Literature DB >> 35330803

Risk factors for non-suicidal self-injury (NSSI) in adolescents: A meta-analysis.

Yu-Jing Wang1, Xi Li1, Chee H Ng2, Dong-Wu Xu1, Shaohua Hu3,4,5,6,7, Ti-Fei Yuan8,9,10.   

Abstract

Background: Non-suicidal self-injury (NSSI) in adolescents is a significant mental health problem around the world. Here, we performed a meta-analysis to systematically delineate the risk factors for NSSI. Method: We searched Medline, Embase, Web of Science and Cochrane for relevant articles and abstracts published prior to 12 November 2021. Pooled odds ratios (ORs) and 95% confident intervals (CIs) were used to assess various risk factors, and publication bias was assessed by Egger's test, the trim and fill method and meta-regression. This study is registered with PROSPERO, CRD42021265885.
Results: A total of 25 articles were eventually included in the analysis. Eighty risk factors were identified and classified into 7 categories: mental disorders (ORs, 1·89; 95% CI, 1·60-2·24), bullying (ORs, 1·98; 95% CI, 1·32-2·95), low health literacy (ORs, 2·20; 95% CI, 1·63-2·96), problem behaviours (ORs, 2·36; 95% CI, 2·00-2·77), adverse childhood experiences (ORs, 2·49; 95% CI, 1·85-3.34), physical symptoms (ORs, 2·85; 95% CI, 1·36-5·97) and the female gender (ORs, 2·89; 95% CI, 2·43-3·43). The range of heterogeneity (I2) was from 20·3% to 99·2%.
Conclusion: This meta-analysis found that mental disorders, low health literacy, adverse childhood experiences, bullying, problem behaviours, the female gender and physical symptoms appear to be risk factors for NSSI.
© 2022 The Authors.

Entities:  

Keywords:  Adolescents; Meta-analysis; Non-suicidal self-injury (NSSI); Risk factors

Year:  2022        PMID: 35330803      PMCID: PMC8938878          DOI: 10.1016/j.eclinm.2022.101350

Source DB:  PubMed          Journal:  EClinicalMedicine        ISSN: 2589-5370


Evidence before this study

Non-suicidal self-injury is a common behaviour that threatens the health of adolescents. Although NSSI is different from attempted suicide, it is a strong predictor of suicide and therefore an important health issue. We searched Medline (through PubMed), Embase, Web of Science and the Cochrane library until 12 November 2021, using the keywords for NSSI “(self-injury behaviour OR Nonsuicidal Self Injury” OR Deliberate Self Harm)” and adolescent “(teen OR youth)” and risk factor “(health correlates OR risk scores)”. We focused on screening articles that clearly distinguished the purpose of self-injury behaviour as non-suicidal and strictly controlled for the age range of adolescents. The quality of most studies was moderate.

Added value of this study

This was the first meta-analysis to address risk factors for self-injury in adolescents only. Our study summarized the risk factors that contribute to NSSI behaviours in this group. The results suggested that mental disorders, low health literacy, adverse childhood experiences, bullying, problem behaviours, the female gender and physical symptoms were indeed risk factors for non-suicidal self-injury adolescents. However, the quality of evidence for bullying and mental disorders was low and needed further study.

Implications of all the available evidence

Based on these risk factors found in the research, parents, teachers, and medical personnel should be vigilant and implement targeted prevention. In addition, more high-quality cohort studies are needed to explore the possible psychological factors and the associated neurophysiological mechanisms behind these possible risk factors. Alt-text: Unlabelled box

