Luo Haoran, Fan Shaoheng, Liu Hongwei, Li Wei, Fan Zhoujie, Zhu Xuancheng, Zhang Chen Jason, Liang Hong, Cong Shan, Yao Xiaohui
Department of Computing, School of Hotel and Tourism Management, Hong Kong Polytechnic University, Hong Kong, China.
College of Intelligent Systems Science and Engineering, Harbin Engineering University, Harbin 150001, China.
Int J Mol Sci. 2025 Jun 24;26(13):6060. doi: 10.3390/ijms26136060.
Network-based GWAS (NetWAS) has advanced brain imaging research by identifying genetic modules associated with brain alterations. However, how imaging risk genes exert functions in brain diseases, particularly their mediation through imaging quantitative traits (iQTs), remains underexplored. We propose a module-level polygenic risk score (MPRS)-based NetWAS framework to uncover genetic modules associated with Alzheimer's disease (AD) through the mediation of an iQT, using amygdala density as a case study. Our framework integrates genotype data, brain imaging phenotypes, clinical diagnosis of AD, and protein-protein interaction (PPI) networks to identify AD-relevant modules (ADMs) influenced by iQT-associated genetic variants. Specifically, we conducted a genome-wide association study (GWAS) of amygdala density (N=1515) to identify variants associated with iQT. These variants were mapped onto a PPI network and network propagation was performed to prompt amygdala modules. The meta-GWAS of AD (N1=63,926; N2=455,267) was used to calculate MPRS to further identify AD-relevant modules (ADMs). Four modules that showed significant differences in MPRS between AD and controls were identified as ADM. Post-hoc analyses revealed that these ADMs demonstrated strong modularity, showed increased sensitivity to early stages of AD, and significantly mediated the link between ADMs and AD progression through the amygdala. Furthermore, these modules exhibited high tissue specificity within the amygdala and were enriched in AD-related biological pathways. Our MPRS-based framework bridges genetics, intermediate traits, and clinical outcomes and can be adapted for broader biomedical applications.
基于网络的全基因组关联研究(NetWAS)通过识别与大脑改变相关的基因模块,推动了脑成像研究。然而,成像风险基因在脑部疾病中如何发挥作用,特别是它们如何通过成像定量性状(iQT)进行介导,仍未得到充分探索。我们提出了一个基于模块水平多基因风险评分(MPRS)的NetWAS框架,以杏仁核密度为例,通过iQT的介导来揭示与阿尔茨海默病(AD)相关的基因模块。我们的框架整合了基因型数据、脑成像表型、AD的临床诊断以及蛋白质-蛋白质相互作用(PPI)网络,以识别受iQT相关基因变异影响的AD相关模块(ADM)。具体而言,我们对杏仁核密度进行了全基因组关联研究(GWAS,N = 1515),以识别与iQT相关的变异。这些变异被映射到一个PPI网络上,并进行网络传播以促使形成杏仁核模块。利用AD的元GWAS(N1 = 63,926;N2 = 455,267)来计算MPRS,以进一步识别AD相关模块(ADM)。在AD组和对照组之间,MPRS显示出显著差异的四个模块被确定为ADM。事后分析表明,这些ADM表现出很强的模块性,对AD早期阶段的敏感性增加,并通过杏仁核显著介导了ADM与AD进展之间的联系。此外,这些模块在杏仁核内表现出高度的组织特异性,并富集于AD相关的生物学途径。我们基于MPRS的框架架起了遗传学、中间性状和临床结果之间的桥梁,可适用于更广泛的生物医学应用。