DOI: https://doi.org/10.21203/rs.3.rs-23505/v1
Sub-health status (SHS) is an increasingly concerned issue with a high prevalence worldwide. Although some factors of lifestyle and environment has been study, few studies have determined comprehensively the associations of lifestyle and living environmental factors with general, physical, mental and social SHS.
A cross-sectional face-to-face survey (Sep 2017 to Sep 2018) was conducted via questionnaire among 6,750 urban residents aged 14 years and above randomly selected from five Chinese cities. There were 5,881 valid questionnaires with a response rate of 87%. General linear model and structure equation model were developed to quantifying the effects of lifestyle behaviors and living environmental factors on SHS.
Detection rates of general SHS, physical SHS, mental SHS and social SHS were 66.7%, 67.0%, 65.5% and 70.0%, respectively. Significant association of general SHS, physical SHS, mental SHS and social SHS had been found in smoking, bad dietary habits, breakfast consumption, physical exercise, sleep duration, air, neighbor harmony and living convenience, instead of noiseless. However, associations of general SHS, physical SHS, mental SHS and social SHS were different for second-hand smoking influence, alcohol consumption, sunshine, Bedtime before 11 pm, surfing the internet, greenery, air, pleasant housing, spacious rooms and fitness facility. Good lifestyle behaviors and favorable living environment factors positively affected SHS (P < 0.001). Lifestyle behaviors had the largest effect on physical SHS (β=-0.418), but the least on social SHS (β=-0.274). Living environmental factors had the largest effect on mental SHS (β = 0.286), but the least on physical SHS (β = 0.225).
Lifestyle behaviors and living environmental factors were important influencing factors of SHS. Physical SHS was more associated with lifestyle. Lifestyle and living environment were similarly associated with mental and social SHS.
Health is defined by the World Health Organization (WHO) in 1946 as "a state of complete physical, mental, and social well-being and not merely the absence of disease or infirmity"[1, 2]. Noncommunicable Chronic diseases (NCDs) are the opposite side of health, and are great challenges to health. It is reported that NCDs account for an estimated 80% of total deaths and 70% of the total number of disability-adjusted life-years (DALYs) in early twentieth century[3], and increase steadily with the urbanization and aging [4], with more than 88% of total deaths due to NCDs in 2019 in China[5]. A study pointed that NCDs accounted for 18 of the leading 20 causes of age-standardized years lived with disability on a global scale[6]. Preclinical status of CNDs and its early detection have become major issues in the promotion of the basic health service in the reform of health care[7].
Some studies have shown that SHS or suboptimal health status (SHS) may contribute to the progression or development of chronic disease[8, 9]. SHS is an intermediate status between chronic disease and health, which is characterized by chronic fatigue, non-specific pain (e.g., back and chest pain), headaches, dizziness, anxiety, depression, and functional system disorders [8]. SHS has a prevalence of higher than 65% in China[10–13]. and become an increasingly concerned problem in many other countries[14, 15]. Moreover, the prevalence may be severely underestimated since many individuals may not know that they suffer from SHS. For instance, in an investigation of 6,000 Chinese self-reported “healthy people”, 72.8% were in “suboptimal health status” [16]. Identifying the influencing factors of SHS is important for preventing SHS, and would provide important information for first-level prevention of CND.
In the recent decades, China underwent a rapid urbanization development, with a proportion of urban population increased from 17.9% in 1978 to 58.5% in 2017[17]. The rapid environmental changes accompanied with urbanization lead to the increasing prevalence of the major risk factors for SHS, including poor dietary habits, work stress, physical inactivity, breakfast eating habits, smoking, tobacco use, air pollution and noise[2, 18, 19]. Those risk factors can be concluded into two aspects, lifestyle behaviors and living environmental factors. Although, lifestyle behaviors and living environmental factors associated with SHS has been studied before, the association strengths of the two aspects with SHS have not been well elucidated.