Introduction

Non-suicidal self-injury (NSSI) is defined as direct, repetitive injury to the body without suicidal intent. NSSI includes a variety of behavioural patterns, such as cutting, burning, hitting, scratching, and hair pulling. NSSI is a complex behaviour and differs from general risk-taking behaviours; it is intended to hurt the body, not just a byproduct of behaviour. The purpose of adolescent NSSI may vary by social and cultural differences. However, the mainstream view is that NSSI may be a strategy for regulating negative emotions., It has been reported that pooled NSSI (including single acts of self-injury) prevalence was 17.2% amongst adolescents, 13.4% amongst young adults and 5.5% amongst adults. NSSI is associated with various poor outcomes, such as cognitive impairments, poor interpersonal relationships, and violent crimes. Early adolescent NSSI may predict the occurrence of mental disorders in late adolescence, with increased rates of depression, anxiety and eating disorders., NSSI also results in negative impacts on family, such as difficulties in parent–child relationships, disrupted family communication, and family functioning., Self-harm acts are associated with suicidal ideation and suicide attempts in adolescents. It is estimated that NSSI as a whole is associated with a 30-fold increase in the risk of suicide attempt when compared with the general population. The causes of self-harm behaviour in adolescents are complicated and involve genetic, biological, spiritual, psychological, physiological, social, cultural and other factors. Identifying risk factors for NSSI is important for the early recognition and prevention of this behavioural problem. Previous clinical observations and cohort studies have reported various risk factors for NSSI, such as chronic interpersonal stress, early-life adversity, and digital media use. A meta-analysis conducted in 2015 analysed the risk factors for NSSI behaviours in people aged 10 to 44 and found that there is a lack of unified predictive factors and that standardized NSSI measurements are needed. This updated study aimed to systematically analyse the risk factors associated with NSSI in adolescents to inform NSSI prevention and intervention strategies.

Method

Search strategy

We searched English articles published up to 12 November 2021 in the following databases: Medline (through PubMed), Embase, Web of Science and the Cochrane Library. Primary search terms for Medline included (“self-injury behaviour” OR “self-injurious behaviour*” OR “Intentional Self Injury*” OR “Intentional Self Harm” OR “Non-suicidal Self Injury” OR “Non-suicidal Self Injury*” OR “Deliberate Self-Harm” OR “Deliberate Self Harm” OR “Self Injury*” OR “Non Suicidal Self Injury*” OR “Self Harm” OR “Self Destructive Behaviour*”) AND (“Adolescent*” OR “Teen*” OR “Teenager*” OR “Youth*” OR “Female Adolescent*” OR “Male Adolescent*”) AND (“Risk Factor” OR “Health Correlates” OR “Risk Scores” OR “Risk Factor Score” OR “Population at Risk”), a more detailed search strategy see Appendix 1. The search strategy was modified accordingly for the other databases. The initial study protocol was preregistered at PROSPERO (CRD42021265885).

Inclusion criteria and data extraction

Two researchers independently assessed the titles and abstracts for potential eligibility that satisfied the above search strategy, and then full-text articles were further assessed by two researchers to determine whether they met the inclusion criteria. Any potential dispute was resolved through discussion. The final included articles met the following criteria: (1) the age of the samples ranged from 10 to 20 years old; (2) the study was either a case–control or cohort study, with the cohort study followed up for at least 1 year; and (3) the definition of NSSI can be clearly distinguished from suicide attempt and suicide behaviour (suicidal thoughts need to be explicitly excluded in all included articles). We compared studies involving repetitive groups in terms of publication time, sample size, article quality and whether the research involved is ongoing. All data were independently extracted by two researchers, and the following data were collected for all articles: authors, year of publication, country, size of sample, sample age, population type (i.e., community, hospital or school-based), type of NSSI behaviour, period prevalence measure (e.g., lifetime NSSI or 12-month NSSI), and risk factors. In terms of quality assessment, the Newcastle–Ottawa Quality Scale (NOS) was used to evaluate the quality of the articles. The full score of the scale was 9, with 0–4 points for low-quality studies, 5–6 points for moderate-quality studies, and 7–9 points for high-quality studies (Appendix 2).

