Skip to main content
  • Research article
  • Open access
  • Published:

Prevalence and correlates of positive mental health in Chinese adolescents

Abstract

Background

Studies investigating the prevalence of positive mental health and its correlates are still scarce compared to the studies on mental disorders, although there is growing interest of assessing positive mental health in adolescents. So far, no other study examining the prevalence and determinants of positive mental health in Chinese adolescents has been found. The purpose of this study was to assess the prevalence and correlates of positive mental health in Chinese adolescents.

Methods

This cross-sectional study used a questionnaire including Mental Health Continuum-Short Form (MHC-SF) and items regarding multiple aspects of adolescent life. The sample involved a total of 5399 students from grade 8 and 10 in Weifang, China. Multivariate Logistic regression analyses were performed to evaluate the associations between potential indicators regarding socio-economic situations, life style, social support and school life and positive mental health and calculate odds ratios and 95% confidence intervals.

Results

More than half (57.4%) of the participants were diagnosed as flourishing. The correlated factors of positive mental health in regression models included gender, perceived family economy, the occurrence of sibling(s), satisfaction of self-appearance, physical activity, sleep quality, stress, social trust, desire to learn, support from teachers and parents as well as whether being bullied at school (OR ranging from 1.23 to 2.75). The Hosmer-Lemeshow p-value for the final regression model (0.45) indicated adequate model fit.

Conclusion

This study gives the first overview on prevalence and correlates of positive mental health in Chinese adolescents. The prevalence of positive mental health in Chinese adolescents is higher than reported in most of the previous studies also using MHC-SF. Our findings suggest that adolescents with advantageous socio-economic situations, life style, social support and school life are experiencing better positive mental health than others.

Peer Review reports

Background

Mental health is defined as a state of well-being in which every individual realizes his or her own potential, can cope with the normal stresses of life, can work productively and fruitfully, and can make a contribution to his or her community [1]. So far, there has been no global definition of positive mental health although many researchers have made attempts based on various theories [2, 3]. For example, Keyes suggested that mental health should be operationalized as a syndrome of symptoms of positive feelings and positive functioning in life [4]. The Public Health Agency of Canada referred to positive mental health as being ‘the capacity of each and all of us to feel, think, and act in ways that enhance our ability to enjoy life and deal with the challenges we face. It is a positive sense of emotional and spiritual well-being that respects the importance of culture, equity, social justice, interconnections and personal dignity’ [5]. The definitions of positive mental health are, and should be to some degree, context dependent [6]. Thus, Vaingankar et al. defined positive mental health as ‘the ability to build and maintain relationships, possess coping skills, pursue personal growth and autonomy, and participate in religious and spiritual practices’ in an Asian context [7]. Generally, the hedonic tradition dealing with positive emotions and the eudaimonic tradition focusing on optimal functioning of an individual in everyday life, dominate the field regarding the components of positive mental health [8]. The hedonic tradition refers to the desire to maximize pleasure and to minimize pain from the perspective of maximizing the good in one’s life [9]. Commonly contrasted with the hedonic tradition, the eudaimonic tradition includes virtue and effort as essential parts of happiness [10]. Some researchers underestimated the eudaimonic tradition in their model of positive mental health [10]. Considering these two ancient Greek approaches simultaneously, however, positive mental health can be defined as the presence of general emotional, psychological, and social well-being, as the concept adopted in this study [4]. Gains in positive mental health predict declines in mental disorders, while losses of positive mental health predicted increases in mental disorders [11]. However, this did not imply that mental health is the same as the absence of mental disorder. A growing body of evidence shows that high levels of well-being are good for individuals and society, and are associated with a range of positive outcomes, for example, good health and life expectancy and satisfaction [12]. As Merriam-Webster defines, well-being is the state of doing well especially in relation to one’s happiness or success [13]. This is related to the definition of positive mental health, as WHO defined mental health as state of well-being in a positive way [1].

Assessing the prevalence of positive mental health is challenging, partly because of the conceptually distinct definitions leading to various ways of operationalizing mental health [2]. One way developed over time is to use the short form of the Mental Health Continuum (MHC-SF), a scale developed by Keyes that measures three levels of positive mental health: flourishing, moderate and languishing mental health [14]. The instrument was developed based on the two-continua model that identifies mental health and mental illness as two related but distinguishable dimensions. Thus, the presence of mental health is not equal to the absence of mental illness. In this theory, positive mental health is emphasized as a combination of feeling good and functioning well in life [15]. Briefly, people who are flourishing in life report high levels of well-being, meaning that they often experience positive emotions and function well from both psychological and social perspectives. On the other hand, languishing is the absence of mental health as a state of being mentally unhealthy, equivalent to stagnation and emptiness or that life lacks interest and engagement [4]. The MHC-SF has been successfully tested on adults from South Africa, Poland, Italy, Brazil, United States and Australia, and adolescents from Egypt, India and South Korea [16,17,18,19,20,21,22,23,24] and has also shown good psychometric properties on a sample of Chinese adults [25]. The authors of this article evaluated the psychometric properties of the MHC-SF and found the instrument to be valid and reliable in assessing positive mental health also in Chinese adolescents [26]. Table 1 shows the percentages of flourishing individuals in different countries from previous studies. The lowest level of flourishing mental health was found in South Korean adolescents (11.7%), while the highest level was identified in Canadian adolescents and adults (76.9%).