This study aimed to examine the associations of lifestyle behaviors and the living environmental factors with general, physical, mental and social SHS in a large urban population.
We conducted a cross-sectional multi-city survey using a four-stage stratified sampling method from Sep 2017 to Sep 2018. In stage one, we selected Guangdong Province (south east China), Haerbin City in Heilongjiang Province (north east), Sichuan Province (north west), Tianjin City (east), and Lanzhou City in Gansu Province (south west) as representative of different Chinese regions from the aspects of geographic distribution, economic characteristics, and populational demographics. Figure 1 shows the sampling map in China. In stage two, three to five cities in each province were selected as respective representatives of geographic distribution, economic characteristics, and populational demographics. In stage three, two cities were randomly selected from each of these areas. In the fourth and final stage, one to three streets were randomly selected from each of these cities. To ensure representativeness, participants on each street were stratified according to sex (i.e., male or female) and age (i.e., brackets of 14–24, 25–34, 35–44, 45–54, and 55+). At the selected streets, street sampling method was used to select participants. As such, survey participants were representative of the level of SHS in their respective urban areas.
Informed oral consent was obtained from each participant prior to the data collection process. This form of consent was deemed sufficient as participants had previously volunteered for inclusion and were told they could still refuse to participate. All data were kept strictly confidential. Further, the Nanfang hospital ethics committee approved this consent procedure(Approval number: NFEC-2019-196) .
This study used a SHS questionnaire to investigate urban Chinese residents. It contained two sections (i.e., both a self-designed and standardized questionnaire) [10]. The self-designed questionnaire asked for general demographic characteristics as well as information on lifestyle and environment. Here, general demographic characteristic included age, gender, and marital status, while there were 10 lifestyle variables (i.e., smoking, second-hand smoking, alcohol consumption, bad dietary habits, breakfast consumption, sun exposure, physical exercise, early bedtime (before 11 pm), sleep duration, and surfing the internet), and eight environmental variables (i.e., air quality, noise, housing conditions, living conditions, neighborhood harmony, fitness facilities, and supporting facilities). The standardized components were based on the SHS Measurement Scale V1.0 (SHMS V1.0); these were designed to assess participant health status. Uniform instructions were provided by trained investigators. Each participant completed their own questionnaire in approximately 25 minutes.
Health-status assessments were performed in accordance with the SHMS V1.0, which was previously developed by our research group. Testing procedures revealed that it was of high reliability and validity (Cronbach’s α and split-half reliability coefficients of 0.917 and 0.831, respectively)[20]. The SHMS V1.0 consists of 39 total items. Respondents were asked to answer each of these items according to a 5-point scale (1 to 5, from very bad to very good). The SHMS V1.0 can be used to detect general SHS (GS) based on three symptom dimensions, including physical SHS (PS), mental SHS (MS), and social SHS (SS). Of the 39 total items, Nos. 4–12, 15, 20–25, 28, and 38–39 were reverse scored (six plus the original score). The original subscale scores were total item sums; higher original scores indicated better health. We calculated and analyzed transformed scores to further understand and compare the data. Transformed scores were determined according to the following formula: (original score - theoretically lowest score) / (theoretically highest score - theoretically lowest score) × 100. Following our previous study, SHS prevalence was calculated based on transformed scores[21].
A general linear model was used to analyze the association of lifestyles (environmental factors) and SHS as adjusted by demographic characteristics and living environmental factors (lifestyles). Further, a path model of latent variables was constructed based on a hypothesized relationship between items. Structural equation modeling (SEM) was then used to analyze the complexity of associations between lifestyle, health consciousness, and SHS to estimate model fitness and analyze the direct and indirect effects of the multiple factors used in the hypothesized model[22]. Model fitness was assessed using the five indices commonly applied in SEM analyses (i.e., the relative (CMIN/DF), root mean-square error of approximation (RMSEA), comparative fit index (CFI), goodness-of-fit index (GFI), and adjusted goodness-of-fit index (AGFI)) [23]. The Bootstrapping method[22] of repeat sampling (i.e., 2,000 times) was applied to verify statistical significance and calculate confidence intervals for the direct, indirect, and total effects (P < 0.05). All statistical analyses were conducted using SPSS and AMOS (SPSS Statistics version 20.0, SPSS Inc., Chicago, IL). Two-sided p-values < 0.05 were considered statistically significant.
