Literature DB >> 30507929

Factors associated with healthcare utilization among community-dwelling elderly in Shanghai, China.

Man Jiang1, Guang Yang2, Lvying Fang1, Jin Wan3, Yinghua Yang4, Ying Wang5.   

Abstract

OBJECTIVE: The objective of this study was to evaluate the factors associated with the health status of older Chinese people living in the community, in order to inform strategies to expand access to healthcare.
METHODS: Two-phase stratified cluster sampling was applied; 2000 older people participated in this study. Face-to-face interviews were conducted in Shanghai between June and August, 2011. Descriptive analysis was used to examine the respondents' characteristics. Based on Andersen's healthcare utilization model, a chi-squared test and multiple logistic regression were performed to examine the influences of predisposing, enabling, need, and contextual factors on healthcare utilization.
RESULTS: We found that 44.5% of the older people in the sample had good self-reported health status, while 12.8% were poor, 14.5% had visited hospitals or clinics as outpatients in the previous two weeks, and 16.5% had been hospitalized in the previous year. Logistic regression analysis revealed that outpatient health services were more likely to be used by women and those whose income was from friends or social relief, who had poor to good self-reported health status, who were experiencing declining health, who engaged in volunteer activities, and who had chronic diseases. Meanwhile, hospitalization was more likely among those in the older age groups, those with pension income, living in outer suburbs, with poor self-reported health status, experiencing difficulty with activities of daily living and outdoor activities, or having a chronic disease.
CONCLUSIONS: The results showed the impact of economic status, health status, demographic and social characteristics, and other factors on the health service utilization of elderly people living in the community in Shanghai. Need variables were the strongest predictors of health service use, although contextual factors also contributed.

Entities:  

Mesh:

Year:  2018        PMID: 30507929      PMCID: PMC6277110          DOI: 10.1371/journal.pone.0207646

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

An aging society is one where more than 10% of the population is over 60 years old and/or 7% are over 65 [1]. According to statistics published by the WHO, the percentage of the global population aged 60 and over was 11% by the end of 2011, while that in China was 13% [2]. China is a therefore recognized as an aging society, with Shanghai showing a more extreme position. According to the Shanghai Bureau of Statistics, the city had a population of 14.50 million people registered as living in households by the end of 2016, of whom 31.59% were aged 60 and over, with this percentage increasing annually [3]. This rapidly aging population poses significant challenges for healthcare [4]. With their declining physical function and increasing morbidity from various diseases, the demand for healthcare services from older people is far higher than from other age groups [5]. For instance, 33% of healthcare expenditure in the United States is spent on older people [6]. There is growing recognition globally of the need to evaluate how healthcare services are utilized, and how healthcare systems might best be enhanced to meet the health needs of an aging population [7]. Healthcare utilization means obtaining healthcare from health service providers [8]. Many theoretical models of healthcare utilization have been formulated, interpreting it from various perspectives (such as economic, psychosocial, behavioral, and epidemiological) and exploring which variables influence it and to what degree [9]. For example, the Andersen–Newman model [10] explains healthcare utilization in terms of relationships among predisposing, enabling, need, and contextual factors found in the general population, while Berki and Kobashigawa [11] emphasized the importance of services, socioeconomic factors, and individual characteristics. Other studies focused on vulnerable populations, for example, minority groups or immigrants. Mutchler and Burr [12] examined racial differences in health service utilization, and Aroian et al. [13] focused on elderly immigrants from the former Soviet Union. Factors associated with healthcare utilization can be divided into three types [14]: physiological (e.g., sex, age, race, health status), social (e.g., income, education, social status), and subjective (e.g., self-reported health status). China is the developing country with the largest elderly population, partly as a result of the implementation of its “One Child” policy in the 1970s [15]. Along with the aging trend, China is experiencing a significant health transition, with older people generally living longer generally but also with increasing years in suboptimal perceived health accompanied by chronic diseases [16]. The problem of healthcare utilization has been studied by some investigators in China, but these studies have not properly considered influencing factors, contextual factors, or disease status. Andersen’s model is a useful framework for studying health service use and for grouping the factors shown to affect health service utilization in older Chinese people [17]. Uncovering factors associated with health service use is important, particularly when used concurrently with conventional care, as this could help avoid potential problems. Shanghai was used as the study area, because it has the most severe aging situation in China [18].We examined how predisposing, enabling, need, and contextual factors were related to healthcare utilization. Outpatient service usage rates in the previous two weeks and hospital inpatient services in the previous year were set as dependent variables [19]. The objective of the study was to evaluate factors influencing health status and healthcare utilization among older Chinese people, gathering reference data for policies to improve the healthcare accessibility for the elderly and for the development of health management and healthy aging programs for older people in China and other developing countries with similarly aging populations.

Theoretical framework

First developed in the late 1960s, Andersen’s healthcare utilization model was originally used to measure equitable access to health services and assist in developing policies to promote such access. It aimed to integrate several ideas about how and why health services were used [20], and has been widely used to explore relationships between predisposing, enabling, and need factors and healthcare utilization [21] in a wide variety of contexts, for example predicting emergency room use [22, 23] and patient satisfaction [24]. Predisposing factors are those increasing individuals’ propensity to use services; they include demographic and social characteristics such as sex, age, marital status, race, education level, children, and living conditions. Enabling factors increase individual ability to access services, and includes family and social resources, health insurance, pension or other income, and living location. Need factors reflect illness level and factors affecting it, including self-reported health status, sensory damage, loneliness, ability to perform activities of daily living (ADLs), changes in health status, smoking and alcohol-drinking status, and presence of a certain chronic disease. The need component involves both health professionals’ and individuals’ perceptions of whether clinical factors require use of healthcare services. Previous studies have shown that the strongest predictors of healthcare utilization are need factors, followed by enabling and predisposing factors [25]. Some studies have also shown that contextual factors play key roles; for example, geographic variations influence length of hospital stay [26, 27]. Neighborhood [28], characteristics of providers [29] and social capital–related factors such as social trust, civic engagement, and social relations [30] all affect health service utilization. Unlike other age groups, the high incidence of chronic diseases among older people will lead to changes in their health service utilization. Many elderly people have multiple concurrent prevalent diseases at the same time, while most previous studies only considered if people had any chronic diseases or not (yes/no), rather than explore the impact of each disease [17, 31]. It has therefore been necessary to evaluate healthcare utilization using a specialized version of Andersen’s model. Our study extends Andersen’s model to include the most prevalent diseases in this population as special need factors as well as contextual factors, and aims to determine whether these special variables add predictability to health service utilization. The most prevalent diseases, which can be analyzed as a separate part of the need factors, include hypertension, heart disease, diabetes, cataracts, cerebrovascular disease, bronchitis, and gastroenteritis. Contextual factors considered here include regional economic development, participation in outdoor and community activities, and participation in volunteer work.

