Institute of Biochemistry and Genetics-Subdivision of the Ufa Federal Research Centre of the Russian Academy of Sciences, 450054 Ufa, Russia.
Laboratory of Neurocognitive Genomics, Department of Genetics and Fundamental Medicine, Ufa University of Science and Technology, 450076 Ufa, Russia.
Genes (Basel). 2023 Jun 27;14(7):1355. doi: 10.3390/genes14071355.
The risk of depression could be evaluated through its multifactorial nature using the polygenic score (PGS) approach. Assuming a "clinical continuum" hypothesis of mental diseases, a preliminary assessment of individuals with elevated risk for developing depression in a non-clinical group is of high relevance. In turn, epidemiological studies suggest including social/lifestyle factors together with PGS to address the "missing heritability" problem. We designed regression models, which included PGS using 27 SNPs and social/lifestyle factors to explain individual differences in depression levels in high-education students from the Volga-Ural region (VUR) of Eurasia. Since issues related to population stratification in PGS scores may lead to imprecise variant effect estimates, we aimed to examine a sensitivity of PGS calculated on summary statistics of depression and neuroticism GWAS from Western Europeans to assess individual proneness to depression levels in the examined sample of Eastern Europeans. A depression score was assessed using the revised version of the Beck Depression Inventory (BDI) in 1065 young adults (age 18-25 years, 79% women, Eastern European ancestry). The models based on weighted PGS demonstrated higher sensitivity to evaluate depression level in the full dataset, explaining up to 2.4% of the variance ( = 3.42 × 10); the addition of social parameters enhanced the strength of the model (adjusted r = 15%, < 2.2 × 10). A higher effect was observed in models based on weighted PGS in the women group, explaining up to 3.9% ( = 6.03 × 10) of variance in depression level assuming a combined SNPs effect and 17% ( < 2.2 × 10)-with the addition of social factors in the model. We failed to estimate BDI-measured depression based on summary statistics from Western Europeans GWAS of clinical depression. Although regression models based on PGS from neuroticism (depression-related trait) GWAS in Europeans were associated with a depression level in our sample (adjusted r = 0.43%, = 0.019-for unweighted model), the effect was mainly attributed to the inclusion of social/lifestyle factors as predictors in these models (adjusted r = 15%, < 2.2 × 10-for unweighted model). In conclusion, constructed PGS models contribute to a proportion of interindividual variability in BDI-measured depression in high-education students, especially women, from the VUR of Eurasia. External factors, including the specificity of rearing in childhood, used as predictors, improve the predictive ability of these models. Implementation of ethnicity-specific effect estimates in such modeling is important for individual risk assessment.
通过多因素遗传评分 (PGS) 方法,可以评估抑郁的风险。假设精神疾病存在“临床连续体”假说,那么对非临床人群中可能出现抑郁的个体进行风险评估就具有重要意义。反过来,流行病学研究表明,要解决“遗传缺失”问题,需要将社会/生活方式因素与 PGS 结合起来。我们设计了回归模型,这些模型使用 27 个 SNP 和社会/生活方式因素来解释欧亚大陆伏尔加-乌拉尔地区(VUR)高学历学生的抑郁水平个体差异。由于与 PGS 评分相关的人口分层问题可能导致对变体效应估计不准确,因此我们旨在通过计算基于西方欧洲人抑郁和神经质 GWAS 汇总统计数据的 PGS 来评估个体易感性,以评估在被检查的东欧样本中个体的抑郁水平。使用修订后的贝克抑郁量表(BDI)对 1065 名年轻成年人(18-25 岁,79%为女性,东欧血统)的抑郁程度进行了评估。基于加权 PGS 的模型在整个数据集评估抑郁水平的敏感性更高,解释了高达 2.4%的方差( = 3.42 × 10);添加社会参数增强了模型的强度(调整后的 r = 15%, < 2.2 × 10)。在女性组中,基于加权 PGS 的模型观察到更高的效果,解释了高达 3.9%( = 6.03 × 10)的抑郁水平方差,假设综合 SNP 效应和 17%( < 2.2 × 10)-在模型中添加社会因素。我们无法根据来自西方欧洲人的临床抑郁症 GWAS 的汇总统计数据来估计 BDI 测量的抑郁。尽管基于欧洲神经质(与抑郁相关的特征)GWAS 的 PGS 构建的回归模型与我们样本中的抑郁水平相关(调整后的 r = 0.43%, = 0.019-未加权模型),但该效应主要归因于在这些模型中纳入社会/生活方式因素作为预测因子(调整后的 r = 15%, < 2.2 × 10-未加权模型)。总之,构建的 PGS 模型有助于解释欧亚大陆伏尔加-乌拉尔地区高学历学生 BDI 测量的抑郁中个体间变异性的一部分,尤其是女性。外部因素,包括童年时期养育的特异性,作为预测因子,提高了这些模型的预测能力。在这种建模中实施特定种族的效应估计对于个体风险评估很重要。