FastTree: computing large minimum evolution trees with profiles instead of a distance matrix

MN Price, PS Dehal, AP Arkin - Molecular biology and evolution, 2009 - academic.oup.com
Molecular biology and evolution, 2009academic.oup.com
Gene families are growing rapidly, but standard methods for inferring phylogenies do not
scale to alignments with over 10,000 sequences. We present FastTree, a method for
constructing large phylogenies and for estimating their reliability. Instead of storing a
distance matrix, FastTree stores sequence profiles of internal nodes in the tree. FastTree
uses these profiles to implement Neighbor-Joining and uses heuristics to quickly identify
candidate joins. FastTree then uses nearest neighbor interchanges to reduce the length of …
Gene families are growing rapidly, but standard methods for inferring phylogenies do not scale to alignments with over 10,000 sequences. We present FastTree, a method for constructing large phylogenies and for estimating their reliability. Instead of storing a distance matrix, FastTree stores sequence profiles of internal nodes in the tree. FastTree uses these profiles to implement Neighbor-Joining and uses heuristics to quickly identify candidate joins. FastTree then uses nearest neighbor interchanges to reduce the length of the tree. For an alignment with N sequences, L sites, and a different characters, a distance matrix requires O (N 2) space and O (N 2 L) time, but FastTree requires just O (NLa+ N) memory and O (N log (N) La) time. To estimate the tree's reliability, FastTree uses local bootstrapping, which gives another 100-fold speedup over a distance matrix. For example, FastTree computed a tree and support values for 158,022 distinct 16S ribosomal RNAs in 17 h and 2.4 GB of memory. Just computing pairwise Jukes–Cantor distances and storing them, without inferring a tree or bootstrapping, would require 17 h and 50 GB of memory. In simulations, FastTree was slightly more accurate than Neighbor-Joining, BIONJ, or FastME; on genuine alignments, FastTree's topologies had higher likelihoods. FastTree is available at http://microbesonline. org/fasttree.
Oxford University Press