Strategy for Efficient Discovery of Cocrystals via a Network-Based Recommendation Model
Lulu Zheng, Bin Zhu, Zengrui Wu, Xiaoxue Fang, Minghuang Hong, Guixia Liu, Weihua Li, Guo‐Bin Ren, Yun Tang
Abstract
Experimental screening of cocrystals is usually laborious and time-consuming; therefore, it is urgent to develop effective in silico predictive models to guide cocrystal discovery. In this study, network-based recommendation models were proposed to predict new cocrystals for molecules in cocrystal network. The local random walk (LRW) recommender algorithm was first confirmed as an effective model in cocrystal design. The algorithmic principle of LRW could capture the supramolecular synthon mechanisms in the cocrystal system and grasp the structural features of the cocrystal network, thus possessing satisfactory predictive capability. Various pharmaceutical cocrystals reported in the recent literature could be distinguished by our model, which demonstrates the good generalization capability inherent in our approach. As a case study, new cocrystals for apatinib were predicted and subsequently obtained. The consistency between prediction and experimental results highlighted the accuracy and practicability of the predictive model. Particularly, our predictive model is competitive in computational time and easy to implement. In summary, our network-based recommendation model would be an effective tool to guide experimental cocrystal screening and improve the efficiency of cocrystal discovery.