A quantum chemical convolutional neural network model for predicting thermodynamics and kinetics of DNA molecules from sequences

22 June 2022, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

Accurate predicting thermodynamics and kinetics of DNA molecules are important for designing oligonucleotides in biotechnological applications, but current models in use are not accurate enough. Here, we propose a model combining quantum chemical calculations and convolutional neural networks (QCM) to predict the free energies of DNA duplexes and rate constants of DNA strand displacement reactions. The QCM achieves better accuracy than previous models on two limited datasets by active learning, the accuracy of predicting free energies of duplexes is 23% better than the nearest neighbor model, and the accuracy of predicting rate constants of strand displacement reactions is 60% better than the worm-like chain model.

Keywords

DNA computing
Machine learning
Reaction Rates

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