Uncovering physical interactions among human and Mycobacterium tuberculosis proteins

Q3 Biochemistry, Genetics and Molecular Biology
Dhammapal Bharne, Bhagyashri Tawar, V. Vindal
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引用次数: 2

Abstract

Background: Pathogens usually evade and manipulate host immune pathways through host-pathogen protein interactions. Uncovering these interactions is crucial for determining the mechanisms underlying pathogen infection and the defense system. The growing prevalence of tuberculosis (TB) infection in the world necessitated advances in TB research. With the rising information from several divisions of biosciences, computational approaches are promising to analyze and interpret the data at the system level. Methods: In the present study, in silico two-hybrid systems is employed on model organisms to predict physical interactions among proteins of Human and Mycobacterium tuberculosis (Mtb). Consistent protein interactions are identified by the Interlog method. Co-expression analysis and functional annotations are performed to infer significant Human and Mtb protein physical interactions (HMIs). Results: The interactions identified in this study support the current TB research through an improved understanding of the pathogen infection and survival mechanism. A network of HMIs highlighted dnaK as the most highly interacting protein. Further, dnaK, eno, tuf, and gap proteins are found to trigger toll-like receptor signaling pathways and initiate pathogenesis. Conclusion: The interactions proteins identified in this study may incline the researchers to explore for novel therapeutic intervention strategies.
揭示人类和结核分枝杆菌蛋白之间的物理相互作用
背景:病原体通常通过宿主-病原体蛋白相互作用逃避和操纵宿主免疫途径。揭示这些相互作用对于确定病原体感染和防御系统的潜在机制至关重要。世界上结核病(TB)感染的日益流行要求在结核病研究方面取得进展。随着来自生物科学多个部门的信息不断增加,计算方法有望在系统级别分析和解释数据。方法:在本研究中,在模式生物上采用计算机双杂交系统来预测人与结核分枝杆菌(Mtb)蛋白之间的物理相互作用。一致的蛋白质相互作用鉴定的Interlog方法。共表达分析和功能注释进行推断显著人与结核分枝杆菌蛋白物理相互作用(hmi)。结果:本研究发现的相互作用通过提高对病原体感染和生存机制的理解,为当前的结核病研究提供了支持。hmi网络突出显示dnaK是最高度相互作用的蛋白质。此外,发现dnaK、eno、tuf和gap蛋白可触发toll样受体信号通路并启动发病机制。结论:本研究发现的相互作用蛋白可能促使研究人员探索新的治疗干预策略。
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
Journal of Natural Science, Biology, and Medicine
Journal of Natural Science, Biology, and Medicine Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
CiteScore
2.40
自引率
0.00%
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