Statistical analysis

Stata version 14·0 was used to pool the results from the individual studies. We used random-effects models for this study, which allow for true effects to differ across different studies when compared with fixed effects models. Considering the different sample sources, experimental methods and designs used in the included studies, we initially assumed that there was significant heterogeneity between the studies. In the process of data extraction, the odds ratio (OR) was taken as the main index. Due to the large heterogeneity in the analysis, we conducted heterogeneity and sensitivity analyses on the overall group and the subgroup, respectively. Data were summarized as ORs, and the 95% confidence interval (95% CI) for each outcome was used to reflect the uncertainty of point estimates. ORs = 1.0 indicated no association, ORs 〈 1.0 indicated that this factor might be a protective factor, and ORs 〉 1.0 indicated a risk factor. The heterogeneity of those variations across studies was examined with I-squared (I2) values, which provide a percentage of the proportion, with an I2 value of 0–25% representing low inconsistency, 25–75% representing moderate inconsistency, and > 75% representing high inconsistency. The research results were summarized with a common forest plot. For the publication bias of those studies, we used funnel plots for rough qualitative analysis. The Egger's test was used to quantitatively evaluate publication bias; if publication bias was shown, the trim and fill method was used to evaluate the influence of bias on the obtained results. Moreover, the subgroup analysis of different risk factors was conducted, and meta-analysis with high heterogeneity (I2 > 75%) was further evaluated by meta-regression. The variables included in the regression to consider their potential moderating effects were (1) study type (case–control/cohort study), (2) population type, (3) period prevalence measure, and (4) country.

Role of funding source

The funders of this study had no direct role in the study design, data collection, data analysis, or data interpretation. TFY, SHH and CHN critically revised and edited drafts of the paper. All of the authors had access to the data and decided to submit the manuscript for publication.

Results

Results of searching

The initial database search produced 13,152 records, with a total of 11,083 records remaining after removing duplicates and manually searching. Subsequently, screenings by title, abstract and full text led to the result with 25 studies (Figure 1), after 162 articles were excluded from the meta-analysis. In total, 80 risk factors were included in this analysis, and they were divided into 7 categories: adverse childhood experiences, bullying, low health literacy, the female gender, mental disorders, physical symptoms, and problem behaviours. The pooled OR of all factors was 2·25 (95% CI, 2·04–2·48), which is highly heterogeneous (I2 = 98·3%, p = 0·000) and very significant. Therefore, different risk factors were divided into 7 categories and discussed separately (Table 2).
Figure 1

Flow chart of the search for relevant references.

Table 2

Risk factor categories.

Risk factorNo. of studiesHeterogeneityPooled OR95% CIPooled effect size test
I² (%)tau²ZP
Adverse Childhood Experiences1594·9%0·2862·491·85–3.346·0560·000
Bullying795·5%0·2371·981·33–2·953·3480·001
Low Health Literacy295·6%0.0442·201·63–2·965·1820·000
Female Gender820·3%0·0122·892·43–3·4312·1320·000
Mental Disorders2199·2%0·1231·891·60–2·247·5190·000
Physical Symptoms592·8%0·6402·851·36–5·972·7710·006
Problem Behaviours2191·8%0·0992·362·00–2·7710·2740·000
Overall8098·3%0·1542·252·04–2·4816·1250·000
Flow chart of the search for relevant references.

Characteristics of the included studies

Of the twenty-five studies eventually included, eighteen were case–control studies, and the remaining seven were cohort studies. Eight studies were conducted in China, seven in the US, three in Canada, and one each in Australia, Singapore, Iran, Turkey, Norway, South Korea and three European cities. The number of NSSI samples included in the studies ranged from 26 to 20,416. In addition, most of the articles used the self-report method to conduct NSSI classification, and only 2 articles used interviews (Table 1).
Table 1

Characteristics of studies included in the meta-analysis.

