Synergistic D-Amino Acids Based Antimicrobial Cocktails Formulated via High-Throughput Screening and Machine Learning.
Jingzhi YangYami RanShaopeng LiuChenhao RenYuntian LouPengfei JuGuoliang LiXiaogang LiDa-Wei ZhangPublished in: Advanced science (Weinheim, Baden-Wurttemberg, Germany) (2023)
Antimicrobial 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.
Keyphrases
- amino acid
- antimicrobial resistance
- machine learning
- staphylococcus aureus
- global health
- mouse model
- ionic liquid
- candida albicans
- adverse drug
- oxidative stress
- artificial intelligence
- drug induced
- public health
- clinical trial
- pseudomonas aeruginosa
- study protocol
- biofilm formation
- phase iii
- randomized controlled trial
- drug delivery
- computed tomography
- cystic fibrosis
- double blind