Title:
Leaf: an ultrafast filter for population-scale long-read SV detection
Author(s):
Pan, Chenxu; Reinert, Knut
Year of publication:
2024
Available Date:
2024-07-01T08:23:08Z
Abstract:
Advances in sequencing technology have facilitated population-scale long-read structural variant (SV) detection. Arguably, one of the main challenges in population-scale analysis is developing effective computational pipelines. Here, we present a new filter-based pipeline for population-scale long-read SV detection. It better captures SV signals at an early stage than conventional assembly-based or alignment-based pipelines. Assessments in this work suggest that the filter-based pipeline helps better resolve intra-read rearrangements. Moreover, it is also more computationally efficient than conventional pipelines and thus may facilitate population-scale long-read applications.
Part of Identifier:
e-ISSN (online): 1474-760X
Keywords:
Filter-based pipelines
Intra-read SV detection
Population-scale long-read applications
Generative model
Extended SAM/BAM
DDC-Classification:
570 Biowissenschaften; Biologie
Publication Type:
Wissenschaftlicher Artikel
URL of the Original Publication:
DOI of the Original Publication:
Journaltitle:
Genome Biology
Department/institution:
Mathematik und Informatik
Institut für Informatik
Comments:
Die Publikation wurde aus Open Access Publikationsgeldern der Freien Universität Berlin gefördert.