Table 1 Prevalence of positive mental health assessed by MHC-SF in previous studies

Multiple indicators of positive mental health in general populations have been identified across countries. Common indicators of positive mental health include socio-demographic factors [4, 15, 27,28,29,30,31,32,33], health status [15, 31], physical activity [32, 34,35,36,37], body image [38], sleeping [39], screen time [36, 40], substance use [32, 41, 42], social support [28, 30, 32, 33] and violence or discrimination [30]. For positive mental health of adolescents, school related factors such as peer relationship and support from teachers also play an important role [41]. Age was found to be associated with positive mental health in adverse directions under different contexts [4, 15, 28, 32]. Education, income, employment and living area were positively associated with positive mental health [15, 28,29,30,31,32,33]. Ethnicity also proved to be an indicator of positive mental health [27]. Socio-economic factors were found to be significantly associated with positive mental health in Chinese adults [25]. Other findings showed that physical activity was a significant predictor of positive mental health in Chinese college students [35]. Perceived discrimination was negatively linked to psychological well-being among Chinese migrant adolescents [43]. Furthermore, conceptual frameworks for the evaluation of positive mental health and its determinants have been developed. Orpana et al. defined 25 determinant indicators of positive mental health of children, youth and adults in Canada at the individual, family, community and societal level [5]. The individual indicators included physical activity, substance use, nurturing childhood environment, resilience, control and self-efficacy, spirituality, violence, and coping. Family indicators were household composition, family relationships, parenting style, family physical and mental health status, substance use among family members, and family income. Community indicators comprised social support, social network, school environment, workplace environment, community involvement, neighborhood social environment, and neighborhood built environment. Finally, the indicators at the societal level included inequality, discrimination, as well as political participation. According to Maher and Waters [44], indicators of positive mental health at the individual level for children generally refer to the presence of social connections and a strong sense of self and self-worth, and may include measures of a sense of belonging, self-esteem, engagement, self-determination and control and quality of life. Family indicators may include parental mental health, freedom from violence, family cohesion, parent-child attachment and use of responsive, developmentally-appropriate family and parenting practices. It is notable longitudinal research regarding positive mental health is still scarce [36, 39].

Researchers have focused on the evaluation of mental health using the measurement of mental disorders during the past decades [2]. To date, studies investigating the prevalence of positive mental health and its correlates are still scarce compared to the studies on mental disorders, although there is growing interest of assessing positive mental health in adolescents. Adolescence is a time in life that harbors many risks but also presents great opportunities for sustained health and wellbeing through education and preventive efforts [45]. There is mounting evidence that many, if not most, lifetime psychiatric disorders will first appear in childhood or adolescence [46]. Therefore, promoting mental health and identifying individuals at risk in adolescents is essential to reduce a heavy burden of disease worldwide. Positive mental health is not only believed to be inversely associated with mental disorders (but not two sides of the same continuum), especially in adolescence [11, 47], but also linked to positive outcomes in life [2]. In these longitudinal studies, researcher found that mental problems are predictive of declines in future positive mental health. There are knowledge gaps of prevalence, risks and protective factors of positive mental health as well as differences in positive mental health related to e.g. gender and socio-economic factors [48]. So far, no other study examining the prevalence and determinants of positive mental health in Chinese adolescents has been found. The purpose of this study was to analyze the prevalence of positive mental health and explore the correlates of positive mental health in Chinese adolescents. It is hypothesized that factors related to socio-economic situations, daily life, social support and school environment are associated with positive mental health among the sampled Chinese adolescents.

Methods

Sample

The study was performed in the urban area of the city of Weifang in Shandong Province of the eastern part of People’s Republic of China. By the year of 2016, the population of Weifang reached 9.35 million. The economic growth is steady in both industry and agriculture [49]. The socio-economic status of Weifang is considered to be high as the Shandong province is one of China’s most developed regions, with the third highest gross domestic product in 2014 of all Chinese provinces [50]. The total study population included students from grade 8 in twelve middle schools and grade 10 in five high schools in two urban districts of Weifang. Students in grade 8 from five middle schools were chosen by stratification by district and cluster sampling by school. As all middle school students were recruited according to their family address, we stratified the two urban districts in random sampling. While high school admitted students by their remarks in ‘high school entrance examination’, only cluster sampling was performed. A total of 5399 students, including 3044 students from grade 8 and 2355 students from grade 10, participated in the study. Among these students, the response rate was 100%. No one refused to respond to the questionnaire when the paper forms were distributed in the classroom, although 92% of respondents answered all 161 questions. In four schools, students were asked to fill in the questionnaire and return it in class after 1 h. In the three other schools, the questionnaires were completed at home and brought back to the teachers the following day. Students who were absent from school when the questionnaires were distributed were not included in the study.

Measures

Questionnaire

This study was a part of a Sino-Swedish collaboration on positive mental health among adolescents, including MHC-SF. Sweden has a long history of student health services targeting the whole population and longitudinal measurement of adolescent health. The questionnaire used in this study was translated from a Swedish ongoing longitudinal survey known as "Survey of Adolescent Life in Vestmanland" (SALVe) [51]. The survey study was initiated in 1995 to investigate the health status and trends in health, lifestyle and school life in the whole county of Vestmanland, a region in mid Sweden. The MHC-SF and other items indicating general health, substance use, information technology exposure, school life and socio-economic situation were included in the 2014 version of SALVe questionnaire. Slight changes were made on several items in order to correspond better to a Chinese context. For example, ‘ice hockey’ was replaced by ‘table tennis’ in the items regarding sports. The questionnaire items were first translated into English by the last author and then into Chinese by the first author and other two Chinese researchers. Back translation into English was conducted by the first author to check the quality of translation with the last author. Therefore, the questionnaire in the cross-cultural study was considered to be appropriately adapted [52]. A pilot study on 385 students in Grade 8 was performed one month before the main study.

