通过加权基因共表达网络分析探索共表达模块与性状的相关性:伤口愈合研究中的一种可行方法

Q2 Medicine Medical Journal of the Islamic Republic of Iran Pub Date : 2024-07-17 eCollection Date: 2024-01-01 DOI:10.47176/mjiri.38.82
Mansoureh Farhangniya, Ali Samadikuchaksaraei, Farzaneh Mohamadi Farsani
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引用次数: 0

摘要

背景:皮肤是人体最大的器官,具有多种重要的保护和调节功能。然而,伤口的发展会破坏自然愈合过程,导致慢性伤口、持续感染和血管生成受损等问题。这些问题不仅会影响个人健康,还会给医疗保健系统带来巨大的经济负担。尽管伤口护理研究取得了进展,但慢性伤口的管理仍然是一个亟待解决的问题,持续感染和血管生成受损等障碍阻碍了伤口的愈合过程。了解伤口愈合所涉及的复杂遗传途径对于制定有效的治疗策略和减少慢性伤口对社会经济的影响至关重要。加权基因共表达网络分析(WGCNA)为揭示与伤口愈合不同阶段相关的关键基因和模块提供了一种很有前景的方法,为采取有针对性的干预措施以加强组织修复和促进伤口有效愈合提供了有价值的见解:数据收集包括从基因表达总库(Gene Expression Omnibus)网站检索微阵列基因表达数据集,并根据纳入和排除标准筛选出 65 个系列。使用鲁棒多阵列平均法对原始数据进行预处理,以进行背景校正、归一化和基因表达计算。加权基因共表达网络分析用于识别与伤口愈合过程相关的基因之间的共表达模式。其中包括网络构建、拓扑分析、模块识别以及与临床特征的关联等步骤。功能分析包括富集分析,以及利用 GeneMANIA 数据库通过基因-基因功能相互作用网络分析确定枢纽基因:结果:使用 WGCNA 进行的分析表明,伤口愈合与黑色、棕色和浅绿色模块之间存在显著相关性。我们进一步研究了这些模块与伤口愈合性状的相关性,并对其进行了功能富集分析。共有 16 个基因被挑选出来,作为对伤口愈合至关重要的潜在枢纽基因。然后对这些枢纽基因进行了仔细研究,根据 KEGG 富集数据库在模块网络中发现了基因-基因功能相互作用网络。MAPK、表皮生长因子受体(EGFR)和ErbB信号通路等值得注意的通路以及自噬和有丝分裂等基本细胞过程成为最显著的重要通路:我们在九个微阵列数据集中发现了与伤口愈合相关的共识模块。结论:我们在九个微阵列数据集中发现了与伤口愈合相关的共识模块,其中在棕色和黑色模块中发现了 16 个枢纽基因。KEGG富集分析确定了这些模块中的共表达基因,并强调了与伤口愈合特征发展最密切相关的通路,包括自噬和有丝分裂。本研究确定的中心基因是未来研究工作的潜在候选基因。这些发现为进一步探索这些共表达模块对伤口愈合特征的影响奠定了基础。
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Exploring Co-expression Modules-Traits Correlation through Weighted Gene Co-expression Network Analysis: A Promising Approach in Wound Healing Research.

Background: The skin is the biggest organ in the body and has several important functions in protection and regulation. However, wound development can disrupt the natural healing process, leading to challenges such as chronic wounds, persistent infections, and impaired angiogenesis. These issues not only affect individuals' well-being but also pose significant economic burdens on healthcare systems. Despite advancements in wound care research, managing chronic wounds remains a pressing concern, with obstacles such as persistent infection and impaired angiogenesis hindering the healing process. Understanding the complex genetic pathways involved in wound healing is crucial for developing effective therapeutic strategies and reducing the socio-economic impact of chronic wounds. Weighted Gene Co-Expression Network Analysis (WGCNA) offers a promising approach to uncovering key genes and modules associated with different stages of wound healing, providing valuable insights for targeted interventions to enhance tissue repair and promote efficient wound healing.

Methods: Data collection involved retrieving microarray gene expression datasets from the Gene Expression Omnibus website, with 65 series selected according to inclusion and exclusion criteria. Preprocessing of raw data was performed using the Robust MultiArray Averaging approach for background correction, normalization, and gene expression calculation. Weighted Gene Co-Expression Network Analysis was employed to identify co-expression patterns among genes associated with wound healing processes. This involved steps such as network construction, topological analysis, module identification, and association with clinical traits. Functional analysis included enrichment analysis and identification of hub genes through gene-gene functional interaction network analysis using the GeneMANIA database.

Results: The analysis using WGCNA indicated significant correlations between wound healing and the black, brown, and light green modules. These modules were further examined for their relevance to wound healing traits and subjected to functional enrichment analysis. A total of 16 genes were singled out as potential hub genes critical for wound healing. These hub genes were then scrutinized, revealing a gene-gene functional interaction network within the module network based on the KEGG enrichment database. Noteworthy pathways such as MAPK, EGFR, and ErbB signaling pathways, as well as essential cellular processes including autophagy and mitophagy, emerged as the most notable significant pathways.

Conclusion: We identified consensus modules relating to wound healing across nine microarray datasets. Among these, 16 hub genes were uncovered within the brown and black modules. KEGG enrichment analysis identified co-expression genes within these modules and highlighted pathways most closely associated with the development of wound healing traits, including autophagy and mitophagy. The hub genes identified in this study represent potential candidates for future research endeavors. These findings serve as a stepping stone toward further exploration of the implications of these co-expressed modules on wound healing traits.

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发文量
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审稿时长
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