RT Journal Article SR Electronic(1) A1 Robinson, Kelly M. A1 Hawkins, Aziah S. A1 Santana-Cruz, Ivette A1 Adkins, Ricky S. A1 Shetty, Amol C. A1 Nagaraj, Sushma A1 Sadzewicz, Lisa A1 Tallon, Luke J. A1 Rasko, David A. A1 Fraser, Claire M. A1 Mahurkar, Anup A1 Silva, Joana C. A1 Dunning Hotopp, Julie C.YR 2017 T1 Aligner optimization increases accuracy and decreases compute times in multi-species sequence data JF Microbial Genomics, VO 3 IS 9 OP SP e000122 DO https://doi.org/10.1099/mgen.0.000122 PB Microbiology Society, SN 2057-5858, AB doi: 10.1099/mgen.0.000122.001. As sequencing technologies have evolved, the tools to analyze these sequences have made similar advances. However, for multi-species samples, we observed important and adverse differences in alignment specificity and computation time for bwa- mem (Burrows–Wheeler aligner-maximum exact matches) relative to bwa-aln. Therefore, we sought to optimize bwa-mem for alignment of data from multi-species samples in order to reduce alignment time and increase the specificity of alignments. In the multi-species cases examined, there was one majority member (i.e. Plasmodium falciparum or Brugia malayi) and one minority member (i.e. human or the Wolbachia endosymbiont wBm) of the sequence data. Increasing bwa-mem seed length from the default value reduced the number of read pairs from the majority sequence member that incorrectly aligned to the reference genome of the minority sequence member. Combining both source genomes into a single reference genome increased the specificity of mapping, while also reducing the central processing unit (CPU) time. In Plasmodium, at a seed length of 18 nt, 24.1 % of reads mapped to the human genome using 1.7±0.1 CPU hours, while 83.6 % of reads mapped to the Plasmodium genome using 0.2±0.0 CPU hours (total: 107.7 % reads mapping; in 1.9±0.1 CPU hours). In contrast, 97.1 % of the reads mapped to a combined Plasmodium–human reference in only 0.7±0.0 CPU hours. Overall, the results suggest that combining all references into a single reference database and using a 23 nt seed length reduces the computational time, while maximizing specificity. Similar results were found for simulated sequence reads from a mock metagenomic data set. We found similar improvements to computation time in a publicly available human-only data set., UL https://www.microbiologyresearch.org/content/journal/mgen/10.1099/mgen.0.000122