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ABC-Net: a divide-and-conquer based deep learning architecture for SMILES recognition from molecular images.

Xiao-Chen ZhangJia-Cai YiGuo-Ping YangCheng-Kun WuTing-Jun HouDong-Sheng Cao
Published in: Briefings in bioinformatics (2022)
Structural information for chemical compounds is often described by pictorial images in most scientific documents, which cannot be easily understood and manipulated by computers. This dilemma makes optical chemical structure recognition (OCSR) an essential tool for automatically mining knowledge from an enormous amount of literature. However, existing OCSR methods fall far short of our expectations for realistic requirements due to their poor recovery accuracy. In this paper, we developed a deep neural network model named ABC-Net (Atom and Bond Center Network) to predict graph structures directly. Based on the divide-and-conquer principle, we propose to model an atom or a bond as a single point in the center. In this way, we can leverage a fully convolutional neural network (CNN) to generate a series of heat-maps to identify these points and predict relevant properties, such as atom types, atom charges, bond types and other properties. Thus, the molecular structure can be recovered by assembling the detected atoms and bonds. Our approach integrates all the detection and property prediction tasks into a single fully CNN, which is scalable and capable of processing molecular images quite efficiently. Experimental results demonstrate that our method could achieve a significant improvement in recognition performance compared with publicly available tools. The proposed method could be considered as a promising solution to OCSR problems and a starting point for the acquisition of molecular information in the literature.
Keyphrases
  • convolutional neural network
  • deep learning
  • molecular dynamics
  • neural network
  • systematic review
  • artificial intelligence
  • electron transfer
  • high resolution
  • machine learning
  • healthcare
  • mental health
  • social media