Receive a weekly summary and discussion of the top papers of the week by leading researchers in the field.

In Frontiers in oncology

Aqueous solubility is an important physicochemical property of compounds in anti-cancer drug discovery. Artificial intelligence solubility prediction tools have scored impressive performances by employing regression, machine learning, and deep learning methods. The reported performances vary significantly partly because of the different datasets used. Solubility prediction on novel compounds needs to be improved, which may be achieved by going deeper with deep learning. We constructed deeper-net models of ~20-layer modified ResNet convolutional neural network architecture, which were trained and tested with 9,943 compounds encoded by molecular fingerprints. Retrospectively tested by 62 recently-published novel compounds, one deeper-net model outperformed four established tools, shallow-net models, and four human experts. Deeper-net models also outperformed others in predicting the solubility values of a series of novel compounds newly-synthesized for anti-cancer drug discovery. Solubility prediction may be improved by going deeper with deep learning. Our deeper-net models are accessible at

Cui Qiuji, Lu Shuai, Ni Bingwei, Zeng Xian, Tan Ying, Chen Ya Dong, Zhao Hongping


anti-cancer drug discovery, aqueous solubility, artificial intelligence, chemical, compounds, deep learning