Mental health continuum-short form (MHC-SF)

The MHC-SF comprises 14 items, representing the three dimensions of well-being. A 6-point Likert scale is used to rate the feelings of the respondents in the past month (never, once or twice a month, about once a week, two or three times a week, almost every day, every day). A diagnosis of flourishing is made if the individuals feel 1 of the 3 hedonic well-being symptoms “every day” or “almost every day” and feel 6 of the 11 positive functioning symptoms “every day” or “almost every day” in the past month. A diagnosis of languishing is made if 1of the 3 hedonic well-being symptoms are perceived “never” or “once or twice a month” and 6 of the 11 positive functioning symptoms are perceived “never” or “once or twice a month”. Individuals who do not fit the diagnosis of “languishing” or “flourishing” mental health are categorized as “moderately mentally healthy” [53]. Evidence that the diagnosis is valid has been presented by Keyes in several publications [4, 14, 54] and the diagnosis used in a considerable number of papers since. The psychometric properties of MHC-Sf were evaluated on the same sample of Chinese adolescents [26]. Flourishing as a state where people have no depression, but high levels of well-being is the main focus of the research regarding positive mental health.

Variables

Socio-demographic variables used in the models included respondents’ gender, grade level, whether having a sibling, perceived family economy and family form. Perceived family economy was a single item that assesses a family’s current financial situations including 7 levels from low to high. Higher scores reflected perceptions of better family economic condition. In the analysis, this variable was then condensed into three levels: poor, moderate and good family economy. The variable ‘family form’ has two values: 1 for that adolescents live with both parents and 0 for that children live with one of the parents or other adults.

Self-satisfaction of weight/appearance were attained by a 5-point Likert item: ‘To what extent are you satisfied with your weight/appearance’ respectively. The variables of BMI, self-satisfaction of weight and self-satisfaction of appearance were grouped in three categories. Sleep quality, screen time, chronic stress, anxiety, depression, desire to learn and physical activity were dichotomized into two categories of ‘low’ and ‘high’. The behaviors of smoking, drinking and being bullied included two categories ranging from ‘never’ to ‘occasionally or often’. Parental support was measured by a single index of 3 items that reflect feelings of support for school life by parents (α = .81 for the subscale). Teacher’s support was measured by a single index of 4 items that reflect feelings of support for school life by teachers (α = .91 for the subscale). Social trust was measured by a single index of 3 items that reflect the attitude towards the society in a positive sense (α = .82 for the subscale). The percentage of missing data was no more than 5% for all relevant variables, except sleep quality (8.8%) and BMI (6.4%).

Data analysis

The questionnaire data was analyzed using the statistical software SPSS 22. Prevalence was presented with proportions by categories of interest. Multivariate logistic regressions calculated Odds Ratios (OR) and 95% confidence intervals (CI) in analyzing the variables associated with ‘flourishing mental health’ as the dependent variable. Effect size measurements confirmed the significance between the variables in the model. The regression analysis was performed in two steps, in order to first create a crude model and then refine it into a final model. First, all potential indicator variables were checked for multicollinearity by performing Spearman correlation analysis (Spearman coefficient ρ S  > 0.70). The variables were screened in a multiple logistic regression analysis using the Enter method (the crude model). In the second step, the indicators with an estimate that was not significant in the crude model were dropped until all estimates in the model were statistically significant (the final model). The fit of the logistic models was assessed on the basis of the Hosmer-Lemeshow test. Nagelkerke Pseudo-R2 statistic was calculated to estimate the variance attributed to the predictors in a logistic regression model.

Results

Table 2 presents the characteristics of the sampled Chinese adolescents. A total of 57.4% of the participants were flourishing. In grade 8, 57.9% of the boys and 60.6% of the girls were identified as flourishing. In grade 10, 54.1% of the boys and 55.0% of the girls were diagnosed as flourishing. Findings of the Chi-square tests indicated these differences in the prevalence of mental health in adolescents were significant.

Table 2 Selected sample characteristics

Table 3 presents the effects of our chosen presumptive indicators of positive mental health in the crude model. The results of the multivariate logistic regression analysis showed that gender, perceived family economy, sibling, satisfaction of self-appearance, physical activity, sleep quality, stress, social trust, desire to learn, teacher’s support, parental support and being bullied at school were significantly associated with positive mental health. The Hosmer-Lemeshow p-value for the crude model (0.54) was substantially above 0.05. Accordingly, the multivariate logistic regression analysis was performed again after non-significant indicators were dropped from the model. The results show that total screen time was not significantly associated with positive mental health (p = 0.10). With this indicator removed from the model, the multivariate logistic model was tested and proved to be the final model with all indicators significantly associated with positive mental health. The Hosmer-Lemeshow p-value for the final model (0.45) was above 0.05 indicating adequate model fit.

Table 3 Indicators associated with positive mental health by multivariate logistic regression (crude model)

Table 4 presents the final model with odds ratios and 95% confidence intervals for all significant indicators with regards to positive mental health of young adolescents. The strongest effect in the model was seen for satisfaction of self-appearance with an OR of 2.75. The final model explained 31% of the variance in positive mental health (Nagelkerke pseudo-R2 = 0.310).

Table 4 Final model of indicators associated with positive mental health by multivariate logistic regression

Discussion

This is, to the best of our knowledge, the first study to comprehensively assess the prevalence of positive mental health and its correlates in Chinese adolescents. More than half (57.4%) of the participants were diagnosed as flourishing. The variables significantly associated with positive mental health in the regression models included gender, perceived family economy, the occurrence of sibling(s), satisfaction of self-appearance, physical activity, sleep quality, stress, social trust, desire to learn, support from teachers and parents as well as whether being bullied at school.

