Polygene by environment interactions predicting depressive outcomes.

IF 1.6 3区 医学 Q3 GENETICS & HEREDITY
Alessandra R Grillo
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引用次数: 0

Abstract

Depression is a major public health problem with a continued need to uncover its etiology. Current models of depression contend that gene-by-environment (G × E) interactions influence depression risk, and further, that depression is polygenic. Thus, recent models have emphasized two polygenic approaches: a hypothesis-driven multilocus genetic profile score (MGPS; "MGPS × E") and a polygenic risk score (PRS; "PRS × E") derived from genome-wide association studies (GWAS). This review for the first time synthesizes current knowledge on polygene by environment "P × E" interaction research predicting primarily depression-related outcomes, and in brief, neurobiological outcomes. The "environment" of focus in this project is stressful life events. It further discusses findings in the context of differential susceptibility and diathesis-stress theories-two major theories guiding G × E work. This synthesis indicates that, within the MGPS literature, polygenic scores based on the serotonin system, the HPA axis, or across multiple systems, interact with environmental stress exposure to predict outcomes at multiple levels of analyses and most consistently align with differential susceptibility theory. Depressive outcomes are the most studied, but neuroendocrine, and neuroimaging findings are observed as well. By contrast, vast methodological differences between GWAS-based PRS studies contribute to mixed findings that yield inconclusive results.

多基因与环境的相互作用可预测抑郁的结果。
抑郁症是一个重大的公共健康问题,需要不断揭示其病因。目前的抑郁症模型认为,基因与环境(G × E)之间的相互作用会影响抑郁症风险,而且抑郁症是多基因遗传的。因此,最近的模型强调了两种多基因方法:一种是由假设驱动的多焦点遗传特征评分(MGPS;"MGPS × E"),另一种是由全基因组关联研究(GWAS)得出的多基因风险评分(PRS;"PRS × E")。本综述首次综述了目前关于多基因与环境 "P × E "相互作用研究的知识,该研究主要预测与抑郁症相关的结果,简而言之,预测神经生物学结果。本项目关注的 "环境 "是生活压力事件。它进一步讨论了在差异易感性和病因-压力理论(指导 G × E 工作的两个主要理论)背景下的研究结果。本综述表明,在 MGPS 文献中,基于血清素系统、HPA 轴或跨多个系统的多基因评分与环境压力暴露相互作用,在多个分析层次上预测结果,并且与差异易感性理论最为一致。对抑郁结果的研究最多,但也观察到神经内分泌和神经影像学的研究结果。相比之下,基于 GWAS 的 PRS 研究在方法上存在巨大差异,导致研究结果参差不齐,无法得出结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.90
自引率
7.10%
发文量
40
审稿时长
4-8 weeks
期刊介绍: Neuropsychiatric Genetics, Part B of the American Journal of Medical Genetics (AJMG) , provides a forum for experimental and clinical investigations of the genetic mechanisms underlying neurologic and psychiatric disorders. It is a resource for novel genetics studies of the heritable nature of psychiatric and other nervous system disorders, characterized at the molecular, cellular or behavior levels. Neuropsychiatric Genetics publishes eight times per year.
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