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Considerations for using population frequency data in germline variant interpretation: Cancer syndrome genes as a model

Authors :
John V. Pearson
Georgina E Hollway
Nicola Waddell
Felicity Newell
Aimee L Davidson
Lambros T. Koufariotis
Michael T. Parsons
Conrad Leonard
Amanda B. Spurdle
Source :
Human Mutation. 42:530-536
Publication Year :
2021
Publisher :
Hindawi Limited, 2021.

Abstract

Aggregate population genomics data from large cohorts are vital for assessing germline variant pathogenicity. However, there are no specifications on how sequencing quality metrics should be considered, and whether exome-derived and genome-derived allele frequencies should be considered in isolation. Germline genome sequence data were simulated for nine read-depths to identify a minimum acceptable read-depth for detecting variants. gnomAD exome-derived and genome-derived datasets were assessed for read-depth, for six key cancer genes selected for variant curation by ClinGen expert panels. Non-Finnish European allele frequency (AF) or filter AF of coding variants in these genes, assigned into frequency bins using modified ACMG-AMP criteria, was compared between exome-derived and genome-derived datasets. A 30X read-depth achieved acceptable precision and recall for detection of substitutions, but poor recall for small insertions/deletions. Exome-derived and genome-derived datasets exhibited low read-depth for different gene exons. Individual variants were mostly assigned to non-divergent AF bins (>95%) or filter AF bins (>97%). Two major bin divergences were resolved by applying the minimal acceptable read-depth threshold. These findings show the importance of assessing read-depth separately for population datasets sourced from different short-read sequencing technologies before assigning a frequency-based ACMG-AMP classification code for variant interpretation.

Details

ISSN :
10981004 and 10597794
Volume :
42
Database :
OpenAIRE
Journal :
Human Mutation
Accession number :
edsair.doi.dedup.....2477344de3121b5defbb1f254cd036c1