De Novo Design of κ-Opioid Receptor Antagonists Using a Generative Deep-Learning Framework.
Leslie Salas-EstradaDavide ProvasiXing QiuHusnu Ümit KaniskanXi-Ping HuangJeffrey F DiBertoJoão Marcelo Lamim RibeiroJian JinBryan L RothMarta FilizolaPublished in: Journal of chemical information and modeling (2023)
Likely effective pharmacological interventions for the treatment of opioid addiction include attempts to attenuate brain reward deficits during periods of abstinence. Pharmacological blockade of the κ-opioid receptor (KOR) has been shown to abolish brain reward deficits in rodents during withdrawal, as well as to reduce the escalation of opioid use in rats with extended access to opioids. Although KOR antagonists represent promising candidates for the treatment of opioid addiction, very few potent selective KOR antagonists are known to date and most of them exhibit significant safety concerns. Here, we used a generative deep-learning framework for the de novo design of chemotypes with putative KOR antagonistic activity. Molecules generated by models trained with this framework were prioritized for chemical synthesis based on their predicted optimal interactions with the receptor. Our models and proposed training protocol were experimentally validated by binding and functional assays.
Keyphrases
- chronic pain
- pain management
- deep learning
- traumatic brain injury
- white matter
- randomized controlled trial
- resting state
- physical activity
- artificial intelligence
- high throughput
- machine learning
- clinical trial
- cerebral ischemia
- multiple sclerosis
- blood brain barrier
- resistance training
- functional connectivity
- transcription factor
- combination therapy
- body composition
- single cell
- dna binding
- virtual reality