The findings of the present study revealed a high prevalence of positive mental health for adolescents compared to the previous studies using MHC-SF to assess positive mental health (see Table 1), where the prevalence in most countries ranged between 10 and 30% [14, 16,17,18,19,20] and reached 43.4% in Chinese adults [25]. Hypothetical explanations for the high prevalence of positive mental health in this study might be the high socio-economic status of Weifang as well as the younger age of the participants compared to other similar studies. Keyes suggested that the prevalence of flourishing decrease as age increase during adolescence [41]. Also, younger adolescents reported higher prevalence of flourishing than older adolescents in an Indian study [21]. A study among Swedish adolescents and adults between 16 and 29 years found that positive mental health decreased with age [32]. Our findings suggest that the prevalence of flourishing in Chinese adolescents was higher than most of other countries. However, this is still in need of comprehensive investigation, especially from a cultural dimension. China is described as a collectivist society with a high degree of power distance [55, 56]. This means that group norms dominate over individual wishes and that superiors, such as teachers and parents, are respected and obeyed. It is important to have a sense of belonging to groups, especially to the family [55, 57]. For example, researchers found fewer behavior problems in classrooms and schools in which students highly respect their teachers and value self-discipline in China, and related that to the Confucian values [58]. The inherent respect for superiors might be the explanation to the very high respondent rate of the questionnaire, as teachers requested students to respond. Support from family and teachers were also significantly associated with positive mental health in our study. Another explanation may be the positive attitudes of Chinese people towards the economic development of their country. According to Pew Research Center, 90% of Chinese rated the economic conditions of their country as good, which was the highest rating among all the 40 countries in the survey [59]. Also, 88% of the Chinese respondents believed that when today’s children grow up they will be better off financially than their parents. Another survey showed that the Chinese public was optimistic about the long-term economic future, “in particular, their positive outlook stands in stark contrast to the pessimism found in the United States and much of Europe” [60]. We found that social trust strongly indicates positive mental health in the current study (OR = 2.53, 95% CI = 2.18–2.93), which supports this hypothesis.

In our study, girls showed slightly better positive mental health than boys (see Table 4). Most previous studies using MHC-SF reviewed in this paper do not show any significant difference in positive mental health between males and females [15, 17, 25, 34, 61]. As this is the first study assessing positive mental health of Chinese adolescents using MHC-SF, we are unable to compare our results with previous studies in China. In terms of psychiatric disorders, however, some researchers found a higher prevalence among Chinese boys than among girls [62]. Girls were found to be more flourishing than boys in India [21], indicating that there might be characteristics shared in Asian countries regarding positive mental health. One hypothetical explanation of the slightly higher prevalence of positive mental health among Chinese girls in our study could be that they perceive a better relationship to their parents than boys [63].

The indicators that were found to have the highest impact on positive mental health of Chinese adolescents were social trust, satisfaction of self-appearance, sleep quality, parents’ support and perceived family economy. These are indicators on the individual and family level, except for social trust, which is an indicator on a community level. Our findings were in accordance with the determinant indicators of Orpana et al., of family relationships and parenting style, and social support and networks [5], as well as Maher and Waters’ individual determinant of a strong sense of self-worth [44].

Perceived family economy was identified as a significant indicator of positive mental health. In the current study, only one item assessed perceived family economy: ‘Imaging society as a ladder. If you think about your family’s finance in comparison with the wider community, where would you place your family on the scale below?’There was no objective data of family income because no questionnaire for parents was distributed. Instead, young participants described the impression of their parental income. We emphasized that the family economy was perceived by the participants because they were rating the economy of someone else other than themselves. In a meta-analysis of subjective socio-economic status and adolescent health, positive associations were found between socio-economic status including family economy and better health outcomes in adolescence [64]. Previous studies found evidence for that socio-economic status was related to gender, income, education and employment as determinants of positive mental health in United States, European, Australian and Asian countries including China [4, 15, 27,28,29,30,31,32,33]. Adolescents with one or more siblings (23.7% of the respondents) reported a higher level of positive mental health than those who were the only child of their parents, which is in line with previous findings [65]. Sibling relationship is considered to have great influence in adolescence and may affect positive mental health [65]. In China, the family planning program has experienced several transitions and varied in different areas and time periods since the 1970s. As a result, the rigorous one-child policy was modified in the 1980s so that the families meeting certain criteria were allowed to have more than one child, usually in rural areas [66]. Thus, a proportion of adolescents with one or more siblings were identified in this study.

Body image satisfaction is often defined as the degree to which individuals are satisfied with their physical appearance, especially weight and shape [67]. It is noteworthy that BMI and satisfaction of self-weight were not significantly associated with positive mental health in the final regression model. Instead, the satisfaction of self-appearance was found to be an evident predictor of positive mental health in Chinese adolescents. Our findings concerning BMI were in line with a previous study on Chinese college students [35]. Also, body dissatisfaction was found to be negatively associated with quality of life among adolescents regardless of gender [68], which strongly supports our results. Based on this, the authors hypothesize that satisfaction of self-appearance influences positive mental health. However, positive mental health can also cause satisfaction of self-appearance and self-satisfaction of weight, and a third variable influencing both positive mental health and satisfaction of self-appearance/self-weight, for example, mental disorder (i.e., eating disorder). Unfortunately, our data collection and analysis cannot specify the causal relationships between these variables.

There was no association identified between smoking habits and positive mental health. Only 7.0% of the participants in our study reported current or previous smoking. However, the prevalence of smoking in Chinese adolescents is generally high [69]. Considering that smoking among males is a severe public health problem in China [70], the relatively low prevalence of smoking among the adolescents included in the study was surprising. As the relationship between smoking and low socio-economic status is strong [71], the low prevalence of smoking might be explained by the relatively high socio-economic status of Weifang. Moreover, Davoren et al. found that smoking was not associated with mental health and well-being among students in Ireland and assumed that the smoking habits were underreported (27% for men and 25.6% for women) [34]. This might also be the case in our study.

