AI-guided few-shot inverse design of HDP-mimicking polymers against drug-resistant bacteria.
Tianyu WuMin ZhouJingcheng ZouQi ChenFeng QianJuergen KurthsRunhui LiuYang TangPublished in: Nature communications (2024)
Host defense peptide (HDP)-mimicking polymers are promising therapeutic alternatives to antibiotics and have large-scale untapped potential. Artificial intelligence (AI) exhibits promising performance on large-scale chemical-content design, however, existing AI methods face difficulties on scarcity data in each family of HDP-mimicking polymers (<10 2 ), much smaller than public polymer datasets (>10 5 ), and multi-constraints on properties and structures when exploring high-dimensional polymer space. Herein, we develop a universal AI-guided few-shot inverse design framework by designing multi-modal representations to enrich polymer information for predictions and creating a graph grammar distillation for chemical space restriction to improve the efficiency of multi-constrained polymer generation with reinforcement learning. Exampled with HDP-mimicking β-amino acid polymers, we successfully simulate predictions of over 10 5 polymers and identify 83 optimal polymers. Furthermore, we synthesize an optimal polymer DM 0.8 iPen 0.2 and find that this polymer exhibits broad-spectrum and potent antibacterial activity against multiple clinically isolated antibiotic-resistant pathogens, validating the effectiveness of AI-guided design strategy.
Keyphrases
- artificial intelligence
- big data
- drug resistant
- machine learning
- deep learning
- multidrug resistant
- amino acid
- randomized controlled trial
- healthcare
- risk assessment
- type diabetes
- social media
- electronic health record
- high resolution
- adipose tissue
- mental health
- health information
- single cell
- data analysis
- pseudomonas aeruginosa
- drug induced