Published paper: ITSx
The paper describing our software tool ITSx has now gone online as an Early View paper on the Methods in Ecology and Evolution website. The software just recently left its beta-status behind, and with the paper out as well, we hope that as many people as possible will find use for the software in barcoding efforts of the ITS region. If you’re not familiar with the software – or its predecessor; the fungal ITS Extractor – here is a brief description of what it does:
ITSx is a Perl-based software tool that extracts the ITS1, 5.8S and ITS2 sequences – as well as full-length ITS sequences – from high-throughput sequencing data sets. To achieve this, we use carefully crafted hidden Markov models (HMMs), computed from large alignments of a total of 20 groups of eukaryotes. Testing has shown that ITSx has close to 100% detection accuracy, and virtually zero false-positive extractions. Additionally, it supports multiple processor cores, and is therefore suitable for running also on very large datasets. It is also able to eliminate non-ITS sequences from a given input dataset.
While ITSx supports extractions of ITS sequences from at least 20 different eukaryotic lineages, we ourselves have considerably less experience with many of the eukaryote groups outside of the fungi. We therefore release ITSx with the intent that the research community will evaluate its performance also in other parts of the eukaryote tree, and if necessary contribute data required to address also those lineages in a thorough way.
The ITSx paper can at the moment be cited as:
Bengtsson-Palme, J., Ryberg, M., Hartmann, M., Branco, S., Wang, Z., Godhe, A., De Wit, P., Sánchez-García, M., Ebersberger, I., de Sousa, F., Amend, A. S., Jumpponen, A., Unterseher, M., Kristiansson, E., Abarenkov, K., Bertrand, Y. J. K., Sanli, K., Eriksson, K. M., Vik, U., Veldre, V., Nilsson, R. H. (2013), Improved software detection and extraction of ITS1 and ITS2 from ribosomal ITS sequences of fungi and other eukaryotes for analysis of environmental sequencing data. Methods in Ecology and Evolution. doi: 10.1111/2041-210X.12073