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Article

The Link between Sleep Insufficiency and Self-Injury among In-School Adolescents: Findings from a Cross-Sectional Survey of Multi-Type Schools in Huangpu District of Shanghai, China

1
Department of Comprehensive Prevention and Emergency Management, Huangpu District Center for Disease Control and Prevention, Shanghai 200023, China
2
NHC Key Laboratory of Reproduction Regulation (Shanghai Institute for Biomedical and Pharmaceutical Technologies), Fudan University, Shanghai 200237, China
*
Authors to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2022, 19(23), 15595; https://doi.org/10.3390/ijerph192315595
Submission received: 10 October 2022 / Revised: 17 November 2022 / Accepted: 22 November 2022 / Published: 24 November 2022

Abstract

:
Both insufficient sleep and self-injury are rising public health issues among middle school students. Understanding their relationship may guide the intervention and policy making to help youths gain a healthy life. Thus, we analysed the data collected from the Shanghai Students Health Risk Behavior Surveillance (2015) in the Huangpu District. Self-injury was self-reported and categorized into ever or never. Sleep duration was classified as sufficient and insufficient according to the Health China 2030 Plan and the National Sleep Foundation’s updated sleep duration recommendations. Crude OR and adjusted OR of sleep duration and covariates were estimated for self-injury using the logistic regression models with standard error clustered on school types. Results showed that 8.42% of the participants had conducted self-injury, with girls more than boys and ordinary school students more than key school students. After full adjustment, sleep insufficiency increased the odds of conducting self-injury by approximately two folds (AOR = 2.08, 95%CI = 1.40–3.07). The odds of self-injury were higher among students studying at ordinary schools (AOR = 3.58, 95%CI = 1.25–10.27) or vocational schools (AOR = 2.00, 95%CI = 1.77–2.26), with comparison to those at key schools. Interventions seeking to solve insufficient sleep need to be multifaceted, with consideration of changing the school environment and multiple social contexts, which create stressful burdens for adolescents’ development.

1. Introduction

Self-injury among adolescents is a major public health concern worldwide, with an approximately 10–20% 1-year prevalence rate, which is still rising [1,2]. A school-based study among European adolescents aged 14–17 years old showed that about 14.6% had thought about self-injury, while 5.8% had carried out so during the past year. In China, according to a meta-analysis conducted in 2018, the self-injury rate among middle-school students was 22.37% (95%CI: 18.84–25.70%) [3,4]. Major risk factors include mental disorders, bully, low health literacy, problem behaviors, adverse childhood experiences, physical symptoms, and female gender [5]. In addition, there has been growing evidence that sleep problems are risk factors for self-injury and suicidal behavior, and that this relationship is independent of the psychiatric disorder [6,7].
Sufficient sleep is beneficial not only for energy conservation, neuronal recovery, and brain plasticity, but also for physical growth, and cognitive and psychological development [8]. According to the National Sleep Foundation in the US, the time spent on sleep should be at least 9 h, 8 h, and 7 h for school-age children, teenagers, and young adults, respectively [8]. The Health China 2030 Plan also suggested ensuring at least 10 h of sleep for children in primary school, 9 h for those in junior high school, and 8 h for those in senior high school. However, the sleep duration of many adolescents falls well short. In the US, adolescent self-reported sleep has decreased over the past 20 years [9]. In Asian countries such as Singapore and Korea, sleep duration of five or six hours per night is common [10]. Insufficient sleep duration is detrimental to adolescent development, and poses essential and complicated health risks in the adolescent population [11]. Research has reported that insufficient sleep is negatively associated with academic performance, self-control, depression, juvenile delinquency, substance use, and other risk-taking behaviors towards oneself, such as self-injury and suicidal behaviors [7,12,13].
Behaviors such as suicide and self-injury tend to cluster in a particular group [14]. The social contagion theory, which is based on social learning theory, suggests that such behaviors provide others with role models and increase the likelihood of imitating the behavior [15]. As school constitutes one of the most critical environments influencing the adolescents’ health behaviors and well-being through their established friendships, perceived social norms, and academic expectations, the effect of schools, especially different school types, should be noticed. Specifically, in the current Chinese context, schooling is becoming an essential investment for the family [16]. After the 9-year compulsory schooling, about half of the junior high students who wanted to pursue higher education would go to senior high school, with the “cleverest” ones being preferred by key senior high schools and the ordinary students going to the ordinary senior high school. In contrast, the other half would go to vocational schools, with more focus on skill training to prepare for future work. With tremendous academic pressure, Chinese students who want to perform better are even forced to sacrifice sleep time [17]. To our knowledge, however, few studies on the topic of self-injury in China have taken this into consideration. The present study aims to expand the state of knowledge in the area.

