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Decomposition and comparative analysis of differences in depressive symptoms between urban and rural older adults: Evidence from a national survey

Published online by Cambridge University Press:  21 February 2023

Lei Yuan*
Affiliation:
Department of Health Management, Faculty of Military Health Service, Naval Medical University, Shanghai, China
Qin Xu
Affiliation:
Shanghai Zelgen Biopharmaceuticals Co., Ltd, Shanghai, China
Jing Gui
Affiliation:
Department of Military Health Service Training, Naval Medical University, Shanghai, China Research Department of Characteristic Medical Center of PAP (People Armed Police), Tianjin, China
Yuqing Liu
Affiliation:
Department of Emergency, Naval Medical Center, Naval Medical University, Shanghai, China
Fuwang Lin
Affiliation:
Department of Health Service, The Affiliated Dongnan Hospital of Xiamen University, School of Medicine, Xiamen University, Fujian, China
Zhe Zhao
Affiliation:
Department of Health Management, Faculty of Military Health Service, Naval Medical University, Shanghai, China
Jinhai Sun
Affiliation:
Department of Health Management, Faculty of Military Health Service, Naval Medical University, Shanghai, China
*
Correspondence should be addressed to: Lei Yuan, Department of Health Management, Naval Medical University, No. 800 Xiangyin Road, Shanghai 200433, PR.China. Phone: 86-021-81871404; Fax: +86-021-81871404. E-mail: yuanleigz@163.com
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Abstract

Objectives:

The aim of this study was to investigate the factors influencing urban–rural differences in depressive symptoms among old people in China and to measure the contribution of relevant influencing factors.

Design:

A cross-sectional research. The 2018 data from The Chinese Longitudinal Health Longevity Survey (CLHLS).

Setting:

Twenty-three provinces in China.

Participants:

From the 8th CLHLS, 11,245 elderly participants were selected who met the requirements of the study.

Measurements:

We established binary logistic regression models to explore the main influencing factors of their depressive symptoms and used Fairlie models to analyze the influencing factors of the differences in depressive symptoms between the urban and rural elderly and their contribution.

Results:

The percentage of depressive symptoms among Chinese older adults was 11.72%, and the results showed that rural older adults (12.41%) had higher rates of depressive symptoms than urban (10.13%). The Fairlie decomposition analysis revealed that 73.96% of the difference in depressive symptoms could be explained, which was primarily associated with differences in annual income (31.51%), education level (28.05%), sleep time ( − 25.67%), self-reported health (24.18%), instrumental activities of daily living dysfunction (20.73%), exercise (17.72%), living status ( − 8.31%), age ( − 3.84%), activities of daily living dysfunction ( − 3.29%), and social activity (2.44%).

Conclusions:

The prevalence of depressive symptoms was higher in rural than in urban older adults, which was primarily associated with differences in socioeconomic status, personal lifestyle, and health status factors between the urban and rural residents. If these factors were addressed, we could make targeted and precise intervention strategies to improve the mental health of high-risk elderly.

Type
Original Research Article
Copyright
© International Psychogeriatric Association 2023

Introduction

With the deepening of the global aging, the number of elderly people worldwide was slightly higher than 1 billion in 2021, representing about 13.5% of the global population, and by 2030, one in six people will be 60 years of age and older (WHO, 2021). China is also facing the same serious problem of an aging population. In 2020, the national population aged 60 years and above was 200 million, accounting for 18.70% of the national population, an increase of 5.44% compared to 2010 (Office of the Leading Group of the State Council for the Seventh National Population Census, 2021). Over 20% of adults aged 60 and over suffer from mental or neurological disorder (excluding headache disorders), while 6.6% of all disabilities (Disability Adjusted Life Years - DALYs) in people aged 60 and over are attributable to mental and neurological disorders, most commonly dementia and depression (WHO, 2017). Depression in the elderly is associated with a major functional impact, impaired quality of life, and significant risk of suicide (Tayaa et al., Reference Tayaa2020). It mainly affects old people with chronic medical illnesses and cognitive impairment, causes suffering, family disruption and disability, worsens the outcome of many medical illnesses, and increases mortality (Alexopoulos, Reference Alexopoulos2005).

