抗菌剂
效力
基础(证据)
抗菌肽
计算生物学
微生物学
抗菌肽
医学
抗菌活性
生物
细菌
地理
生物化学
体外
遗传学
考古
作者
Jike Wang,Jianwen Feng,Yu Kang,Peichen Pan,Jingxuan Ge,Yan Wang,Mingyang Wang,Zhenhua Wu,Xingcai Zhang,Jiameng Yu,Xujun Zhang,Tianyue Wang,Li‐Rong Wen,Guangning Yan,Yafeng Deng,Huijuan Shi,Chang‐Yu Hsieh,Zhihui Jiang,Tingjun Hou
出处
期刊:Science Advances
[American Association for the Advancement of Science]
日期:2025-03-05
卷期号:11 (10)
标识
DOI:10.1126/sciadv.ads8932
摘要
Large language models (LLMs) have shown remarkable advancements in chemistry and biomedical research, acting as versatile foundation models for various tasks. We introduce AMP-Designer, an LLM-based approach, for swiftly designing antimicrobial peptides (AMPs) with desired properties. Within 11 days, AMP-Designer achieved the de novo design of 18 AMPs with broad-spectrum activity against Gram-negative bacteria. In vitro validation revealed a 94.4% success rate, with two candidates demonstrating exceptional antibacterial efficacy, minimal hemotoxicity, stability in human plasma, and low potential to induce resistance, as evidenced by significant bacterial load reduction in murine lung infection experiments. The entire process, from design to validation, concluded in 48 days. AMP-Designer excels in creating AMPs targeting specific strains despite limited data availability, with a top candidate displaying a minimum inhibitory concentration of 2.0 micrograms per milliliter against Propionibacterium acnes. Integrating advanced machine learning techniques, AMP-Designer demonstrates remarkable efficiency, paving the way for innovative solutions to antibiotic resistance.
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