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DEEPred: Automated Protein Function Prediction with Multi-task Feed-forward Deep Neural Networks
2019
Scientific Reports
Automated protein function prediction is critical for the annotation of uncharacterized protein sequences, where accurate prediction methods are still required. Recently, deep learning based methods have outperformed conventional algorithms in computer vision and natural language processing due to the prevention of overfitting and efficient training. Here, we propose DEEPred, a hierarchical stack of multi-task feed-forward deep neural networks, as a solution to Gene Ontology (GO) based protein
doi:10.1038/s41598-019-43708-3
pmid:31089211
pmcid:PMC6517386
fatcat:7ayut2gfubfojhw74posmhrvbq