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Small molecule drug hERG toxicity prediction method and device based on graph attention mechanism transfer learning

A toxicity prediction and attention mechanism technology, applied in chemical property prediction, chemical machine learning, molecular design, etc., can solve problems such as difficulty in building models and small amount of hERG sample data

Active Publication Date: 2021-07-30
NANJING UNIV OF POSTS & TELECOMM
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Problems solved by technology

The general machine learning method needs to collect a large amount of sample data when building a model. However, due to the high requirements of the hERG experiment and the small amount of hERG sample data, it is difficult to build a good model for predicting hERG indicators.

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  • Small molecule drug hERG toxicity prediction method and device based on graph attention mechanism transfer learning
  • Small molecule drug hERG toxicity prediction method and device based on graph attention mechanism transfer learning
  • Small molecule drug hERG toxicity prediction method and device based on graph attention mechanism transfer learning

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Embodiment Construction

[0045] Objects, advantages and features of the present invention will be illustrated and explained by the following non-limiting description of preferred embodiments. These embodiments are only typical examples of applying the technical solutions of the present invention, and all technical solutions formed by adopting equivalent replacements or equivalent transformations fall within the protection scope of the present invention.

[0046] The present invention discloses a small molecule drug hERG toxicity prediction method and device based on graph attention mechanism transfer learning. The small molecule drug hERG toxicity prediction method based on graph attention mechanism transfer learning can first obtain molecular graphs effectively through the graph attention mechanism. The substructures in the structure that have a high contribution to the prediction of hERG toxicity can improve the prediction accuracy, and secondly, the problem of insufficient hERG sample data is solved...

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Abstract

The invention discloses a graph attention mechanism transfer learning-based small molecule drug hERG toxicity prediction method and device; the method comprises the following steps: S1, data set preprocessing: enabling a to-be-detected drug-like compound to generate a fingerprint sequence through molecular fingerprint generation software; s2, acquiring atom and chemical bond characteristics through the fingerprint sequence generated in the step S1, and constructing a molecular graph and graph characteristics through the atom and chemical bond characteristics; s3, processing the molecular map obtained in the step S2 through a map attention mechanism, and generating a feature vector of each atom in the molecule; s4, generating a molecular feature vector through a graph attention mechanism and the feature of each atom. According to the method, a molecular graph structure is processed based on a graph attention mechanism, a substructure which contributes to a predicted attribute value is effectively obtained, and a source domain data set and a target domain data set are processed based on transfer learning; and thereby, the problem that the sample size is insufficient is effectively solved.

Description

technical field [0001] The invention relates to a small molecule drug hERG toxicity prediction method and device based on graph attention mechanism transfer learning, which can be used in the technical field of artificial intelligence drug design. Background technique [0002] Small molecule drug toxicity is a kind of toxicology research. In the process of drug development, it plays an equally important role with pharmacokinetic research and pharmacodynamic research, and is one of the main reasons for the failure of drug research and development. Putting the toxicity evaluation of small molecule drugs in the early stage of new drug development can help shorten the development cycle and reduce the cost of research and development. It can be seen that the toxicity evaluation of small molecule drugs is very necessary. [0003] The traditional toxicity detection based on biological experiments is a common method for toxicity assessment of small molecule compounds. Although the t...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G16C20/30G16C20/50G16C20/70G16C20/90
CPCG16C20/30G16C20/50G16C20/70G16C20/90
Inventor 吴建盛朱阳胡海峰朱燕翔
Owner NANJING UNIV OF POSTS & TELECOMM
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