This study surveyed a total of 6,750 urban Chinese residents who had lived in their locations for more than six months and were at least 14 years of age. A total of 807 participants who confirmed they had incurred diseases within one month of the study were excluded. As such, 5,943 respondents were either healthy or SHS for at least a period of one month prior to study. However, 62 of these surveys were missing values for items of lifestyle, environment, and/or SHS, and were thus excluded. This left a final total of 5,881 urban residents who were selected for analysis (a valid response rate of 87.13%).
Table 1 presents overall baseline, lifestyle, and environmental characteristics. Of the 5,881 analyzed, 2,817 were men and 3,064 were women; mean age was 40.27 ± 15.69 years. Most participants were married (64.50%). Further, 66.7% were in GS, 67.0% were in PS, 65.5% were in MS, and 70.0% were in SS.
Characteristic | N | GS (mean (sd)) | PS (mean (sd)) | MS (mean (sd)) | SS (mean (sd)) |
---|---|---|---|---|---|
Gender | |||||
Male | 2817 (47.9) | 71.24 (12.65) | 68.13 (14.6) | 61.39 (16.03) | 67.64 (12.11) |
Female | 3064 (52.1) | 70.93 (12.75) | 66.05 (14.58) | 61.56 (15.3) | 66.85 (11.95) |
Age | |||||
14–24 | 1129 (19.2) | 72.65 (12.19) | 65.01 (13.87) | 60.85 (15.82) | 72.65 (12.19) |
25–34 | 1167 (19.84) | 72.21 (12.76) | 65.97 (14.93) | 60.92 (15.61) | 72.21 (12.76) |
35–44 | 1345 (22.87) | 71.28 (12.96) | 67.3 (14.61) | 61.48 (15.22) | 71.28 (12.96) |
45–54 | 1120 (19.04) | 70.05 (12.08) | 68.56 (14.32) | 62.57 (15.5) | 70.05 (12.08) |
≥ 55 | 1120 (19.04) | 69.54 (12.92) | 69 (15.04) | 61.53 (15.69) | 69.54 (12.92) |
Marital status | |||||
Unmarried | 1673 (28.45) | 72.25 (12.31) | 64.96 (14.31) | 60.51 (15.64) | 66.73 (11.64) |
Married | 3793 (64.5) | 71.03 (12.69) | 68.42 (14.51) | 62.16 (15.38) | 67.85 (11.99) |
Divorced | 200 (3.4) | 66.79 (13.15) | 62.7 (14.4) | 58.57 (18.02) | 63.28 (13.11) |
Widowed | 183 (3.11) | 66.84 (13.75) | 63.24 (16.18) | 60.17 (17.38) | 63.89 (13.32) |
Information missing | 32 (0.54) | 67.24 (13.96) | 61.33 (14.22) | 56.34 (16.91) | 62.41 (12.54) |
Comparison of SHS for Different Lifestyle and living environmental factors
The mean (sd) transformed scores for general, physical, mental, and social sub-health status were 67.23 (12.03), 71.08 (12.70), 67.04 (14.63), 61.47 (15.65), respectively. Here, the association of one lifestyle factor with SHS was adjusted by other lifestyle behaviors, demographical characteristics, and living environmental factors (Table 2). Participants who never smoked, had good dietary habits, consumed breakfast daily, performed daily physical exercise, and slept 7–9 hours each night had the highest general, physical, mental, and SS transformed scores. Participants who had not received second-hand smoke and never used alcohol had the highest general, physical, and MS transformed scores. Participants who maintained bedtimes before 11 pm each day had the highest general and PS transformed scores. Sun exposure was only associated with PS; those who received 14 hours or more each week had the highest scores. Surfing the internet was only associated with MS; those who surfed less than three hours a day had the highest scores.
