An attention-based neural network basecaller for Oxford Nanopore sequencing data | IEEE Conference Publication | IEEE Xplore

An attention-based neural network basecaller for Oxford Nanopore sequencing data


Abstract:

Highly portable Oxford Nanopore sequencer producing long reads in real time at low cost has made many breakthroughts in genomics studies. However, a major limitation of n...Show More

Abstract:

Highly portable Oxford Nanopore sequencer producing long reads in real time at low cost has made many breakthroughts in genomics studies. However, a major limitation of nanopore sequencing is its high errors when deciphering DNA sequences from noisy and complex raw data. Here we develops SACall, an end-to-end basecaller based on convolution layers, transformer self-attention layers and CTC decoder. From the perspective of read accuracy, SACall yields better performance in the benchmark than ONT official basecaller Guppy and Albacore. SACall is an open-source, freely available basecaller, which gives a chance for researchers to train new basecalling models on specific data and basecall Nanopore reads.
Date of Conference: 18-21 November 2019
Date Added to IEEE Xplore: 06 February 2020
ISBN Information:
Conference Location: San Diego, CA, USA

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