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SyntaLinker: automatic fragment linking with deep conditional transformer neural networks.

Yuyao YangShuangjia ZhengShimin SuChao ZhaoJun XuHongming Chen
Published in: Chemical science (2020)
Linking fragments to generate a focused compound library for a specific drug target is one of the challenges in fragment-based drug design (FBDD). Hereby, we propose a new program named SyntaLinker, which is based on a syntactic pattern recognition approach using deep conditional transformer neural networks. This state-of-the-art transformer can link molecular fragments automatically by learning from the knowledge of structures in medicinal chemistry databases (e.g. ChEMBL database). Conventionally, linking molecular fragments was viewed as connecting substructures that were predefined by empirical rules. In SyntaLinker, however, the rules of linking fragments can be learned implicitly from known chemical structures by recognizing syntactic patterns embedded in SMILES notations. With deep conditional transformer neural networks, SyntaLinker can generate molecular structures based on a given pair of fragments and additional restrictions. Case studies have demonstrated the advantages and usefulness of SyntaLinker in FBDD.
Keyphrases
  • neural network
  • high resolution
  • healthcare
  • adverse drug
  • single molecule
  • quality improvement
  • emergency department
  • machine learning
  • mass spectrometry
  • deep learning