Materials and methods

Design and procedures

The phrase “older people” in China generally applies to those who are 60 years old and over; we therefore focused on people aged above 60 living in communities served by the sample community institutions. We decided on a stratified random sample, and the effect size was estimated as two, meaning that the sample size required was doubled. We estimated a 15% loss to follow-up, so a sample of 1756 older people was needed. We eventually received 2000 valid questionnaires. Ethical approval was received from the Fudan University Research Ethics Committee. Respondents were assured that participation in the study was voluntary, with the return of completed questionnaires being taken as consent; the study data of respondents were collected anonymously. A cross-sectional design was used to investigate these community-dwelling older Shanghainese adults, in August 2011. The 18 districts (counties) of Shanghai were divided into three levels stratified by socioeconomic status: high, medium, and low. Random sampling was conducted for two districts from each level, with samples collected on the basis of population size. High-SES districts were Pudong (sample of 832) and Changning (199); medium-SES ones were Hongkou (291) and Putuo (274); low-SES ones were Jinshan (157) and Chongming (248). We then randomly selected one street or town (local center) in the medium-SES districts, arranged all their residents in alphabetical order by name, and surveyed them one by one until we had a large enough sample. The study design and questionnaire were created by the School of Public Health at Fudan University and piloted in 200 elderly people, and then revised. Face-to-face interviews were conducted in June and August 2011. The sampled communities were responsible for coordination with the interviewees and training the investigators. All the interviewers, who included research assistants and experienced peer fieldworkers, had received extensive training on research ethics and assessment methodology prior to data collection. A small gift equivalent in value to US$3, was given to the participants as a token of appreciation for their participation.

Variable content

Adequate operationalization and selection of variables representing the Andersen model was ensured by considering Andersen’s own suggestions [20] as well as known information on the relationships between various factors and health service utilization among the middle-aged and elderly in China, an approach again largely based on the framework of Andersen’s behavioral model [31, 32]. In this study, healthcare utilization was quantified by assessing (1) level of use of outpatient care in the previous two weeks, including family doctor, nursing or specialist visits, and (2) hospitalization(s) in the last year.

Predisposing factors

Socio-demographic data gathered included age, gender, education, marital status, nationality, number of children, living situation, and healthy lifestyle. Age was divided into five groups: 60–64, 65–69, 70–74, 75–79, and ≥80. Three marital statuses were used: married, separated/divorced, widowed. Education had four categories: (1) illiterate, including semi-literate, less than primary education, or home study; (2) primary education; (3) secondary education, including middle and high school as well as vocational education; and (4) higher education, including associate’s, bachelor’s, master’s, and doctoral degrees. Living situation was divided into three types: living alone, living with spouse, and living with children. Healthy lifestyles, which serve as a proxy for health beliefs, were measured by two variables: (1) never smoke, smoke at times, smoke often, or had quit smoking; (2) never drink, drink at times, often drink, or had quit drinking alcohol.

Enabling factors

The enabling factors in the model include healthcare insurance, pension income, source of income, and location. China’s basic medical insurance system can be divided into three types: medical insurance for urban employees, medical insurance for urban and town residents, and “new-type rural cooperative medical scheme” (NRCMS). In addition to these three basic types, we also investigated the proportion of elderly whose healthcare expenses are self-paid or publicly funded. Pension income and source of income can also help capture the accessibility of health services from an economic perspective. In addition, people living in different locations—city center, inner suburbs, and outer suburbs—have different degrees of access to transportation and medical facilities.

Need factors

The need factors in the model include self-reported health, sensation disorders, feeling lonely or nervous, activity of daily living (ADL) limitations, and chronic diseases. Self-reported health is based on the respondents’ answer to the questions “Would you say your health is good, normal, or poor?” and “Compared with last year, what changes have you made in your health?” Three questions related to mental health, “Do you have sensation disorders?” (yes/no) and “Do you feel lonely or nervous?” (never/sometimes/always), were also included in the questionnaire. Functional ability was assessed using the Barthel Index, which has been regarded as the best tool for this purpose in terms of sensitivity, simplicity, communicability, scalability, and ease of scoring [33]. First published in 1965, its ten items cover eating, dressing and undressing, making up, walking, getting into and out of bed, washing and bathing, going up and down stairs, and toileting and controlling bladder and bowel movements [34]. Comorbidity was measured as the self-reported number of chronic diseases that had been diagnosed by a physician, coded into categories of hypertension, diabetes, cataract, cerebrovascular disease, bronchitis, gastroenteritis, intervertebral disc disease, cardiovascular disease, and asthma.