AuthorYear(Mean) agePopulation TypeRisk FactorsNSSI definitionInterview v. Self-ReportperiodNOS
Andrews et al.32201312 to 18SchoolFemale, Birth Outside of Australia, No Religious or Spiritual, Psychological DistressNSSISelf-report/7
Baiden et al.33201712 to 18SchoolFemale, Number of Children Abuse, Bullying Victimization, DepressionNSSISelf-report/6
Bandel et al.34201813 to 17CommunityDepressive Symptoms, Insomnia Symptoms (SCI)NSSISelf-reportPast 6 months6
Cox et al.352012M = 13.7 (3.9)CommunityDiagnosis of Major Depression, Current Suicidal IdeationNSSIInterview and Questionnaire/8
Giletta et al.36201114 to 19SchoolDepressive Symptoms, Family Loneliness, Peer Victimization, Smoking, Marijuana UseNSSISelf-report1 year (I/N), 6 months (The US)5
Gromatsky et al.37201913 to 15CommunityParental Substance Abuse, AvoidanceNSSISelf-reportLifetime5
Jeong et al.38202112 to 17SchoolFemale, Middle School, Gaming Disorder, Lower Economic StatusNSSISelf-reportPast 12 Months6
Khoubaeva et al.39202113 to 30HospitalSex, BD-II/-NOS Subtype, Higher Most Severe Lifetime Depression Scores, Greater Emotion DysregulationNSSIInterview/5
Lanzillo et al.40202112 to 17HospitalAny Form of CyberbullyingNSSISelf-report/5
Larsson et al.41200813.7 to 17CommunityFunction Impairment Due to Somatic Handicap, Friend Had Attempted Suicide, Smoking, Sex, High MFQ ScoreSelf-harmSelf-reportPast 12 months6
Lauw et al.42201813 to 19HospitalFemale Gender, Depressive Disorders, Alcohol Use, Forensic HistoryMore frequent NSSISelf-report/5
Li et al.142019M = 15.36 (1.79)SchoolLow HL, Problem Mobile Phone Use (PMPU)NSSISelf-reportPrevious 12 months5
Liu et al.43201611 to 18SchoolFrequent Nightmares, Poor Sleep QualityNSSISelf-reportPast 12 months6
Monto et al.44201814 to 18SchoolSad 2 weeks, Suicide Attempt, Forced to Have Sex, Electronically BulliedNSSISelf-reportPast 12 months5
Nemati et al.45202015 to 18SchoolPsychological Functioning of The Family, Perceived Social SupportNSSISelf-report/6
Stewart et al.46201414 to 18HospitalFemale, 3 or More Psychiatric Admissions, Sexual Abuse, Intentional Misuse of Prescription Medications, Alcohol, Mood disorder, Adjustment Disorder, Personality DisordersNSSISelf-reportLast 12 months5
Taliaferro et al.47201814 to 17SchoolMental Health Problem, Positive Screen for Depression, Teasing Victim, Run Away from Home, Alcohol UseOnly NSSI (one or more times in the past year)Self-reportPast 12 months5
Tang et al.48202011 to 20SchoolInternet AddictionMore frequent NSSISelf-report12 months6
Tsai et al.4920119 to 12 gradesSchoolFemale, Running Away from Home, Suicide Attempts, History of Sexual Abuse, DrinkingDSHSelf-report/7
Unlu et al.50201612 to 18CommunityRevictimization, Alcohol/Substance UseNSSIStandard Assessment/5
Victor et al.51201914 to 17CommunityDepression Severity, Low Social Self-Worth, Peer VictimizationNSSISelf-reportPast 12 months7
Wan et al.52201810 to 20SchoolHigh ACEs Scores, Low Social SupportNSSISelf-report12 months6
Wang et al.532020M = 14.59 (1.45)SchoolWeekdays internet Use≥2 h, Mobile Phone Use 1–2 h, Weekends internet Use≥3 h, Mobile Phone Use≥4 hNSSISelf-reportLifetime/Last-year7
Xie et al.54202110 to 20SchoolOpioid Misuse, Sedative MisuseNSSISelf-reportPast 12 months5
Zhang et al.55201611 to 19SchoolPsychological Symptoms, Low HLNSSISelf-reportPast 12 months7

Note: HL, health literacy; MFQ, The Mood and Feelings Questionnaire; ACEs, adverse childhood experiences; BD bipolar disorder.

Characteristics of studies included in the meta-analysis. Note: HL, health literacy; MFQ, The Mood and Feelings Questionnaire; ACEs, adverse childhood experiences; BD bipolar disorder. Risk factor categories.

