MolCAP: Molecular Chemical reActivity Pretraining and prompted-finetuning enhanced molecular representation learning

Comput Biol Med. 2023 Dec:167:107666. doi: 10.1016/j.compbiomed.2023.107666. Epub 2023 Nov 3.

Abstract

Molecular representation learning (MRL) is a fundamental task for drug discovery. However, previous deep-learning (DL) methods focus excessively on learning robust inner-molecular representations by mask-dominated pretraining frameworks, neglecting abundant chemical reactivity molecular relationships that have been demonstrated as the determining factor for various molecular property prediction tasks. Here, we present MolCAP to promote MRL, a graph-pretraining Transformer based on chemical reactivity (IMR) knowledge with prompted finetuning. Results show that MolCAP outperforms comparative methods based on traditional molecular pretraining frameworks, in 13 publicly available molecular datasets across a diversity of biomedical tasks. Prompted by MolCAP, even basic graph neural networks are capable of achieving surprising performance that outperforms previous models, indicating the promising prospect of applying reactivity information to MRL. In addition, manually designed molecular templets are potential to uncover the dataset bias. All in all, we expect our MolCAP to gain more chemical meaningful insights for the entire process of drug discovery.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Drug Discovery*
  • Learning*
  • Neural Networks, Computer