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doi: 10.5061/dryad.96b0h
Obstacles to inferring species trees from whole genome data sets range from algorithmic and data management challenges to the wholesale discordance in evolutionary history found in different parts of a genome. Recent work that builds trees directly from genomes by parsing them into sets of small k-mer strings holds promise to streamline and simplify these efforts, but existing approaches do not account well for gene tree discordance. We describe a “seed and extend” protocol that finds nearly exact matching sets of orthologous k-mers and extends them to construct data sets that can properly account for genomic heterogeneity. Exploiting an efficient suffix array data structure, sets of whole genomes can be parsed and converted into phylogenetic data matrices rapidly, with contiguous blocks of k-mers from the same chromosome, gene, or scaffold concatenated as needed. Phylogenetic trees constructed from highly curated rice genome data and a diverse set of six other eukaryotic whole genome, transcriptome, and organellar genome data sets recovered trees nearly identical to published phylogenomic analyses, in a small fraction of the time, and requiring many fewer parameter choices. Our method’s ability to retain local homology information was demonstrated by using it to characterize gene tree discordance across the rice genome, and by its robustness to the high rate of interchromosomal gene transfer found in several rice species.
Supplementary Tables and FiguresThis file contains Supplementary Table 1 and Supplementary Figures 1-8.SI.SB.pdfData archiveA gzipped tarred archive that contains the raw data, logfiles, supermatrices, etc.that were needed in the paper and its appendix. Please see the README file for details on this (very large) archive.SANDERSON_ETAL_HAKMER_DATA.tar.gz
k-mer, suffix array, Oryza, lineage sorting
k-mer, suffix array, Oryza, lineage sorting
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