KinPFN: Bayesian Approximation of RNA Folding Kinetics using Prior-Data Fitted Networks

KinPFN: Bayesian Approximation of RNA Folding Kinetics using Prior-Data Fitted Networks

Abstract

RNA is a dynamic biomolecule crucial for cellular regulation, with its function largely determined by its folding into complex structures, while misfolding can lead to multifaceted biological sequelae. During the folding process, RNA traverses through a series of intermediate structural states, with each transition occurring at variable rates that collectively influence the time required to reach the functional form. Understanding these folding kinetics is vital for predicting RNA behavior and optimizing applications in synthetic biology and drug discovery. While in silico kinetic RNA folding simulators are often computationally intensive and time-consuming, accurate approximations of the folding times can already be very informative to assess the efficiency of the folding process. In this work, we present KinPFN, a novel approach that leverages prior-data fitted networks to directly model the posterior predictive distribution of RNA folding times. By training on synthetic data representing arbitrary prior folding times, KinPFN efficiently approximates the cumulative distribution function of RNA folding times in a single forward pass, given only a few initial folding time examples. Our method offers a modular extension to existing RNA kinetics algorithms, promising significant computational speed-ups orders of magnitude faster, while achieving comparable results. We showcase the effectiveness of KinPFN through extensive evaluations and real-world case studies, demonstrating its potential for RNA folding kinetics analysis, its practical relevance, and generalization to other biological data. Primary

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Authors
  • Scheuer, Dominik
  • Runge, Frederic
  • Franke, Jörg
  • Wolfinger, Michael T.
  • Flamm, Christoph
  • Hutter, Frank
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Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Paper)
Event Title
The Thirteenth International Conference on Learning Representations
Divisions
Bioinformatics and Computational Biology
Event Location
Singapore
Event Type
Conference
Event Dates
Apr 24 2025
Date
2025
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