Arnatkeviciute Aurina, Fornito Alex, Tong Janette, Pang Ken, Fulcher Ben D, Bellgrove Mark A
The Turner Institute for Brain and Mental Health, School of Psychological Sciences, and Monash Biomedical Imaging, Monash University, Melbourne, Victoria, Australia.
Murdoch Children's Research Institute, Royal Children's Hospital, Department of Paediatrics, University of Melbourne, Parkville, Victoria, Australia.
JAMA Psychiatry. 2025 Feb 1;82(2):151-160. doi: 10.1001/jamapsychiatry.2024.3846.
Large-scale genome-wide association studies (GWAS) should ideally inform the development of pharmacological treatments, but whether GWAS-identified mechanisms of disease liability correspond to the pathophysiological processes targeted by current pharmacological treatments is unclear.
To investigate whether functional information from a range of open bioinformatics datasets can elucidate the relationship between GWAS-identified genetic variation and the genes targeted by current treatments for psychiatric disorders.
DESIGN, SETTING, AND PARTICIPANTS: Associations between GWAS-identified genetic variation and pharmacological treatment targets were investigated across 4 psychiatric disorders-attention-deficit/hyperactivity disorder, bipolar disorder, schizophrenia, and major depressive disorder. Using a candidate set of 2232 genes listed as targets for all approved treatments in the DrugBank database, each gene was independently assigned 2 scores for each disorder-one based on its involvement as a treatment target and the other based on the mapping between GWAS-implicated single-nucleotide variants (SNVs) and genes according to 1 of 4 bioinformatic data modalities: SNV position, gene distance on the protein-protein interaction (PPI) network, brain expression quantitative trail locus (eQTL), and gene expression patterns across the brain. Study data were analyzed from November 2023 to September 2024.
Gene scores for pharmacological treatments and GWAS-implicated genes were compared using a measure of weighted similarity applying a stringent null hypothesis-testing framework that quantified the specificity of the match by comparing identified associations for a particular disorder with a randomly selected set of treatments.
Incorporating information derived from functional bioinformatics data in the form of a PPI network revealed links for bipolar disorder (P permutation [P-perm] = 7 × 10-4; weighted similarity score, empirical [ρ-emp] = 0.1347; mean [SD] weighted similarity score, random [ρ-rand] = 0.0704 [0.0163]); however, the overall correspondence between treatment targets and GWAS-implicated genes in psychiatric disorders rarely exceeded null expectations. Exploratory analysis assessing the overlap between the GWAS-identified genetic architecture and treatment targets across disorders identified that most disorder pairs and mapping methods did not show a significant correspondence.
In this bioinformatic study, the relatively low degree of correspondence across modalities suggests that the genetic architecture driving the risk for psychiatric disorders may be distinct from the pathophysiological mechanisms currently used for targeting symptom manifestations through pharmacological treatments. Novel approaches incorporating insights derived from GWAS based on refined phenotypes including treatment response may assist in mapping disorder risk genes to pharmacological treatments in the long term.
大规模全基因组关联研究(GWAS)理想情况下应为药物治疗的开发提供信息,但GWAS确定的疾病易感性机制是否与当前药物治疗所针对的病理生理过程相对应尚不清楚。
研究一系列开放生物信息学数据集的功能信息是否能阐明GWAS确定的基因变异与当前精神疾病治疗所针对的基因之间的关系。
设计、设置和参与者:研究了4种精神疾病(注意力缺陷多动障碍、双相情感障碍、精神分裂症和重度抑郁症)中GWAS确定的基因变异与药物治疗靶点之间的关联。使用DrugBank数据库中列出的所有批准治疗的2232个基因的候选集,根据4种生物信息学数据模式之一(单核苷酸变异(SNV)位置、蛋白质-蛋白质相互作用(PPI)网络上的基因距离、脑表达定量性状基因座(eQTL)和全脑基因表达模式),为每种疾病的每个基因独立分配2个分数——一个基于其作为治疗靶点的参与情况,另一个基于GWAS相关单核苷酸变异(SNV)与基因之间的映射。研究数据于2023年11月至2024年9月进行分析。
使用加权相似性度量比较药物治疗的基因分数和GWAS相关基因,应用严格的零假设检验框架,通过将特定疾病的已识别关联与随机选择的一组治疗进行比较来量化匹配的特异性。
以PPI网络形式纳入功能生物信息学数据得出的信息揭示了双相情感障碍的联系(P置换[P-perm] = 7×10-4;加权相似性分数,经验值[ρ-emp] = 0.1347;平均[标准差]加权相似性分数,随机值[ρ-rand] = 0.0704[0.0163]);然而,精神疾病中治疗靶点与GWAS相关基因之间的总体对应关系很少超过零预期。评估跨疾病的GWAS确定的遗传结构与治疗靶点之间重叠的探索性分析表明,大多数疾病对和映射方法没有显示出显著的对应关系。
在这项生物信息学研究中,各模式之间相对较低的对应程度表明,导致精神疾病风险的遗传结构可能与目前通过药物治疗针对症状表现的病理生理机制不同。纳入基于包括治疗反应在内的精细表型的GWAS见解的新方法可能有助于长期将疾病风险基因映射到药物治疗中。