Radak Mehran, Fallahi Hossein
Department of Biology, School of Sciences, Razi University, Baq-E-Abrisham, Kermanshah, Islamic Republic of Iran Postal Code: 6714967346.
In Vitro Model. 2023 Dec 7;2(6):307-315. doi: 10.1007/s44164-023-00063-y. eCollection 2023 Dec.
Ischemic stroke (IS) is a complex neurological disorder characterized by the sudden disruption of blood flow to the brain, leading to severe and often irreversible damage. Despite advances in stroke management, the underlying molecular mechanisms and key factors involved in the development and progression of IS remain elusive. In recent years, the integration of high-throughput data analysis techniques has emerged as a powerful approach to unraveling the molecular intricacies of complex diseases. In this study, we comprehensively analyzed gene expression, protein-protein interactions (PPI), and gene regulatory networks to identify IS-associated molecular factors. We utilized publicly available datasets and employed bioinformatics tools to analyze the data. Our analysis revealed many differentially expressed genes (DEGs) in IS, with a predominant down-regulation of genes. Gene ontology (GO) analysis highlighted the involvement of various biological processes, including transcriptional regulation, cell cycle, immune system processes, and cell differentiation. These findings underscore the complexity of stroke pathology, involving dysregulated gene expression and disrupted cellular processes. Constructing PPI networks enabled us to identify specific subnetworks associated with critical biological processes relevant to stroke, such as nucleosome assembly, protein translation, glycosylation, protein folding, and mRNA splicing. These subnetworks provide insights into the dysregulated molecular mechanisms contributing to stroke progression. Furthermore, we focused on identifying differentially expressed transcription factors (DE-TFs) within the gene regulatory network. Several up-regulated DE-TFs, including E2F1, MYB, GFI1B, and NUCKS1, were identified, suggesting their potential involvement in the dysregulation of gene expression in IS.
缺血性中风(IS)是一种复杂的神经系统疾病,其特征是大脑血液供应突然中断,导致严重且往往不可逆的损伤。尽管中风治疗取得了进展,但IS发生和发展过程中涉及的潜在分子机制和关键因素仍不清楚。近年来,高通量数据分析技术的整合已成为揭示复杂疾病分子复杂性的有力方法。在本研究中,我们全面分析了基因表达、蛋白质-蛋白质相互作用(PPI)和基因调控网络,以确定与IS相关的分子因素。我们利用公开可用的数据集并使用生物信息学工具来分析数据。我们的分析揭示了IS中许多差异表达基因(DEG),其中基因主要下调。基因本体(GO)分析突出了各种生物过程的参与,包括转录调控、细胞周期、免疫系统过程和细胞分化。这些发现强调了中风病理学的复杂性,涉及基因表达失调和细胞过程紊乱。构建PPI网络使我们能够识别与中风相关的关键生物过程相关的特定子网,如核小体组装、蛋白质翻译、糖基化、蛋白质折叠和mRNA剪接。这些子网为导致中风进展的失调分子机制提供了见解。此外,我们专注于在基因调控网络中识别差异表达的转录因子(DE-TF)。确定了几个上调的DE-TF,包括E2F1、MYB、GFI1B和NUCKS1,表明它们可能参与了IS中基因表达的失调。