A strength of this study is that the sample size is larger than the previous studies utilizing MHC-SF listed in Table 1 [14, 16,17,18,19,20,21, 25, 61], except for the Canadian sample which represented the national population [15]. We also included a comprehensive range of potential explanatory variables from multiple aspects of adolescent life. After successfully validating the MHC-SF in Chinese adolescents [26], we found that Keyes’ definition of positive mental health fitted well into the Chinese context and thus examined the prevalence of positive mental health and associations with a range of indicators of positive mental health. There are also limitations of the study. First, the study was performed in an economically developed area of China. Thus, the family income might be higher among our respondents than in other less developed areas considering the regional disparities in China [72]. Second, the extreme dependence on self-reported information might lead to a recall bias affecting the results. For example, respondents might not remember or avoid to give responses that are perceived to be socially undesirable [73], especially in adolescents [74]. In order to reduce social pressure and possible social desirability effects, the self-administered questionnaire was answered anonymously [75]. The cross-sectional study design did not allow further assumptions on the causality relationship between positive mental health and potential risk and protective factors. Finally, questionnaires were answered in two different ways depending on the choice of the school headmasters. In four out of the seven schools, students completed the questionnaire in the classrooms in during a one-hour period. Students in the three other schools filled in the forms at home and returned them to school teachers on the following day. It should be noted that all students from grade 10 completed the questionnaires at home whereas most students from grade 8 responded to the questions at school. However, the variable ‘collection method’ was not significantly associated with positive mental health in the crude model, indicating that the different circumstances under which the questionnaire was answered had no effect on positive mental health.

Conclusion

Our study adds to the knowledge of prevalence of positive mental health in Chinese adolescents measured by the MHC-SF, as well as indicators of positive mental health. The prevalence of positive mental health among the sampled Chinese adolescents was considerably higher than reported in most of the previous studies using MHC-SF. Unlike most other studies of this kind, girls reported a higher level of positive mental health than boys. The indicators of social trust, satisfaction of self-appearance, sleep quality, parents’ support and perceived family economy were associated with a high level of positive mental health. Our study was performed in one specific city of China, Weifang, with a high socio-economic status. Thus, further studies are required to assess the positive mental health of adolescents in other geographical areas of China and in areas of different socio-economic status. Future longitudinal studies should focus on investigating relevant causality and potential bidirectional associations. To improve positive mental health among Chinese adolescents, policy-makers should focus on strategies and actions supporting social trust and support as well as acknowledging the support and socio-economic status of families as significant factors influencing positive mental health. The measurement of positive mental health should be used to identify the vulnerable groups that could benefit from intervention and assess the baseline mental health status of those groups. Our findings of risk and protective factors contribute to the mental health strategy in public health actions.

Notes

  1. National Health and Family Planning Commission of the People’s Republic of China. Regulations for the Ethical Review of Biomedical Research Involving Humans. 2016. http://www.nhfpc.gov.cn/fzs/s3576/201610/84b33b81d8e747eaaf048f68b174f829.shtml. Accessed January 22, 2018.

  2. Utbildningsdepartementet. Lag om etikprövning av. forskning som avser människor. 2003:460. https://www.riksdagen.se/sv/dokument-lagar/dokument/svensk-forfattningssamling/lag-2003460-om-etikprovning-av-forskning-som_sfs-2003-460. Accessed January 25, 2018.

Abbreviations

CI:

Confidence interval

MHC-SF:

Mental Health Continuum-Short Form

OR:

Odds ratio

SALVe:

Survey of Adolescent Life in Vestmanland

References

  1. World Health Organization. Mental health: strengthening our response. 2014. Available from: http://www.who.int/mediacentre/factsheets/fs220/en/.

    Google Scholar 

  2. Vaillant GE. Positive mental health: is there a cross-cultural definition? World Psychiatry. 2012;11(2):93–9.

    Article  PubMed  PubMed Central  Google Scholar 

  3. Carr A. Positive mental health: a research agenda. World Psychiatry. 2012;11(2):100.

    Article  PubMed  PubMed Central  Google Scholar 

  4. Keyes CLM. The mental health continuum: from languishing to flourishing in life. J Health Soc Behav. 2002;43(2):207–22.

    Article  PubMed  Google Scholar 

  5. Orpana H, Vachon J, Dykxhoorn J, McRae L, Jayaraman G. Monitoring positive mental health and its determinants in Canada: the development of the positive mental health surveillance indicator framework. Health Promot Chronic Dis Prev Can. 2016;36(1):1–10.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  6. Karlsson H. Problems in the definitions of positive mental health. World Psychiatry. 2012;11(2):106–7.

    Article  PubMed  PubMed Central  Google Scholar 

  7. Vaingankar JA, Subramaniam M, Lim YW, Sherbourne C, Luo N, Ryan G, Phua A, Shahwan S, Kwok KW, Brown J, et al. From well-being to positive mental health: conceptualization and qualitative development of an instrument in Singapore. Qual Life Res. 2012;21(10):1785–94.

    Article  PubMed  Google Scholar 

  8. Ryan RM, Deci EL. On happiness and human potentials: a review of research on hedonic and eudaimonic well-being. Annu Rev Psychol. 2001;52:141–66.

    Article  CAS  PubMed  Google Scholar 

  9. Henderson LW, Knight T. Integrating the hedonic and eudaimonic perspectives to more comprehensively understand wellbeing and pathways to wellbeing. Int J Wellbeing. 2012;2(3):196–221.

    Article  Google Scholar 

  10. Kashdan TB, Biswas-Diener R, King LA. Reconsidering happiness: the costs of distinguishing between hedonics and eudaimonia. J Posit Psychol. 2008;3(4):219–33.

    Article  Google Scholar 

  11. Keyes CLM, Dhingra SS, Simoes EJ. Change in level of positive mental health as a predictor of future risk of mental illness. Am J Public Health. 2010;100(12):2366–71.

    Article  PubMed  PubMed Central  Google Scholar 

  12. Huppert FA, So TT. Flourishing across Europe: application of a new conceptual framework for defining well-being. Soc Indic Res. 2013;110(3):837–61.

