Assembly-Induced Membrane Selectivity of Artificial Model Peptides through Entropy–Enthalpy Competition

选择性 熵(时间箭头) 竞赛(生物学) 材料科学 热力学 纳米技术 化学 有机化学 物理 生物 催化作用 生物化学 生态学
作者
Lin Wei,Wenqiang Tu,Yiwei Xu,Cheng Xu,Yujiang Dou,Yuke Ge,Shuqing Sun,Yushuang Wei,Kai Yang,Bing Yuan
出处
期刊:ACS Nano [American Chemical Society]
卷期号:18 (28): 18650-18662 被引量:11
标识
DOI:10.1021/acsnano.4c05265
摘要

Peptide design and drug development offer a promising solution for combating serious diseases or infections. In this study, using an AI-human negotiation approach, we have designed a class of minimal model peptides against tuberculosis (TB), among which K7W6 exhibits potent efficacy attributed to its assembly-induced function. Comprising lysine and tryptophan with an amphiphilic α-helical structure, the K7W6 sequence exhibits robust activity against various infectious bacteria causing TB (including clinically isolated and drug-resistant strains) both in vitro and in vivo. Moreover, it synergistically enhances the effectiveness of the first-line antibiotic rifampicin while displaying low potential for inducing drug resistance and minimal toxicity toward mammalian cells. Biophysical experiments and simulations elucidate that K7W6's exceptional performance can be ascribed to its highly selective and efficient membrane permeabilization activity induced by its distinctive self-assembly behavior. Additionally, these assemblies regulate the interplay between enthalpy and entropy during K7W6-membrane interaction, leading to the peptide's two-step mechanism of membrane interaction. These findings provide valuable insights into rational design principles for developing advanced peptide-based drugs while uncovering the functional role played by assembly.
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