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全基因组荟萃分析病例富集和社区队列中重度抑郁症的确定和症状结构。

Genome-wide meta-analysis of ascertainment and symptom structures of major depression in case-enriched and community cohorts.

机构信息

Division of Psychiatry, University of Edinburgh, Edinburgh, UK.

Mental Health and Neuroscience, QIMR Berghofer Medical Research Institute, Brisbane, QLD, Australia.

出版信息

Psychol Med. 2024 Sep;54(12):3459-3468. doi: 10.1017/S0033291724001880. Epub 2024 Sep 26.

Abstract

BACKGROUND

Diagnostic criteria for major depressive disorder allow for heterogeneous symptom profiles but genetic analysis of major depressive symptoms has the potential to identify clinical and etiological subtypes. There are several challenges to integrating symptom data from genetically informative cohorts, such as sample size differences between clinical and community cohorts and various patterns of missing data.

METHODS

We conducted genome-wide association studies of major depressive symptoms in three cohorts that were enriched for participants with a diagnosis of depression (Psychiatric Genomics Consortium, Australian Genetics of Depression Study, Generation Scotland) and three community cohorts who were not recruited on the basis of diagnosis (Avon Longitudinal Study of Parents and Children, Estonian Biobank, and UK Biobank). We fit a series of confirmatory factor models with factors that accounted for how symptom data was sampled and then compared alternative models with different symptom factors.

RESULTS

The best fitting model had a distinct factor for symptoms and an additional measurement factor that accounted for the skip-structure in community cohorts (use of Depression and Anhedonia as gating symptoms).

CONCLUSION

The results show the importance of assessing the directionality of symptoms (such as hypersomnia versus insomnia) and of accounting for study and measurement design when meta-analyzing genetic association data.

摘要

背景

重度抑郁症的诊断标准允许存在不同的症状表现,但对重度抑郁症状的遗传分析有可能识别出临床和病因亚型。将来自具有遗传信息的队列的症状数据整合在一起存在一些挑战,例如临床和社区队列之间的样本量差异以及各种缺失数据模式。

方法

我们在三个队列中对重度抑郁症状进行了全基因组关联研究,这些队列均针对已确诊抑郁症的参与者进行了富集(精神疾病基因组学联盟、澳大利亚抑郁症遗传学研究、苏格兰一代研究),还有三个社区队列是基于未诊断基础招募的(雅芳纵向父母与儿童研究、爱沙尼亚生物库和英国生物库)。我们拟合了一系列具有症状采样因素的验证性因子模型,然后比较了具有不同症状因素的替代模型。

结果

拟合效果最好的模型具有一个独特的症状因子和一个额外的测量因子,该因子解释了社区队列中的跳跃结构(使用抑郁和快感缺失作为门控症状)。

结论

研究结果表明,在对遗传关联数据进行荟萃分析时,评估症状的方向性(例如嗜睡与失眠)以及研究和测量设计的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6c92/11496230/e843e02bab9a/S0033291724001880_fig1.jpg

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