2. Participants and Methods

2.1. Participants and Data Collection

The current study is conducted in the middle schools located in the Huangpu District, Shanghai in 2015 as a part of Shanghai Students Health Risk Behavior Surveillance (SSHRS), guided by the Shanghai Municipal Center for Disease Control and Prevention (CDC) and operated by Huangpu District CDC. The aim of SSHRS is to obtain surveillance of adolescent health risk behaviors and the possible factors. This study recruited 6th to 12th grade students from ordinary, key, and vocational schools to complete a questionnaire. This study used a two-stage cluster sample design to create a representative sample of middle school students in the Huangpu District. The study protocol for conducting SSHRS was approved by the Institutional Review Board (IRB) in the CDC of the Huangpu District. Parental consent and adolescent assent were collected with the help of school teachers.

2.2. Measurements

Outcome Variable: Self-Injury

Self-injury in this study was measured based on response to the question “During the past 12 months, have you injured yourself intentionally and how many times?”. Adolescents who answered “0 times” were coded as 0, and those who answered “1 time”, “2–3 times”, “4–5 times”, and “6 times or more” were coded as 1.

2.3. Explanatory Variable: Insufficient Sleep

Insufficient sleep was measured as a binary variable. The original question asked respondents “On an average night, how many hours of sleep do you get?” with the following response options “less than 7 h”, “7–8 h”, “8–9 h” and “over 9 h”. Following the recommendations of the Health China 2030 Plan and the National Sleep Foundation’s updated sleep duration recommendations [8], adolescents who were aged less than 14 years and had less than 9 h of sleep (“less than 7 h”, “7–8 h”, “8–9 h”) on an average night; who were aged 14–17 and had less than 8 h of sleep (“less than 7 h”, “7–8 h”); and who were aged over 18 and had less than 7 h of sleep were considered as having an insufficient sleep and were recoded as 1, whereas adolescents who had chosen equivalent more hours of sleep on an average night according to their age were considered as having sufficient sleep and were recoded as 0.

2.4. Covariates

To better capture the association between self-injury and sleep insufficiency, we controlled for other potential risk factors for self-injury: self-rated weight, school performance [18], bully victimization [5], mental health disturbances [3,19], substance use (cigarette and alcohol use) [20], and time spent on video games [3,21]. Physical activity was considered a protective factor that could reduce the possibility of self-injury and was measured by asking, “During the past 7 days, on how many days were you physically active for a total of at least 60 min per day?” Respondents who were physically active on five or more days were considered physically active and were coded as 1; otherwise, they were considered physically inactive and were coded as 0.
Self-rated weight was measured by the question “How would you describe your body weight?” and the answers were categorized into three groups: very light and a little light were combined as “light than average”; a little heavy and very heavy were combined as “heavy than average”; and the average group remained the same and was treated as the reference group in the multivariate analysis.
School performance was self-reported and the answers were categorized into three groups as similar as self-rated weight: very good and a little good were combined as “better off”; a little worse and very bad were incorporated into “worse off”; and the average group remained the same and was treated as the reference group in the multivariate analysis.
Bullying victimization was measured based on the response to a set of questions, “During the past 12 months, have you ever been bullied in the following forms? (1) Being teased; (2) Being robed; (3) Being intentionally excluded from group activity or isolated; (4) Being threatened; (5) Being physically beaten, kicked, attacked, or squeezed; (6) Being sexually harassed”. In either circumstance, adolescents could choose: never (counted as 0), occasionally (counted as 1), or often (counted as 1). Then, we calculated them in tertials based on the principal component scores of all five items of the respondents [22]. The top 1/3 were considered as heavily bullied, while the middle and bottom 1/3 were characterized as moderate and none, respectively.
A mental problem was measured using four items: “During past 12 months, have you worried about the safety on the way between your home and school?”; “During past 12 months, have you felt lonely?”; “During the past 12 months, have you felt unhappy because of the pressure from study and school performance”; and “During the past 12 months, have you stopped normal activities because of sadness and despair?” Those who answered yes were coded as 1; those who answered no were coded as 0. The total score was grouped into tertials based on principle component scores such as bully victimization.
Adolescents who smoked a cigarette at least once during the past 30 days before the survey date were coded as 1; otherwise, they were coded as 0 for smoking activity. Adolescents who reported drinking alcohol at least once during the 30 days before the survey date were coded as 1; otherwise, they were coded as 0 for drinking activity.
We also adjusted for age, sex, ethnicity, and family structure. Age was measured as a continuous variable, whereas sex was coded as a binary variable with the male as the reference category. Ethnicity was dichotomized into Han ethnicity and minorities, while the family structure was divided into two groups: living with both parents (1), and living with only one parent or no parents (0).

