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Improving Metagenomic Classification using Discriminative k-mers from Sequencing Data
[article]
2020
bioRxiv
pre-print
The major problem when analyzing a metagenomic sample is to taxonomically annotate its reads in order to identify the species they contain. Most of the methods currently available focus on the classification of reads using a set of reference genomes and their k-mers. While in terms of precision these methods have reached percentages of correctness close to perfection, in terms of recall (the actual number of classified reads) the performances fall at around 50%. One of the reasons is the fact
doi:10.1101/2020.02.20.957308
fatcat:ea42cf3lhzczxo5couk4eeqbi4