Chen Ying, Bajpai Akhilesh K, Li Nan, Xiang Jiahui, Wang Angelina, Gu Qingqing, Ruan Junpu, Zhang Ran, Chen Gang, Lu Lu
Department of Histology and Embryology, Medical College, Nantong University, Nantong, Jiangsu, China.
Department of Genetics, Genomics and Informatics, University of Tennessee Health Science Center, Memphis, Tennessee, USA.
CNS Neurosci Ther. 2025 Feb;31(2):e70255. doi: 10.1111/cns.70255.
Chronic pain is an impeding condition that affects day-to-day life and poses a substantial economic burden, surpassing many other health conditions. This study employs a cross-species integrated approach to uncover novel pain mediators/regulators.
We used weighted gene coexpression network analysis to identify pain-enriched gene module. Functional analysis and protein-protein interaction (PPI) network analysis of the module genes were conducted. RNA sequencing compared pain model and control mice. PheWAS was performed to link genes to pain-related GWAS traits. Finally, candidates were prioritized based on node degree, differential expression, GWAS associations, and phenotype correlations.
A gene module significantly over-enriched with the pain reference set was identified (referred to as "pain module"). Analysis revealed 141 pain module genes interacting with 46 pain reference genes in the PPI network, which included 88 differentially expressed genes. PheWAS analysis linked 53 of these genes to pain-related GWAS traits. Expression correlation analysis identified Vdac1, Add2, Syt2, and Syt4 as significantly correlated with pain phenotypes across eight brain regions. NCAM1, VAMP2, SYT2, ADD2, and KCND3 were identified as top pain response/regulator genes.
The identified genes and molecular mechanisms may enhance understanding of pain pathways and contribute to better drug target identification.
慢性疼痛是一种妨碍日常生活并带来巨大经济负担的疾病,其负担超过了许多其他健康状况。本研究采用跨物种综合方法来发现新的疼痛介质/调节因子。
我们使用加权基因共表达网络分析来识别富含疼痛相关基因的模块。对模块基因进行了功能分析和蛋白质-蛋白质相互作用(PPI)网络分析。通过RNA测序比较疼痛模型小鼠和对照小鼠。进行全基因组关联研究(PheWAS)以将基因与疼痛相关的全基因组关联研究(GWAS)性状联系起来。最后,根据节点度、差异表达、GWAS关联和表型相关性对候选基因进行优先级排序。
鉴定出一个与疼痛参考集显著过度富集的基因模块(称为“疼痛模块”)。分析显示,在PPI网络中有141个疼痛模块基因与46个疼痛参考基因相互作用,其中包括88个差异表达基因。PheWAS分析将其中53个基因与疼痛相关的GWAS性状联系起来。表达相关性分析确定Vdac1、Add2、Syt2和Syt4与八个脑区的疼痛表型显著相关。NCAM1、VAMP2、SYT2、ADD2和KCND3被确定为顶级疼痛反应/调节基因。
所鉴定的基因和分子机制可能增进对疼痛通路的理解,并有助于更好地识别药物靶点。