2.5. Data Analysis and Statistics

Data analytic strategies included the use of descriptive, bivariate, and multivariate techniques. The general distribution of the study variables was first examined using percentages. Next, we examined the bivariate association between insufficient sleep and the study variables using binary logistic regression. We then regressed self-injury on insufficient sleep using binary logistic regression, while controlling for the effects of demographic and other risk factors for self-injury. A multivariate logistic regression model was then fitted with all the variables assessed in bivariate logistic regression in consideration of interactions. Adjusted odds ratios (AOR) are reported together with their 95% confidence intervals (CI). Variables were considered significant if the p value was less than 0.05. All the analyses were performed using STATA version 15.1 SE (StataCorp, College Station, TX, USA).

3. Results

3.1. Sample Characteristics

Table 1 compared the distribution of respondents’ characteristics by sex and by school type, respectively. Of the 1092 participants, 48.90% were male. Students from ordinary schools, key schools, and vocational schools were 22.07%, 37.27%, and 40.66%, respectively. About 7.68% of male students and 9.14% of female students reported having self-injury experiences, while 12.03% were from ordinary schools. A large majority of adolescents (81.87%) reported having insufficient sleep, with girls slightly more than boys (83.87% vs. 79.78%), and students from key schools (91.89%) more than from ordinary schools (76.35%) or from vocational schools (75.68%).

3.2. Bivariate Association between Self-Injury, Sleep Insufficiency, and Study Variables, Respectively

Table 2 shows the bivariate association between self-injury and the study variable. We found younger age, studying in an ordinary school, self-rating of worse-off school performance, and ever smoking and drinking during the past 30 days were associated with higher self-injury possibilities. Bully experiences and mental health problems were also correlated with self-injury. We further explored the effect of each study variable on sleep insufficiency. The results were shown in Table 3. Compared to key schools, there was an approximately 70% drop off in the odds for students in ordinary schools (OR 0.28, 95%CI: 0.18–0.45) and vocational schools (OR 0.27, 95%CI: 0.18–0.42) to have sleep insufficiency. Smoking experiences during the past 30 days were negatively associated with insufficient sleep by an average decreased odd of 52% (OR: 0.48, 95%CI: 0.24–0.94). Interestingly, there was a negative association between bully experiences and sleep insufficiency, whereby adolescents being heavily bullied were 32% less likely to experience sleep insufficiency. Factors positively associated with sleep insufficiency include higher self-rated weight versus averaged weight (OR: 1.55, 95%CI: 1.09–2.20) and moderated mental health problems versus light mental health problems (OR: 1.95, 95%CI: 1.37–2.77).

