Wu Xiaozhe, Wang Zhenling, Li Xiaolu, Fan Yingzi, He Gu, Wan Yang, Yu Chaoheng, Tang Jianying, Li Meng, Zhang Xian, Zhang Hailong, Xiang Rong, Pan Ying, Liu Yan, Lu Lian, Yang Li
State Key Laboratory of Biotherapy/Collaborative Innovation Center of Biotherapy, West China Hospital, Sichuan University, Chengdu, People's Republic of China.
Institute of Burn Research, Southwest Hospital, State Key Laboratory of Trauma, Burns and Combined Injury, Third Military Medical University, Chongqing, People's Republic of China.
Antimicrob Agents Chemother. 2014 Sep;58(9):5342-9. doi: 10.1128/AAC.02823-14. Epub 2014 Jun 30.
To design and discover new antimicrobial peptides (AMPs) with high levels of antimicrobial activity, a number of machine-learning methods and prediction methods have been developed. Here, we present a new prediction method that can identify novel AMPs that are highly similar in sequence to known peptides but offer improved antimicrobial activity along with lower host cytotoxicity. Using previously generated AMP amino acid substitution data, we developed an amino acid activity contribution matrix that contained an activity contribution value for each amino acid in each position of the model peptide. A series of AMPs were designed with this method. After evaluating the antimicrobial activities of these novel AMPs against both Gram-positive and Gram-negative bacterial strains, DP7 was chosen for further analysis. Compared to the parent peptide HH2, this novel AMP showed broad-spectrum, improved antimicrobial activity, and in a cytotoxicity assay it showed lower toxicity against human cells. The in vivo antimicrobial activity of DP7 was tested in a Staphylococcus aureus infection murine model. When inoculated and treated via intraperitoneal injection, DP7 reduced the bacterial load in the peritoneal lavage solution. Electron microscope imaging and the results indicated disruption of the S. aureus outer membrane by DP7. Our new prediction method can therefore be employed to identify AMPs possessing minor amino acid differences with improved antimicrobial activities, potentially increasing the therapeutic agents available to combat multidrug-resistant infections.
为了设计和发现具有高抗菌活性的新型抗菌肽(AMPs),已经开发了许多机器学习方法和预测方法。在此,我们提出一种新的预测方法,该方法可以识别与已知肽序列高度相似但具有更高抗菌活性且宿主细胞毒性更低的新型AMPs。利用先前生成的AMPs氨基酸替换数据,我们开发了一种氨基酸活性贡献矩阵,其中包含模型肽每个位置上每个氨基酸的活性贡献值。用这种方法设计了一系列AMPs。在评估这些新型AMPs对革兰氏阳性和革兰氏阴性细菌菌株的抗菌活性后,选择DP7进行进一步分析。与亲本肽HH2相比,这种新型AMPs具有广谱、增强的抗菌活性,并且在细胞毒性试验中对人细胞的毒性更低。在金黄色葡萄球菌感染小鼠模型中测试了DP7的体内抗菌活性。通过腹腔注射接种和治疗时,DP7降低了腹腔灌洗液中的细菌载量。电子显微镜成像结果表明DP7破坏了金黄色葡萄球菌的外膜。因此,我们的新预测方法可用于识别具有微小氨基酸差异且抗菌活性增强的AMPs,这可能会增加对抗多重耐药感染的治疗药物。