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GRIDSS: sensitive and specific genomic rearrangement detection using positional de Bruijn graph assembly

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posted on 2023-04-27, 06:32 authored by DL Cameron, J Schröder, JS Penington, Hongdo Do, R Molania, Alexander Dobrovic, TP Speed, AT Papenfuss
The identification of genomic rearrangements with high sensitivity and specificity using massively parallel sequencing remains a major challenge, particularly in precision medicine and cancer research. Here, we describe a new method for detecting rearrangements, GRIDSS (Genome Rearrangement IDentification Software Suite). GRIDSS is a multithreaded structural variant (SV) caller that performs efficient genome-wide break-end assembly prior to variant calling using a novel positional de Bruijn graph-based assembler. By combining assembly, split read, and read pair evidence using a probabilistic scoring, GRIDSS achieves high sensitivity and specificity on simulated, cell line, and patient tumor data, recently winning SV subchallenge #5 of the ICGC-TCGA DREAM8.5 Somatic Mutation Calling Challenge. On human cell line data, GRIDSS halves the false discovery rate compared to other recent methods while matching or exceeding their sensitivity. GRIDSS identifies nontemplate sequence insertions, microhomologies, and large imperfect homologies, estimates a quality score for each breakpoint, stratifies calls into high or low confidence, and supports multisample analysis.

History

Publication Date

2017-12-01

Journal

Genome Research

Volume

27

Issue

12

Pagination

11p. (p. 2050-2060)

Publisher

Cold Spring Harbor Laboratory Press

ISSN

1088-9051

Rights Statement

© 2017 Cameron et al. This article, published in Genome Research, is available under a Creative Commons License (Attribution 4.0 International), as described at http://creativecommons.org/licenses/by/4.0/.

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