    Article  PubMed  Google Scholar 

  13. Dictionary by Merriam-Webster. Well–being. Available from: https://www.merriam-webster.com/thesaurus/well-being.

  14. Keyes CLM. Mental illness and/or mental health? Investigating axioms of the complete state model of health. J Consult Clin Psychol. 2005;73(3):539–48.

    Article  Google Scholar 

  15. Gilmour H. Positive mental health and mental illness. Health Rep. 2014;25(9):3–9.

    PubMed  Google Scholar 

  16. Lim YJ. Psychometric characteristics of the Korean mental health continuum-short form in an adolescent sample. J Psychoeduc Assess. 2014;32(4):356–64.

    Article  Google Scholar 

  17. Karas D, Cieciuch J, Keyes CLM. The polish adaptation of the mental health continuum-short form (MHC-SF). Pers Indiv Differ. 2014;69:104–9.

    Article  Google Scholar 

  18. Petrillo G, Capone V, Caso D, Keyes CLM. The Mental Health Continuum–Short Form (MHC–SF) as a measure of well-being in the Italian context. Soc Indic Res. 2015;121(1):291-312.

  19. Salama-Younes M. Validation of the mental health continuum short form and subjective vitality scale with Egyptian adolescent athletes. In: Human Pursuit of Well-Being: A Cultural Approach; 2011. p. 221–34.

    Chapter  Google Scholar 

  20. Keyes CLM, Wissing M, Potgieter JP, Temane M, Kruger A, van Rooy S. Evaluation of the mental health continuum-short form (MHC-SF) in setswana-speaking south Africans. Clin Psychol Psychother. 2008;15(3):181–92.

    Article  PubMed  Google Scholar 

  21. Singh K, Bassi M, Junnarkar M, Negri L. Mental health and psychosocial functioning in adolescence: an investigation among Indian students from Delhi. J Adolesc. 2015;39:59–69.

    Article  CAS  PubMed  Google Scholar 

  22. Lamers SMA, Westerhof GJ, Bohlmeijer ET, ten Klooster PM, Keyes CLM. Evaluating the psychometric properties of the mental health continuum-short form (MHC-SF). J Clin Psychol. 2011;67(1):99–110.

    Article  PubMed  Google Scholar 

  23. Machado WL, Bandeira DR. Positive mental health scale: validation of the mental health continuum - short form. Psico-USF. 2015;20:259–74.

    Article  Google Scholar 

  24. Hides L, Quinn C, Stoyanov S, Cockshaw W, Mitchell T, Kavanagh DJ. Is the mental wellbeing of young Australians best represented by a single, multidimensional or bifactor model? Psychiatry Res. 2016;241:1–7.

    Article  PubMed  Google Scholar 

  25. Yin KL, He JM, Fu YF. Positive mental health: measurement, prevalence, and correlates in a Chinese cultural context. In: Mental well-being: international contributions to the study of positive mental health. Dordrecht: Springer Netherlands; 2013.

    Google Scholar 

  26. Guo C, Tomson G, Guo JZ, Li XY, Keller C, Söderqvist F. Psychometric evaluation of the mental health continuum-short form (MHC-SF) in Chinese adolescents - a methodological study. Health Qual Life Out. 2015;13:198.

    Article  Google Scholar 

  27. Vaingankar JA, Subramaniam M, Abdin E, Picco L, Phua A, Chua BY, Chong SA. Socio-demographic correlates of positive mental health and differences by depression and anxiety in an Asian community sample. Ann Acad Med Singap. 2013;42(10):514–23.

    PubMed  Google Scholar 

  28. Dreger S, Buck C, Bolte G. Material, psychosocial and sociodemographic determinants are associated with positive mental health in Europe: a cross-sectional study. BMJ Open. 2014;4(5):e005095.

    Article  PubMed  PubMed Central  Google Scholar 

  29. Goldfeld S, Kvalsvig A, Incledon E, O'Connor M. Epidemiology of positive mental health in a national census of children at school entry. J Epidemiol Community Health. 2017;71:225-31.

  30. Lyons A, Pitts M, Grierson J. Factors related to positive mental health in a stigmatized minority: an investigation of older gay men. J Aging Health. 2013;25(7):1159–81.

    Article  PubMed  Google Scholar 

  31. Sun S, Chen J, Johannesson M, Kind P, Burström K. Subjective well-being and its association with subjective health status, age, sex, region, and socio-economic characteristics in a Chinese population study. J Happiness Stud. 2016;17(2):833–73.

    Article  Google Scholar 

  32. Winzer R, Lindblad F, Sorjonen K, Lindberg L. Positive versus negative mental health in emerging adulthood: a national cross-sectional survey. BMC Public Health. 2014;14:1238.

    Article  PubMed  PubMed Central  Google Scholar 

  33. Lehtinen V, Sohlman B, Kovess-Masfety V. Level of positive mental health in the European Union: results from the Eurobarometer 2002 survey. Clin Pract Epidemiol Ment Health. 2005;1:9.

    Article  PubMed  PubMed Central  Google Scholar 

  34. Davoren MP, Fitzgerald E, Shiely F, Perry IJ. Positive mental health and well-being among a third level student population. PLoS One. 2013;8(8):e74921.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  35. Chen W, Chen B, Li Q, Hua M, Yu S, Feng H. Association of mental health with physical activity, BMI, and positive psychological wellbeing in college students. Med Sci Sports Exerc. 2016;48(5 Suppl 1):1054.

    Article  Google Scholar 

  36. Straatmann VS, Oliveira AJ, Rostila M, Lopes CS. Changes in physical activity and screen time related to psychological well-being in early adolescence: findings from longitudinal study ELANA. BMC Public Health. 2016;16:977.

    Article  PubMed  PubMed Central  Google Scholar 

  37. McMahon EM, Corcoran P, O’Regan G, Keeley H, Cannon M, Carli V, Wasserman C, Hadlaczky G, Sarchiapone M, Apter A, et al. Physical activity in European adolescents and associations with anxiety, depression and well-being. Eur Child Adolesc Psychiatry. 2017;26(1):111–22.

