Fang Yanpeng, Fan Duoyang, Feng Bin, Zhu Yingli, Xie Ruyan, Tan Xiaorong, Liu Qianhui, Dong Jie, Zeng Wenbin
Xiangya School of Pharmaceutical Sciences, Central South University, Changsha 410083, PR China.
Hunan Key Laboratory of Diagnostic and Therapeutic Drug Research for Chronic Diseases, Changsha 410078, PR China.
Bioact Mater. 2025 Apr 28;50:510-524. doi: 10.1016/j.bioactmat.2025.04.016. eCollection 2025 Aug.
Intracellular bacterial infections pose a significant challenge to current therapeutic strategies due to the limited penetration of antibiotics through host cell membranes. This study presents a novel computational framework for efficiently screening candidate peptides against these infections. The proposed strategy comprehensively evaluates the essential properties for the clinical application of candidate peptides, including antimicrobial activity, permeation efficiency, and biocompatibility, while also taking into account the speed and reliability of the screening process. A combination of multiple AI-based activity prediction models allows for a thorough assessment of sequences in the cell-penetrating peptides (CPPs) database and quickly identifies candidate peptides with target properties. On this basis, the CPP microscopic dynamics research system was constructed. Exploration of the mechanism of action at the atomic level provides strong support for the discovery of promising candidate peptides. Promising candidates are subsequently validated through and experiments. Finally, Crot-1 was rapidly identified from the CPPsite 2.0 database. effectively eradicated intracellular MRSA, demonstrating significantly greater efficacy than vancomycin. Moreover, it exhibited no apparent cytotoxicity to host cells, highlighting its potential for clinical application. This work offers a promising new avenue for developing novel antimicrobial materials to combat intracellular bacterial infections.
由于抗生素穿透宿主细胞膜的能力有限,细胞内细菌感染对当前的治疗策略构成了重大挑战。本研究提出了一种新型计算框架,用于高效筛选针对这些感染的候选肽。所提出的策略全面评估了候选肽临床应用的基本特性,包括抗菌活性、渗透效率和生物相容性,同时还考虑了筛选过程的速度和可靠性。多种基于人工智能的活性预测模型相结合,能够对细胞穿透肽(CPP)数据库中的序列进行全面评估,并快速识别具有目标特性的候选肽。在此基础上,构建了CPP微观动力学研究系统。在原子水平上对作用机制的探索为发现有前景的候选肽提供了有力支持。有前景的候选物随后通过 和 实验进行验证。最后,从CPPsite 2.0数据库中快速鉴定出Crot-1。 有效地根除了细胞内的耐甲氧西林金黄色葡萄球菌(MRSA),显示出比万古霉素显著更高的疗效。此外,它对宿主细胞没有明显的细胞毒性,突出了其临床应用潜力。这项工作为开发新型抗菌材料以对抗细胞内细菌感染提供了一条有前景的新途径。