Identifying Key Genes and Approved Medications Associated with Major Depressive Disorder Using Network Analysis and Systems Biology.

Q2 Medicine
Yasin Parvizi, Seyed Mahdi Sadati, Pedram Porbaha, Shima Masumi, Saeid Mahdian, Seyed Alireza Vafaei, Saeid Afshar
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引用次数: 0

Abstract

Objective: Major depressive disorder (MDD) stands as one of the serious psychiatric conditions that detrimentally affect patients' quality of life and leads to a significant part of disability worldwide. Due to the limited understanding of the basic molecular mechanisms of depression and antidepressant medications, a clear understanding of the onset and development of MDD is unavailable. This study aims to figure out the pivotal genes and pathways implicated in the MDD development and identify medications that can potentially improve MDD treatment based on their relation with the key genes. Method : Symbols of human coding genes were retrieved from the HUGO Gene Nomenclature Committee database. These symbols were then queried for MDD-related associations using a Python script in PubMed. Subsequently, genes with two or more related articles to MDD were selected. A union of our search data and MDD-related genes in the DisGeNET database was found. The gene interaction network was generated and analyzed utilizing the STRING and Cytoscape, respectively. Finally, a drug-gene network was constructed and medications that can affect multiple genes were selected. Results: The union of our search data and DisGeNET data contained 1734 genes. Based on network analysis, TNF, IL1B, IL6, STAT1, and STAT3 were identified as the key genes in the MDD pathogenesis. Eleven drugs that affect more than one gene were detected through a drug-gene network. These medications include Acitretin, Adalimumab, Alteplase, Cisplatin, Digoxin, Etanercept, Infliximab, Insulin, Omeprazole, Pentoxifylline, and Rabeprazole. Conclusion: In summary, our findings identified five genes as key genes in MDD development, as well as medications related to key genes. This study provides a new vision of the pathogenesis and treatment of MDD. However, further experimental and clinical studies are necessary.

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Abstract Image

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利用网络分析和系统生物学鉴定与重度抑郁症相关的关键基因和已批准的药物。
目的:重度抑郁障碍(MDD)是严重影响患者生活质量的精神疾病之一,是世界范围内残疾的重要组成部分。由于对抑郁症的基本分子机制和抗抑郁药物的了解有限,对重度抑郁症的发病和发展还没有一个清晰的认识。本研究旨在找出与MDD发展相关的关键基因和途径,并根据其与关键基因的关系确定可能改善MDD治疗的药物。方法:从HUGO基因命名委员会数据库中检索人类编码基因的符号。然后使用PubMed中的Python脚本查询这些符号以查找与mdd相关的关联。随后,选择两个或更多与MDD相关的基因。我们的搜索数据与DisGeNET数据库中的mdd相关基因相结合。利用STRING和Cytoscape分别生成和分析了基因相互作用网络。最后,构建药物基因网络,筛选出可影响多个基因的药物。结果:我们的检索数据与DisGeNET数据联合包含1734个基因。基于网络分析,TNF、IL1B、IL6、STAT1、STAT3被确定为MDD发病的关键基因。通过药物基因网络检测到11种影响多个基因的药物。这些药物包括阿维a、阿达木单抗、阿替普酶、顺铂、地高辛、依那西普、英夫利昔单抗、胰岛素、奥美拉唑、己酮可可碱和雷贝拉唑。结论:综上所述,我们的研究结果确定了5个基因是MDD发展的关键基因,以及与关键基因相关的药物。本研究为重度抑郁症的发病机制和治疗提供了新的视角。然而,进一步的实验和临床研究是必要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Iranian Journal of Psychiatry
Iranian Journal of Psychiatry Medicine-Psychiatry and Mental Health
CiteScore
4.00
自引率
0.00%
发文量
42
审稿时长
4 weeks
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