Synergistic D‐Amino Acids Based Antimicrobial Cocktails Formulated via High‐Throughput Screening and Machine Learning

Author:

Yang Jingzhi12,Ran Yami123,Liu Shaopeng12,Ren Chenhao12,Lou Yuntian123,Ju Pengfei4,Li Guoliang5,Li Xiaogang123,Zhang Dawei123ORCID

Affiliation:

1. Beijing Advanced Innovation Center for Materials Genome Engineering Institute for Advanced Materials and Technology University of Science and Technology Beijing Beijing 100083 China

2. National Materials Corrosion and Protection Data Center University of Science and Technology Beijing Beijing 100083 China

3. BRI Southeast Asia Network for Corrosion and Protection Shunde Graduate School of University of Science and Technology Beijing Foshan 528000 China

4. Shanghai Aerospace Equipment Manufacturer Shanghai 200245 China

5. College of Materials Science and Engineering Beijing University of Chemical Technology Beijing 100029 China

Abstract

AbstractAntimicrobial resistance (AMR) from pathogenic bacterial biofilms has become a global health issue while developing novel antimicrobials is inefficient and costly. Combining existing multiple drugs with enhanced efficacy and/or reduced toxicity may be a promising approach to treat AMR. D‐amino acids mixtures coupled with antibiotics can provide new therapies for drug‐resistance infection with reduced toxicity by lower drug dosage requirements. However, iterative trial‐and‐error experiments are not tenable to prioritize credible drug formulations, owing to the extremely large number of possible combinations. Herein, a new avenue is provide to accelerate the exploration of desirable antimicrobial formulations via high‐throughput screening and machine learning optimization. Such an intelligent method can navigate the large search space and rapidly identify the D‐amino acid mixtures with the highest anti‐biofilm efficiency and also the synergisms between D‐amino acid mixtures and antibiotics. The optimized drug cocktails exhibit high antimicrobial efficacy while remaining non‐toxic, which is demonstrated not only from in vitro assessments but also the first in vivo study using a lung infection mouse model.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

General Physics and Astronomy,General Engineering,Biochemistry, Genetics and Molecular Biology (miscellaneous),General Materials Science,General Chemical Engineering,Medicine (miscellaneous)

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