FIELD: computing technology.
SUBSTANCE: invention relates to a method for building a classifier of pathogenicity of variants. Also to a method for building a classifier based on a convolutional neural network for classifying variants, implemented by means of a computer, to computer-readable long-term information storage media and systems including one or multiple processors associated with memory.
EFFECT: provided classification of pathogenicity of variants by means of a neural network.
23 cl, 1 ex, 66 dwg, 8 tbl
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Authors
Dates
2022-03-17—Published
2018-10-15—Filed