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FilterDCA: Interpretable supervised contact prediction using inter-domain coevolution
2020
PLoS Computational Biology
Predicting three-dimensional protein structure and assembling protein complexes using sequence information belongs to the most prominent tasks in computational biology. Recently substantial progress has been obtained in the case of single proteins using a combination of unsupervised coevolutionary sequence analysis with structurally supervised deep learning. While reaching impressive accuracies in predicting residue-residue contacts, deep learning has a number of disadvantages. The need for
doi:10.1371/journal.pcbi.1007621
pmid:33035205
fatcat:32xm3zi7v5bqlbzqgscqe7lci4