Publication | Open Access
Chiron: Translating nanopore raw signal directly into nucleotide sequence using deep learning
16
Citations
31
References
2017
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningMolecular BiologyBiological ComputingHigh Throughput SequencingData ScienceNucleotide SequenceDna ComputingDna SequencingAbstract SequencingMedical Image ComputingDeep LearningBioinformaticsNanopore TechnologyDesktop Computer GraphicsUnseen SpeciesLong-read SequencingComputational BiologyMicrobiologyRaw SignalSystems BiologyMedicineNanoporesSequence Assembly
ABSTRACT Sequencing by translocating DNA fragments through an array of nanopores is a rapidly maturing technology which offers faster and cheaper sequencing than other approaches. However, accurately deciphering the DNA sequence from the noisy and complex electrical signal is challenging. Here, we report Chiron, the first deep learning model to achieve end-to-end basecalling: directly translating the raw signal to DNA sequence without the error-prone segmentation step. Trained with only a small set of 4000 reads, we show that our model provides state-of-the-art basecalling accuracy even on previously unseen species. Chiron achieves basecalling speeds of over 2000 bases per second using desktop computer graphics processing units.
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