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Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data

Predicted loss of function (pLoF) variants are highly deleterious and play an important role in disease biology, but many of these variants may not actually result in loss-of-function. Here we present a framework that advances interpretation of pLoF variants in research and clinical settings by cons...

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Autores principales: Singer-Berk, Moriel, Gudmundsson, Sanna, Baxter, Samantha, Seaby, Eleanor G., England, Eleina, Wood, Jordan C., Son, Rachel G., Watts, Nicholas A., Karczewski, Konrad J., Harrison, Steven M., MacArthur, Daniel G., Rehm, Heidi L., O’Donnell-Luria, Anne
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10029069/
https://www.ncbi.nlm.nih.gov/pubmed/36945502
http://dx.doi.org/10.1101/2023.03.08.23286955
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author Singer-Berk, Moriel
Gudmundsson, Sanna
Baxter, Samantha
Seaby, Eleanor G.
England, Eleina
Wood, Jordan C.
Son, Rachel G.
Watts, Nicholas A.
Karczewski, Konrad J.
Harrison, Steven M.
MacArthur, Daniel G.
Rehm, Heidi L.
O’Donnell-Luria, Anne
author_facet Singer-Berk, Moriel
Gudmundsson, Sanna
Baxter, Samantha
Seaby, Eleanor G.
England, Eleina
Wood, Jordan C.
Son, Rachel G.
Watts, Nicholas A.
Karczewski, Konrad J.
Harrison, Steven M.
MacArthur, Daniel G.
Rehm, Heidi L.
O’Donnell-Luria, Anne
author_sort Singer-Berk, Moriel
collection PubMed
description Predicted loss of function (pLoF) variants are highly deleterious and play an important role in disease biology, but many of these variants may not actually result in loss-of-function. Here we present a framework that advances interpretation of pLoF variants in research and clinical settings by considering three categories of LoF evasion: (1) predicted rescue by secondary sequence properties, (2) uncertain biological relevance, and (3) potential technical artifacts. We also provide recommendations on adjustments to ACMG/AMP guidelines’s PVS1 criterion. Applying this framework to all high-confidence pLoF variants in 22 autosomal recessive disease-genes from the Genome Aggregation Database (gnomAD, v2.1.1) revealed predicted LoF evasion or potential artifacts in 27.3% (304/1,113) of variants. The major reasons were location in the last exon, in a homopolymer repeat, in low per-base expression (pext) score regions, or the presence of cryptic splice rescues. Variants predicted to be potential artifacts or to evade LoF were enriched for ClinVar benign variants. PVS1 was downgraded in 99.4% (162/163) of LoF evading variants assessed, with 17.2% (28/163) downgraded as a result of our framework, adding to previous guidelines. Variant pathogenicity was affected (mostly from likely pathogenic to VUS) in 20 (71.4%) of these 28 variants. This framework guides assessment of pLoF variants beyond standard annotation pipelines, and substantially reduces false positive rates, which is key to ensure accurate LoF variant prediction in both a research and clinical setting.
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spelling pubmed-100290692023-03-22 Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data Singer-Berk, Moriel Gudmundsson, Sanna Baxter, Samantha Seaby, Eleanor G. England, Eleina Wood, Jordan C. Son, Rachel G. Watts, Nicholas A. Karczewski, Konrad J. Harrison, Steven M. MacArthur, Daniel G. Rehm, Heidi L. O’Donnell-Luria, Anne medRxiv Article Predicted loss of function (pLoF) variants are highly deleterious and play an important role in disease biology, but many of these variants may not actually result in loss-of-function. Here we present a framework that advances interpretation of pLoF variants in research and clinical settings by considering three categories of LoF evasion: (1) predicted rescue by secondary sequence properties, (2) uncertain biological relevance, and (3) potential technical artifacts. We also provide recommendations on adjustments to ACMG/AMP guidelines’s PVS1 criterion. Applying this framework to all high-confidence pLoF variants in 22 autosomal recessive disease-genes from the Genome Aggregation Database (gnomAD, v2.1.1) revealed predicted LoF evasion or potential artifacts in 27.3% (304/1,113) of variants. The major reasons were location in the last exon, in a homopolymer repeat, in low per-base expression (pext) score regions, or the presence of cryptic splice rescues. Variants predicted to be potential artifacts or to evade LoF were enriched for ClinVar benign variants. PVS1 was downgraded in 99.4% (162/163) of LoF evading variants assessed, with 17.2% (28/163) downgraded as a result of our framework, adding to previous guidelines. Variant pathogenicity was affected (mostly from likely pathogenic to VUS) in 20 (71.4%) of these 28 variants. This framework guides assessment of pLoF variants beyond standard annotation pipelines, and substantially reduces false positive rates, which is key to ensure accurate LoF variant prediction in both a research and clinical setting. Cold Spring Harbor Laboratory 2023-03-09 /pmc/articles/PMC10029069/ /pubmed/36945502 http://dx.doi.org/10.1101/2023.03.08.23286955 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Singer-Berk, Moriel
Gudmundsson, Sanna
Baxter, Samantha
Seaby, Eleanor G.
England, Eleina
Wood, Jordan C.
Son, Rachel G.
Watts, Nicholas A.
Karczewski, Konrad J.
Harrison, Steven M.
MacArthur, Daniel G.
Rehm, Heidi L.
O’Donnell-Luria, Anne
Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data
title Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data
title_full Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data
title_fullStr Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data
title_full_unstemmed Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data
title_short Advanced variant classification framework reduces the false positive rate of predicted loss of function (pLoF) variants in population sequencing data
title_sort advanced variant classification framework reduces the false positive rate of predicted loss of function (plof) variants in population sequencing data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10029069/
https://www.ncbi.nlm.nih.gov/pubmed/36945502
http://dx.doi.org/10.1101/2023.03.08.23286955
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