Depressive symptoms in older adults are not only age-related but also vulnerable to other factors including gender (Tsai et al., Reference Tsai, Chung, Wong and Huang2005a; Zhai et al., Reference Zhai2015), self-perceived financial status (Gong et al., Reference Gong, Wen, Guan, Wang and Liang2012; Zhao et al., Reference Zhao2018), marital status (Chen et al., Reference Chen, Wei, Hu, Qin, Copeland and Hemingway2005; Wu et al., Reference Wu, Liu, Chau and Chang2010), self-reported health (SRH) status (Gong et al., Reference Gong, Wen, Guan, Wang and Liang2012; Li et al., Reference Li, Pang, Chen, Song, Zhang and Zheng2011), hypertension (Wu et al., Reference Wu, Liu, Chau and Chang2010; Yunming et al., Reference Yunming2012), diabetes (Wu et al., Reference Wu, Liu, Chau and Chang2010; Yunming et al., Reference Yunming2012), negative life events (Gong et al., Reference Gong, Wen, Guan, Wang and Liang2012; Wu et al., Reference Wu, Yu, Lee, Tseng, Chiu and Hsiung2017), social support (Tsai et al., Reference Tsai, Yeh and Tsai2005b; Zhao et al., Reference Zhao2018), the number of cardiovascular diseases a person has (Li et al., Reference Li, Pang, Chen, Song, Zhang and Zheng2011; Zhao et al., Reference Zhao2018), smoking (Tsai and Tsai, Reference Tsai and Tsai2013; Wu et al., Reference Wu, Liu, Chau and Chang2010), alcohol consumption (Tsai and Tsai, Reference Tsai and Tsai2013; Wu et al., Reference Wu, Yu, Lee, Tseng, Chiu and Hsiung2017), and functional impairment (Wu et al., Reference Wu, Yu, Lee, Tseng, Chiu and Hsiung2017; Wu et al., Reference Wu, Liu, Chau and Chang2010). One study showed that poor self-perceived financial status, average and poor SRH, diabetes, negative life events, two or more cardiovascular diseases, functional disability, and poor social support were significant factors for depressive symptoms in older Chinese. However, average or good social support was found to be a protective factor, and age, living alone, hypertension, smoking and current alcohol consumption had no effect on depressive symptoms in older Chinese (Qiu et al., Reference Qiu, Qian, Li, Jia, Wang and Xu2020).

Are there differences in depressive symptoms between urban and rural areas in the elderly? Some studies have shown that the pattern of urban–rural differences was no significant difference (St John et al., Reference St John, Menec, Tate, Newall, Cloutier and O’Connell2021; Sun et al., Reference Sun, Hua, Qiu and Brown2022) or the higher prevalence in cities (Evans, Reference Evans2009; Ziarko et al., Reference Ziarko2015). But older urban people in China had significantly lower levels of depressive symptoms than older rural people (Guo et al., Reference Guo, Bai and Feng2018; Wang et al., Reference Wang, Li and Fu2021a). The widening gap between urban and rural development in China in terms of economy, social welfare, medical services, employment, and infrastructure may contribute to the different conditions of depressive symptoms among older people in urban and rural areas (Chow and Bai, Reference Chow and Bai2011). In order to solve the problem, the recent 14th Five-Year Plan for healthy ageing calls for an increase in the coverage rate of health education services for the elderly in urban and rural areas and makes elderly people with dysfunction, advanced age, disabilities, and family planning special families a priority group for family doctor services (National Health Commission of the People’s Republic of China, 2022).

In order to further analyze the influencing factors for the higher levels of depressive symptoms in rural Chinese older people than in urban older people and to provide a basis for precise prevention and control policies to control the levels of depressive symptoms in older people, we began to focus on the urban–rural differences in depressive symptoms in older people (aged 65+) in China. To this end, using the Chinese Longitudinal Health Longevity Survey (CLHLS), we initially explored the extent to which sociodemographic characteristics, personal lifestyle, and health status explain urban–rural differences in depressive symptoms among older Chinese.

