Identification and Validation of New DNA-PKcs Inhibitors through High-Throughput Virtual Screening and Experimental Verification.
Liujiang DaiPengfei YuHongjie FanWei XiaYaopeng ZhaoPengfei ZhangJohn Zenghui ZhangHaiping ZhangYang ChenPublished in: International journal of molecular sciences (2024)
DNA-PKcs is a crucial protein target involved in DNA repair and response pathways, with its abnormal activity closely associated with the occurrence and progression of various cancers. In this study, we employed a deep learning-based screening and molecular dynamics (MD) simulation-based pipeline, identifying eight candidates for DNA-PKcs targets. Subsequent experiments revealed the effective inhibition of DNA-PKcs-mediated cell proliferation by three small molecules (5025-0002, M769-1095, and V008-1080). These molecules exhibited anticancer activity with IC 50 (inhibitory concentration at 50%) values of 152.6 μM, 30.71 μM, and 74.84 μM, respectively. Notably, V008-1080 enhanced homology-directed repair (HDR) mediated by CRISPR/Cas9 while inhibiting non-homologous end joining (NHEJ) efficiency. Further investigations into the structure-activity relationships unveiled the binding sites and critical interactions between these small molecules and DNA-PKcs. This is the first application of DeepBindGCN_RG in a real drug screening task, and the successful discovery of a novel DNA-PKcs inhibitor demonstrates its efficiency as a core component in the screening pipeline. Moreover, this study provides important insights for exploring novel anticancer therapeutics and advancing the development of gene editing techniques by targeting DNA-PKcs.
Keyphrases
- circulating tumor
- cell free
- dna repair
- molecular dynamics
- single molecule
- high throughput
- crispr cas
- cell proliferation
- deep learning
- dna damage
- nucleic acid
- machine learning
- emergency department
- risk assessment
- oxidative stress
- circulating tumor cells
- single cell
- cell cycle
- artificial intelligence
- young adults
- amino acid