Utilization of an optimized AlphaFold protein model for structure-based design of a selective HDAC11 inhibitor with anti-neuroblastoma activity

IF 4.3 3区 医学 Q2 CHEMISTRY, MEDICINAL
Fady Baselious, Sebastian Hilscher, Sven Hagemann, Sunita Tripathee, Dina Robaa, Cyril Barinka, Stefan Hüttelmaier, Mike Schutkowski, Wolfgang Sippl
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Abstract

AlphaFold is an artificial intelligence approach for predicting the three-dimensional (3D) structures of proteins with atomic accuracy. One challenge that limits the use of AlphaFold models for drug discovery is the correct prediction of folding in the absence of ligands and cofactors, which compromises their direct use. We have previously described the optimization and use of the histone deacetylase 11 (HDAC11) AlphaFold model for the docking of selective inhibitors such as FT895 and SIS17. Based on the predicted binding mode of FT895 in the optimized HDAC11 AlphaFold model, a new scaffold for HDAC11 inhibitors was designed, and the resulting compounds were tested in vitro against various HDAC isoforms. Compound 5a proved to be the most active compound with an IC50 of 365 nM and was able to selectively inhibit HDAC11. Furthermore, docking of 5a showed a binding mode comparable to FT895 but could not adopt any reasonable poses in other HDAC isoforms. We further supported the docking results with molecular dynamics simulations that confirmed the predicted binding mode. 5a also showed promising activity with an EC50 of 3.6 µM on neuroblastoma cells.

Abstract Image

Abstract Image

利用优化的 AlphaFold 蛋白模型,基于结构设计具有抗神经母细胞瘤活性的选择性 HDAC11 抑制剂。
AlphaFold 是一种以原子精度预测蛋白质三维(3D)结构的人工智能方法。限制 AlphaFold 模型用于药物发现的一个挑战是在没有配体和辅助因子的情况下正确预测折叠,这影响了其直接使用。我们之前介绍了组蛋白去乙酰化酶 11(HDAC11)AlphaFold 模型的优化和使用,用于 FT895 和 SIS17 等选择性抑制剂的对接。根据优化后的 HDAC11 AlphaFold 模型中预测的 FT895 结合模式,设计了 HDAC11 抑制剂的新支架,并针对各种 HDAC 同工酶对所得化合物进行了体外测试。化合物 5a 被证明是最有活性的化合物,其 IC50 值为 365 nM,能够选择性地抑制 HDAC11。此外,5a 的对接显示了与 FT895 相似的结合模式,但在其他 HDAC 同工酶中无法采用任何合理的姿势。我们通过分子动力学模拟进一步证实了对接结果,并证实了预测的结合模式。5a 对神经母细胞瘤细胞的 EC50 值为 3.6 µM,显示出良好的活性。
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来源期刊
Archiv der Pharmazie
Archiv der Pharmazie 医学-化学综合
CiteScore
7.90
自引率
5.90%
发文量
176
审稿时长
3.0 months
期刊介绍: Archiv der Pharmazie - Chemistry in Life Sciences is an international journal devoted to research and development in all fields of pharmaceutical and medicinal chemistry. Emphasis is put on papers combining synthetic organic chemistry, structural biology, molecular modelling, bioorganic chemistry, natural products chemistry, biochemistry or analytical methods with pharmaceutical or medicinal aspects such as biological activity. The focus of this journal is put on original research papers, but other scientifically valuable contributions (e.g. reviews, minireviews, highlights, symposia contributions, discussions, and essays) are also welcome.
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