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Estimation of genome size using k-mer frequencies from corrected long reads

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arxiv 2003.11817 v1 pith:V3QI7QHH submitted 2020-03-26 q-bio.GN

Estimation of genome size using k-mer frequencies from corrected long reads

classification q-bio.GN
keywords k-mergenomesequencingdatasizethird-generationcorrectedcounting
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The third-generation long reads sequencing technologies, such as PacBio and Nanopore, have great advantages over second-generation Illumina sequencing in de novo assembly studies. However, due to the inherent low base accuracy, third-generation sequencing data cannot be used for k-mer counting and estimating genomic profile based on k-mer frequencies. Thus, in current genome projects, second-generation data is also necessary for accurately determining genome size and other genomic characteristics. We show that corrected third-generation data can be used to count k-mer frequencies and estimate genome size reliably, in replacement of using second-generation data. Therefore, future genome projects can depend on only one sequencing technology to finish both assembly and k-mer analysis, which will largely decrease sequencing cost in both time and money. Moreover, we present a fast light-weight tool kmerfreq and use it to perform all the k-mer counting tasks in this work. We have demonstrated that corrected third-generation sequencing data can be used to estimate genome size and developed a new open-source C/C++ k-mer counting tool, kmerfreq, which is freely available at https://github.com/fanagislab/kmerfreq.

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