Rouby Nihal El, Owusu-Obeng Aniwaa, Preuss Michael, Lee Simon, Shi Mingjian, Lape Michael, Martin Lisa J, Namjou-Khales Bahram, Kottyan Leah C, Van Driest Sara L, Mosley Jonathan D, DelBello Melissa P
Division of Pharmacy Practice and Administrative Sciences, James L. Winkle College of Pharmacy, University of Cincinnati, Cincinnati, Ohio, USA.
St. Elizabeth HealthCare, Edgewood, Kentucky, USA.
Pharmacotherapy. 2025 Aug;45(8):476-485. doi: 10.1002/phar.70041. Epub 2025 Aug 5.
Second-generation antipsychotic (SGA) medications are frequently prescribed for mental health conditions; however, they are associated with an increased risk of metabolic syndrome (MetS). We aimed to identify genetic associations of SGA-associated MetS (SGA-MetS) using genome-wide approaches within the UK Biobank. We also set out to evaluate if genetically predicted obesity is associated with an increased risk of SGA-MetS.
We defined SGA-MetS based on the National Cholesterol Education Program (NCEP) Adult Treatment Panel III (ATP III) criteria using cross-sectional data from 1318 UK Biobank participants who reported being on an SGA medication. An SGA-MetS case was defined as meeting three or more of the five NCEP-ATP III criteria. We performed a genome-wide association study (GWAS) and gene-based analysis to identify significant variants and gene associations. We computed the polygenic risk score (PGS) for body mass index (BMI) using 2,100,302 variants validated for obesity and metabolic traits from imputed single-nucleotide polymorphism (SNP) data. We tested the association of PGS-BMI with SGA-MetS using logistic regression.
GWAS identified suggestive associations (p < 1 × 10) on chromosome 15. The variant rs12914956 in CHD2 was associated with increased risk of SGA (odds ratio (OR) = 1.73, 95% confidence interval (CI) = 1.4-2.4, p = 3.6 × 10). The gene-based analysis identified significant gene associations with RBFOX1 (p = 4.85 × 10), PTPRD (p = 7.6 × 10), CSMD1 (p = 2.2 × 10), and CHD2 (p = 1.3 × 10). The PGS-BMI (β = 0.23, p = 6.8 × 10), was associated with increased MetS in a model adjusted for age, sex, physical activity, alcohol consumption, antidepressant medications, schizophrenia diagnosis, and principal components of ancestry.
Using a gene-based analysis, we identified significant gene associations with SGA-MetS that have been previously associated with obesity and metabolic traits. The PGS-BMI was associated with MetS, suggesting that a genetic predisposition to a higher BMI may increase the risk of SGA-MetS. Future research should replicate the findings in a larger dataset with more diverse populations.
第二代抗精神病药物(SGA)常用于治疗精神疾病;然而,它们与代谢综合征(MetS)风险增加有关。我们旨在利用英国生物银行中的全基因组方法,确定与SGA相关的MetS(SGA-MetS)的基因关联。我们还着手评估基因预测的肥胖是否与SGA-MetS风险增加有关。
我们根据美国国家胆固醇教育计划(NCEP)成人治疗小组第三次报告(ATP III)标准,使用来自1318名报告正在服用SGA药物的英国生物银行参与者的横断面数据,定义了SGA-MetS。SGA-MetS病例定义为符合五项NCEP-ATP III标准中的三项或更多项。我们进行了全基因组关联研究(GWAS)和基于基因的分析,以确定显著的变异和基因关联。我们使用从估算的单核苷酸多态性(SNP)数据中验证的2100302个与肥胖和代谢特征相关的变异,计算了体重指数(BMI)的多基因风险评分(PGS)。我们使用逻辑回归测试了PGS-BMI与SGA-MetS的关联。
GWAS在15号染色体上发现了提示性关联(p < 1×10)。CHD2基因中的rs12914956变异与SGA风险增加相关(优势比(OR)= 1.73,95%置信区间(CI)= 1.4 - 2.4,p = 3.6×10)。基于基因的分析确定了与RBFOX1(p = 4.85×10)、PTPRD(p = 7.6×10)、CSMD1(p = 2.2×10)和CHD2(p = 1.3×10)的显著基因关联。在根据年龄、性别、身体活动、饮酒、抗抑郁药物、精神分裂症诊断和祖先主要成分进行调整的模型中,PGS-BMI(β = 0.23,p = 6.8×10)与MetS增加相关。
通过基于基因的分析,我们确定了与SGA-MetS的显著基因关联,这些关联先前与肥胖和代谢特征有关。PGS-BMI与MetS相关,表明较高BMI的遗传易感性可能增加SGA-MetS的风险。未来的研究应在更大的数据集和更多样化的人群中重复这些发现。