MAPseq: highly efficient k-mer search with confidence estimates, for rRNA sequence analysis

作者:Rodrigues Joao F Matias; Schmidt Thomas S B; Tackmann Janko; von Mering Christian*
来源:Bioinformatics, 2017, 33(23): 3808-3810.
DOI:10.1093/bioinformatics/btx517

摘要

Motivation: Ribosomal RNA profiling has become crucial to studying microbial communities, but meaningful taxonomic analysis and inter-comparison of such data are still hampered by technical limitations, between-study design variability and inconsistencies between taxonomies used. Results: Here we present MAPseq, a framework for reference-based rRNA sequence analysis that is up to 30% more accurate (F-1/2 score) and up to one hundred times faster than existing solutions, providing in a single run multiple taxonomy classifications and hierarchical operational taxonomic unit mappings, for rRNA sequences in both amplicon and shotgun sequencing strategies, and for datasets of virtually any size.

  • 出版日期2017-12-1