Data analysis

SPSS Statistics for Windows (version 20.0; IBM Corp., Armonk, NY, USA) was used to analyze the data. Mean and standard deviation were used in the descriptive statistics. The chi-squared test was used to determine the differences between socio-demographic characteristics. The significance threshold was P < 0.05. The relationships among socio-demographic characteristics, living habits, social support, mental and physical status, and self-reported health status were tested by the chi-squared test. A series of logistic regression models were performed to establish the independent associations between health service utilization and its determinants. The predictors in Model 1 were based on Andersen’s model; Model 2 tested whether the addition of contextual factors adds incremental predictive power; and Model 3 tested whether the addition of disease status adds incremental predictive power. The index of -2Log Likelihood was used to compare model fit of different models [35]. A p-value less than 0.05 was considered statistically significant.

Results

Socio-demographic characteristics

The total sample size comprised 2000 older people. The response rate was 100%, with 57.8% being women. The mean age was 71.61 years, and the proportions in each age group (aged 60–64, 65–69, 70–74, 75–79 and ≥80) were around 2:1:1:1:1. The predominant nationality of most was Han (98.9%), with 1.1% being ethnic minorities; 75.8% were married, 21.6% were widowed, and 2.6% were divorced or single. In all, 28.7% had received no formal education. Most lived with a spouse (86.0%), although 35.0% lived with children, and 14.0% lived alone. Medical insurance coverage was good, with 31.5% being part of a medical insurance system for urban and town residents, 45.5% one for urban employees, and 14.7% an NRCMS. Finally, 41.6% lived in the inner suburbs, 38.2% in the city center, and 20.2% in the outer suburbs.

Health status and healthcare utilization

During the previous two weeks, 380 had been ill and 1620 had not. The two-week prevalence of illness was 19.0%, and the two-week visit rate to outpatient services was 14.5%. The rate of not seeking medical care by patients who had been ill in the previous two weeks was 23.9%, while the hospitalization rate in the previous year was 16.5%. Overall, 44.5% reported good health status, 42.8% normal, and 12.8% poor health status. Most, 83.0%, reported that they did not feel lonely, and 89.2% were not nervous; 54.7% felt satisfied with life, and 5.1% were not. Finally, 77.2% had at least one chronic disease.

Univariate analysis of outpatients’ health service utilization

Table 1 shows the chi-squared test results for each Andersen model predictor of two-week visit rate. Of the predisposing predictors, only gender and previously having smoked had any relationship to outpatient health service utilization: men were less likely to use outpatient health services than women. Three of the enabling predictors were found related to outpatient health service use: pension income level, source of income, and location. Respondents with pension income of 1000–2000 RMB monthly, whose income source was a pension, and who lived in the outer suburbs were more likely to use outpatient health services. Need predictor characteristics related to outpatient health service use were poor self-reported health status, sensation disorders, feeling lonely and/or nervous, poor satisfaction with life, limitation to activities of daily living (ADLs), health status changing for the worse, and having a chronic disease. Respondents with chronic diseases such as heart disease, cataracts, cerebrovascular disease, and gastroenteritis were particularly more likely to use outpatient health services. Living in a poorer region and having more contact with friends and neighbors were also related to outpatient health service use.
Table 1

Univariate analysis of outpatient health service utilization.

VariableYesNoSumTwo-week visit rate
#%#%#%χ2p
Predisposing factors
Gender9.550.002
male9811.674588.484342.2
female19116.696383.4115457.8
Age group (years)3.4560.485
60–648813.755586.364332.2
65–694613.629386.433917.0
70–745417.226082.831415.7
75–795915.631984.437818.9
≥804212.928387.132516.3
Marital status0.2310.891
widowed5913.737286.343121.6
divorced/single815.74384.3512.6
married21814.4129385.6151175.8
Nationality1.6180.203
Han nationality28814.6168785.4197598.9
ethnic minority14.82095.2211.1
Education level1.6450.649
illiterate8014.049286.057228.7
primary education9615.154084.963631.9
secondary education9113.558186.567233.7
higher education2017.59482.51145.7
Number of children1.0260.795
0311.52388.5261.3
1 or 215314.590485.5105753.1
3 or 410614.065286.075838.1
5 or more2516.912383.11487.4
Living situation0.6080.738
living alone4415.923384.127714.0
living with spouse14214.186885.9101051.0
living with children10214.759185.369335.0
Healthy lifestyle
Smoking8.4910.037
never23715.2132184.8155877.9
at times56.07994.0844.2
often2811.222188.824912.5
quit1917.49082.61095.5
Drinking3.6380.303
never23815.2132984.8156778.4
at times1711.313388.71507.5
often59.3499.7542.7
quit2912.720087.322911.5
Enabling factors
Healthcare insurance1.7830.776
for urban employees8714.053386.062031.5
for urban and town residents13214.876285.289445.5
NRCMS4415.224584.828914.7
at own expenses27.72492.3261.3
at public expense2316.811483.21377.0
Pension income level (RMB)6.7230.035
0–99914714.884785.299449.9
1000–19997317.534482.541720.9
2000+6811.751288.358029.1
Source of income52.9250.000
pension23013.6146486.4169486.1
work or savings1711.812788.21447.3
family58.95191.1562.8
others3243.24256.8743.8
Location9.6460.008
city center11414.965085.176438.2
inner suburbs10012.073288.083241.6
outer suburbs7518.632981.440420.2
Need factors
Self-reported health status92.80.000
good768.681291.488844.5
normal13015.272484.885442.8
poor8332.517267.525512.8
Sensation disorders7.0100.008
no14012.697287.4111255.6
yes14916.873983.288844.4
Feeling lonely12.4030.002
never22013.3143986.7165983.0
sometimes5721.321078.726713.4
always1216.46183.6733.7
Feeling nervous8.1750.017
never24413.7153986.3178389.2
sometimes3721.113878.91758.8
always820.03280.0402.0
Life satisfaction32.980.000
good12111.197188.9109254.7
fair13717.166682.980340.2
poor3029.47270.61025.1
ADLs7.1200.008
independent27814.2168585.8196398.2
dependent for ≥1 activity1129.72670.3371.8
Physical health change81.4390.000
better88.19191.9995.0
unchanged1249.711539.3127764.0
worse14524.943775.158229.2
unstable924.32875.7371.9
With chronic disease21.9290.000
no357.742192.345622.8
yes25416.5129083.5154477.2
Number of chronic diseases/person81.0460.000
0357.742192.345622.8
17911.759688.367533.8
26715.436984.643621.8
34618.320581.725112.6
4 or more6234.112065.91829.1
Disease status
Hypertension2.4570.117
yes16015.786284.3102251.1
no12913.284986.897848.9
Heart diseases34.2560.000
yes10123.233576.843621.8
no18812.0137688.0156478.2
Diabetes2.6990.100
yes5117.623982.429014.5
no23813.9147286.1171085.5
Cataract11.240.001
yes4023.013477.01748.7
no24913.6157786.4182691.3
Cerebrovascular disease5.260.022
yes3120.811879.21497.4
no25813.9159386.1185192.6
Bronchitis2.2970.130
yes2319.29780.81206.0
no26614.1161485.9188094.0
Gastroenteritis38.9990.000
yes3934.57465.51135.65
no25013.2163786.8188794.35
Contextual factors
Regional economic level11.9870.002
good12311.990788.1103051.5
middle9116.147583.956628.3
poor7518.632981.440420.2
Outdoor activities0.1660.683
yes16514.2100185.8116658.4
no12314.870885.283141.6
Seeing children3.0500.550
every day17413.6110986.4128365.2
every week6415.634684.441020.8
every month3216.516283.51949.9
every year1116.75583.3663.4
<1 time/year16.21593.8160.8
Neighbor contact0.3170.957
every week25914.4153785.6179689.8
every month1114.56585.5763.8
every year318.81381.216.8
almost never1513.59686.51115.6
Gathering with relatives5.0340.169
every week5913.238986.844822.4
every month5016.026284.031215.6
every year13715.773584.387243.6
almost never4211.432588.636718.4
Community activities19.4960.000
every week6722.223577.830215.2
every month159.71409.31557.8
every year2411.518488.520810.4
almost never18213.7114686.3132866.6
Volunteer activities1.9510.162
yes4517.421482.625913.0
no24414.1148785.9173187.0

