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一种用于鉴定人类病原体志贺氏痢疾杆菌药物靶点的综合计算方法。

An integrated in-silico approach for drug target identification in human pathogen Shigella dysenteriae.

机构信息

Department of Biological Sciences, National University of Medical Sciences, Islamabad, Pakistan.

Department of Biomedical Sciences, University of North Dakota, School of Medicine and Health Sciences, Grand Forks, ND, United States of America.

出版信息

PLoS One. 2024 May 16;19(5):e0303048. doi: 10.1371/journal.pone.0303048. eCollection 2024.

Abstract

Shigella dysenteriae, is a Gram-negative bacterium that emerged as the second most significant cause of bacillary dysentery. Antibiotic treatment is vital in lowering Shigella infection rates, yet the growing global resistance to broad-spectrum antibiotics poses a significant challenge. The persistent multidrug resistance of S. dysenteriae complicates its management and control. Hence, there is an urgent requirement to discover novel therapeutic targets and potent medications to prevent and treat this disease. Therefore, the integration of bioinformatics methods such as subtractive and comparative analysis provides a pathway to compute the pan-genome of S. dysenteriae. In our study, we analysed a dataset comprising 27 whole genomes. The S. dysenteriae strain SD197 was used as the reference for determining the core genome. Initially, our focus was directed towards the identification of the proteome of the core genome. Moreover, several filters were applied to the core genome, including assessments for non-host homology, protein essentiality, and virulence, in order to prioritize potential drug targets. Among these targets were Integration host factor subunit alpha and Tyrosine recombinase XerC. Furthermore, four drug-like compounds showing potential inhibitory effects against both target proteins were identified. Subsequently, molecular docking analysis was conducted involving these targets and the compounds. This initial study provides the list of novel targets against S. dysenteriae. Conclusively, future in vitro investigations could validate our in-silico findings and uncover potential therapeutic drugs for combating bacillary dysentery infection.

摘要

志贺氏菌是一种革兰氏阴性细菌,是细菌性痢疾的第二大主要病原体。抗生素治疗对于降低志贺氏菌感染率至关重要,但广谱抗生素的全球耐药性日益增加带来了重大挑战。志贺氏菌持续的多药耐药性使其管理和控制变得复杂。因此,迫切需要发现新的治疗靶点和有效的药物来预防和治疗这种疾病。因此,整合生物信息学方法,如消减和比较分析,为计算志贺氏菌的泛基因组提供了一种途径。在我们的研究中,我们分析了包含 27 个全基因组的数据集。志贺氏菌菌株 SD197 被用作确定核心基因组的参考。最初,我们的重点是确定核心基因组的蛋白质组。此外,对核心基因组应用了几个过滤器,包括对非宿主同源性、蛋白质必需性和毒力的评估,以确定潜在的药物靶点。这些靶点包括整合宿主因子亚基α和酪氨酸重组酶 XerC。此外,还鉴定了四种可能对这两个靶蛋白都具有抑制作用的类药化合物。随后,对这些靶标和化合物进行了分子对接分析。这项初步研究提供了针对志贺氏菌的新型靶标的清单。总之,未来的体外研究可以验证我们的计算机发现,并揭示对抗细菌性痢疾感染的潜在治疗药物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dcf5/11098424/9a0a36d1465d/pone.0303048.g001.jpg

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