揭开摩洛哥大自然武器库的神秘面纱:天然化合物抗耐药性真菌感染的分子对接、密度泛函理论和分子动力学计算研究

Pharmaceuticals Pub Date : 2024-07-04 DOI:10.3390/ph17070886
I. Yamari, Oussama Abchir, H. Nour, Meriem Khedraoui, Bouchra Rossafi, A. Errougui, M. Talbi, Abdelouahid Samadi, M. E. Kouali, S. Chtita
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引用次数: 0

摘要

白色念珠菌和烟曲霉被认为是重要的真菌病原体,是各种人类感染的罪魁祸首。由于这些真菌中耐药菌株的迅速出现,需要找到并开发创新的抗真菌疗法。为了应对这一挑战,我们对 297 种天然化合物进行了全面筛选。利用计算对接技术,我们系统分析了每种化合物与白念珠菌(PDB ID:1EAG)和曲霉(PDB ID:3DJE)关键蛋白的结合亲和力。这项严格的硅学研究旨在揭示可能抑制这些真菌感染活性的化合物。随后还对排名靠前的化合物进行了 ADMET 分析,为了解其药代动力学特性和潜在的毒理学特征提供了宝贵的信息。为了进一步验证我们的研究结果,我们利用 DFT 计算和分子动力学模拟计算了分子反应性和稳定性,从而更深入地了解了排名靠前的化合物在生物环境中的稳定性和行为。我们的研究结果确定了一批天然化合物,根据我们的分析,这些化合物具有作为抗真菌候选化合物的显著潜力。通过进一步的实验验证,这些化合物可以为针对耐药性真菌病原体的新治疗策略铺平道路。
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Unveiling Moroccan Nature’s Arsenal: A Computational Molecular Docking, Density Functional Theory, and Molecular Dynamics Study of Natural Compounds against Drug-Resistant Fungal Infections
Candida albicans and Aspergillus fumigatus are recognized as significant fungal pathogens, responsible for various human infections. The rapid emergence of drug-resistant strains among these fungi requires the identification and development of innovative antifungal therapies. We undertook a comprehensive screening of 297 naturally occurring compounds to address this challenge. Using computational docking techniques, we systematically analyzed the binding affinity of each compound to key proteins from Candida albicans (PDB ID: 1EAG) and Aspergillus fumigatus (PDB ID: 3DJE). This rigorous in silico examination aimed to unveil compounds that could potentially inhibit the activity of these fungal infections. This was followed by an ADMET analysis of the top-ranked compound, providing valuable insights into the pharmacokinetic properties and potential toxicological profiles. To further validate our findings, the molecular reactivity and stability were computed using the DFT calculation and molecular dynamics simulation, providing a deeper understanding of the stability and behavior of the top-ranking compounds in a biological environment. The outcomes of our study identified a subset of natural compounds that, based on our analysis, demonstrate notable potential as antifungal candidates. With further experimental validation, these compounds could pave the way for new therapeutic strategies against drug-resistant fungal pathogens.
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