Chemical language models for generating compounds with triple-target activity

Polypharmacology-based drug discovery relies on compounds with multi-target activity that are identified in screening and target profiling assays or using computational methods. Contemporary design of multi-target compounds is advanced by deep generative modeling. Dual-target compounds (DT-CPDs) are known for having a large number of target combinations, providing a sound basis for machine learning. By contrast, only comparably small numbers of triple-target compounds (TT-CPDs) are available, covering a very limited target space. Here, we investigate how this data restriction might be overcome to enable generative design of new TT-CPDs. Therefore, a transformer model is pre-trained to generate DT-CPDs from corresponding single-target compounds and used as a base model for triple-target fine-tuning. For different target combinations, the resulting models correctly reproduce known TT-CPDs not encountered during fine-tuning. Feature importance analysis explains the predictions and reveals structural motifs implicated in target selectivity or triple-target activity, thus providing a chemically intuitive rationale for the approach.

Citation information

Srinivasan, Sanjana; Bajorath, Jürgen: Chemical language models for generating compounds with triple-target activity, Cell Reports Physical Science, 2026, 7, 1, January, Elsevier, https://www.cell.com/cell-reports-physical-science/abstract/S2666-3864(25)00653-8, Srinivasan.Bajorath.2026a,

Associated Lamarr Researchers

lamarr institute person Bajorath Juergen - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Prof. Dr. Jürgen Bajorath

Area Chair Life Sciences & Health to the profile