Variables | N | GS | PS | MS | SS | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
mean (sd) | P value | mean (sd) | P value | mean (sd) | P value | mean (sd) | P value | |||||||
Smoking | < 0.001 | < 0.001 | 0.001 | < 0.001 | ||||||||||
never | 4079 | 67.67 (11.8) | 71.7 (12.5) | 67.15 (14.55) | 62.1 (15.26) | |||||||||
quit | 615 | 64.79 (13.06) | 68.37 (13.57) | 65.37 (15.11) | 58.44 (17.4) | |||||||||
yes | 1187 | 66.95 (12.12) | 70.35 (12.7) | 67.53 (14.6) | 60.9 (15.86) | |||||||||
Second-hand smoking influence | < 0.001 | < 0.001 | 0.001 | 0.376 | ||||||||||
none | 1150 | 68.95 (12.73) | 72.94 (12.99) | 68.97 (15.61) | 62.72 (16.88) | |||||||||
little | 1804 | 67.54 (12.03) | 71.68 (12.72) | 67.31 (14.29) | 61.41 (15.68) | |||||||||
some | 1702 | 66.6 (11.21) | 70.31 (12.32) | 66.55 (13.62) | 60.92 (14.51) | |||||||||
much | 1225 | 66 (12.25) | 69.52 (12.65) | 65.53 (15.3) | 61.17 (15.9) | |||||||||
Alcohol consumption | < 0.001 | < 0.001 | < 0.001 | 0.177 | ||||||||||
never | 2166 | 68.41 (12.26) | 72.24 (13.14) | 68.29 (14.81) | 62.59 (15.92) | |||||||||
occasional | 3107 | 66.86 (11.56) | 70.87 (12.02) | 66.51 (14.22) | 61.09 (15.13) | |||||||||
a little /day | 427 | 65.79 (13.1) | 69.01 (13.72) | 66.32 (15.8) | 60.08 (16.64) | |||||||||
some /day | 106 | 65.13 (11.48) | 67.94 (13.05) | 65.27 (13.62) | 60.59 (14.84) | |||||||||
much /day | 75 | 59.47 (14.03) | 62.57 (15.03) | 59.64 (16.3) | 54.41 (21.06) | |||||||||
Bad dietary habits | < 0.001 | < 0.001 | < 0.001 | < 0.001 | ||||||||||
no | 3396 | 69.93 (11.63) | 73.33 (12.54) | 70.23 (14.21) | 64.23 (14.86) | |||||||||
yes | 2485 | 63.53 (11.59) | 68 (12.27) | 62.68 (14.06) | 57.72 (15.93) | |||||||||
Breakfast consumption (days/week) | < 0.001 | < 0.001 | < 0.001 | < 0.001 | ||||||||||
everyday | 2720 | 69.91 (11.75) | 73.06 (12.76) | 70.19 (14.53) | 64.63 (14.78) | |||||||||
5–6 | 1562 | 67.08 (11.39) | 71.15 (11.94) | 66.41 (14.11) | 61.66 (14.72) | |||||||||
3–4 | 848 | 62.97 (11.13) | 68.08 (12.05) | 61.93 (13.08) | 56.43 (15.45) | |||||||||
1–2 | 609 | 62.69 (12.07) | 67.04 (12.62) | 62.75 (14.21) | 55.87 (16.81) | |||||||||
never | 142 | 62.16 (14.29) | 67.58 (15.47) | 62.54 (17.1) | 53.23 (20.14) | |||||||||
Sunshine (hours/week) | 0.071 | 0.008 | 0.170 | 0.504 | ||||||||||
≥ 14 | 476 | 68.96 (12.57) | 72.22 (13.32) | 68.71 (15.1) | 64.23 (15.97) | |||||||||
< 14 | 874 | 69.41 (12.12) | 73.2 (13.04) | 69.58 (14.2) | 63.3 (15.74) | |||||||||
< 7 | 1695 | 67.26 (12.14) | 71.11 (12.88) | 67.18 (14.69) | 61.37 (15.31) | |||||||||
< 3 | 1578 | 66.84 (11.84) | 70.8 (12.09) | 66.64 (14.47) | 60.93 (15.96) | |||||||||
