Attention-based decoder models were used to generate libraries of novel inhibitors for the HMG-Coenzyme A reductase (HMGCR) enzyme. These deep neural network models were pretrained on previously synthesized drug-like molecules from the ZINC15 database to learn the syntax of SMILES strings and then fine-tuned with a set of ∼1000 molecules that inhibit HMGCR. The number of layers used for pretraining and fine-tuning was varied to find the optimal balance for robust library generation. Virtual screening libraries were also generated with different temperatures and numbers of input tokens (prompt length) to find the most desirable molecular properties. The resulting libraries were screened against several criteria, including IC50 values predicted by a dense neural network (DNN) trained on experimental HMGCR IC50 values, docking scores from AutoDock Vina (via Dockstring), a calculated quantitative estimate of druglikeness, and Tanimoto similarity to known HMGCR inhibitors. It was found that 50/50 or 25/75% pretrained/fine-tuned models with a nonzero temperature and shorter prompt lengths produced the most robust libraries, and the DNN-predicted IC50 values had good correlation with docking scores and statin similarity. 42% of generated molecules were classified as statin-like by k-means clustering, with the rosuvastatin-like group having the lowest IC50 values and lowest docking scores.
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http://dx.doi.org/10.1021/acs.jcim.4c01309 | DOI Listing |
Bot Stud
January 2025
Institute of Fisheries Science, College of Life Science, National Taiwan University, No. 1, Sec. 4, Roosevelt Rd., Da'an Dist, Taipei, 106319, Taiwan (R.O.C.).
Background: Trichoderma species, known as biocontrol agents against plant diseases, contain diverse compounds, especially terpenoids, with various bioactivities. To facilitate the exploration of bioactive secondary metabolites of Trichoderma harzianum NTU2180, the OSMAC approach MS/MS molecular networking was applied in the current study.
Results: The feature-based molecular networking (FBMN) analysis showed that T.
Chem Biodivers
January 2025
Guizhou Medical University, School of Pharmaceutical Sciences, University Town, Gui'an New District, 550025, Guiyang, CHINA.
An unrevealed dihydroflavone-monoterpene conjugate (1), two unrevealed kavalactones (2-3, including one with an uncommon side chain), and thirteen previously identified compounds (4-16) were extracted from Alpinia katsumadai Hayata. seeds. The two-dimension structures of the new compounds were authenticated utilizing HRESIMS as well as NMR spectral analysis, while their absolute chiral configurations were ascertained either by correlating the experimental and simulated values of electronic circular dichroism (ECD) patterns or conducting X-ray diffraction experiments.
View Article and Find Full Text PDF3 Biotech
February 2025
Department of Chemistry, School of Advanced Sciences, Vellore Institute of Technology, Vellore, 632014 India.
Unlabelled: Coumarin derivatives are one of the naturally occurring bioactive molecule. Dihydropyrano coumarins are one of the medicinally important derivatives of coumarin which have been reported to exhibit various bioactivity. However, there are no reports on their antihyperglycemic activities.
View Article and Find Full Text PDFRSC Adv
January 2025
Institute of Chemical Sciences, Bahauddin Zakariya University Multan-60800 Pakistan
Recent advances in cancer therapy have been made possible by monoclonal antibodies, domain antibodies, antibody drug conjugates, The most impact has come from controlling cell cycle checkpoints through checkpoint inhibitors. This manuscript explores the potential of a series of novel -benzyl isatin based hydrazones (5-25), which were synthesized and evaluated as anti-breast cancer agents. The synthesized hydrazones of -benzyl isatin were screened against two cell lines, the MDA-MB-231 breast cancer cell line and the MCF-10A breast epithelial cell line.
View Article and Find Full Text PDFBackground: Metabolic pathways are known to significantly impact the development and advancement of lung cancer. This study sought to establish a signature related to butyrate metabolism that is specifically linked to lung adenocarcinoma (LUAD).
Methods: For the purpose of identifying butyrate metabolism-related differentially expressed genes (BMR-DEGs) in the TCGA-LUAD dataset, we introduced transcriptome data.
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