Methods

Data sources

We used data from the 8th CLHLS (PKU Center for Healthy Aging and Development, 2020). The project’s data sources and data design reports are available here (https://opendata.pku.edu.cn/dataset.xhtml?persistentId=doi:10.18170/DVN/WBO7LK, Assessed 23 Feb 2022). The CLHLS was organized by the Centre for Healthy Ageing and Development Studies/National Development Research Institute of Peking University. The survey covered 23 provinces in China and was targeted at people aged 65 and above and adult children aged 35–64. The questionnaire was divided into two types: a questionnaire for surviving respondents and a questionnaire for family members of deceased elderly people. The eighth CLHLS used in this study was conducted in 2017–2018, interviewing a total of 15,874 older people aged 65 years and over and collecting information on 2,226 older people who died between 2014 and 2018. The study was approved by the Ethics Committee of Peking University (No. IRB00001052-13074). The 8th CLHLS included a total of 15,874 respondents. The exclusion criteria included age under 65 and/or nonresponse to depressive symptoms measurement indicators and/or nonresponse to demographic characteristics, sociological characteristics, personal lifestyle, or health status indicators. Finally, a total of 11,245 respondents were selected for this study. There were 3,338 older people from urban areas and 7,907 from rural areas. The exclusion process is shown in Figure 1.

Figure 1. Flowchart of study participant.

Depressive symptoms

We used the Chinese version 10-item short form of Center for Epidemiological Studies-Depression Scale (CES-D 10) (Andresen et al., Reference Andresen, Malmgren, Carter and Patrick1994) to measure depressive symptoms in this study. Responses are rated on a 4-point scale from 0 (less than one day) to 4 (5–7 days). Scores range from 0 to 30. Higher scores indicate more severe depressive symptoms (James et al., Reference James, Powell, Seixas, Bateman, Pengpid and Peltzer2020). The scale has been used extensively in several studies and has been well validated in the measurement of depressive symptoms in older adults, with an internal consistency reliability Cronbach’s α of 0.815 (Lei et al., Reference Lei, Sun, Strauss, Zhang and Zhao2014), regardless of the age and dementia status of the participants, indicating that the internal consistency reliability of the questionnaire was at a reasonable level. In the same way that multiple previous studies defined a score of 10 as a threshold score, participants with a score greater than or equal to 10 were defined as experiencing depressive symptoms (Jiang et al., Reference Jiang, Zhu and Qin2020; Yao et al., Reference Yao2021).

Grouping variables

Respondents were classified as rural and urban based on the nature of domicile at the time of the survey.

Covariates

To obtain more reliable findings, we controlled for a range of potential confounding factors. Demographic characteristics, sociological characteristics, personal lifestyle, and health status were incorporated with reference to other studies on depressive symptoms. Demographic characteristics included age, gender, BMI, and education level. Sociological characteristics included marital status, living status, and annual income. Personal lifestyle included sleep time, annual physical examination, smoking, drinking, exercise, and social activity. Health status included SRH, number of chronic diseases, activities of daily living (ADL), and instrumental activities of daily living (IADL).

Demographic characteristics

Age was classified as <80 years and ≥80 years. BMI was calculated by dividing weight (kg) by the square of height (m) and was divided into four categories: <18.5, 18.5–23.9, 24.0–27.9, and >28.0. Education level was classified according to time in school as 0 years, 1–6 years, and ≥7 years.

Sociological characteristics

Marital status included married and living with spouse, widowed, and others (including married but not living with a spouse, divorced, and never married). Living status was classified as living with household members, living alone, and living in an institution. Annual income was divided into four categories: very poor (<10,000 RMB), poor (10,000–29,999 RMB), middle (30,000–49,999 RMB), and rich (≥50,000 RMB).

