Department of Biochemistry and Molecular Biophysics, Washington University in St. Louis, 660 S. Euclid Ave., Box 8231, St. Louis, MO, 63110, USA.
Medical Scientist Training Program, Washington University in St. Louis, 660 S. Euclid Ave., St. Louis, MO, 63110, USA.
Nat Commun. 2023 Mar 1;14(1):1177. doi: 10.1038/s41467-023-36699-3.
Cryptic pockets expand the scope of drug discovery by enabling targeting of proteins currently considered undruggable because they lack pockets in their ground state structures. However, identifying cryptic pockets is labor-intensive and slow. The ability to accurately and rapidly predict if and where cryptic pockets are likely to form from a structure would greatly accelerate the search for druggable pockets. Here, we present PocketMiner, a graph neural network trained to predict where pockets are likely to open in molecular dynamics simulations. Applying PocketMiner to single structures from a newly curated dataset of 39 experimentally confirmed cryptic pockets demonstrates that it accurately identifies cryptic pockets (ROC-AUC: 0.87) >1,000-fold faster than existing methods. We apply PocketMiner across the human proteome and show that predicted pockets open in simulations, suggesting that over half of proteins thought to lack pockets based on available structures likely contain cryptic pockets, vastly expanding the potentially druggable proteome.
隐匿口袋通过使目前被认为不可成药的蛋白质成为靶向目标,从而扩大了药物发现的范围,因为这些蛋白质在其基态结构中缺乏口袋。然而,识别隐匿口袋是一项劳动密集型且缓慢的工作。如果能够准确快速地预测隐匿口袋是否可能以及在何处形成,将极大地加速寻找可成药口袋的过程。在这里,我们提出了 PocketMiner,这是一种经过训练可以预测口袋在分子动力学模拟中可能打开位置的图神经网络。将 PocketMiner 应用于新编辑的 39 个实验证实的隐匿口袋数据集的单个结构,表明它可以比现有方法快 1000 多倍准确地识别隐匿口袋(ROC-AUC:0.87)。我们将 PocketMiner 应用于整个人类蛋白质组,并表明预测的口袋在模拟中打开,这表明,基于现有结构认为缺乏口袋的一半以上的蛋白质可能包含隐匿口袋,极大地扩展了潜在可成药的蛋白质组。