Cited 3 time in
- Title
- Artificial intelligence-based identification of octenidine as a Bcl-xL inhibitor
- Author(s)
- A R N Bui; H Son; Seulki Park; Sohee Oh; Jin Sik Kim; Jin Hwa Cho; Hye-Jin Hwang; Jeong Hoon Kim; G S Yi; Seung-Wook Chi
- Bibliographic Citation
- Biochemical and Biophysical Research Communications, vol. 588, pp. 97-103
- Publication Year
- 2022
- Abstract
- Apoptosis plays an essential role in maintaining cellular homeostasis and preventing cancer progression. Bcl-xL, an anti-apoptotic protein, is an important modulator of the mitochondrial apoptosis pathway and is a promising target for anticancer therapy. In this study, we identified octenidine as a novel Bcl-xL inhibitor through structural feature-based deep learning and molecular docking from a library of approved drugs. The NMR experiments demonstrated that octenidine binds to the Bcl-2 homology 3 (BH3) domain-binding hydrophobic region that consists of the BH1, BH2, and BH3 domains in Bcl-xL. A structural model of the Bcl-xL/octenidine complex revealed that octenidine binds to Bcl-xL in a similar manner to that of the well-known Bcl-2 family protein antagonist ABT-737. Using the NanoBiT protein-protein interaction system, we confirmed that the interaction between Bcl-xL and Bak-BH3 domains within cells was inhibited by octenidine. Furthermore, octenidine inhibited the proliferation of MCF-7 breast and H1299 lung cancer cells by promoting apoptosis. Taken together, our results shed light on a novel mechanism in which octenidine directly targets anti-apoptotic Bcl-xL to trigger mitochondrial apoptosis in cancer cells.
- Keyword
- Bcl-xLArtificial intelligence-based screeningOctenidineAnti-cancer effectNMR spectroscopy
- ISSN
- 0006-291X
- Publisher
- Elsevier
- Full Text Link
- http://dx.doi.org/10.1016/j.bbrc.2021.12.061
- Type
- Article
- Appears in Collections:
- Critical Diseases Diagnostics Convergence Research Center > 1. Journal Articles
Division of A.I. & Biomedical Research > Orphan Disease Therapeutic Target Research Center > 1. Journal Articles
Division of A.I. & Biomedical Research > 1. Journal Articles
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