A Dual-Target and Dual-Mechanism Design Strategy by Combining Inhibition and Degradation Together

化学 PI3K/AKT/mTOR通路 降级(电信) 胶质母细胞瘤 癌症研究 双功能 小分子 计算生物学 信号转导 生物化学 电信 计算机科学 生物 催化作用
作者
Y.-C. Liu,Xiuyun Sun,Qianlong Liu,Chi Han,Yu Rao
出处
期刊:Journal of the American Chemical Society [American Chemical Society]
卷期号:147 (4): 3110-3118 被引量:32
标识
DOI:10.1021/jacs.4c11930
摘要

Glioblastoma, a highly aggressive brain tumor, lacks effective treatment with low 5 year survival rates. Urgency for new therapies is evident. Mammalian targets of rapamycin (mTOR) and G1 to S phase transition 1 gene (GSPT1) are overexpressed in glioblastoma, regulating vital cellular functions. Current mTOR inhibitors face challenges in clinical efficacy and drug resistance. Similarly, GSPT1-targeting therapies have not progressed of glioblastoma in clinical trials. Research studies suggested that combining mTOR inhibition with GSPT1 degradation may overcome resistance and enhance efficacy. We propose the concept of jointly implementing inhibition and degradation on different proteins, integrating the properties of inhibitors and degraders into the same molecule. Introducing YB-3-17, a novel bifunctional molecule, robustly inhibits mTOR and selectively degrades GSPT1. As a tool compound for proof-of-concept studies, YB-3-17 sharpens selectivity, avoiding off-target effects, and selectively induces GSPT1 degradation and mTOR inhibition, showing superior efficacy in tumor cell lines compared to that of standalone therapies. RNA-seq analysis highlights the advantages of YB-3-17 over mTOR inhibitor treatment. YB-3-17 can safely and effectively inhibit tumor growth in mice, offering a promising direction for precision treatment of glioblastoma, representing the first attempt to combine mTOR inhibition with GSPT1 degradation. This work also demonstrates that it is conceptually possible to successfully combine the properties of small molecule inhibitors and degraders into a single molecule, killing two birds with one stone.
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