Virtual screening of ultra-large chemical libraries is a highly effective strategy for early-stage drug discovery. However, these pipelines often yield thousands of molecules that pass computational filters, and in silico-derived interaction energies do not consistently predict experimental efficacy. Furthermore, many high-affinity hits do not necessarily function effectively in an organism with tissues, barriers, and extensive off-target possibilities. A major hurdle in drug discovery is the prioritization of top candidates for rodent testing. Here, we introduce Rosetta Engine for Anchoring Ligands with a Motif ("REAL-M"), a novel computational screening algorithm that uses structural interaction data from the Protein Data Bank (PDB) to guide ligand placement and selection. Using the hypocretin receptor as a test case for this computational pipeline, 28 of 30 predicted antagonists significantly blocked binding of the cognate peptide agonist in a PRESTO-Tango cell-based reporter assay, including six chemically diverse molecules with comparable efficacy to preexisting antagonists. Three of the six molecules significantly mitigated hypocretin-induced larval zebrafish hyperactivity. Secondary testing with a zebrafish hcrtr2 null mutant ensured that behavioral phenotypes were not due to off-target interactions, which we did observe with preexisting antagonists. This pipeline is readily adaptable to the thousands of zebrafish proteins with highly conserved binding pockets.
Prioritizing Neuroactive Ligands Using Motif-Guided Virtual Discovery and Zebrafish Profiling.
利用基序引导的虚拟发现和斑马鱼分析对神经活性配体进行优先排序。
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| 期刊: | bioRxiv | 影响因子: | 0.000 |
| 时间: | 2026 | 起止号: | 2026 Jan 16 |
| doi: | 10.64898/2026.01.15.699747 | 种属: | Fish |
| 研究方向: | 神经科学 | ||
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