2024
DOI: 10.1101/2024.04.05.588303
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A Deep Learning-Driven Sampling Technique to Explore the Phase Space of an RNA Stem-Loop

Ayush Gupta,
Heng Ma,
Arvind Ramanathan
et al.

Abstract: The folding and unfolding of RNA stem-loops are critical biological processes; however, their computational studies are often hampered by the ruggedness of their folding landscape, necessitating long simulation times at the atomistic scale. Here, we adapted DeepDriveMD (DDMD), an advanced deep learning-driven sampling technique originally developed for protein folding, to address the challenges of RNA stem-loop folding. Although tempering- and order parameter-based techniques are commonly used for similar rare… Show more

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