NuFold (Nature Communications 2025)
github.com/kiharalab/nufoldEnd-to-end deep learning approach for RNA tertiary structure prediction with a flexible nucleobase center representation, achieving ~7 Å C1' RMSD across test RNAs and predicting ~545,000 structures covering 2,200+ RNA families (Kihara Lab, Purdue University, 50+ stars)
Sourced from
- Awesome AI for Science — github.com/kiharalab/nufold
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