< 1 | 1258 | 65.49 (11.54) | 69.5 (12.5) | 64.96 (14.53) | 59.98 (15.32) | |||||||||
Physical exercise (days/week) | < 0.001 | < 0.001 | < 0.001 | < 0.001 | ||||||||||
everyday | 630 | 72.14 (11.89) | 74.46 (12.84) | 73.24 (14.82) | 67.07 (15.12) | |||||||||
5–6 | 613 | 68.96 (12.27) | 71.93 (13.02) | 68.74 (14.89) | 64.63 (15.28) | |||||||||
3–4 | 1412 | 67.67 (12.71) | 71.57 (13.24) | 67.64 (14.63) | 61.62 (16.82) | |||||||||
1–2 | 2375 | 66.24 (11.17) | 70.57 (11.82) | 65.6 (14.03) | 60.36 (14.57) | |||||||||
never | 851 | 64.36 (11.82) | 68.58 (13.21) | 64.25 (14.43) | 57.92 (15.78) | |||||||||
Bedtime before 11 pm (days/week) | 0.019 | 0.003 | 0.146 | 0.388 | ||||||||||
everyday | 1119 | 70.05 (12.09) | 73 (13.41) | 70.84 (14.86) | 64.43 (15.44) | |||||||||
5–6 | 1007 | 68.35 (12.1) | 71.61 (12.73) | 68.44 (14.51) | 63.17 (14.79) | |||||||||
3–4 | 1236 | 66.23 (12.38) | 70.11 (12.87) | 65.98 (14.54) | 60.52 (16.01) | |||||||||
1–2 | 1549 | 66.1 (11.3) | 70.48 (11.97) | 65.56 (13.79) | 59.98 (15.51) | |||||||||
never | 970 | 65.87 (11.96) | 70.52 (12.49) | 64.92 (14.95) | 59.9 (15.92) | |||||||||
Sleep duration (hours) | < 0.001 | < 0.001 | < 0.001 | < 0.001 | ||||||||||
≥ 9 | 503 | 67.91 (12.95) | 71.48 (13.65) | 68.26 (15.34) | 61.88 (16.59) | |||||||||
< 9 | 3792 | 68.51 (11.63) | 72.57 (12.3) | 68.18 (14.41) | 62.64 (14.86) | |||||||||
< 7 | 1402 | 64.85 (11.67) | 68.1 (12.4) | 64.82 (14.23) | 59.85 (15.96) | |||||||||
< 5 | 145 | 56.75 (13.13) | 62.18 (12.6) | 56.71 (14.61) | 48.37 (18.9) | |||||||||
< 3 | 39 | 57.77 (11.65) | 61.77 (13.69) | 59.19 (14.4) | 49.64 (21.62) | |||||||||
Surfing the internet (hours) | 0.062 | 0.154 | < 0.001 | 0.983 | ||||||||||
< 3 | 3019 | 67.78 (12.6) | 71.09 (13.24) | 68.39 (15) | 61.83 (16.37) | |||||||||
< 5 | 1739 | 67.06 (11.4) | 71.17 (12.07) | 66.51 (14) | 61.42 (14.75) | |||||||||
< 7 | 720 | 66.49 (10.86) | 71.46 (11.59) | 64.66 (13.94) | 61.18 (14.46) | |||||||||
≥ 7 | 403 | 65.07 (12.05) | 69.91 (13.1) | 63.53 (14.39) | 59.59 (15.91) | |||||||||
**P < 0.01 |
Table 3 shows the effects of environmental factor after adjusting other living environmental factors, demographic characteristics, and lifestyle behaviors. Pleasant housing, harmonious neighborhoods, and convenient living conditions were positively associated with general, physical, mental, and SS. Substantial greenery was positively associated with general and SS. Fresh air was positively associated with general, physical, and MS. The presence of many fitness facilities was positively associated with general and MS. There were no significant associations between noise and SHS. However, people with spacious rooms in their homes had lower general and MS scores.
