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开发和验证一种算法,以预测未选中的青年未来的抑郁发作。

The development and validation of an algorithm to predict future depression onset in unselected youth.

机构信息

Department of Psychology, University of Illinois Urbana-Champaign, Champaign, ILUSA.

Department of Child and Adolescent Psychiatry and Behavioral Sciences, Children's Hospital of Philadelphia, Philadelphia, PAUSA.

出版信息

Psychol Med. 2020 Nov;50(15):2548-2556. doi: 10.1017/S0033291719002691. Epub 2019 Oct 2.

Abstract

BACKGROUND

Universal depression screening in youth typically focuses on strategies for identifying current distress and impairment. However, these protocols also play a critical role in primary prevention initiatives that depend on correctly estimating future depression risk. Thus, the present study aimed to identify the best screening approach for predicting depression onset in youth.

METHODS

Two multi-wave longitudinal studies (N = 591, AgeM = 11.74; N = 348, AgeM = 12.56) were used as the 'test' and 'validation' datasets among youth who did not present with a history of clinical depression. Youth and caregivers completed inventories for depressive symptoms, adversity exposure (including maternal depression), social/academic impairment, cognitive vulnerabilities (rumination, dysfunctional attitudes, and negative cognitive style), and emotional predispositions (negative and positive affect) at baseline. Subsequently, multi-informant diagnostic interviews were completed every 6 months for 2 years.

RESULTS

Self-reported rumination, social/academic impairment, and negative affect best predicted first depression onsets in youth across both samples. Self- and parent-reported depressive symptoms did not consistently predict depression onset after controlling for other predictors. Youth with high scores on the three inventories were approximately twice as likely to experience a future first depressive episode compared to the sample average. Results suggested that one's likelihood of developing depression could be estimated based on subthreshold and threshold risk scores.

CONCLUSIONS

Most pediatric depression screening protocols assess current manifestations of depressive symptoms. Screening for prospective first onsets of depressive episodes can be better accomplished via an algorithm incorporating rumination, negative affect, and impairment.

摘要

背景

青少年普遍的抑郁筛查通常侧重于识别当前痛苦和障碍的策略。然而,这些方案在依赖于正确估计未来抑郁风险的初级预防措施中也起着至关重要的作用。因此,本研究旨在确定预测青少年抑郁发作的最佳筛查方法。

方法

两项多波纵向研究(N=591,AgeM=11.74;N=348,AgeM=12.56)被用作无临床抑郁病史的青少年的“测试”和“验证”数据集。青少年及其照顾者在基线时完成了抑郁症状、逆境暴露(包括母亲抑郁)、社交/学业障碍、认知脆弱性(反刍思维、功能失调态度和消极认知风格)和情绪倾向(消极和积极情绪)的评估。随后,在接下来的 2 年内每 6 个月完成一次多来源诊断访谈。

结果

自我报告的反刍思维、社交/学业障碍和消极情绪在两个样本中均能最好地预测青少年首次抑郁发作。在控制了其他预测因素后,自我和父母报告的抑郁症状并不能一致地预测抑郁发作。在三个量表上得分较高的青少年与样本平均值相比,未来首次出现抑郁发作的可能性约为两倍。结果表明,可以根据亚阈值和阈值风险分数来估计一个人患抑郁症的可能性。

结论

大多数儿科抑郁筛查方案评估当前的抑郁症状表现。通过纳入反刍思维、消极情绪和障碍的算法,可以更好地进行前瞻性首次抑郁发作的筛查。

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