Identification and Analysis of Hub Genes and Biological Pathways Involved in Alzheimer’s Disease (AD) Using Transcriptomics Dataset

Humaira Amin, Asghar Shabbir, Khuram Shahzad
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Abstract

Alzheimer’s disease (AD) is an irreversible and progressive neurodegenerative disorder. The brain mechanisms involved in this disease remain largely unknown. Hence, this study used the integrated bioinformatics approach to analyze a high throughput sequencing dataset (GSE162873) in order to identify the potential biomarkers involved in the pathophysiology of this disease. DESeq2 package was used for the identification of differentially expressed genes (DEGs) from both healthy and diseased patients. DAVID, a web-based bioinformatics resource, was used to perform functional enrichment analysis. StringApp plugin in Cytoscape was utilized to construct the protein-protein interaction (PPI) networks, whereas hub genes were identified through cytoHubba. MCODE was used to perform module analysis, ClueGO to evaluate the KEGG pathways enriched in modules, and miRNet platform for the interaction analysis of miRNAs and hub genes. Drug-genes interaction analysis was performed using DGIdb resource to find out the related drugs. A total of 652 DEGs were screened which were significantly enriched in GO terms. KEGG pathways analysis showed that PI3K-Akt signaling, hippo signaling, MAPK signaling, TGF-beta signaling, and sphingolipid signaling were significantly enriched pathways. A total of 12 hub genes were found to be significantly interacting with miR-603, miR-10b-5p, miR-124-3p, and miR-1-3p, and some FDA approved drugs. The current study provided an insight into the molecular mechanisms of AD and identified some potential biomarker genes, their pathways, miRNAs, and drugs which might be useful for diagnostic and therapeutic purposes.
利用转录组学数据集识别和分析阿尔茨海默病(AD)相关中枢基因和生物学途径
阿尔茨海默病(AD)是一种不可逆的进行性神经退行性疾病。与这种疾病有关的大脑机制在很大程度上仍然未知。因此,本研究采用综合生物信息学方法分析高通量测序数据集(GSE162873),以确定参与该疾病病理生理的潜在生物标志物。DESeq2包用于鉴定来自健康和患病患者的差异表达基因(DEGs)。使用基于web的生物信息学资源DAVID进行功能富集分析。利用Cytoscape中的StringApp插件构建蛋白-蛋白相互作用(PPI)网络,而通过cytoHubba鉴定枢纽基因。使用MCODE进行模块分析,ClueGO评估模块中富集的KEGG通路,miRNet平台进行mirna与枢纽基因的相互作用分析。利用DGIdb资源进行药物-基因互作分析,找出相关药物。共筛选到氧化石墨烯含量显著富集的菌株652个。KEGG通路分析显示,PI3K-Akt信号通路、hippo信号通路、MAPK信号通路、tgf - β信号通路和鞘脂信号通路显著富集。共有12个枢纽基因被发现与miR-603、miR-10b-5p、miR-124-3p和miR-1-3p以及一些FDA批准的药物有显著的相互作用。目前的研究提供了对AD的分子机制的深入了解,并确定了一些潜在的生物标志物基因、它们的途径、mirna和药物,这些基因可能有助于诊断和治疗目的。
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