3.3. The Effect of Sleep Insufficiency on Self-Injury

Table 4 depicts the effect of sleep insufficiency and covariates on self-injury, solely and together using bivariate and multivariate logistic regression with a clustered standard error on school type, as school type correlated with almost every predictor variable. Bivariate results showed that older age, living with both parents, and average and better school performance were negatively associated with self-injury. At the same time, sleep insufficiency, being as a minority, having smoked or drank during the past 30 days, having severe or moderate bully victimization experiences, and having severe or moderate mental health problems were positively correlated with self-injury.
In the multivariate logistic model, considering the interaction between sleep insufficiency and school type, sleep insufficiency contributes about a two-fold increase in the odds of conducting self-injury (AOR = 2.08, 95%CI = 1.40–3.07). Self-rated average and better school performance are the most significant protective factors against self-injury. While studying at a vocational school or ordinary school in comparison to a key school (AOR = 3.58 and 2.00, respectively; 95%CI = 1.25–10.27 and 1.77–2.26, respectively), being a female (AOR = 1.61, 95%CI = 1.12–2.32), smoking during the past 30 days (AOR = 2.03, 95%CI = 1.52–2.72), having bully experiences, and having mental problems (AOR ranged from 1.86 to 3.73) would increase the odds of conducting self-injury. The sex-stratified model showed similar results (see Supplementary Table S1).

4. Discussion

This study described the prevalence rate of self-injury and sleep insufficiency among middle school students of different school types in a district of Shanghai, China. The study further examined the effect of sleep insufficiency on self-injury behaviors. The result showed that about 8.42% of middle school students had self-injury, with girls more than boys and ordinary school students more than key school students. Sleep insufficiency is widespread, with approximately four-fifths of students not having achieved the recommended hours for sleep duration. Sleep insufficiency was significantly associated with self-injury behaviors in the statistics, especially among ordinary and vocational school students, though insufficient sleep is most prevalent among key school students. Such association still exists even when we dichotomized the sleep length using the median value (see Supplementary Table S2). Other risk factors related to self-injury include being female, worse-off school performance, smoking during the past 30 days, being moderately or severely bullied, and having moderate or severe mental health problems.
The rate of self-injury reported here is similar to studies conducted among Australian and Norwegian adolescents of a similar age [6,23]; however, it is less than that among Hongkong (23.5%) and US samples (18%), which are approximately around 20% [24,25]. Self-injury is usually considered to be a maladaptive coping strategy to regulate emotion: such as managing or distracting from the negative or unwanted feelings, expressing feelings that feel overwhelming and hard to share with others, feeling a sense of control, or punishing themselves for things they believe they have done wrong [1]. In our study, perceived serious or moderate mental problems accounted for some association between sleep duration and self-injury. Still, the latter association remained significant even in the fully adjusted analyses. The detected correlated factors of self-injury in our study reproduced the results of other research [2,5,19,26]. We found that school type and poor academic performance were significantly correlated with self-injury, echoing a meta-analysis result that suicide and self-injury were higher in those with more academic pressure [24]. When adjusted for all the possible factors, being at a key school other than at an ordinary or vocational school was a protective factor for conducting self-injury. It might be because students in key schools have a higher self-efficacy and self-esteem than their counterparts in ordinary and vocational schools [27]. The “healthy worker effect” could also explain such a phenomenon: the “cleverest ones” being selected by key schools are usually those who are mindful, saying, having a high attention to and awareness of what is occurring in the present; thus, few of them would use self-injury as an improper way to regulate this emotion [18].
Bully victimization experiences and mental problems cooccurred with both self-injury and sleep insufficiency, indicating that negative emotionality could be a plausible pathway to both. Such a relationship suggested that school life-related stressors, for instance, academic demand, social acceptance, etc., are likely to be the predominant ones for adolescents to overcome. Therefore, future interventions should consider adolescents’ cognitive and emotional conditions, and reduce their maladaptive attribution to themselves [25].
Theoretically, the emotional regulating mechanism can serve as a helpful framework for understanding the relationship between sleep and self-injury [28]. Brain imaging studies showed that, with the structural and functional changes of the brain in adolescence, especially that to the prefrontal cortex (PFC), adolescents and young adults are especially prone to a higher stress responsivity and emotional reactivity [29]. Insufficient sleep is probably more likely to happen among those who could not keep the normative sleep duration as their peers to satisfy the time spent on sports/physical training, academic demand, and necessary social networks, which affected their PFC development [30]. In addition, those with internal problems caused by relationship or social acceptance issues would have lower impulsive control inhibition and difficulties in sleep acquisition [6]. What is more, from the transferable view of the studies on suicide, self-injury could also be related to subjective misconceptions, such as being a burden to the family, blaming oneself to be stupid, having no one to care, and perceiving the quality of social relationship as dissatisfactory, which would also affect their sleep quality [12].
Some weaknesses should be kept in mind when interpreting the results. First, the cross-sectional design prohibited the causal interpretation between insufficient sleep and self-injury. However, the association between the two is still informative for future study and intervention design. Second, this study only assessed sleep duration by dichotomizing it into sufficient and insufficient. Previously, studies have reported a U-shape relationship between sleep duration and self-injury [31]. Future studies with more accurate sleep-length assessments are needed to verify if the nonlinear relationship exists among all school-type students. Third, the questionnaire did not distinguish self-injury with suicidal intent from non-suicidal self-injury. However, given that most self-injury, especially in teens and young adults, is non-suicidal, our result is still comparable to studies in this area. Fourth, though we did not include the frequency of self-injury in our research due to the small percentage of occurrence, as self-injury is often cyclical, it is an important point to inspect, which should be taken into consideration in future studies. Lastly, the findings are subject to response biases because of the self-reported questionnaire. Self-injury is a sensitive question and adolescents may tend to under-report it. However, self-report measures remain a valuable source of information in epidemiologic studies. Longitudinal research is needed in the future to verify the relationship, and it would also be necessary to determine whether other changeable factors mediate this relationship.

