Identification of Potential JNK3 Inhibitors: A Combined Approach Using Molecular Docking and Deep Learning-Based Virtual Screening.
Chenpeng YaoZheyuan ShenLiteng ShenKailibinuer KadierJingyi ZhaoYu GuoLei XuJi CaoXiaowu DongBo YangPublished in: Pharmaceuticals (Basel, Switzerland) (2023)
JNK3, a member of the MAPK family, plays a pivotal role in mediating cellular responses to stress signals, with its activation implicated in a myriad of inflammatory conditions. While JNK3 holds promise as a therapeutic target for neurodegenerative disorders such as Huntington's, Parkinson's, and Alzheimer's diseases, there remains a gap in the market for effective JNK3 inhibitors. Despite some pan-JNK inhibitors reaching clinical trials, no JNK-targeted therapies have achieved market approval. To bridge this gap, our study introduces a sophisticated virtual screening approach. We begin with an energy-based screening, subsequently integrating a variety of rescoring techniques. These encompass glide docking scores, MM/GBSA, and artificial scoring mechanisms such as DeepDock and advanced Graph Neural Networks. This virtual screening workflow is designed to evaluate and identify potential small-molecule inhibitors with high binding affinity. We have implemented a virtual screening workflow to identify potential candidate molecules. This process has resulted in the selection of ten molecules. Subsequently, these ten molecules have undergone biological activity evaluation to assess their potential efficacy. Impressively, molecule compound 6 surfaced as the most promising, exhibiting a potent kinase inhibitory activity marked by an IC 50 of 130.1 nM and a notable reduction in TNF-α release within macrophages. This suggests that compound 6 could potentially serve as an effective inhibitor for the treatment of neuroinflammation and neurodegenerative diseases. The prospect of further medicinal modifications to optimize compound 6 presents a promising avenue for future research and development in this field. Utilizing binding pose metadynamics coupled with molecular dynamics simulations, we delved into the explicit binding mode of compound 6 to JNK3. Such insights pave the way for refined drug development strategies. Collectively, our results underscore the efficacy of the hybrid virtual screening workflow in the identification of robust JNK3 inhibitors, holding promise for innovative treatments against neuroinflammation and neurodegenerative disorders.
Keyphrases
- signaling pathway
- molecular dynamics simulations
- cell death
- induced apoptosis
- molecular docking
- small molecule
- clinical trial
- deep learning
- oxidative stress
- pi k akt
- neural network
- electronic health record
- endoplasmic reticulum stress
- human health
- health insurance
- traumatic brain injury
- rheumatoid arthritis
- cell proliferation
- molecular dynamics
- lipopolysaccharide induced
- photodynamic therapy
- machine learning
- inflammatory response
- binding protein
- risk assessment
- tyrosine kinase
- mass spectrometry
- randomized controlled trial
- climate change
- cognitive decline
- mild cognitive impairment
- combination therapy
- heat stress
- blood brain barrier
- protein kinase