    Article  PubMed  Google Scholar 

  38. Siegel JM, Yancey AK, Aneshensel CS, Schuler R. Body image, perceived pubertal timing, and adolescent mental health. J Adolesc Health. 1999;25(2):155–65.

    Article  CAS  PubMed  Google Scholar 

  39. Kalak N, Lemola S, Brand S, Holsboer-Trachsler E, Grob A. Sleep duration and subjective psychological well-being in adolescence: a longitudinal study in Switzerland and Norway. Neuropsychiatr Dis Treat. 2014;10:1199–207.

    PubMed  PubMed Central  Google Scholar 

  40. Lubans DR, Smith JJ, Morgan PJ, Beauchamp MR, Miller A, Lonsdale C, Parker P, Dally K. Mediators of psychological well-being in adolescent boys. J Adolesc Health. 2016;58(2):230–6.

    Article  PubMed  Google Scholar 

  41. Keyes CLM. Mental health in adolescence: is America's youth flourishing? Am J Orthopsychiatry. 2006;76(3):395–402.

    Article  PubMed  Google Scholar 

  42. Barros VV, Kozasa EH, Formagini TD, Pereira LH, Ronzani TM. Smokers show lower levels of psychological well-being and mindfulness than non-smokers. PLoS One. 2015;10(8):e0135377.

    Article  PubMed  PubMed Central  Google Scholar 

  43. Liu X, Zhao J. Chinese migrant adolescents' perceived discrimination and psychological well-being: the moderating roles of group identity and the type of school. PLoS One. 2016;11(1):e0146559.

    Article  PubMed  PubMed Central  Google Scholar 

  44. Maher E, Waters E. Indicators of positive mental health for children : indicators of mental health. In: Promoting mental health, concepts, emerging evidence, practice. Geneva: World Health Organization; 2005.

    Google Scholar 

  45. Kleinert S. Adolescent health: an opportunity not to be missed. Lancet. 2007;369(9567):1057–8.

    Article  PubMed  Google Scholar 

  46. Costello EJ, Egger H, Angold A. 10-year research update review: the epidemiology of child and adolescent psychiatric disorders: I. Methods and public health burden. J Am Acad Child Adolesc Psychiatry. 2005;44(10):972–86.

    Article  PubMed  Google Scholar 

  47. Nishida A, Richards M, Stafford M. Prospective associations between adolescent mental health problems and positive mental wellbeing in early old age. Child Adolesc Psychiatry Ment Health. 2016;10:12.

    Article  PubMed  PubMed Central  Google Scholar 

  48. Marmot M. The health gap: the challenge of an unequal world. London: Bloomsbury; 2015.

    Google Scholar 

  49. Local history bureau of Weifang. The development of economy and society in 2016. Available from: http://www.wfsq.gov.cn/ZJWF/WFGK/201708/t20170828_1899323.htm.

  50. National Bureau of Statistics in China. National Data: annual by province. Available from: http://data.stats.gov.cn/english/easyquery.htm?cn=E0103.

  51. Simonsson B, Nilsson KW, Leppert J, Diwan VK. Psychosomatic complaints and sense of coherence among adolescents in a county in Sweden: a cross-sectional school survey. Biopsychosoc Med. 2008;2:4.

    Article  PubMed  PubMed Central  Google Scholar 

  52. Reichenheim ME, Moraes CL. Operationalizing the cross-cultural adaptation of epidemological measurement instruments. Rev Saude Publica. 2007;41:665–73.

    Article  PubMed  Google Scholar 

  53. Keyes CLM. Brief description of the mental health continuum short form (MHC-SF). 2009. Available from: https://www.aacu.org/sites/default/files/MHC-SFEnglish.pdf.

  54. Keyes CLM. Promoting and protecting mental health as flourishing: a complementary strategy for improving national mental health. Am Psychol. 2007;62(2):95–108.

    Article  PubMed  Google Scholar 

  55. Hofstede GH. Culture's consequences : comparing values, behaviors, institutions, and organizations across nations, 2nd edn. Thousand oaks. London: Sage; 2001.

    Google Scholar 

  56. Leung K. Beliefs in Chinese culture. In: Bond MH, editor. The Oxford handbook of Chinese psychology. New York: Oxford University Press; 2010. p. 221–40.

    Google Scholar 

  57. Fan Y. A classification of chinese culture. Cross Cultural Manage. 2000;7(2):3–10.

    Article  Google Scholar 

  58. Bear GG, Chen D, Mantz LS, Yang C, Huang X, Shiomi K. Differences in classroom removals and use of praise and rewards in American, Chinese, and Japanese schools. Teach Teach Educ. 2016;53(Supplement C):41–50.

    Article  Google Scholar 

  59. Pew Research Center. Global publics: economic conditions are bad. Washington DC; 2015. Available from: http://assets.pewresearch.org/wp-content/uploads/sites/2/2015/07/Pew-Research-Center-Economy-Report-FINAL-July-23-20151.pdf

  60. Pew Research Center. Chinese public sees more powerful role in world, names U.S. as top threat. Washington DC; 2016. Available from: http://assets.pewresearch.org/wp-content/uploads/sites/2/2016/10/Pew-Research-Center-China-Report-FINAL-October-5-2016.pdf

  61. Dyrbye LN, Harper W, Moutier C, Durning SJ, Power DV, Massie FS, Eacker A, Thomas MR, Satele D, Sloan JA, et al. A multi-institutional study exploring the impact of positive mental health on medical students' professionalism in an era of high burnout. Acad Med. 2012;87(8):1024–31.