Personal lifestyle

Sleep time was classified as <4, 4–5.9, 6–7.9, 8–9.9, and ≥10 according to the answer to the question ‘How many hours do you sleep normally?’. Based on participants’ responses to the questions ‘Do you have regular physical examination once every year?,’ ‘Do you smoke at the present time?’, ‘Do you drink alcohol at the present time?,’ and ‘Do you do exercises regularly at present?’, annual physical examination, smoking, drinking, and exercise were categorized as yes and no. Social activity was assessed according to activity participation, including six items: Tai Chi, square dance, visiting and interacting with friends, other outdoor activity, playing cards and/or mahjong, and social activities (organized), and the responses to each question were five options: almost every day, not every day but at least once a week, not every week but at least once a month, not every month but sometimes and never, and all activities answered never were considered no social, and the results were classified as yes and no.

Health status

The SRH was based on the answer to the question ‘How do you rate your health at present?’ and the results were categorized as good (very good or good) and poor (so so, bad or very bad). We included seven categories of chronic diseases: hypertension, diabetes, heart disease, stroke and cerebrovascular disease, cancer, prostate tumor and Parkinson’s disease, and classified the results into three categories: no chronic disease, having one chronic disease and two or more chronic diseases. One or more of the five basic activities (dressing, bathing, indoor transferring, eating, and toileting) requiring assistance or incontinence was defined as ADL dysfunction. IADL dysfunction was defined as needing help with one or more of the eight abilities assessed (going to a neighbor’s house alone, shopping alone, cooking alone, washing clothes alone, walking 1 km continuously, lifting a weight of 5 kg, crouching, and standing up three times continuously, taking public transportation alone).

Statistical analysis

Descriptive statistics were used to analyze general information on demographic characteristics, sociological characteristics, personal lifestyle, and health status. The chi-square test was used to analyze the distribution characteristics of depressive symptoms among the urban and rural elderly. The binary logistic regression model was used to explore the main influences on depressive symptoms in rural and urban older people. The above statistical analysis was carried out using SPSS 21.0 software. Finally, the Fairlie model was used to analyze the factors influencing and contributing to the differences in depressive symptoms between urban and rural older people. The analysis was carried out using Stata MP16.0 software. The level of statistical significance was defined as 0.05.

Fairlie decomposition analysis

As the dependent variable is a dichotomous variable, we used the Fairlie nonlinear decomposition method to decompose the depressive symptoms differences into the contributions of various factors (Fairlie, Reference Fairlie2005). According to Fairlie (Fairlie, Reference Fairlie1999), the decomposition of the nonlinear equation $Y = F\left( {X\widehat \beta } \right)$ can be written as

(1) $$\matrix{ {{{\hat Y}^a} - {{\hat Y}^b} = \left[ {\sum\limits_{i = 1}^{{N^a}} {{{F\left( {X_i^a{\beta ^a}} \right)} \over {{N^a}}}} - \sum\limits_{i = 1}^{{N^b}} {{{F\left( {X_i^b{\beta ^a}} \right)} \over {{N^b}}}} } \right]} \hfill \cr {\quad \quad \quad \quad \quad + \left[ {\sum\limits_{i = 1}^{{N^b}} {{{F\left( {X_i^b{\beta ^a}} \right)} \over {{N^b}}}} - \sum\limits_{i = 1}^{{N^b}} {{{F\left( {X_i^b{\beta ^b}} \right)} \over {{N^b}}}} } \right]} \hfill \cr } $$

${\hat Y^a}$ and ${\hat Y^b}$ were the mean probabilities of the binary outcomes of depressive symptoms in the two groups, F was the cumulative distribution function of the logistic distribution, ${\hat Y^a} - {\hat Y^b}$ represented the total difference due to group differences, and ${N^a}$ and ${N^b}$ were the sample sizes of the two population samples. The first term in parentheses in equation (1) represented the portion of the gap due to group differences in observed characteristics and the portion attributable to differences in estimated coefficients. The second term represented the portion due to differences in Y levels.