5. Conclusions

Given that less than one in four adolescents had the recommended hours of sleep and the adverse effects of sleep insufficiency on physical and mental health are largely documented, such a phenomenon should raise more public health concerns. The finding of this study strongly suggested that policies that seek to avoid the behavioral expression of the negative affective experience of adolescents, such as self-injury and suicide attempt, and those that attempt to enhance adolescent sleep may be more closely intertwined than previously assumed. Sleep insufficiency and self-injury may possibly be reduced by national government policies regarding school types and educational components. Interventions to work on reducing the academic demand and school bullying, as well as transforming the social norms on praising the good and blaming the bad students, may also play a role in the prevention. In all, a multifaceted approach considering the roles of both school environment and social contexts are needed for adolescents’ well development.

Supplementary Materials

The following supporting information can be downloaded at: https://www.mdpi.com/article/10.3390/ijerph192315595/s1, Table S1: Correlation of Self-injury and sleep insufficiency among male and female students using multivariate logistic regression with the standard error of school type clustered; Table S2: Correlation of Self-injury and sleep insufficiency (using 7 h as cut-off point) among male and female students using multivariate logistic regression with the standard error of school type clustered.

Author Contributions

Conceptualization, S.Z. and C.Y.; data curation, S.Z.; formal analysis, S.Z.; funding acquisition, S.Z.; investigation, S.Z.; methodology, S.Z. and C.Y.; project administration, S.Z.; resources, S.Z.; software, C.Y.; supervision, C.Y.; validation, C.Y.; writing—original draft, S.Z. and C.Y.; writing—review and editing, S.Z. and C.Y. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

The study was conducted in accordance with the Declaration of Helsinki, and approved by the Ethics Committee of Shanghai Huangpu District Center for Disease Control and Prevention (protocol code: 2015HPLL03, date of approval: 30 January 2015).

Informed Consent Statement

Parental informed consent and adolescent assent were obtained from all subjects involved in the study.

