4 presents the fixed part findings of the full model. There were some similarities as well as differences in socioeconomic patterning of physical functioning and psychological well-being. Women were more likely to have poor physical functioning and low psychological well-being levels than men. While age was shown to be a negative predictor of physical functioning, it had no significant effect on psychological well-being. People with higher educational levels reported being better in both physical functioning and psychological well-being. Those who were currently in marital partnerships had better status of physical functioning and psychological well-being. Significant economic differentials were found for psychological well-being (i.e. the better-off had less psychological problems) but not for physical functioning. Mountainous dwellers had significantly lower levels of both physical functioning and psychological well-being. Household size had no important effect on the two outcomes variables.
Table 4

Fixed part of the multivariate response model, FilaBavi, Vietnam 2006

Socioeconomic variablesPhysicalcapacityCoefficient [SE]Psychologicalwell-beingCoefficient [SE]
Gender:
- MaleReferenceReference
- Female0.34 [0.16]*0.2 [0.05]*
Age:
 50-59ReferenceReference
 60-691.48 [0.17]*0.08 [0.06]
 70-794.05 [0.20]*-0.02 [0.07]
 80+8.40 [0.27]*-0.16 [0.09]
Education:
- No schoolingReferenceReference
- Less than six year of education-2.20 [0.24]*-0.35 [0.08]*
- Graduated from primary school and higher-2.88 [0.29]*-0.46 [0.10]*
Marital status:
- Currently in marital partnershipReferenceReference
- Currently single0.58 [0.17]*0.26 [0.06]*
Socio-economic:
- 1st quintile [poorest]ReferenceReference
- 2nd quintile0.02 [0.24]-0.34 [0.08]*
- 3rd quintile-0.08 [0.24]-0.48 [0.08]*
- 4th quintile-0.16 [0.24]-0.52 [0.08]*
- 5th quintile [richest]-0.42 [0.25]-0.72 [0.08]*
Family size:0.02 [0.04]-0.02 [0.01]
Place of residence:
- Riverside/island-0.61 [0.20]*-0.58 [0.07]*
- Highland-1.42 [0.15]*-0.24 [0.05]*
- Mountainous areaReferenceReference
Intercept:15.15 [0.38]*4.54 [0.13]*

* denotes a significant result (p < 0.05)

Fixed part of the multivariate response model, FilaBavi, Vietnam 2006 * denotes a significant result (p < 0.05)

Discussion

In this study, adopting the WHO's definition of health, we considered both physical functioning and psychological well-being as fundamental end points of elderly health. Taking advantage of the multilevel modelling approach, we were able to investigate the co-variation in socioeconomic correlates of physical functioning and psychological well-being within individuals. We found some common significant socioeconomic predictors of both physical functioning and psychological well-being among the elderly in the study setting such as gender, education and place of residence. Independently of other factors, women were shown to suffer more from both physical and psychological problems. This is consistent with findings from previous studies in Asia which showed that women were more likely to reported poor health than men [19-21]. A strong positive effect of education on both physical functioning and psychological well-being was also pronounced. Studies from Japan [7], Taiwan [8] and China [9] also reported that higher educational attainment resulted in a decreased incidence of functional limitations. We found that mountainous dwellers had lower levels of physical functioning and psychological well-being compared to people living in other areas. Negative effects of disadvantage residence on elderly health were also revealed in a Chinese study [22], and a Korean-Japanese study [23]. We also observed that while physical functioning declined with advancing age, psychological well-being did not vary significantly by age. Similar observation was documented in study in the US [14] and in China [24]. In the present study, economic differentials were found for psychological well-being but not for physical functioning. The overwhelming age effect possibly diluted the influence of economic status on physical functioning. Studies from Thailand [12] and Taiwan [25] showed that income had significant independent influences on functional disorders. A study from US found strong income associations for both health and happiness [14]. It is worth noting from the multivariate response model that the socioeconomic variables of interest had stronger associations with physical functioning (accounting for 24% of variation) than psychological well-being (accounting for 7% of total variation). As a result, the two health outcomes did not co-vary to a strong degree (adjusted correlation coefficient 0.35). This finding highlights the importance of analyzing multiple dimensions of health status simultaneously in inequality investigations. Examining a single health outcome may misclassify a person as being in "good health" while in fact he/she has another bad outcome. The single health outcome approach may also lead to underestimation of inequality problems in a population. There are several limitations we need to note from this study. Firstly, accuracy and validity of self-reported information in older people could be questionable. Low educational level and the presence of cognitive retardation in older people might have reduced the accuracy and validity of the findings. Secondly, because of the cross-sectional nature of the data, our study could not provide any interpretation of causal relations between socioeconomic status and physical functioning and psychological well-being among the elderly in the study setting. Thirdly, some possible joint effects of socio-economic factors on the outcome variables have not been investigated.