Results

General data of the respondents

The total sample size of this study was 11,245. Table 1 shows the results of descriptive statistical analyses for older people in rural and urban China. We found that 11.72% of older people experienced depressive symptoms, and 88.28% had no depressive symptoms. A higher proportion of older people in rural areas (12.41%) experienced depressive symptoms than in urban areas (10.13%) (p<0.001). The results of chi-square test showed that there were differences in the distribution of 14 covariates between rural and urban elderly in gender, BMI, education level, marital status, living status, annual income, sleep time, annual physical examination, smoking, drinking, exercise, number of chronic diseases, ADL dysfunction and IADL dysfunction, and there was no difference in the distribution of three factors: age, social activity, and SRH.

Table 1. Distribution of the variables in rural and urban respondents

CES-D 10, the Chinese version 10-item short form of Center for Epidemiological Studies-Depression Scale; SRH, self-reported health; ADL, activities of daily living; IADL, instrumental activities of daily living.

Comparison of variable distributions of different depressive symptoms

Table 2 shows the distribution of covariates between rural and urban elderly in different depressive symptoms. The results showed that some covariates for elderly with and without depressive symptoms had different distribution characteristics. They were gender, marital status, sleep time, annual physical examination, drinking, and IADL dysfunction.

Table 2. Distribution of the variables in depressive symptoms and non-depressive symptoms respondents

Logistic model results

Figure 2 shows the results of the logistic model calculations for depressive symptoms in rural and urban older people. Among rural older adults, BMI (<18.5, OR = 1.307), living status (alone, OR = 1.374), sleep time (<4, OR = 3.677, 4.0-5.9, OR = 2.403), and IADL dysfunction (yes, OR =1.519) were risk factors for depressive symptoms; age (≥80, OR = 0.729), gender (male, OR =0.785), education level (≥7, OR = 0.799), sleep time (≥10, OR = 0.795), social activity (yes, OR = 0.815), and SRH (good, OR = 0.249) were protective factors. Among urban older adults, gender (male, OR = 1.407), sleep time (<4, OR = 5.552, 4.0–5.9, OR = 2.185), ADL dysfunction (yes, OR = 1.493), and IADL dysfunction (yes, OR = 1.722) were risk factors for depressive symptoms; age (≥ 80, OR = 0.586), annual income (rich, OR = 0.626), sleep time (8.0-9.9, OR = 0.612), exercise (yes, OR = 0.542), and SRH (good, OR = 0.303) were protective factors.

Figure 2. Results of Logistic model in rural and urban elderly.

Thus, the differences in depressive symptoms between rural and urban older people were reflected in the following four main areas. First, BMI (<18.5, OR = 1.307) and living status (alone, OR = 1.374) were risk factors only in rural areas. Second, gender (male, OR = 1.407) and ADL dysfunction (yes, OR = 1.493) were risk factors only in urban areas. Three, gender (male, OR = 0.785), education level (≥7, OR = 0.799), sleep time ≥10 (OR = 0.795), and social activity (yes, OR = 0.815) were protective factors only in rural areas. Fourth, annual income (rich, OR = 0.626), sleep time (8.0–9.9, OR = 0.612), and exercise (yes, OR = 0.542) were protective factors only in urban areas.

Decomposition analysis results

To ensure the stability of the results, the software was used to repeat the decomposition model 100 times. Table 3 presents the results of the decomposition model of the differences in depressive symptoms between rural and urban older people. The results showed that 73.96% of the difference in depressive symptoms was due to observed factors, and 26.04% was due to urban and rural factors and unobserved factors. Annual income (31.51%), education level (28.05%), sleep time ( − 25.67%), SRH (24.18%), IADL dysfunction (20.73%), exercise 17.72%), living status ( − 8.31%), age ( − 3.84%), ADL dysfunction ( − 3.29%), and social activity (2.44%) were significant in explaining differences in depressive symptoms (p<0.05).

Table 3. Fairlie decomposition of depressive symptoms disparity between rural and urban elderly

Discussion

This study investigated the relationship between some factors (such as sociodemographic characteristics, personal lifestyle, and health status) and depressive symptoms among urban and rural older adults in mainland China and quantified the extent to which these factors could explain persistent differences in depressive symptoms between urban and rural older adults in China. Our study confirmed that there were indeed differences in depressive symptoms among older people in urban and rural China.