    Article  PubMed  Google Scholar 

  62. Yang XL, Jiang C, Pan W, Xu WM, Liang F, Li N, Mu HJ, Na J, Lv M, An XX, et al. Prevalence of psychiatric disorders among children and adolescents in Northeast China. PLoS One. 2014;9(10):e111223.

    Article  Google Scholar 

  63. Liu QX, Fang XY, Zhou ZK, Zhang JT, Deng LY. Perceived parent-adolescent relationship, perceived parental online behaviors and pathological internet use among adolescents: gender-specific differences. PLoS One. 2013;8(9):e75642.

    Article  CAS  PubMed  PubMed Central  Google Scholar 

  64. Quon EC, JJ MG. Subjective socioeconomic status and adolescent health: a meta-analysis. Health Psychol. 2014;33(5):433–47.

    Article  PubMed  Google Scholar 

  65. Liu J, Sekine M, Tatsuse T, Fujimura Y, Hamanishi S, Zheng X. Association among number, order and type of siblings and adolescent mental health at age 12. Pediatr Int. 2015;57(5):849–55.

    Article  PubMed  Google Scholar 

  66. Wang C. History of the Chinese family planning program: 1970-2010. Contraception. 2012;85(6):563–9.

    Article  PubMed  Google Scholar 

  67. Holsen I, Jones DC, Birkeland MS. Body image satisfaction among Norwegian adolescents and young adults: a longitudinal study of the influence of interpersonal relationships and BMI. Body Image. 2012;9(2):201–8.

    Article  PubMed  Google Scholar 

  68. Griffiths S, Murray SB, Bentley C, Gratwick-Sarll K, Harrison C, Mond JM. Sex differences in quality of life impairment associated with body dissatisfaction in adolescents. J Adolesc Health. 2017;61(1):77–82.

    Article  PubMed  Google Scholar 

  69. Li L, Lu T, Niu L, Feng Y, Jin S, French DC. Tobacco use by middle and high school Chinese adolescents and their friends. J Youth Adolescence. 2017;46(6):1262—74.

  70. Zhang J, Ou JX, Bai CX. Tobacco smoking in China: prevalence, disease burden, challenges and future strategies. Respirology. 2011;16(8):1165–72.

    Article  PubMed  Google Scholar 

  71. Schaap MM, Kunst AE. Monitoring of socio-economic inequalities in smoking: learning from the experiences of recent scientific studies. Public Health. 2009;123(2):103–9.

    Article  CAS  PubMed  Google Scholar 

  72. Sun S, Chen JY, Johannesson M, Kind P, Xu L, Zhang YG, Burstrom K. Regional differences in health status in China: population health-related quality of life results from the National Health Services Survey 2008. Health Place. 2011;17(2):671–80.

    Article  PubMed  Google Scholar 

  73. Coughlin SS. Recall bias in epidemiologic studies. J Clin Epidemiol. 1990;43(1):87–91.

    Article  CAS  PubMed  Google Scholar 

  74. Moksnes UK, Løhre A, Lillefjell M, Byrne DG, Haugan G. The association between school stress, life satisfaction and depressive symptoms in adolescents: life satisfaction as a potential mediator. Soc Indic Res. 2016;125(1):339–57.

    Article  Google Scholar 

  75. Wright JD, Marsden PV. Handbook of survey research. Bingley: Emerald; 2010.

    Google Scholar 

Download references

Acknowledgements

All authors would like to thank the students and school teachers participating in the study for their cooperation. We are grateful to the researchers and assistants from Weifang Medical University who contributed to the study. Jizhi Guo, Xiangyun Li, Shuxiang Yang, Lihui Zhuang, Hongjing Wang, Yuqi Shen, Han Zhang, Ruimei Wang, Yanlei Pang and Runguo Gao contributed to administrating questionnaires and collecting data. Yuqi Shen, Han Zhang and Ruimei Wang managed to enter responses to the computer based dataset. We gratefully acknowledge Mesfin Kassaye Tessma from Karolinska Institutet for his advice on statistical analysis.

Funding

This study was funded by Weifang Medical University (China).

Availability of data and materials

The questionnaire and dataset used in the current study are available from the corresponding author on reasonable request.

Author information

Authors and Affiliations

Authors

Contributions

CG participated in study design, language translation, data collection, statistical analysis and manuscript writing. GT and FS contributed to study design and critical revision of manuscript. CK contributed to study design, language translation and critical revision of manuscript. All authors read and approved the final manuscript.

Corresponding author

Correspondence to Cheng Guo.

Ethics declarations

Ethics approval and consent to participate

The ethical approval was obtained from the local administration at Weifang Medical University (China) on March 1, 2014. Permission by the headmasters and other administrators were received before the survey was started. The informed consent by the students was given in writing before filling in the questionnaire. In China, the national regulations of medical research ethics do not address the issue of parental consent for respondents under the age of 18.Footnote 1 As the doctoral thesis which the study was a part of was conducted in the Swedish university of Karolinska Institutet, the Swedish regulations on respondents under the age of 18 were applicable to this study. According to the Swedish Law on ethical approval on research on humans,Footnote 2 if the respondent is between 15 and 18 years of age and understands the topic of the research, he or she can give consent to participate in research studies. As a result, no consent was gained from the parents of the students, as we considered the participants at their age were capable of understanding the research topic as it related to their own life and health. Students were informed that they could withdraw at any stage and volunteered in participating after reading the informed consent. All participants remained anonymous during the whole research process.

Consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Rights and permissions

Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.

Reprints and permissions

About this article

Check for updates. Verify currency and authenticity via CrossMark

Cite this article

Guo, C., Tomson, G., Keller, C. et al. Prevalence and correlates of positive mental health in Chinese adolescents. BMC Public Health 18, 263 (2018). https://doi.org/10.1186/s12889-018-5133-2

Download citation

  • Received:

  • Accepted:

  • Published:

  • DOI: https://doi.org/10.1186/s12889-018-5133-2

Keywords