Abstract
We present SquiggleNet, the first deep-learning model that can classify nanopore reads directly from their electrical signals. SquiggleNet operates faster than DNA passes through the pore, allowing real-time classification and read ejection. Using 1 s of sequencing data, the classifier achieves significantly higher accuracy than base calling followed by sequence alignment. Our approach is also faster and requires an order of magnitude less memory than alignment-based approaches. SquiggleNet distinguished human from bacterial DNA with over 90% accuracy, generalized to unseen bacterial species in a human respiratory meta genome sample, and accurately classified sequences containing human long interspersed repeat elements.
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CITATION STYLE
Bao, Y., Wadden, J., Erb-Downward, J. R., Ranjan, P., Zhou, W., McDonald, T. L., … Welch, J. D. (2021). SquiggleNet: real-time, direct classification of nanopore signals. Genome Biology, 22(1). https://doi.org/10.1186/s13059-021-02511-y
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