Variables | N (%) | GS | PS | MS | SS | |||||
---|---|---|---|---|---|---|---|---|---|---|
mean (sd) | P value | mean (sd) | P value | mean (sd) | P value | mean (sd) | P value | |||
Greenery | 0.002 | 0.358 | 0.011 | < 0.001 | ||||||
bad | 3105 | 65.65 (11.58) | 69.99 (12.44) | 65.25 (14.17) | 59.42 (15.1) | |||||
good | 2776 | 68.99 (12.28) | 72.3 (12.88) | 69.04 (14.87) | 63.77 (15.94) | |||||
Air | 0.002 | 0.005 | 0.001 | 0.274 | ||||||
bad | 2977 | 65.72 (11.47) | 69.86 (12.24) | 65.21 (14.35) | 59.99 (15.32) | |||||
fresh | 2904 | 68.76 (12.39) | 72.34 (13.04) | 68.92 (14.67) | 63 (15.85) | |||||
Noiseless | 0.788 | 0.159 | 0.477 | 0.905 | ||||||
no | 4019 | 66.53 (12.08) | 70.4 (12.69) | 66.35 (14.83) | 60.75 (15.82) | |||||
yes | 1862 | 68.72 (11.79) | 72.54 (12.61) | 68.53 (14.07) | 63.03 (15.19) | |||||
Pleasant housing | < 0.001 | 0.036 | < 0.001 | 0.003 | ||||||
no | 824 | 63.54 (11.55) | 68.55 (12.47) | 62.34 (14.12) | 57.36 (15.46) | |||||
yes | 5057 | 67.83 (12) | 71.49 (12.69) | 67.81 (14.57) | 62.15 (15.58) | |||||
Spacious rooms | 0.003 | 0.434 | < 0.001 | 0.186 | ||||||
yes | 663 | 63.6 (10.82) | 68.83 (11.92) | 61.61 (13.48) | 58.13 (15.11) | |||||
no | 5218 | 67.69 (12.1) | 71.37 (12.77) | 67.73 (14.62) | 61.9 (15.67) | |||||
Neighbor harmony | < 0.001 | < 0.001 | < 0.001 | < 0.001 | ||||||
no | 3351 | 65.47 (11.67) | 69.76 (12.57) | 65.02 (14.19) | 59.4 (15.5) | |||||
yes | 2530 | 69.55 (12.11) | 72.84 (12.67) | 69.72 (14.77) | 64.22 (15.44) | |||||
Fitness facility | 0.001 | 0.058 | 0.001 | 0.001 | ||||||
few | 4766 | 66.4 (11.66) | 70.44 (12.41) | 66.15 (14.31) | 60.46 (15.42) | |||||
many | 1115 | 70.74 (12.92) | 73.81 (13.53) | 70.86 (15.34) | 65.8 (15.9) | |||||
Living convenience | < 0.001 | < 0.001 | < 0.001 | < 0.001 | ||||||
no | 3832 | 65.59 (11.91) | 69.68 (12.62) | 65.41 (14.53) | 59.45 (15.68) | |||||
yes | 2049 | 70.29 (11.66) | 73.7 (12.44) | 70.09 (14.32) | 65.25 (14.9) |
The total associations of lifestyle behaviors and environment with SHS were analyzed through SEM (Fig. 2). Although noiseless areas were not independently associated with SHS, the model was not deemed fit without an environmental noise component. The SEM thus included a “noiseless” variable. Except for the CMIN/DF, CFI, and AGFI of Model 1 and the CMIN/DF of Model 2, Table 4 presents information about the fitness measurements for all four models. The associations of lifestyle and living environmental factors with SHS are listed in Table 5. As indicated, bad lifestyle habits had significant negative effects on general, physical, mental, and SS, while good living environmental factors had significant positive effects on each (P < 0.001). Lifestyle had the largest effect on PS (β=-0.418) and the least effect on SS (β=-0.274). On the other hand, living environmental factors had the largest effect on MS (β = 0.286) and the least effect on PS (β = 0.225). As the influencing effects were standardized, GS had larger association with lifestyle (β=-0.371), but less with environment (β=-0.282); physical health was more associated with lifestyle (β=-0.418), but less associated with environment (β=-0.225). The associations of lifestyle behaviors and environment were similar for MS and identical for SS.