Conclusions

The present study provides initial insight into the extent to which socioeconomic indicators are related to multiple health outcomes among older adults in a developing country setting. It shows that there exist problems of inequality in health among older adults in the study setting. The evidence should be useful for health authorities in responding to the growing health-related needs of elderly populations with limited economic resources. Investigation of health issues among older people is not simple task. This multilevel modelling approach, which offers several technical advantages, should be further utilized. More sophisticated research, such as using longitudinal study designs, is needed to examine the causal relationship between multiple health outcomes and socioeconomic conditions.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

HVM, DLH, PB, SW made substantial contributions to conception and design, or acquisition of data, or analysis and interpretation of data. HVM, DLH, SW, NTKC and PB have been involved in drafting the manuscript or revising it critically for important intellectual content. All authors read and approved the final manuscript.

Pre-publication history

The pre-publication history for this paper can be accessed here: http://www.biomedcentral.com/1471-2318/10/7/prepub
  16 in total

1.  Socioeconomic status and health among older adults in Thailand: an examination using multiple indicators.

Authors:  Z Zimmer; P Amornsirisomboon
Journal:  Soc Sci Med       Date:  2001-04       Impact factor: 4.634

2.  Transitions in functional status among older people in Wuhan, China: socioeconomic differentials.

Authors:  J Liang; X Liu; S Gu
Journal:  J Clin Epidemiol       Date:  2001-11       Impact factor: 6.437

3.  Constructing socio-economic status indices: how to use principal components analysis.

Authors:  Seema Vyas; Lilani Kumaranayake
Journal:  Health Policy Plan       Date:  2006-10-09       Impact factor: 3.344

Review 4.  Depression in older adults.

Authors:  Amy Fiske; Julie Loebach Wetherell; Margaret Gatz
Journal:  Annu Rev Clin Psychol       Date:  2009       Impact factor: 18.561

5.  Educational attainment and transitions in functional status among older Taiwanese.

Authors:  Z Zimmer; X Liu; A Hermalin; Y L Chuang
Journal:  Demography       Date:  1998-08

6.  Socioeconomic inequalities in morbidity and mortality in western Europe. The EU Working Group on Socioeconomic Inequalities in Health.

Authors:  J P Mackenbach; A E Kunst; A E Cavelaars; F Groenhof; J J Geurts
Journal:  Lancet       Date:  1997-06-07       Impact factor: 79.321

7.  The relationship among income, other socioeconomic indicators, and functional level in older persons.

Authors:  C S Berkman; B J Gurland
Journal:  J Aging Health       Date:  1998-02

8.  Covariation in the socioeconomic determinants of self rated health and happiness: a multivariate multilevel analysis of individuals and communities in the USA.

Authors:  S V Subramanian; Daniel Kim; Ichiro Kawachi
Journal:  J Epidemiol Community Health       Date:  2005-08       Impact factor: 3.710

9.  Self-rated health in Pakistan: results of a national health survey.

Authors:  Khabir Ahmad; Tazeen H Jafar; Nish Chaturvedi
Journal:  BMC Public Health       Date:  2005-05-19       Impact factor: 3.295

10.  Gender, ethnicity, health behaviour & self-rated health in Singapore.

Authors:  Wei-Yen Lim; Stefan Ma; Derrick Heng; Vineta Bhalla; Suok Kai Chew
Journal:  BMC Public Health       Date:  2007-07-27       Impact factor: 3.295

View more
  5 in total

1.  An investigation of factors associated with the health and well-being of HIV-infected or HIV-affected older people in rural South Africa.

Authors:  Makandwe Nyirenda; Somnath Chatterji; Jane Falkingham; Portia Mutevedzi; Victoria Hosegood; Maria Evandrou; Paul Kowal; Marie-Louise Newell
Journal:  BMC Public Health       Date:  2012-04-02       Impact factor: 3.295

2.  Multivariate multilevel spline models for parallel growth processes: application to weight and mean arterial pressure in pregnancy.

Authors:  Corrie Macdonald-Wallis; Debbie A Lawlor; Tom Palmer; Kate Tilling
Journal:  Stat Med       Date:  2012-06-26       Impact factor: 2.373

3.  Multimorbidity and its social determinants among older people in southern provinces, Vietnam.

Authors:  Ninh Thi Ha; Ninh Hoang Le; Vishnu Khanal; Rachael Moorin
Journal:  Int J Equity Health       Date:  2015-05-30

4.  Gender differences in functional disability and self-care among seniors in Bangladesh.

Authors:  Md Ismail Tareque; Andrew D Tiedt; Towfiqua Mahfuza Islam; Sharifa Begum; Yasuhiko Saito
Journal:  BMC Geriatr       Date:  2017-08-08       Impact factor: 3.921

5.  Sociodemographic, health-related, and social predictors of subjective well-being among Chinese oldest-old: a national community-based cohort study.

Authors:  Gang Cheng; Yan Yan
Journal:  BMC Geriatr       Date:  2021-02-16       Impact factor: 3.921

  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.