Adverse childhood experiences

A total of 16 factors associated with adverse childhood experiences (ACEs) were attributed to this category, which included high adolescent childhood experience scores, family loneliness, low social support, parents’ substance abuse, forced sexual behaviours, forensic history, history of sexual abuse, sexual abuse, perceived social support, birth outside of the country, no religious or spiritual context, psychological functioning of the family, friend had attempted suicide, episodes of childhood abuse, middle school and lower economic status. Although this category included society, family, school, and other aspects, in terms of combined outcomes, adolescents with ACEs were more likely to have NSSI behaviours than healthy adolescents (OR, 2·49; 95% CI, 1.85–3·34), although there was a large heterogeneity observed (I2= 94·9%; P < 0·000) (Figure 2).
Figure 2

Forest plots for adverse childhood experiences and bullying

A, Forest plot of effect size and 95% CI of adverse childhood experiences (random effects model); B, Forest plot of effect size and 95% CI of bullying (random effects model). The diamonds represent individual studies and pooled effect sizes, and the lines represent 95% confidence intervals for each main study. OR = odds ratio.

Forest plots for adverse childhood experiences and bullying A, Forest plot of effect size and 95% CI of adverse childhood experiences (random effects model); B, Forest plot of effect size and 95% CI of bullying (random effects model). The diamonds represent individual studies and pooled effect sizes, and the lines represent 95% confidence intervals for each main study. OR = odds ratio.

Bullying

A total of 7 studies covered bullying, with the main categories being traditional bullying and cyberbullying. The pooled OR (OR, 1·98; 95% CI, 1·33–2·95) showed that bullying was a relatively weak risk factor in all categories. At the same time, the studies on bullying had great heterogeneity (I2 = 95·5%; P = 0·001) (Figure 2).

Low health literacy

Health literacy is a person's ability to obtain, understand and process basic health information and make corresponding health decisions. There were two studies involving health literacy from China, and the combined results were significantly different (OR, 2·20; 95% CI, 1·63–2·96). However, due to the small number of included studies, the results may lack reliability to an uncertain extent (Figure 3).
Figure 3

Forest plot for low health literacy, female gender, and physical symptoms

A, Forest plot of effect size and 95% CI of low health literacy (random effects model); B, Forest plot of effect size and 95% CI of female gender (random effects model); C, Forest plot of effect size and 95% CI of physical symptoms (random effects model). The diamonds represent individual studies and pooled effect sizes, and the lines represent 95% confidence intervals for each main study. OR = odds ratio.

Forest plot for low health literacy, female gender, and physical symptoms A, Forest plot of effect size and 95% CI of low health literacy (random effects model); B, Forest plot of effect size and 95% CI of female gender (random effects model); C, Forest plot of effect size and 95% CI of physical symptoms (random effects model). The diamonds represent individual studies and pooled effect sizes, and the lines represent 95% confidence intervals for each main study. OR = odds ratio.

Female gender

Eight studies reported on gender. Most studies indicated that female adolescents were more likely to have NSSI than male subjects. Furthermore, the sex difference may decrease with age, and the merged result (OR, 2·89; 95% CI, 2·43–3·43) was significant with a greater impact. The heterogeneity of the studies on gender was low (I2 = 20·3%; P < 0·001) (Figure 3).

Physical symptoms

Five risk factors were mentioned in this category, which included disabilities and sleep problems. Different from our expectation, the effect of physical problems on NSSI behaviours was significant (OR, 2·85; 95% CI, 1·36–5·97). However, at the same time, due to the low number of studies and high heterogeneity (I2 = 92·8%, p < 0·001), this result may be unstable (Figure 3).

Mental disorders

Mental disorders included 21 factors, amongst which depression and anxiety symptoms were the most common, while personality disorders, adaptation disorders, emotional scale scores and psychological symptoms were also included. The NSSI patients were recruited in hospitals, communities, and school groups. In terms of the pooled OR (OR, 1·89; 95% CI, 1·60–2·24), the impact of mental disorders was not as strong as we expected, and the results had some heterogeneity (I2 = 99·2%; P = 0·001) (Figure 4).
Figure 4

Forest plot for mental disorders and problem behaviours

A, Forest plot of effect size and 95% CI of mental disorders (random effects model); B, Forest plot of effect size and 95% CI of problem behaviours (random effects model). The diamonds represent individual studies and pooled effect sizes, and the lines represent 95% confidence intervals for each main study. OR = odds ratio.

