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肥胖与儿童抑郁症有关吗?系统评价和荟萃分析。

Is obesity associated with depression in children? Systematic review and meta-analysis.

机构信息

Department of Primary Care and Public Health, Imperial College London, London, UK.

Institute for Global Health, University College London, London, UK.

出版信息

Arch Dis Child. 2019 Jan;104(1):64-74. doi: 10.1136/archdischild-2017-314608. Epub 2018 Jun 29.

Abstract

OBJECTIVES

To compare the odds of depression in obese and overweight children with that in normal-weight children in the community.

DESIGN

Systematic review and random-effect meta-analysis of observational studies.

DATA SOURCES

EMBASE, PubMed and PsychINFO electronic databases, published between January 2000 and January 2017.

ELIGIBILITY CRITERIA FOR SELECTING STUDIES

Cross-sectional or longitudinal observational studies that recruited children (aged <18 years) drawn from the community who had their weight status classified by body mass index, using age-adjusted and sex-adjusted reference charts or the International Obesity Task Force age-sex specific cut-offs, and concurrent or prospective odds of depression were measured.

RESULTS

Twenty-two studies representing 143 603 children were included in the meta-analysis. Prevalence of depression among obese children was 10.4%. Compared with normal-weight children, odds of depression were 1.32 higher (95% CI 1.17 to 1.50) in obese children. Among obese female children, odds of depression were 1.44 (95% CI 1.20 to 1.72) higher compared with that of normal-weight female children. No association was found between overweight children and depression (OR 1.04, 95% CI 0.95 to 1.14) or among obese or overweight male subgroups and depression (OR 1.14, 95% CI 0.93 to 1.41% and 1.08, 95% CI 0.85 to 1.37, respectively). Subgroup analysis of cross-sectional and longitudinal studies separately revealed childhood obesity was associated with both concurrent (OR 1.26, 95% CI 1.09 to 1.45) and prospective odds (OR 1.51, 95% CI 1.21 to 1.88) of depression.

CONCLUSION

We found strong evidence that obese female children have a significantly higher odds of depression compared with normal-weight female children, and this risk persists into adulthood. Clinicians should consider screening obese female children for symptoms of depression.

BACKGROUND

Childhood mental illness is poorly recognised by healthcare providers and parents, despite half of all lifetime cases of diagnosable mental illness beginning by the age of 14 years. Globally, depression is the leading cause of disease burden, as measured by disability-adjusted life years, in children aged 10-19 years. Untreated, it is associated with poor school performance and social functioning, substance misuse, recurring depression in adulthood and increased suicide risk, which is the second leading cause of preventable death among young people. The resulting cost to the National Health Service of treating depression is estimated at over £2 billion, and the wider social and economic impact of depression is likely to be considerable. .

摘要

目的

比较社区中肥胖和超重儿童与正常体重儿童患抑郁症的几率。

设计

系统评价和观察性研究的随机效应荟萃分析。

数据来源

EMBASE、PubMed 和 PsychINFO 电子数据库,收录时间为 2000 年 1 月至 2017 年 1 月。

入选研究的标准

横断面或纵向观察性研究,招募来自社区的儿童(年龄<18 岁),根据体重指数(BMI)将体重状况分类,使用年龄和性别调整的参考图表或国际肥胖工作组特定年龄和性别的标准,同时测量抑郁症的发病几率。

结果

荟萃分析纳入了 22 项研究,共涉及 143603 名儿童。肥胖儿童的抑郁症患病率为 10.4%。与正常体重儿童相比,肥胖儿童患抑郁症的几率高 1.32 倍(95%CI 1.17 至 1.50)。肥胖女性儿童患抑郁症的几率比正常体重女性儿童高 1.44 倍(95%CI 1.20 至 1.72)。超重儿童与抑郁症之间无关联(OR 1.04,95%CI 0.95 至 1.14),肥胖或超重的男性亚组与抑郁症之间也无关联(OR 1.14,95%CI 0.93 至 1.41%和 1.08,95%CI 0.85 至 1.37%)。分别对横断面和纵向研究进行亚组分析显示,儿童肥胖与同时期(OR 1.26,95%CI 1.09 至 1.45)和前瞻性(OR 1.51,95%CI 1.21 至 1.88)的抑郁症发病几率相关。

结论

我们有充分的证据表明,肥胖女性儿童患抑郁症的几率明显高于正常体重女性儿童,而且这种风险会持续到成年期。临床医生应该考虑对肥胖女性儿童进行抑郁症症状筛查。

背景

尽管半数可诊断的精神疾病病例在 14 岁之前开始,但儿童精神疾病仍未得到医疗服务提供者和家长的充分认识。在全球范围内,抑郁症是导致 10-19 岁儿童残疾调整生命年疾病负担的主要原因。未经治疗,抑郁症与学业成绩不佳和社交功能障碍、物质滥用、成年后反复发作的抑郁症以及自杀风险增加有关,而自杀是年轻人可预防死亡的第二大主要原因。治疗抑郁症给国民保健服务带来的费用估计超过 20 亿英镑,抑郁症对社会和经济的更广泛影响可能相当大。

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