This study showed that the prevalence of depressive symptoms among Chinese older adults (age≥65) was 11.72%, which was much lower than the similarly reported prevalence of depressive symptoms among Chinese older adults (age ≥ 60) of around 36.00% (Hu et al., Reference Hu, Cao, Shi, Lin, Jiang and Hou2018; Zhou et al., Reference Zhou, Ma and Wang2021). The prevalence of depressive symptoms among older people in rural areas (12.41%) was higher than in urban areas (10.13%), which was similar to the findings of other scholars on depressive symptoms among older people in China (Shang, Reference Shang2020; Wang et al., Reference Wang, Li, Gao and Fu2021b), suggesting that there were significant urban–rural differences in depressive symptoms among older people in China. This urban–rural disparity in depressive symptoms in older people can be found in countries such as Myanmar (Sasaki et al., Reference Sasaki2021), Spain (Urbina Torija et al., Reference Urbina Torija, Flores Mayor, García Salazar, Torres Buisán and Torrubias Fernández2007), Vietnam (Reference NguyenNguyen et al., 2019), and Ghana (Adjaye-Gbewonyo et al., Reference Adjaye-Gbewonyo, Rebok, Gallo, Gross and Underwood2020). In addition, the 2.28 percentage point difference in the prevalence of depressive symptoms between urban and rural elderly suggested that medical personnel have a greater need to focus on the rural elderly clients’ mental health. And it may be better to communicate with them in plain language to ease any anxiety or depression they may have.

Our logistic regression analysis further revealed differences between the covariates of depressive symptoms in urban and rural Chinese older adults. Age, gender, BMI, education level, living status, annual income, sleep time, exercise, social activity, SRH, ADL dysfunction, and IADL dysfunction were factors associated with the presence of depressive symptoms, similar to the findings of other researchers (Guo et al., Reference Guo, Bai and Feng2018; Liu et al., Reference Liu2021; Yang et al., Reference Yang, Li, Gao, Zhou and Li2020). Unlike other findings (Hu et al., Reference Hu, Cao, Shi, Lin, Jiang and Hou2018; Qiu et al., Reference Qiu, Qian, Li, Jia, Wang and Xu2020), older adults ≥ 80 years of age in this study were less likely to have depressive symptoms, and the specific reasons need to be further investigated. Men in rural areas were less likely to have depressive symptoms than women, while men in urban areas were more likely to have depressive symptoms than women, a result that differed from other studies of older Chinese (age ≥ 60)—both rural and urban men were less likely to have depressive symptoms than women (Hu et al., Reference Hu, Cao, Shi, Lin, Jiang and Hou2018; Liu et al., Reference Liu2021). Female rural older adults with a BMI <18.5, lower levels of education, living alone and social isolation, and male urban older adults with lower annual incomes, lack of exercise, and ADL dysfunction were more likely to have depressive symptoms. This was probably due to the lower socioeconomic status and poorer living conditions of this group, which was a vulnerable group and less likely to have access to qualified living security and health care. The results of the logistic model showed that older people with <6 h of sleep were more likely to experience depressive symptoms and those in rural areas with ≥10 h of sleep and those in urban areas with 8–9.9 h of sleep were less likely to experience depressive symptoms. This result indicated that lack of sleep was associated with more depressive symptoms in older adults, while adequate sleep was associated with fewer depressive symptoms in older adults. Consistent with a meta-analysis study (Maier et al., Reference Maier, Riedel-Heller, Pabst and Luppa2021), we found that older people with IADL dysfunction were at greater risk of having depressive symptoms. Poor SRH would increase the risk of having depressive symptoms in terms of SRH status. SRH was self-rated by older people based on their own subjective perceptions of their health and was a general perception of their health. Poor SRH meant that they were more dissatisfied with their health and found it difficult to engage in their lives with a positive mindset (Liu et al., Reference Liu2021).