Models | CMIN/DF | CFI | GFI | AGFI | RMSEA |
---|---|---|---|---|---|
Criterion for good fit [13] | < 5 | > 0.95 | > 0.95 | > 0.95 | < 0.05 |
Model 1 | 5.697 | 0.947 | 0.957 | 0.946 | 0.028 |
Model 2 | 5.297 | 0.956 | 0.979 | 0.970 | 0.027 |
Model 3 | 4.507 | 0.972 | 0.983 | 0.976 | 0.024 |
Model 4 | 4.269 | 0.974 | 0.986 | 0.980 | 0.024 |
Model 1: Structural model for lifestyle, environment, and GS, Model 2: Structural model for lifestyle, environment, and PS, Model 3: Structural model for lifestyle, environment, and MS, Model 4: Structural model for lifestyle, environment, and SS |
SHS | Factors | Standardized effect | 95% CI lower limit | 95% CI upper limit | P |
---|---|---|---|---|---|
GS | Lifestyle | -0.371 | -0.406 | -0.335 | < 0.001 |
Environment | 0.282 | 0.246 | 0.317 | < 0.001 | |
PS | Lifestyle | -0.418 | -0.456 | -0.377 | < 0.001 |
Environment | 0.225 | 0.182 | 0.265 | < 0.001 | |
MS | Lifestyle | -0.306 | -0.338 | -0.273 | < 0.001 |
Environment | 0.286 | 0.252 | 0.321 | < 0.001 | |
SS | Lifestyle | -0.274 | -0.309 | -0.242 | < 0.001 |
Environment | 0.263 | 0.227 | 0.299 | < 0.001 |
This cross-sectional study of nationally representative urban Chinese residents found that lifestyle behaviors and living environmental factors were significantly associated with SHS. The association strengths between lifestyle behaviors and GS, lifestyle behaviors and PS were bigger than those of living environmental factors. The association of lifestyle behaviors and MS, lifestyle behaviors and SS were almost the same with those of living environmental factors.
To the best of our knowledge, this was the first study on the association strengths of lifestyle behaviors and living environmental factors with SHS. The findings concluded in this study were generally in line with previous studies on the relationship between lifestyle and PS[24, 25]. Innovative findings in this study were the significant associations between living environmental factors and MS, living environmental factors and SS. Although, the association between living environmental factors and mental health has been elucidated before.
This study used the 39-item SHMS V.1.0 questionnaire to analyze SHS. It included physical, mental, and social dimensions. Our previous research indicated that SHMS V.1.0 had good internal consistency among both a population of southern Chinese medical staff members[21] and urban residents in three Chinese districts[26]; Detective rate of GS in Chinese urban residents was 66.7%, slightly higher than southern China (65.1%) [13] and Tianjin (66.37%) [14].