Data Availability Statement

Data are available upon reasonable request. Please contact the corresponding authors for detail.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. Demographic characteristics, and study variables of respondents by sex and by school type.
Table 1. Demographic characteristics, and study variables of respondents by sex and by school type.
TotalSexχ2/t TestpSchool Typeχ2/F Testp
Male
N = 534
Female
N = 558
Ordinary School
N = 241
Key School
N = 407
Vocational School
N = 444
Demographics
SexMale48.90----58.9248.8943.4714.9280.001
Female51.10-- 41.0851.1156.53
School typeOrdinary school22.0726.5917.7414.9280.001-----
Key school37.2737.2737.28 ---
Vocational school40.6636.1444.98 ---
Age 16.17 ± 1.8216.03 ± 1.9216.30 ± 1.712.4350.01513.36 ± 1.2916.85 ± 0.9217.08 ± 0.971157.71<0.001
School PerformanceWorse off26.9730.2523.866.3730.04120.9227.3929.9319.5520.001
Average34.1831.4136.79 28.8734.1737.12
Better off38.8638.3439.34 50.2138.4432.95
EthnicityHan98.3597.9498.741.0840.29896.2398.2899.5510.5080.005
Minority1.652.061.26 3.771.720.45
Family structureBoth parents81.7481.6181.870.0120.91478.3387.9377.9316.617<0.001
Non or one parent18.2618.3918.13 21.6712.0722.07
Variables of interest
Self-injuryYes8.427.689.140.7560.38512.036.148.566.8250.033
No91.5892.3290.86 87.9793.8691.44
SleepInsufficient81.8779.7883.873.0840.07976.3591.8975.6843.964<0.001
Sufficient18.1320.2216.13 23.658.1124.32
Other covariate variables
Self-rated weightLighter than average19.6928.6511.1171.631<0.00119.9216.7122.308.9500.062
Average35.0737.0833.15 40.2535.8731.53
Heavier than average45.2434.2755.73 39.8347.4246.17
Bully victimizationNone or Light60.3547.7572.4075.459<0.00155.6066.0957.6613.8740.008
Moderate20.8825.0916.85 19.9219.9022.30
Heavy18.7727.1510.75 24.4814.0020.05
Mental health Problems None or Light38.6461.6147.8520.807<0.00156.0229.9837.1669.156<0.001
Moderate40.8426.4032.44 29.8853.0735.59
Heavy20.5111.9919.71 14.1116.9527.25
Physical activityActive45.6057.3034.4157.657<0.00173.8638.3336.9499.687<0.001
Non-active54.4042.7065.59 26.1461.6763.06
Smoking during the past 30 daysYes3.855.242.515.5170.0190.410.988.3340.869<0.001
No96.1594.7697.49 99.2999.0291.67
Drinking during the past 30 daysYes26.5628.4624.731.9500.16314.5222.8536.4943.207<0.001
No73.4471.5475.27 85.4877.1563.51
Time spent on video gamesOver 4 h21.6120.7922.400.4200.51711.6213.2734.6875.724<0.001
Less than 4 h78.3979.2177.60 88.3886.7365.32
Table 2. Bivariate association of study variable and self-injury.
Table 2. Bivariate association of study variable and self-injury.
No (%)Yes (%)Crude OR95%CIp
Age 16.22 ± 1.8015.70 ± 1.980.870.78–0.970.010
SexMale49.3044.571
Female50.7055.431.210.79–1.860.385
EthnicityHan98.5096.741
Minority1.503.262.210.63–7.770.218
Living with both parentsYes82.0678.260.790.47–1.320.367
No17.9421.741
School typeKey93.866.141
Ordinary87.9712.032.091.19–3.660.010
Vocational91.448.561.430.85–2.410.181
School performanceWorse off25.8439.331
Average 35.2422.470.420.24–0.740.003
Better off38.9238.200.650.39–1.060.084
Self-rated weightLower than average19.6020.651.230.67–2.260.506
Average35.5030.431
Higher than average44.9048.911.270.78–2.080.340
Physical activeYes45.5046.741.050.69–1.610.819
No54.5053.261
SmokingYes3.408.702.711.21–6.030.015
No96.6091.30
DrinkingYes25.7035.871.621.03–2.530.036
No74.3064.131
Playing video gamesLess than 4 h78.6076.091
Over 4 h21.4023.911.150.70–1.910.575
Bully ExperienceNone62.7034.781
Moderate20.3027.172.411.40–4.170.002
Heavy17.0038.044.032.43–6.71<0.001
Mental ProblemLight40.4019.571
Moderate41.2036.961.851.03–3.330.040
Heavy18.4043.484.882.72–8.74<0.001
SleepInsufficiency81.7083.701.150.65–2.050.635
Sufficiency18.3016.301
Table 3. Bivariate association of study variables and sleep insufficiency.
Table 3. Bivariate association of study variables and sleep insufficiency.