Logistic regression analysis of outpatient healthcare services utilization

The inclusion level was set to p < 0.05 and the exclusion criterion to p > 0.1. Then, all the variables were included in stepwise regression; only the variables in the final results are shown. Table 2 shows the logistic regression analysis results of each Andersen model predictor of outpatient visit rate in the previous two weeks, as the dependent variable. In all three models, gender (model 1: OR 1.344; 95% 0.994–1.818, p = 0.064) was not statistically significant. Compared to those whose income was from a pension, those who had income from other sources (model 1: OR 6.497; 95% 3.599–11.727, p = 0.000) were more likely to use outpatient healthcare services. The statistically significant need predictors were poor self-reported health status (model 1: OR 6.497; 95% 3.599–11.727, p = 0.000), normal satisfaction with life (model 1: OR 1.472; 95% 1.088–1.992, p = 0.012), and a change for the worse in physical health (model 1: OR 3.301; 95% 1.502–7.258, p = 0.003). As for contextual factors, elderly who engaged in volunteering (no vs. yes) (model 3: OR 0.619; 95% 0.415–0.924, p = 0.019) were more likely to use health services. Of the newly added disease factors in Model 3, both heart diseases (model 3: OR 1.693; 95% 1.234–2.324, p = 0.001) and gastroenteritis (model 3: OR 2.181; 95% 1.315–3.616, p = 0.003) were associated with the utilization of health services.
Table 2

Logistic regression analysis of outpatient healthcare services utilization.

VariableModel 1Model 2Model 3
Sig.OR (95%CI)Sig.OR (95%CI)Sig.OR (95%CI)
Predisposing factors
Gender (female vs. male)0.0551.344 (0.994–1.818)0.0641.33 (0.983–1.8)0.1351.263 (0.93–1.715)
Enabling factors
Pension income level (RMB)
0–999refrefref
1000–19990.1041.346 (0.941–1.924)0.1471.305 (0.911–1.869)0.0921.367 (0.95–1.967)
2000+0.2800.812 (0.557–1.185)0.2220.79 (0.541–1.153)0.2320.791 (0.539–1.161)
Source of income
pensionrefrefref
work or savings0.3150.731 (0.397–1.347)0.3550.75 (0.408–1.38)0.3330.74 (0.402–1.362)
family0.087*0.422 (0.157–1.135)0.1000.437 (0.163–1.173)0.1820.508 (0.188–1.372)
others0.000*6.497 (3.599–11.727)0.000*6.644 (3.669–12.03)0.000*7.322 (4.031–13.3)
Need factors
Self-reported health status
goodrefrefref
normal0.1161.311 (0.935–1.837)0.0791.356 (0.966–1.904)0.1791.265 (0.898–1.782)
poor0.000*2.747 (1.78–4.24)0.000*2.923 (1.886–4.53)0.000*2.469 (1.572–3.877)
Life satisfaction
goodrefrefref
normal0.012*1.472 (1.088–1.992)0.010*1.492 (1.101–2.021)0.014*1.47 (1.083–1.997)
poor0.1461.525 (0.864–2.693)0.1441.53 (0.865–2.705)0.3401.333 (0.739–2.403)
Physical health change
betterrefrefref
unchanged0.4151.385 (0.633–3.027)0.4041.395 (0.639–3.049)0.3211.496 (0.675–3.313)
worse0.0033.301 (1.502–7.258)0.003*3.351 (1.524–7.367)0.003*3.344 (1.5–7.453)
unstable0.005*4.797 (1.587–14.49)0.006*4.719 (1.559–14.284)0.008*4.576 (1.494–14.011)
Disease status
Heart diseases(yes vs. no)0.001*1.693 (1.234–2.324)
Gastroenteritis (yes vs. no)0.003*2.181 (1.315–3.616)
Contextual Factors
Volunteer activities (no vs. yes)0.012 *0.603 (0.407–0.894)0.019*0.619 (0.415–0.924)
Chi-squared166.366172.327192.011
df131416
Sig.0.0000.0000.000
-2Log Likelihood1339.3481333.3881313.703

*p < 0.05;

CI: confidence interval.

