METHOD AND DEVICE FOR DETERMINATION OF GENE ASSOCIATION DEGREE Russian patent published in 2023 - IPC G06F16/33 

Abstract RU 2790285 C1

FIELD: biotechnology.

SUBSTANCE: method for determination of a degree of association between a disease description record and a gene is described. By means of a unit for determination of a disease description record, the disease description record in a case description text is determined. For each of a set of given association databases: by means of a unit for determination of an association indicator, record data for a target association record(s) is determined in the given association database in accordance with the disease description record and gene identifiers, each of which corresponds to one of a set of genes, wherein each of given association databases stores records of association of the disease description record and gene identifiers corresponding to at least one of the set of genes. By means of the unit for determination of an association indicator, record data is entered into a given record matrix of gene association to determine an association indicator of the disease description record with the corresponding each of the set of genes from the given association database. By means of a unit for determination of a degree of association, degrees of association between the disease description record and each of the set of genes are determined in accordance with association indicators of the disease description record with gene identifiers corresponding to the set of genes from the set of given association databases. A corresponding device for determination of a degree of association between a disease description record and a gene, containing the above-mentioned units, is also described. In addition, a storage medium for determination of a degree of association between a disease description record and a gene is described. According to the invention, a program is stored on the storage medium, and, when executed by a processor, it implements a method for determination of a degree of gene association. A processor is disclosed for determination of a degree of association between a disease description record and a gene. According to the invention, the processor is used to execute a program, wherein the program, when executed, implements a method for determination of a degree of gene association. An electronic device for determination of a degree of association between a disease description record and a gene is presented, containing at least one processor, at least one processor-associated memory, and a bus. In this case, the processor communicates with memory via the bus, and the processor is used to call program commands from memory to implement a method for determination of a degree of gene association.

EFFECT: solution allows for an increase in a speed of determination of a degree of association between a disease description record and each of a set of genes.

15 cl, 6 dwg

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RU 2 790 285 C1

Authors

Zhou, Jian

Kong, Lingxiang

Wang, Jinan

He, Zengquan

Dates

2023-02-16Published

2021-01-21Filed