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A review of deep learning applications for genomic selection.

Osval Antonio Montesinos-LópezAbelardo Montesinos-LópezPaulino Pérez-RodríguezJosé Alberto Barrón-LópezJohannes W R MartiniSilvia Berenice Fajardo-FloresLaura S Gaytan-LugoPedro C Santana-MancillaJosé Crosa
Published in: BMC genomics (2021)
The main requirement for using DL is the quality and sufficiently large training data. Although, based on current literature GS in plant and animal breeding we did not find clear superiority of DL in terms of prediction power compared to conventional genome based prediction models. Nevertheless, there are clear evidences that DL algorithms capture nonlinear patterns more efficiently than conventional genome based. Deep learning algorithms are able to integrate data from different sources as is usually needed in GS assisted breeding and it shows the ability for improving prediction accuracy for large plant breeding data. It is important to apply DL to large training-testing data sets.
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