*p < 0.05; CI: confidence interval. The index of -2Log Likelihood was 1339.348 for model 1. After including contextual factors, in model 2, this index dropped to 1333.388. This was further reduced to 1313.703 when disease status was added. Therefore, model 3 was the optimal model.

Univariate analysis of hospitalization

Table 3 shows the chi-squared test results for each Andersen model predictor of hospitalization rate. Four predisposing factors were related to hospitalization service use: age group, marital status, education and number of children. Older, less educated, and widowed people with more children were more likely to use hospital services. The enabling predictors source of income and region were also related to hospitalization service. Respondents whose income was from work or savings were less likely to have been hospitalized than those whose income was provided by their family. Those living in the outer suburbs were more likely to have been hospitalized. Need predictors related to hospitalization were poor self-reported health status, sensation disorders, feeling lonely or nervous, having poor satisfaction with life, limitation in one or more activities of daily living (ADLs), change for the worse in physical health, previously having smoked, and having one or more chronic diseases.
Table 3

Univariate analysis of hospitalization.

YesNoSumHospitalization rate
Variable#%#%#%χ2p
Predisposing factors
Gender00.988
male13916.570483.584342.2
female19016.596483.5115457.8
Age group (years)45.6950.000
60–646510.157889.964332.2
65–694312.729687.333917.0
70–746219.725280.331415.7
75–798221.729678.337818.9
≥807824.024776.032516.3
Marital status6.9290.031
widowed8820.434379.643121.6
divorced/single611.84588.2512.6
married23315.4127884.6151175.8
Nationality0.1010.750
Han nationality32516.5165083.5197598.9
ethnic minority419.01781.0211.1
Education level6.7610.080
illiterate11319.845980.257228.7
primary education10015.753684.363631.9
secondary education9714.457585.667233.7
higher education1916.79583.31145.7
Number of children23.2870.000
027.72492.3261.3
1 or 213813.191986.9105753.1
3 or 415620.660279.475838.1
5 or more3322.311577.71487.4
Living situation4.0210.134
living alone3914.123885.927714.0
living with spouse16015.885084.2101051.0
living with children13018.856381.269335.0
Healthy lifestyle
Smoking18.0850.000
never26416.9129483.1155877.9
at times1113.17386.9844.2
often2510.022490.024912.5
quit3027.57972.51095.5
Drinking0.6950.874
never26216.7130583.3156778.4
at times2315.312784.71507.5
often713.04787.0542.7
quit3816.619183.422911.5
Enabling factors
Healthcare insurance9.2010.056
for urban employees8513.753586.362031.5
for urban andtown residents14716.474783.689445.5
NRCMS5820.123179.928914.7
at own expenses519.22180.8261.3
at public expense3021.910778.11377.0
Pension income level (RMB)4.7730.092
0–99917517.681982.499449.9
1000–19995412.936387.141720.9
2000+9816.948283.158029.1
Source of income8.1110.044
pension27816.4141683.6169486.1
work or savings1812.512687.51447.3
family1628.64071.4562.8
others1013.56486.5743.8
Location13.1860.001
city center12216.064284.076438.2
inner suburbs11814.271485.883241.6
outer suburbs9022.331477.740420.2
Need factors
Self-reported health status116.4720.000
good839.380590.788844.5
normal15117.770382.385442.8
poor9637.615962.425512.8
Sensation disorders33.1410.000
no13612.297687.8111255.6
yes19421.869478.288844.4
Feeling lonely25.4670.000
never24414.7141585.3165983.0
sometimes7227.019573.026713.4
always1419.25980.8733.7
Feeling nervous28.9280.000
never26715.0151685.0178389.2
sometimes5028.612571.41758.8
always1332.52767.5402.0
Life satisfaction23.2050.000
good16214.893085.2109254.7
fair13316.667083.480340.2
poor3433.36866.71025.1
ADLs
independent30815.7165584.3196398.250.4960.000
dependent for > = 1 activity2259.51540.5371.8
Physical health change105.7290.000
better3333.36666.7995.0
unchanged13010.2114789.8127764.0
worse15827.142472.958229.2
unstable718.93081.1371.9
With chronic disease42.1980.000
no306.642693.445622.8
yes30019.4124480.6154477.2
Disease states
Hypertension7.9320.005
yes19218.883081.2102251.1
no13814.184085.997848.9
Heart diseases41.3260.000
yes11626.632073.443621.8
no21413.7135086.3156478.2
Diabetes4.3210.038
yes6020.723079.329014.5
no27015.8144084.2171085.5
Cataracts9.330.002
yes4324.713175.31748.7
no28715.7153984.3182691.3
Cerebrovascular disease155.8490.000
yes7953.07047.01497.4
no25113.6160086.4185192.6
Bronchitis34.6340.000
yes4335.87764.21206.0
no28715.3159384.7188094.0
Gastroenteritis5.9580.015
yes2824.88575.21135.65
no30216.0158584.0188794.35
Number of chronic diseases/person124.7140.000
0306.642693.445622.8
17811.659788.467533.8
28920.434779.643621.8
36425.518774.525112.6
4 or more6937.911362.11829.1
Two-week outpatient visit29.3840.000
yes9825.828274.238019.0
no23214.3138885.7162081.0
Contextual factors
Regional economic level20.9330.000
good13413.089687.0103051.5
middle10618.746081.356628.3
poor9022.331477.740420.2
Outdoor activities12.2050.000
with16314.0100386.0116658.4
without16519.966680.183141.6
Seeing children3.3860.495
every day20816.2107583.8128365.2
every week7217.633882.441020.8
every month2914.916585.11949.9
every year1522.75177.3663.4
<1 time/year425.01275.0160.8
Contact with neighbors7.5640.056
every week28615.9151084.1179689.8
every month1519.76180.3763.8
every year637.51062.5160.8
almost never2320.78879.31115.6
Gathering w/relatives12.6490.005
every week6113.638786.444822.4
every month4313.826986.231215.6
every year14516.672783.487243.6
almost never8122.128677.936718.4
Community activities6.2540.100
every week4013.226286.830215.2
every month2415.513184.51557.8
every year2713.018187.020810.4
almost never23817.9109082.1132866.6
Volunteer activities1.9670.161
yes3513.522486.525913.0
no29417.0143783.0173187.0
Coming from a poorer area, doing fewer outdoor activities, and taking part in fewer family gatherings were found to have significant positive relationships with hospitalization. Respondents with hypertension (χ2 = 7.932, p < 0.05), heart disease (χ2 = 41.326, p < 0.05), diabetes (χ2 = 4.321, p < 0.05), cataracts (χ2 = 9.33, p < 0.05), cerebrovascular disease (χ2 = 155.849, p < 0.05), bronchitis (χ2 = 34.634, p < 0.05), and gastroenteritis (χ2 = 5.958, p < 0.05) were significantly more likely to have been hospitalized in the previous year.

