High-Throughput DNA melt measurements enable improved models of DNA folding thermodynamics

Yuxi Ke,Eesha Sharma, Hannah K. Wayment-Steele,Winston R. Becker, Anthony Ho, Emil Marklund,William J. Greenleaf

biorxiv(2024)

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摘要
DNA folding thermodynamics are central to many biological processes and biotechnological applications involving base-pairing. Current methods for predicting stability from DNA sequence use nearest-neighbor models that struggle to accurately capture the diverse sequence-dependency of elements other than Watson-Crick base pairs, likely due to insufficient experimental data. We introduce a massively parallel method, Array Melt, that uses fluorescence-based quenching signals to measure equilibrium stability of millions of DNA hairpins simultaneously on a repurposed Illumina sequencing flow cell. By leveraging this dataset of 27,732 sequences with two-state melting behavior, we derived a refined NUPACK-compatible nearest-neighbor model, a richer parameterization nearest-neighbor model that exhibits higher accuracy, and a graph neural network (GNN) model that identifies relevant interactions within DNA beyond nearest neighbors. All models provide improved accuracy in predicting DNA folding thermodynamics, providing improvements relevant for in silico design of qPCR primers, oligo hybridization probes, and DNA origami. ### Competing Interest Statement The authors have declared no competing interest.
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