There were significant urban–rural differences in depressive symptoms among older Chinese. The results of the Fairlie model showed that this part of the differences was related with annual income (31.51%), education level (28.05%), sleep time ( − 25.67%), SRH (24.18%), IADL dysfunctional (20.73%), exercise (17.72%), living status ( − 8.31%), age ( − 3.84%), ADL dysfunctional ( − 3.29%), and social activity (2.44%). All factors other than age were intervenable. If these intervening factors could be improved, the difference in depressive symptoms between urban and rural older people could be reduced by about 70%.

Our study can make meaningful policy recommendations. Firstly, we should pay attention to health education, promote the elderly to develop good living habits, ensure adequate sleep time, actively exercise, and participate in social activities. Secondly, increased funding in the area of elderly care could encourage the community to actively participate in health maintenance projects for the elderly to improve their health status with a focus on preventing and improving ADL dysfunction and IADL dysfunction. Thirdly, the government should pay more attention to people in need, especially the elderly in rural areas with BMI <18.5, lower levels of education, living alone and more socially isolated, and give them an appropriate tilt in health insurance policies and formulate targeted assistance and aid programmes.

Limitations

Our study has several limitations. Firstly, our definition of depressive symptoms was based on the CES-D 10 scale, which, while extensively validated with good reliability, was still self-reported and lacked accuracy in the assessment of depressive symptoms compared to medical diagnosis. Secondly, there are many factors that influenced depressive symptoms and we have included only some of these indicators. Finally, China’s elderly population is so large that the CLHLS data we have used covered only a portion of it and cannot cover all elderly people.

Conclusion

In summary, the results of regression and decomposition analysis showed that the prevalence of depressive symptoms in rural elderly was higher than that in urban elderly, and age, education level, living status, annual income, sleep time, exercise, social status, SRH, ADL dysfunction, and IADL dysfunction were related to the differences in depressive symptoms between urban and rural areas. The results provided new evidence of urban–rural differences in depressive symptoms among older people in China and will help to facilitate the development or adjustment of mental health prevention and treatment policies for older people in China. Therefore, after accurately identifying the factors influencing urban–rural differences in depressive symptoms, we can make targeted and precise intervention strategies to improve the mental health of high-risk group. Finally, the problem of urban–rural differences in depressive symptoms will be effectively solved.

Conflict of interest

None.

Source of funding

None.

Description of author’s roles

Lei Yuan and Jinhai Sun designed the study. Qin Xu and Zhe Zhao controlled the quality of the data and performed statistical analysis. Lei Yuan, Zhe Zhao, Jing Gui, and Fuwang Lin managed and checked all the data. Jinhai Sun, Zhe Zhao, Yuqing Liu, and Lei Yuan contributed to manuscript preparation, editing, and review. All authors read, checked, and approved the final manuscript.

Acknowledgments

We thank the Center for Healthy Ageing and Development Studies at Peking University for organizing the CLHLS and all the participants, investigators, and assistants of the CLHLS.

Data Availability Statement

The datasets analyzed in this study can be found in the Peking University Open Research Data website: https://opendata.pku.edu.cn/dataset.xhtml?persistentId=doi:10.18170/DVN/WBO7LK.

Ethics statement

The data for this study were taken from the CLHLS, which is organized by the Center for Healthy Ageing and Development Studies at Peking University, and has been approved by the Research Ethics Committees of Peking university and Duke University; the data analyzed here are available in the public domain. Therefore, separate ethical approval was not required for this study.

Footnotes

These authors contributed equally to this work.

*

These authors contributed equally as corresponding authors.

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Figure 0

Figure 1. Flowchart of study participant.

Figure 1

Table 1. Distribution of the variables in rural and urban respondents

Figure 2

Table 2. Distribution of the variables in depressive symptoms and non-depressive symptoms respondents

Figure 3

Figure 2. Results of Logistic model in rural and urban elderly.

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Table 3. Fairlie decomposition of depressive symptoms disparity between rural and urban elderly