Logistic regression analysis of hospitalization

The inclusion level was set to p < 0.05 and the exclusion criterion to p > 0.1. Based on these thresholds, all the variables were included in stepwise regression. Table 4 shows the final logistic regression analysis results of each Andersen model predictor of hospitalization rate in the previous year. Older age groups were more likely to have been hospitalized. Those with income from work or savings (model 1: OR 0.511; 95%CI 0.279–0.938, p = 0.030) were less likely to have been hospitalized than those with income from a pension, contrary to the case with outpatient service use. Those living in the outer suburbs were more likely to have been hospitalized (model 1: OR 1.316; 95%CI 0.962–1.8028, p = 0.001). Poor self-reported health status (model 1: OR 3.377; 95%CI 2.234–5.104, p = 0.000), being limited in one or more activity of daily living (ADL) (model 1: OR 2.954; 95%CI 1.388–6.29, p = 0.005), having three types of chronic diseases, and poor regional economic level (model 3: OR 3.429; 95%CI 1.782–6.596, p = 0.000) were positively associated with having been hospitalized.
Table 4

Logistic regression analysis of hospitalization.

VariableModel 1Model 2Model 3
Sig.OR (95%CI)Sig.OR (95%CI)Sig.OR (95%CI)
Predisposing factors
Age group (years)
60–64refrefref
65–690.1341.406 (0.9–2.196)0.1231.423 (0.909–2.226)0.3021.274 (0.804–2.019)
70–740.002*1.964 (1.286–2.998)0.001*2.012 (1.315–3.079)0.022*1.676 (1.076–2.611)
75–790.000*2.233 (1.498–3.33)0.000*2.22 (1.487–3.316)0.002 *1.954 (1.29–2.958)
≥800.000*2.308 (1.529–3.484)0.000*2.218 (1.464–3.362)0.003*1.925 (1.253–2.957)
Enabling factors
Source of income
pensionrefrefref
work or savings0.030*0.511 (0.279–0.938)0.026*0.501 (0.272–0.922)0.041*0.521 (0.279–0.974)
family0.4730.763 (0.365–1.597)0.4790.766 (0.365–1.604)0.4450.732 (0.329–1.629)
others0.026*0.382 (0.164–0.892)0.028*0.387 (0.166–0.902)0.1910.566 (0.241–1.329)
Location
city centerrefrefref
inner suburbs0.0861.316 (0.962–1.802)0.001*2.774 (1.515–5.08)0.000*3.527 (1.852–6.719)
outer suburbs0.000*2.582 (1.751–3.808)0.000*5.665 (2.95–10.877)0.000*6.024 (3.013–12.045)
Need factors
Self-reported health status
goodrefrefref
normal0.000*1.76 (1.282–2.416)0.001*1.752 (1.273–2.412)0.006*1.583 (1.138–2.202)
poor0.000*3.377 (2.234–5.104)0.000*3.211 (2.116–4.873)0.000*2.456 (1.578–3.822)
Feeling lonely
neverrefrefref
sometimes0.0711.389 (0.973–1.982)0.1111.339 (0.935–1.918)0.3361.201 (0.827–1.746)
always0.1620.585 (0.276–1.241)0.1210.55 (0.258–1.171)0.1330.549 (0.251–1.2)
ADLs(no vs. yes)0.005*2.954 (1.388–6.29)0.006*2.94 (1.364–6.34)0.0712.143 (0.937–4.901)
Physical health change
betterrefrefref
unchanged0.000 *0.21 (0.128–0.344)0.000*0.213 (0.129–0.349)0.000*0.22 (0.133–0.365)
worse0.002*0.457 (0.275–0.758)0.002*0.451 (0.27–0.752)0.001*0.423 (0.251–0.712)
unstable0.1430.479 (0.179–1.284)0.1650.493 (0.181–1.338)0.1170.441 (0.158–1.227)
Disease status
Diabetes(yes vs. no)0.6920.926 (0.633–1.355)
Heart diseases(yes vs. no)0.008*1.535 (1.12–2.104)
Cerebrovascular disease(yes vs. no)0.000*4.572 (3.029–6.901)
Bronchitis(yes vs. no)0.009*1.886 (1.173–3.031)
Contextual Factors
Regional economic level
goodrefref
poor0.003*2.539 (1.374–4.694)0.000*3.429 (1.782–6.596)
Outdoor activities(no vs. yes)0.0651.306 (0.983–1.736)0.1071.273 (0.949–1.708)
Chi-squared207.205219.544287.463
df171923
Sig.0.0000.0000.000
-2Log Likelihood1421.3221408.9831341.064

*p < 0.05;

OR: odds ratio; CI: confidence interval

*p < 0.05; OR: odds ratio; CI: confidence interval Next, the -2Log Likelihood (Model 1) was 1421.322. After adjusting for the predictors in Model 1, adding the contextual factors, the -2Log Likelihood for Model 2 was 1408.983. After adjusting for the predictors in Model 2, having diseases predicted hospitalization, and the -2 Log Likelihood for Model 3 was 1341.064.

