King's College London, Social, Genetic & Developmental Psychiatry Centre, Institute of Psychiatry, Psychology & Neuroscience, London, United Kingdom.
Department of Psychiatry, Universidade Federal do Rio Grande do Sul, Porto Alegre, Brazil; Child & Adolescent Psychiatry Division, Hospital de Clínicas de Porto Alegre, Brazil.
Psychiatry Res. 2020 Dec;294:113511. doi: 10.1016/j.psychres.2020.113511. Epub 2020 Oct 16.
Depression commonly emerges in adolescence and is a major public health issue in low- and middle-income countries where 90% of the world's adolescents live. Thus efforts to prevent depression onset are crucial in countries like Nigeria, where two-thirds of the population are aged under 24. Therefore, we tested the ability of a prediction model developed in Brazil to predict future depression in a Nigerian adolescent sample. Data were obtained from school students aged 14-16 years in Lagos, who were assessed in 2016 and 2019 for depression using a self-completed version of the Mini International Neuropsychiatric Interview for Children and Adolescents. Only the 1,928 students free of depression at baseline were included. Penalized logistic regression was used to predict individualized risk of developing depression at follow-up for each adolescent based on the 7 matching baseline sociodemographic predictors from the Brazilian model. Discrimination between adolescents who did and did not develop depression was better than chance (area under the curve = 0.62 (bootstrap-corrected 95% CI: 0.58-0.66). However, the model was not well-calibrated even after adjustment of the intercept, indicating poorer overall performance compared to the original Brazilian cohort. Updating the model with context-specific factors may improve prediction of depression in this setting.
抑郁症在青少年中普遍出现,是中低收入国家的一个主要公共卫生问题,而全世界 90%的青少年都生活在这些国家。因此,在尼日利亚这样的国家,努力预防抑郁症的发生至关重要,因为这个国家有三分之二的人口年龄在 24 岁以下。因此,我们测试了在巴西开发的预测模型在预测尼日利亚青少年群体未来抑郁方面的能力。数据来自拉各斯的 14-16 岁在校学生,他们在 2016 年和 2019 年使用儿童和青少年迷你国际神经精神访谈的自我完成版本评估了抑郁情况。只有在基线时没有抑郁的 1928 名学生被纳入研究。基于巴西模型的 7 个匹配基线社会人口统计学预测因子,使用惩罚逻辑回归来预测每个青少年在随访时发生抑郁的个体化风险。与基线时患有抑郁症的青少年相比,未患有抑郁症的青少年的区分能力要好于偶然情况(曲线下面积为 0.62(bootstrap 校正的 95%CI:0.58-0.66))。然而,即使在调整了截距后,该模型也没有得到很好的校准,这表明与巴西原始队列相比,其整体性能较差。通过更新具有特定背景因素的模型,可能会提高在这种情况下预测抑郁症的效果。