Motivation: Low-frequency DNA mutations are often confounded with technical artifacts from sample preparation and sequencing. With unique molecular identifiers (UMIs), most of the sequencing errors can be corrected. However, errors before UMI tagging, such as DNA polymerase errors during end repair and the first PCR cycle, cannot be corrected with single-strand UMIs and impose fundamental limits to UMI-based variant calling. Results: We developed smCounter2, a UMI-based variant caller for targeted sequencing data and an upgrade from the current version of smCounter. Compared to smCounter, smCounter2 features lower detection limit that decreases from 1 to 0.5%, better overall accuracy (particularly in non-coding regions), a consistent threshold that can be applied to both deep and shallow sequencing runs, and easier use via a Docker image and code for read pre-processing. We benchmarked smCounter2 against several state-of-the-art UMI-based variant calling methods using multiple datasets and demonstrated smCounter2's superior performance in detecting somatic variants. At the core of smCounter2 is a statistical test to determine whether the allele frequency of the putative variant is significantly above the background error rate, which was carefully modeled using an independent dataset. The improved accuracy in non-coding regions was mainly achieved using novel repetitive region filters that were specifically designed for UMI data. Availability and implementation: The entire pipeline is available at https://github.com/qiaseq/qia seq-dna under MIT license.
CITATION STYLE
Xu, C., Gu, X., Padmanabhan, R., Wu, Z., Peng, Q., DiCarlo, J., & Wang, Y. (2019). Smcounter2: An accurate low-frequency variant caller for targeted sequencing data with unique molecular identifiers. Bioinformatics, 35(8), 1299–1309. https://doi.org/10.1093/bioinformatics/bty790
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