This study found that bad lifestyle habits such as smoking, alcohol consumption, second-hand smoking influences, poor dietary habits, and surfing the internet were associated with low SHS scores. On the other hand, good lifestyle habits such as taking daily breakfast, sufficient sun exposure, daily physical exercise, consistently going to bed before 11 pm, and daily sleep durations between 7–9 hours were associated with non-SHS. A study among Chinese university students similarly indicated that sleep durations of less than six hours per day were independently and significantly associated with poor self-reported health[27]. Skipping breakfast has also been found in association with a significantly increased risk of mortality from cardiovascular disease[28]. Further, an English study pointed out that poor health outcomes were more common among ex-smokers and current smokers than those who had never smoked[29]. Finally, alcohol use and short sleep durations are likely related to poor health among black men living in the United States[30].
Many studies have indicated that exercise, physical activity, and physical-activity interventions are beneficial for several physical and mental-health outcomes. Sufficient fresh air and sun exposure are also good for promoting public health[31]. Taken together, these studies and our findings underscore the importance of maintaining good lifestyle habits while abandoning bad choices as a simple way to prevent SHS and increase overall health.
This study further found that living environmental factors such as sufficient greenery, fresh air, pleasant housing, less spacious rooms, harmonious neighborhoods, the presence of many fitness facilities, and convenient living conditions were associated with high SHS scores. It is well-known that positive environments (especially natural outdoor areas) are good for human health[32]. Contrary to our general expectations, however, we found that people who lived in spacious rooms had a greater probability of developing both mental and GS. This may be due to feelings of emptiness in one’s surroundings. For example, a systematic review indicated that living alone may be associated with low levels of positive mental health[33].
This population-based study examined a sample of urban residents (5,881 respondents), thus facilitating overall generalizability to the entire urban population in China. Further, we illustrated the relative strengths of lifestyle behaviors and living environmental factors on the associations with SHS. We firstly illustrated the important association of living environmental factors and MS, living environmental factors and SS, which almost the same with lifestyle behaviors. What’s more, association factors were comprehensive, including 10 lifestyle behaviors and eight living environmental factors, which can be intervened and was helpful for preventing of SHS and chronic noncommunicable diseases.
First, because of the cross-sectional design, it was not possible to confirm causal relationships of SHS with lifestyle behaviors and living environmental factors. Second, lifestyle factors were self-reported in this study, which reduced the precision of measurement of lifestyle behaviors and living environmental factors. Third, although we have considered as many factors as possible, bias may happen inevitably due to some factors not being included.
This large-scale cross-sectional study of Chinese urban residents aged 14 and above found that good lifestyle behaviors and living environmental factors were both significantly associated with low rates of SHS (i.e., high SHS scores). Lifestyle behaviors were more significantly associated with physical and GS. However, living environmental factors and lifestyle behaviors were nearly identically associated with mental and SS.
sub-health status
general sub-health status
physical sub-health status
mental sub-health status
social sub-health status,
Structural equation model
relative
root mean-square error of approximation
comparative fit index
goodness-of-fit index
adjusted goodness-of-fit index
Ethics approval and consent to participate The study protocol was approved by Medical Ethics committee of NanFang Hospital of Southern Medical University (NFEC-2019-196).
Consent for publication: Not applicable.
Availability of data and materials Data used in this study were obtained under the support of Nanfang Hospital, Southern Medical University. The ownership of the data belongs to Nanfang Hospital, Southern Medical University. Researchers who meet the criteria for access to confidential data can contact Jun Xu ([email protected]) at the Nanfang Hospital, Southern Medical University to request the data.
Competing interests None declared.
Funding This research was supported by the National Natural Science Fund, National Natural Science Foundation of China (No: 71673126), and the Science and Technology Planning Project of Guangzhou City of China (No: 201803010089).
Authors’ contributions XYL did the analysis and interpretation of data, and wrote the manuscript. XJ initiated and designed the survey. LWY provided supporting for the survey. LGH, FYF, XMY were contributed to the national survey. XJ and LWY revised the manuscript. All authors read and approved the final manuscript.
Acknowledgments The authors thank all study participants. We also thank the investigators and students for their assistance in this research.