HQAlign: Aligning nanopore reads for SV detection using current-level modeling
Dhaivat Joshi, Suhas Diggavi, Mark J.P. Chaisson, Sreeram, Kannan

TL;DR
HQAlign is a novel nanopore read aligner that leverages current-level modeling and SV-specific adjustments to improve structural variant detection accuracy and alignment rates compared to existing methods.
Contribution
It introduces a new alignment approach that incorporates nanopore physics and SV-specific modifications into minimap2, enhancing SV detection and alignment accuracy.
Findings
Captures 4%-6% additional SVs missed by minimap2.
Improves breakpoint accuracy for 10%-50% of SVs.
Increases alignment rate to 89.35% from 85.64%.
Abstract
Motivation: Detection of structural variants (SV) from the alignment of sample DNA reads to the reference genome is an important problem in understanding human diseases. Long reads that can span repeat regions, along with an accurate alignment of these long reads play an important role in identifying novel SVs. Long read sequencers such as nanopore sequencing can address this problem by providing very long reads but with high error rates, making accurate alignment challenging. Many errors induced by nanopore sequencing have a bias because of the physics of the sequencing process and proper utilization of these error characteristics can play an important role in designing a robust aligner for SV detection problems. In this paper, we design and evaluate HQAlign, an aligner for SV detection using nanopore sequenced reads. The key ideas of HQAlign include (i) using basecalled nanopore reads…
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Taxonomy
TopicsGenomics and Phylogenetic Studies · Advanced biosensing and bioanalysis techniques · Chromosomal and Genetic Variations