Discussion

This study improves our understanding of factors that influence use of healthcare services by older people in Shanghai and other Chinese cities, especially factors related to disease status and contextual factors, which have only rarely been considered previously.

Predisposing factors

We observed that predisposing factors including age, gender, pension income level, source of income, and marital status were statistically associated with utilization of health services in univariate analysis. Meanwhile, age contributed significantly to variance in utilization of hospitalization in logistic regression analysis. There are some controversies around findings related to gender. Some studies have suggested that women are more likely to have used outpatient services in the previous two weeks than men [36] and that this might be related to women’s physical and psychological characteristics, since they more often belong to vulnerable groups [37]. Some studies have found that men are more likely to delay treatment than women because of social and behavioral factors [26]; however, other studies suggested the opposite [38]. This study found that the female outpatient visit rate in the previous two weeks was higher than that of men. Older individuals tend to have more need for healthcare because they usually have more comorbid conditions [39, 40] and suffer from more adverse effects of treatment [41]. This study also found that with increasing age, the annual admission rate increased, which is consistent with prior research [42]. Previous investigations of living conditions and education have shown conflicting results. Some studies have indicated that older people living alone are more likely to be admitted to hospital than those living with an informal caregiver [43]. Education was positively and significantly related to use of outpatient services in some previous research [3, 44, 45]; however, other studies [46, 47] showed that older people with a lower educational level are more likely to visit their general practitioner. The present study reported no links between healthcare use and either living conditions or education. Women and/or in older people should be a key target groups for health interventions.

Enabling factors

The observations that source of income [48-51] and regional economic development were significantly related to health service utilization among older people are consistent with earlier research [52, 53]. Compared with those whose income came from pensions, work, or family, those whose income came from friends or social relief had visited healthcare services more in the previous two weeks but been hospitalized less in the previous year. This is probably because those relying on friends or social relief cannot afford expensive hospital care and are therefore more likely to use outpatient services. Higher health service utilization was seen among those living further away from the city center. In general, older people living nearer to the city center tend to live in nursing or residential homes because they have less access to family care and more of this support infrastructure because of greater local economic development. This finding may be the result of the stratified cluster sampling used in this study, because those living in such institutions, who usually need more healthcare, were excluded from our sample. To promote equitable healthcare utilization among older people living in the community, relevant departments and agencies should provide sufficient care for those living in outer suburbs and those whose incomes comes from friends or social relief, as these groups tend to use health services more.

Need factors

Previous research has generally found that health service use is mainly associated with need variables [36, 54]. This study similarly observed that self-reported health status, general level of life satisfaction, physical health change, feelings of loneliness, and limitations in ADLs were significantly, positively related to health service utilization. Self-reported health status reflects the feelings, ideas, and beliefs of individuals about their health [55, 56]. An individual’s decision to use health services is the result of a complex interaction of factors relating to their health or self-perceived health status and to the availability of healthcare [36]. Consistent with other research, we found that older people with poor self-reported health had significantly higher odds of using both outpatient and inpatient services (2.469 and 2.456 times that of healthier individuals, respectively). Older people whose health status worsens tend to use more outpatient services but to be hospitalized less. Meanwhile, older people who are limited in ADLs have higher odds of being hospitalized than those without any such limitations. Elderly people with higher anxiety, depression, and/or concerns about their health and life have less capacity to resist disease and so also tend to use more healthcare services. However, healthcare utilization was not associated with sensation disorders, again consistent with previous studies [36].

Disease status

We also looked at the effect of special need factors—various chronic diseases on healthcare service utilization. The seven most prevalent diseases—hypertension, heart disease, diabetes, cataracts, cerebrovascular disease, bronchitis, and gastroenteritis—were added into the model. The study found that older people with heart disease and gastroenteritis use more outpatient services, while those with heart disease, cerebrovascular disease, and bronchitis tend to be hospitalized more. Those with hypertension or diabetes use fewer healthcare services, probably because these diseases are more stable and can be controlled through medication and other self-treatments. Diseases such as heart disease, cataracts, and cerebrovascular disease have a longer course, and easily lead to complications and morbidity. Health education on age-related diseases, especially chronic diseases, should be carried out in the community to help people prevent and control these diseases, maintain a stable state of health, and improve their quality of life.

Contextual factors

Contextual factors are another important, although often neglected group of factors affecting healthcare utilization [21, 23, 24]. We found that older people who engage in volunteering tend to use more outpatient services. This might be because the government has developed many community health services and promoted their utilization. Living in a poorer region and participating fewer outdoor activities were also positively related to higher healthcare use. However, compared with the poorer medical conditions in outer suburbs, richer areas often have better medical services and more skilled personnel, which may improve disease prevention, management, and prognosis. More attention should also be paid to older people’s psychological needs, such as for psychological guidance and comfort, especially among those in poor physical condition and/or those who do not spend time in outdoor activities. The key to improving healthcare utilization is to improve older people’s social environment, through increased social support and availability of activities near home. A wider range of healthy activities could be arranged within the community to promote older people’s mental and physical health and strengthen their psychological self-adjustment.

Conclusions

The results showed the impact of economic status, health status, demographic and social characteristics, and other factors on the health service utilization of elderly people living in the community in Shanghai. Need variables in the Andersen model, including self-reported health status, life satisfaction, physical health change, and disease status, were the strongest factors influencing health service use, consistent with previous research [14, 20]. Contextual factors, especially regional economic level and volunteer activities, also contributed to it.

