
Abstract Summary Human alpha satellite and satellite 2/3 contribute to several percent of the human genome. However, identifying these sequences with traditional algorithms is computationally intensive. Here we develop dna-brnn, a recurrent neural network to learn the sequences of the two classes of centromeric repeats. It achieves high similarity to RepeatMasker and is times faster. Dna-brnn explores a novel application of deep learning and may accelerate the study of the evolution of the two repeat classes. Availability and implementation https://github.com/lh3/dna-nn
Genomics (q-bio.GN), Genome, Human, FOS: Biological sciences, Centromere, Humans, Quantitative Biology - Genomics, Neural Networks, Computer, DNA, Satellite, Algorithms
Genomics (q-bio.GN), Genome, Human, FOS: Biological sciences, Centromere, Humans, Quantitative Biology - Genomics, Neural Networks, Computer, DNA, Satellite, Algorithms
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