DRfold is a method for RNA tertiary structure prediction based on deep end-to-end and geomtry potentials. Given a query sequence, DRfold will first extract secondary strtcture information as the input of the deep learning model. Rotation matrices and translation vector of each nucleotide are predicted by the transformer networks. The conformations will be further optimized with the guidance of the hybrid potential composed of the end-to-end and inter-residue geometry predictions. Check [Help] page for more details.
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