Skip to main content
Bioinformatics logoLink to Bioinformatics
. 2011 Dec 21;28(1):150. doi: 10.1093/bioinformatics/btr647

Sensitive and fast mapping of di-base encoded reads

Farhad Hormozdiari 1, Faraz Hach 2, S Cenk Sahinalp 2, Evan E Eichler 1, Can Alkan 1
PMCID: PMC3276229

Bioinformatics (2011) 27(4), 1915–1921.

The authors find it worth mentioning that the parameters used to run the PerM mapper were not optimal to achieve full sensitivity. Based on the new recommendations of the developers of PerM, we used the latest version of PerM (v. 0.3.6), and updated two parameters as follows:

  • –seed F2 (full sensitivity for 1 SNPs); -v 2 (number of mismatches); -k 1 000 000 (maximum number of alignment for a read); -A (report all possible mapping for a reads).

Previously, we have used ‘–seed S20 -k 10000 -v 4’. With this update, PerM now achieves full sensitivity in our simulation experiment. With real datasets (Table 6), PerM tends to map more reads compared with Bowtie, but maps slightly less than Mapreads and SOCS.

We would like to apologize for the previous parameter sets we used for PerM, due to our misinterpretation of its documentation. We now update the relevant rows in Tables 3 and 6 as follows.

Table 3.

Performance of PerM with simulated datasets considering the new parameters

Dataset Mapper Time (min) Map locations Reads mapped (%)
Set 1 PerM 9 46 854 056 100
Set 2 PerM 6 17 290 574 100
Set 3 PerM 6 24 525 864 100

Reads are simulated from human reference genome build 35 (chromosome 1). Set 1: no errors; Set 2: color errors; Set 3: substitutions.

Table 6.

Performance of PerM with real datasets using the new parameters

Dataset Mapper Time (min) Map locations Reads mapped (%)
NA18507 PerM 35 51 012 126 35.2
NA10847 PerM 130 132 417 348 44.6
NA12156 PerM 116 64 821 620 31.1

Articles from Bioinformatics are provided here courtesy of Oxford University Press

RESOURCES