Forest plot for mental disorders and problem behaviours A, Forest plot of effect size and 95% CI of mental disorders (random effects model); B, Forest plot of effect size and 95% CI of problem behaviours (random effects model). The diamonds represent individual studies and pooled effect sizes, and the lines represent 95% confidence intervals for each main study. OR = odds ratio.

Problem behaviours

Problem behaviour refers to behaviours that may be not conducive to the future development of young people. In the merged results, the pooled OR was 2·36 (95% CI, 2·00–2·77; I2 = 91·8%, P = 0·001). Twenty-one factors were included in this category, including internet addiction, alcohol/substance use, smoking, problematic mobile phone use, having run away from home, suicide attempt, internet/mobile phone abuse, intentional misuse of prescription medications, avoidance, opioid misuse, sedative misuse, and gaming disorder (Figure 4).

Publication bias

Except for the female gender, the distribution of scattered points in the funnel plot was asymmetric, suggesting potential publication bias. The funnel plot, however, provided a relatively symmetrical pattern, indicating that the possibility of publication bias was slight. This distribution did not indicate that more extreme results were selectively accepted for publication. Since the studies on low health literacy were too few to complete the Egger test, no publication bias analysis was performed. We then performed Egger's test on other categories and found that the results of ACEs, bullying, mental disorders and problem behaviours were significantly different, which may be due to publication bias. By supplementing the virtual literature with the trim and fill method, it was found that the results of ACEs and problem behaviours were very stable, indicating that publication bias had little effect on the results. In contrast, the results of bullying and mental disorders were not stable, indicating that the influence of publication bias on the results was present, and more studies in this area are needed. We also carried out meta-regressions with study type, population type, period prevalence measures, country of study, and literature quality as variables to further explore the possible sources of heterogeneity. It was found that the study type (b = 1·038, p = 0·795) and study quality (b = 0·959, p = 0·796) were not important sources of heterogeneity. Population type (b = 1·196, p = 0·042), period prevalence measures (b = 0·753, p = 0·003), and country of study (b = 1·053, p = 0·029) may be sources of heterogeneity. We conducted subgroup analyses based on these three possible sources. However, the subgroup heterogeneity of a small number of studies was not significant, while the subgroup heterogeneity of a large number of studies remained high. This suggests that these three variables may regulate the generation of heterogeneity, but they themselves were not important sources of heterogeneity.

