论文标题

Alphafold加速人工智能供电药物发现:有效发现新型细胞周期蛋白依赖性激酶20(CDK20)小分子抑制剂

AlphaFold Accelerates Artificial Intelligence Powered Drug Discovery: Efficient Discovery of a Novel Cyclin-dependent Kinase 20 (CDK20) Small Molecule Inhibitor

论文作者

Ren, Feng, Ding, Xiao, Zheng, Min, Korzinkin, Mikhail, Cai, Xin, Zhu, Wei, Mantsyzov, Alexey, Aliper, Alex, Aladinskiy, Vladimir, Cao, Zhongying, Kong, Shanshan, Long, Xi, Liu, Bonnie Hei Man, Liu, Yingtao, Naumov, Vladimir, Shneyderman, Anastasia, Ozerov, Ivan V., Wang, Ju, Pun, Frank W., Aspuru-Guzik, Alan, Levitt, Michael, Zhavoronkov, Alex

论文摘要

Alphafold计算机程序预测了整个人类基因组的蛋白质结构,这在人工智能(AI)应用和结构生物学中都被认为是一个显着的突破。尽管置信度不同,但这些预测的结构仍然可以显着促进新目标的基于结构的药物设计,尤其是没有或有限的结构信息。在这项工作中,我们成功地将AlphaFold应用于由生物计算平台Pandaomics组成的端到端AI驱动的药物发现引擎和生成化学平台Chemistry42,以识别新型目标的第一类HIT分子,而无需实验性结构,而无需在成本和时间效率的效率上识别目标识别目标。 Pandaomics提供了感兴趣的靶标42基于Alphafold预测的结构产生了分子,并在生物学测定中合成并测试了所选分子。通过这种方法,我们在30天内,仅在合成7种化合物后,在30天内鉴定了CDK20的小分子命中化合物,其KD值为8.9 +/- 1.6 UM(n = 4)。基于可用数据,进行了第二轮AI驱动的化合物生成,通过该数据,更有效的HIT分子ISM042-2 048,在30天内,在30天内,在30天内,并在合成第一次命中ISM042-2----00的KD值中发现了210.0.0 +/- 42.4 nm(n = 2)的KD值。据我们所知,这是第一个针对CDK20的小分子,更重要的是,这项工作是在早期药物发现中的命中识别过程中的Alphafold应用的首次演示。

The AlphaFold computer program predicted protein structures for the whole human genome, which has been considered as a remarkable breakthrough both in artificial intelligence (AI) application and structural biology. Despite the varying confidence level, these predicted structures still could significantly contribute to structure-based drug design of novel targets, especially the ones with no or limited structural information. In this work, we successfully applied AlphaFold in our end-to-end AI-powered drug discovery engines constituted of a biocomputational platform PandaOmics and a generative chemistry platform Chemistry42, to identify a first-in-class hit molecule of a novel target without an experimental structure starting from target selection towards hit identification in a cost- and time-efficient manner. PandaOmics provided the targets of interest and Chemistry42 generated the molecules based on the AlphaFold predicted structure, and the selected molecules were synthesized and tested in biological assays. Through this approach, we identified a small molecule hit compound for CDK20 with a Kd value of 8.9 +/- 1.6 uM (n = 4) within 30 days from target selection and after only synthesizing 7 compounds. Based on the available data, the second round of AI-powered compound generation was conducted and through which, a more potent hit molecule, ISM042-2 048, was discovered with a Kd value of 210.0 +/- 42.4 nM (n = 2), within 30 days and after synthesizing 6 compounds from the discovery of the first hit ISM042-2-001. To the best of our knowledge, this is the first reported small molecule targeting CDK20 and more importantly, this work is the first demonstration of AlphaFold application in the hit identification process in early drug discovery.

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