Abstract

Abstract Motivation: Next-generation sequencing techniques have facilitated a large-scale analysis of human genetic variation. Despite the advances in sequencing speed, the computational discovery of structural variants is not yet standard. It is likely that many variants have remained undiscovered in most sequenced individuals. Results: Here, we present a novel internal segment size based approach, which organizes all, including concordant, reads into a read alignment graph, where max-cliques represent maximal contradiction-free groups of alignments. A novel algorithm then enumerates all max-cliques and statistically evaluates them for their potential to reflect insertions or deletions. For the first time in the literature, we compare a large range of state-of-the-art approaches using simulated Illumina reads from a fully annotated genome and present relevant performance statistics. We achieve superior performance, in particular, for deletions or insertions (indels) of length 20–100 nt. This has been previously identified as a remaining major challenge in structural variation discovery, in particular, for insert size based approaches. In this size range, we even outperform split-read aligners. We achieve competitive results also on biological data, where our method is the only one to make a substantial amount of correct predictions, which, additionally, are disjoint from those by split-read aligners. Availability: CLEVER is open source (GPL) and available from http://clever-sv.googlecode.com. Contact: as@cwi.nl or tm@cwi.nl Supplementary information: Supplementary data are available at Bioinformatics online.

Keywords

Computer scienceIndelStructural variationCliqueComputational biologyGenomeBiologyGeneticsMathematicsGeneCombinatorics

Affiliated Institutions

Related Publications

RolX

Given a network, intuitively two nodes belong to the same role if they have similar structural behavior. Roles should be automatically determined from the data, and could be, fo...

2012 386 citations

Publication Info

Year
2012
Type
article
Volume
28
Issue
22
Pages
2875-2882
Citations
114
Access
Closed

External Links

Social Impact

Social media, news, blog, policy document mentions

Citation Metrics

114
OpenAlex

Cite This

Tobias Marschall, Ivan G. Costa, Stefan Canzar et al. (2012). CLEVER: clique-enumerating variant finder. Bioinformatics , 28 (22) , 2875-2882. https://doi.org/10.1093/bioinformatics/bts566

Identifiers

DOI
10.1093/bioinformatics/bts566