Discussion

This meta-analysis was based on eighteen case–control studies and seven cohort studies, with an overall sample of more than 55,596 people with NSSI behaviour. The pooled data suggested that the female gender, physical symptoms, ACEs, problem behaviours, low health literacy, bullying and mental disorders were potential risk factors for NSSI. We also note that the included studies were highly heterogeneous and had a certain publication bias. Our study was the first comprehensive meta-analysis focusing on NSSI behaviour in adolescents, given that NSSI is highly prevalent in adolescence and can lead to irreparable consequences., Compared with adults, the risk factors for NSSI in adolescents are different. Adults are more likely to be affected by previous NSSI experiences and emotional disorders associated with NSSI behaviour. In contrast, NSSI in adolescents is associated with sleep problems and ACEs. The results derived from studies with less heterogeneity showed that female adolescents were more prone to have NSSI behaviour than their male counterparts, which is in line with previous community-based studies. In addition, there is also evidence that male and female adolescents may choose different modes of NSSI. Women are more likely to cut the skin, scratch, and bite, while men are more likely to hit, beat and burn. There are also gender differences in terms of self-reported causes of NSSI. Female adolescents adopt self-injury behaviour mainly for regulating emotions and self-control. Male teenagers, however, are more prone to impulsive pleasure. In the face of stressors and negative emotions, men are more likely to initiate strategies to solve problems, whereas women are more likely to focus on emotionally directed coping strategies. However, emotional strategies are often maladaptive, and females also have a greater risk for internalization difficulties. Adolescent females are more likely to report internalization symptoms than males leading to mental illness (such as depression and anxiety), while males have a greater prevalence of externalization disorders (extraverted aggression and substance abuse)., The high incidence of emotional disorders amongst women may contribute to the high incidence of NSSI in women; in addition, women may be more dependant on NSSI behaviour to release their negative emotions. Low health literacy and mental disorders were also risk factors for NSSI, although the relevant studies were highly heterogeneous. It was found that emotion dysregulation was associated with a higher risk for NSSI amongst individuals across settings. In adolescence, there is limited efficacy of adaptive internal emotion regulation., Therefore, during the process of dealing with negative emotions, teenagers lack effective coping strategies and are more likely to engage in NSSI behaviour for relief. This can result in more serious psychosocial consequences (shame, guilt, peer discrimination, and teacher and parental criticism) and self-criticism, resulting in impaired social relations and negative emotions, creating a vicious circle. It was also found in female adolescents with depression that the activation of the left frontal cortex related to positive emotions was reduced, while it was the opposite in healthy groups. We speculate that frontal alpha asymmetry may also exist in adolescents with NSSI, which needs to be verified. Adverse childhood experiences, bullying and problem behaviours are important risk factors, which include the negative impact of family, school, and society on adolescents. These factors may cause short-term physical and psychological health damage to individuals and adversely affect lifelong health, increasing the overall medical burden on society. Repeated exposure to such adverse stress events in childhood and adolescence may lead to the deviation of development trajectory, increase the occurrence of emotional symptoms, affect the development of cognitive function and the formation of personality characteristics. Thus, preventing ACEs can, to a large extent, reduce the incidence of health hazards.27, 28, 29 In terms of biological mechanisms, adverse experiences may have a negative impact on adolescents, such as brain structural changes, the HPA axis and circulating inflammatory cytokines. A cohort study found that the higher the ACEs score, the higher the risk of self-injury at 16 years old; however, the psychological and biological mechanisms between ACEs and NSSI still require further study. There were some limitations to the present study. First, almost all studies used self-report as the standard of classification. Most researchers and clinicians classified NSSI behaviours after excluding any intent to die or commit suicide. Therefore, a more reliable classification method is needed to distinguish between NSSI and suicide attempts. Second, sample representativeness, sample type, period prevalence measure and other factors may influence the results. The number of studies of some risk factors was too small for meta-analysis, and hence, the interpretation of results and publication bias are still limited by the small study numbers. Third, all the articles included both clinical and nonclinical samples, and the risk factors for NSSI behaviours in these groups may be different. Finally, the present study selected both case–control studies and cohort studies; more cohort studies with longer follow-up times are required to validate the present findings. In conclusion, this meta-analysis identified potential risk factors for NSSI behaviour in adolescents. Such findings may help develop strategies for the early recognition and prevention of adolescent NSSI.

Contributors

Yu-Jing Wang: Methodology, Formal analysis and investigation, Data curation, Writing - Original draft preparation Xi Li: Methodology, Formal analysis and investigation, Data curation Dong-Wu Xu: Supervision, Writing - Review and editing, Funding acquisition Shaohua Hu: Supervision, Writing - Review and editing, Funding acquisition Ti-Fei Yuan: Conceptualization, Supervision, Writing - Review and editing, Funding Chee H Ng: Writing, review and editing Funding acquisition All authors have read the final version of the manuscript.

Data sharing statements

Extracted data are from published studies and are available in the paper, and the dataset are not subject to embargo or restrictions.

Funding

NSFC grant (81,822,017), National Key R&D Program of China (2020YFA0113600), Natural Science Foundation of Zhejiang Province, China (No. LY19H090015), Shenzhen-Hong Kong Institute of Brain Science - Shenzhen Fundamental Research Institutions (NYKFKT20190020), Shanghai Municipal Education Commission - Gaofeng Clinical Medicine Grant Support (20,181,715), Social Science Foundation of China (BIAl80167).

Declaration of interests

All authors declare no competing interests.
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  1 in total

1.  The Impact of Self-Consistency Congruence on Non-Suicidal Self-Injury in College Students: The Mediating Role of Negative Emotion and the Moderating Role of Gender.

Authors:  Yang Li; Keke He; Changfeng Xue; Chun Li; Chuanhua Gu
Journal:  Int J Environ Res Public Health       Date:  2022-09-20       Impact factor: 4.614

  1 in total

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