VarialbesCrude OR95%CIp
School type
 Ordinary schools vs. key schools0.280.18–0.45<0.001
 Vocational schools vs. key schools0.270.18–0.42<0.001
Age0.970.89–1.060.468
Sex
 Female vs. male1.320.97–1.800.080
Ethnicity
 Minority vs. Han0.570.20–1.620.293
Living with both parents
 Yes vs. no0.730.48–1.120.147
School performance
 Average vs. worse off1.190.79–1.800.396
 Better off vs. worse off0.890.61–1.300.545
Self-rated weight
 Lower than average vs. average0.970.64–1.460.884
 Higher than average vs. average1.551.09–2.200.015
Physically active
 Yes0.750.55–1.020.065
Smoking
 Yes0.480.24–0.940.031
Drinking
 Yes0.870.62–1.230.432
Playing video games
 Over 4 h0.860.60–1.240.422
Bully experience
 Moderate vs. none1.210.80–1.830.377
 Severe vs. none0.670.46–0.980.040
Mental problem
 Moderate vs. light1.951.37–2.77<0.001
 Severe vs. light1.390.92–2.100.114
Table 4. Correlation of self-injury and sleep insufficiency among middle school students using logistic regression with the standard error of school type clustered.
Table 4. Correlation of self-injury and sleep insufficiency among middle school students using logistic regression with the standard error of school type clustered.
Bivariate Multivariate
OR95%CIpAOR95%CIp
Sleep insufficiency1.151.06–1.250.0012.081.40–3.07<0.001
School type (key school)
 Ordinary school2.09--3.581.25–10.270.018
 Vocational school1.43--2.001.77–2.26<0.001
Interactions
 Ordinary school × Sleep insufficiency---0.530.38–0.75<0.001
 Vocational school × Sleep insufficiency---0.590.48–0.74<0.001
Age0.870.85–0.89<0.0010.940.70–1.260.679
Sex
 Female1.210.86–1.690.2681.611.12–2.320.011
Ethnicity (Han)
 Minority2.211.41–3.460.0011.941.00–3.790.052
Living with both parents
 Yes0.790.61–1.000.0500.890.63–1.250.493
School performance
 Average vs. worse off0.420.37–0.48<0.0010.430.34–0.55<0.001
 Better off vs. worse off0.650.49–0.850.0020.650.45–0.940.021
Self-rated weight (average)
 Lower than average1.230.72–2.090.4481.180.70–1.980.531
 Higher than average1.270.98–1.650.0751.140.87–1.490.352
Smoking
 Yes2.711.62–4.51<0.0012.031.52–2.72<0.001
Drinking
 Yes1.621.39–1.88<0.0011.280.92–1.790.149
Physically active
 Yes1.050.53–2.080.8871.120.61–2.070.720
Playing video game
 Over 4 h1.150.67–2.000.6100.860.61–1.230.410
Bully experience
 Moderate vs. none2.411.75–3.33<0.0012.201.50–3.23<0.001
 Severe vs. none4.032.06–7.91<0.0012.821.07–7.480.037
Mental problem
 Moderate vs. light1.851.18–2.900.0071.861.05–3.300.035
 Severe vs. light4.883.07–7.75<0.0013.732.21–6.30<0.001
Note: All 95%CIs are calculated on the school-type clustered variances. Multivariate logistic regression model included the interaction between sleep insufficiency and school type.
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Zhang, S.; Yu, C. The Link between Sleep Insufficiency and Self-Injury among In-School Adolescents: Findings from a Cross-Sectional Survey of Multi-Type Schools in Huangpu District of Shanghai, China. Int. J. Environ. Res. Public Health 2022, 19, 15595. https://doi.org/10.3390/ijerph192315595

AMA Style

Zhang S, Yu C. The Link between Sleep Insufficiency and Self-Injury among In-School Adolescents: Findings from a Cross-Sectional Survey of Multi-Type Schools in Huangpu District of Shanghai, China. International Journal of Environmental Research and Public Health. 2022; 19(23):15595. https://doi.org/10.3390/ijerph192315595

Chicago/Turabian Style

Zhang, Shan, and Chunyan Yu. 2022. "The Link between Sleep Insufficiency and Self-Injury among In-School Adolescents: Findings from a Cross-Sectional Survey of Multi-Type Schools in Huangpu District of Shanghai, China" International Journal of Environmental Research and Public Health 19, no. 23: 15595. https://doi.org/10.3390/ijerph192315595

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