A protein structure design method and device based on deep learning

A technology of protein structure and deep learning, applied in the field of protein structure design methods and devices based on deep learning, can solve problems such as low effectiveness, high amino acid sequence repetition, poor interpretability, etc., to improve effectiveness and reduce network layers Number, the effect of reducing the amount of calculation

Active Publication Date: 2022-04-22
CUSABIO TECH LLC
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Problems solved by technology

[0009] In order to solve the problems of high repetition, low validity and poor interpretability of the amino acid sequence generated in the existing model-based protein design, the present invention provides a protein structure design method based on deep learning in the first aspect of the present invention, including the following Steps: Determine the gene sequence or molecular crystal structure information of the targeted protein according to the biomarker; input the gene sequence or molecular crystal structure information of the targeted protein into the geometric graph neural network model; use the trained geometric graph neural network model to generate Amino acid sequence; construct a protein skeleton model according to the generated amino acid sequence and its homologous protein; optimize the protein skeleton model according to proteomics and molecular dynamics

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  • A protein structure design method and device based on deep learning
  • A protein structure design method and device based on deep learning
  • A protein structure design method and device based on deep learning

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[0032] The principles and features of the present invention are described below in conjunction with the accompanying drawings, and the examples given are only used to explain the present invention, and are not intended to limit the scope of the present invention.

[0033] refer to figure 1 , in the first aspect of the present invention, a deep learning-based protein structure design method is provided, including the following steps: S101. Determine the gene sequence or molecular crystal structure information of the targeted protein according to the biomarker; S102. Sequence or molecular crystal structure information is input into the geometric graph neural network model; S103. Use the trained geometric graph neural network model (GGCN, Geometric Graph Convolutional Networks) to generate an amino acid sequence; S104. According to the generated amino acid sequence and its homologous Build a protein skeleton model for the source protein; S105. Optimize the protein skeleton model ...

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Abstract

The present invention relates to a protein structure design method and device based on deep learning, the method comprising: determining the gene sequence or molecular crystal structure information of the targeted protein according to biomarkers; inputting the gene sequence or molecular crystal structure information of the targeted protein into the geometric graph neural network model; use the trained geometric graph neural network model to generate an amino acid sequence; construct a protein skeleton model based on the generated amino acid sequence and homologous proteins; optimize the protein skeleton model according to proteomics and molecular dynamics. The present invention binds protein data to corresponding DNA sequences and mRNA sequences, on the one hand, improves the interpretability and effectiveness of amino acid sequences, and on the other hand reduces the time and effort of screening, repeated adsorption, elution, and amplification for protein design or verification. In the process, the calculation amount of the model is reduced through the geometric graph neural network.

Description

technical field [0001] The present invention relates to the fields of biological information and deep learning, in particular to a method and device for designing protein structures based on deep learning. Background technique [0002] As an important part of living organisms, proteins participate in most biological functions of living organisms. In particular, important physiological activities in the human body are completed by protein, which is an important material basis for life activities. As a class of macromolecules with the widest distribution and the most complex functions in organisms, the study of proteins has always been an important part of biology. [0003] The molecular structure of a protein includes four levels, in which the arrangement order of the amino acid sequence is called the primary structure of the protein; the polypeptide chain of the protein is regulated by hydrogen bonds between oxygen groups, regular and periodic The stable structure of the p...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G16B15/20G16B30/00G16B40/00G06N3/04G06F30/25
CPCG16B15/20G16B30/00G16B40/00G06F30/25G06N3/045
Inventor 华权高舒芹
Owner CUSABIO TECH LLC
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