NanoCaller 0.3.3 – Variant Calling tool for long-read Sequencing data

NanoCaller 0.3.3

:: DESCRIPTION

NanoCaller is a computational method that integrates long reads in deep convolutional neural network for the detection of SNPs/indels from long-read sequencing data. NanoCaller uses long-range haplotype structure to generate predictions for each SNP candidate variant site by considering pileup information of other candidate sites sharing reads. Subsequently, it performs read phasing, and carries out local realignment of each set of phased reads and the set of all reads for each indel candidate variant site to generate indel calling, and then creates consensus sequences for indel sequence prediction.

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::DEVELOPER

Wang Genomics Lab

:: SCREENSHOTS

N/A

:: REQUIREMENTS

  • Linux
  • Pyton

:: DOWNLOAD

NanoCaller

:: MORE INFORMATION

Citation

Ahsan, Umair and Liu, Qian and Wang, Kai.
NanoCaller for accurate detection of SNPs and small indels from long-read sequencing by deep neural networks.
bioRxiv 2019.12.29.890418; doi: https://doi.org/10.1101/2019.12.29.890418

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