Limitations

This study has several limitations. The first is its cross-sectional design. The method of investigation was a self-reported household survey, which may have led to recall bias and affected the accuracy of the survey results. A longitudinal study would be helpful in the future, to collect data through long-term continuous tracking and provide time-series data to improve understanding. Additionally, while healthcare services include primary care [57], preventive health services [58], outpatient services [59], ambulatory care [60] and hospital inpatient services [61], we focused only on use of outpatient and inpatient services. In addition, only people aged above 60 living in the community in Shanghai were sampled, while those living in nursing homes or pension agencies were excluded even though they may have more need for healthcare services. Their situation should be explored in a further study.

Outpatient database.

Database used for univariate analysis and logistic regression analysis of outpatient health service utilization. (XLSX) Click here for additional data file.

Inpatient database.

Database used for univariate analysis and logistic regression analysis of hospitalization. (XLSX) Click here for additional data file.
  42 in total

Review 1.  Psychosocial factors influencing non-urgent use of the emergency room: a review of the literature and recommendations for research and improved service delivery.

Authors:  D K Padgett; B Brodsky
Journal:  Soc Sci Med       Date:  1992-11       Impact factor: 4.634

2.  Factors associated with health care utilization by the elderly in a public health care system.

Authors:  C Fernández-Olano; J D López-Torres Hidalgo; R Cerdá-Díaz; M Requena-Gallego; C Sánchez-Castaño; L Urbistondo-Cascales; A Otero-Puime
Journal:  Health Policy       Date:  2006-01       Impact factor: 2.980

3.  Utilization of health care services by elderly people with National Health Insurance in Taiwan: the heterogeneous health profile approach.

Authors:  Li-Fan Liu; Wei-Hua Tian; Hui-Ping Yao
Journal:  Health Policy       Date:  2012-09-27       Impact factor: 2.980

4.  Health and social service utilization among elderly immigrants from the former Soviet Union.

Authors:  K J Aroian; G Khatutsky; T V Tran; A L Balsam
Journal:  J Nurs Scholarsh       Date:  2001       Impact factor: 3.176

5.  Revisiting the behavioral model and access to medical care: does it matter?

Authors:  R M Andersen
Journal:  J Health Soc Behav       Date:  1995-03

6.  Health status among low-income elderly persons: rural-urban differences.

Authors:  J L McCoy; D L Brown
Journal:  Soc Secur Bull       Date:  1978-06

7.  Comorbidity and social factors predicted hospitalization in frail elderly patients.

Authors:  Francesco Landi; Graziano Onder; Matteo Cesari; Christian Barillaro; Fabrizia Lattanzio; Pier Ugo Carbonin; Roberto Bernabei
Journal:  J Clin Epidemiol       Date:  2004-08       Impact factor: 6.437

8.  Trends in the burden of infectious disease hospitalizations among the elderly in the last decade.

Authors:  Walid Saliba; Anna Fediai; Hana Edelstein; Arie Markel; Raul Raz
Journal:  Eur J Intern Med       Date:  2013-06-28       Impact factor: 4.487

9.  Factors predicting health services use among older people in China: An analysis of the China Health and Retirement Longitudinal Study 2013.

Authors:  Cathy Honge Gong; Hal Kendig; Xiaojun He
Journal:  BMC Health Serv Res       Date:  2016-02-18       Impact factor: 2.655

10.  The impact of predisposing, enabling, and need factors in utilization of health services among rural residents in Guangxi, China.

Authors:  Yan-Ning Li; Dong-Xiao Nong; Bo Wei; Qi-Ming Feng; Hong-Ye Luo
Journal:  BMC Health Serv Res       Date:  2016-10-19       Impact factor: 2.655

View more
  6 in total

1.  Who Is More Satisfied with Health Services? A Cross-Sectional Study in China.

Authors:  Shangren Qin; Ye Ding
Journal:  Inquiry       Date:  2021 Jan-Dec       Impact factor: 1.730

2.  The Covid Impact to Public Healthcare Utilization Among Urban Low-Income Subsidized Community in Klang Valley Malaysia.

Authors:  Sharifah Zawani Syed Ahmad Yunus; Sharifa Ezat Wan Puteh; Adliah Mhd Ali; Faiz Daud
Journal:  Health Serv Res Manag Epidemiol       Date:  2021-03-17

3.  The Mediating Effect of Healthcare Utilization on Livelihood Empowerment against Poverty (LEAP) and Health Security of Older Adults in Ghana: A Case Study on the Ga-West Municipality in Accra, Ghana.

Authors:  Edwina Naa Amerley Amarteifio; Baozhen Dai; Jonathan Aseye Nutakor; Ebenezer Larnyo
Journal:  Healthcare (Basel)       Date:  2022-02-14

4.  An interRAI derived frailty index predicts acute hospitalizations in older adults residing in retirement villages: A prospective cohort study.

Authors:  Katherine Bloomfield; Zhenqiang Wu; Annie Tatton; Cheryl Calvert; Nancye Peel; Ruth Hubbard; Hamish Jamieson; Joanna Hikaka; Michal Boyd; Dale Bramley; Martin J Connolly
Journal:  PLoS One       Date:  2022-03-02       Impact factor: 3.240

5.  Factors Influencing the Vietnamese Older Persons in Choosing Healthcare Facilities.

Authors:  Tuyet Anh Nguyen; Long Thanh Giang
Journal:  Health Serv Insights       Date:  2021-06-09

6.  Factors Affecting Healthcare Utilization among Patients with Single and Multiple Chronic Diseases.

Authors:  Ka Young Kim; Eunmi Lee; Jeonghyun Cho
Journal:  Iran J Public Health       Date:  2020-12       Impact factor: 1.429

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.