RT Journal Article SR Electronic T1 An End-to-end Oxford Nanopore Basecaller Using Convolution-augmented Transformer JF bioRxiv FD Cold Spring Harbor Laboratory SP 2020.11.09.374165 DO 10.1101/2020.11.09.374165 A1 Lv, Xuan A1 Chen, Zhiguang A1 Lu, Yutong A1 Yang, Yuedong YR 2020 UL http://biorxiv.org/content/early/2020/11/10/2020.11.09.374165.abstract AB Oxford Nanopore sequencing is fastly becoming an active field in genomics, and it’s critical to basecall nucleotide sequences from the complex electrical signals. Many efforts have been devoted to developing new basecalling tools over the years. However, the basecalled reads still suffer from a high error rate and slow speed. Here, we developed an open-source basecalling method, CATCaller, by simultaneously capturing global context through Attention and modeling local dependencies through dynamic convolution. The method was shown to consistently outper-form the ONT default basecaller Albacore, Guppy, and a recently developed attention-based method SACall in read accuracy. More importantly, our method is fast through a heterogeneously computational model to integrate both CPUs and GPUs. When compared to SACall, the method is nearly 4 times faster on a single GPU, and is highly scalable in parallelization with a further speedup of 3.3 on a four-GPU node.Competing Interest StatementThe authors have declared no competing interest.