Antibody calculation optimization method based on genetic algorithm

An optimization method and genetic algorithm technology, applied in genetic rules, genetic models, biostatistics, etc., can solve problems such as different writing languages, complex code writing, and inability to explore better solutions for antibodies, and achieve the effect of reducing dependence

Pending Publication Date: 2021-02-12
北京迈迪培尔信息技术有限公司
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Problems solved by technology

[0004] Antibody computational optimization design involves multiple steps, including but not limited to sequence annotation, sequence design, antibody modeling, H3 loop modeling, molecular docking, and predictability of development, etc. The realization of the above functions usually requires multiple different tools. These tools Developed by different researchers, there are uneven algorithm performance, different writing languages, and complex code writing, which greatly limits the ability of researchers to use these tools for antibody design
[0005] Therefore, the existing antibody computational optimization design method needs to learn and operate a variety of different algorithms, tools, and software; and it needs to rely on expert experience to implement specific mutations on individual sites of the antibody to predict whether the binding performance of the antibody is improved; The generated antibody sequence is obviously constrained by the existing antibody sequence, and it is impossible to explore more possible optimal solutions for antibodies

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  • Antibody calculation optimization method based on genetic algorithm
  • Antibody calculation optimization method based on genetic algorithm
  • Antibody calculation optimization method based on genetic algorithm

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[0036]The technical solutions of the present invention will be clearly and completely described below in conjunction with the accompanying drawings of the present invention. Obviously, the described embodiments are only a part of the embodiments of the present invention, rather than all the embodiments. Based on the embodiments of the present invention, all other embodiments obtained by those of ordinary skill in the art without creative work shall fall within the protection scope of the present invention.

[0037]Such asfigure 1As shown, the present invention proposes an antibody optimization method and system based on genetic algorithm. The system is based on the known antibody sequence data, targeting its heavy chain highly variable H3 segment (CDR H3), using genetic algorithms to iteratively generate and evaluate the mutant antibody sequence formed by the combination of random sites and random residues, and compare it with the original The antibodies are comprehensively scored and ...

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Abstract

The invention provides an antibody calculation optimization method based on a genetic algorithm. The method covers algorithms such as peptide chain processing, epitope recognition, sequence annotation, CDR H3 sequence design, antibody modeling, molecular docking, antibody property evaluation and the like, and has a full-process automatic antibody design function. Based on known antibody sequence data, a variant antibody sequence formed by combining random sites and random residues is iteratively generated and evaluated by utilizing a genetic algorithm aiming at a heavy-chain highly variable H3section (CDR H3) of the antibody and is subjected to comprehensive scoring comparison with an original antibody, so that an optimized antibody is obtained or a low-quality antibody is removed, and finally, a candidate antibody sequence library is generated, and the biophysical property of the candidate antibody is predicted. According to the invention, basic elements of an antibody calculation optimization process are integrated, and automation of the process is realized on the same platform.

Description

Technical field[0001]The invention relates to the technical field of bioinformatics, in particular to protein molecular structure design, and in particular to a genetic algorithm-based antibody calculation optimization method.Background technique[0002]In recent years, with the continuous increase of bioinformatics and structural biology data of antibodies and their targets, as well as the iterative development of computational tools, the technology of computational antibody design optimization for specific antigens or epitopes has been rapidly developed. The computational antibody design method can target the design of antibodies with epitope specificity and affinity. The advantage of computational antibody design is that the algorithm model based on artificial intelligence can construct a large-scale computational antibody mutation library, and the solubility, surface hydrophobicity, local surface charge, aggregation tendency and other key characteristics of the antibody can be obt...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G16B5/00G16B40/00G06N3/12
CPCG06N3/126G16B5/00G16B40/00
Inventor 宋伟李靖佟凡赵东升王鹏飞刘圣郑刘梦
Owner 北京迈迪培尔信息技术有限公司
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