Incorporating Non-Coding Annotations into Rare Variant Analysis.

<h4>Background</h4>The success of collapsing methods which investigate the combined effect of rare variants on complex traits has so far been limited. The manner in which variants within a gene are selected prior to analysis has a crucial impact on this success, which has resulted in ana...

Full description

Bibliographic Details
Main Authors: Tom G Richardson, Colin Campbell, Nicholas J Timpson, Tom R Gaunt
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0154181
_version_ 1797867520546308096
author Tom G Richardson
Colin Campbell
Nicholas J Timpson
Tom R Gaunt
author_facet Tom G Richardson
Colin Campbell
Nicholas J Timpson
Tom R Gaunt
author_sort Tom G Richardson
collection DOAJ
description <h4>Background</h4>The success of collapsing methods which investigate the combined effect of rare variants on complex traits has so far been limited. The manner in which variants within a gene are selected prior to analysis has a crucial impact on this success, which has resulted in analyses conventionally filtering variants according to their consequence. This study investigates whether an alternative approach to filtering, using annotations from recently developed bioinformatics tools, can aid these types of analyses in comparison to conventional approaches.<h4>Methods & results</h4>We conducted a candidate gene analysis using the UK10K sequence and lipids data, filtering according to functional annotations using the resource CADD (Combined Annotation-Dependent Depletion) and contrasting results with 'nonsynonymous' and 'loss of function' consequence analyses. Using CADD allowed the inclusion of potentially deleterious intronic variants, which was not possible when filtering by consequence. Overall, different filtering approaches provided similar evidence of association, although filtering according to CADD identified evidence of association between ANGPTL4 and High Density Lipoproteins (P = 0.02, N = 3,210) which was not observed in the other analyses. We also undertook genome-wide analyses to determine how filtering in this manner compared to conventional approaches for gene regions. Results suggested that filtering by annotations according to CADD, as well as other tools known as FATHMM-MKL and DANN, identified association signals not detected when filtering by variant consequence and vice versa.<h4>Conclusion</h4>Incorporating variant annotations from non-coding bioinformatics tools should prove to be a valuable asset for rare variant analyses in the future. Filtering by variant consequence is only possible in coding regions of the genome, whereas utilising non-coding bioinformatics annotations provides an opportunity to discover unknown causal variants in non-coding regions as well. This should allow studies to uncover a greater number of causal variants for complex traits and help elucidate their functional role in disease.
first_indexed 2024-04-09T23:42:35Z
format Article
id doaj.art-4b8d1c92b5674568aeeb3c779b33b00e
institution Directory Open Access Journal
issn 1932-6203
language English
last_indexed 2024-04-09T23:42:35Z
publishDate 2016-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj.art-4b8d1c92b5674568aeeb3c779b33b00e2023-03-18T05:32:24ZengPublic Library of Science (PLoS)PLoS ONE1932-62032016-01-01114e015418110.1371/journal.pone.0154181Incorporating Non-Coding Annotations into Rare Variant Analysis.Tom G RichardsonColin CampbellNicholas J TimpsonTom R Gaunt<h4>Background</h4>The success of collapsing methods which investigate the combined effect of rare variants on complex traits has so far been limited. The manner in which variants within a gene are selected prior to analysis has a crucial impact on this success, which has resulted in analyses conventionally filtering variants according to their consequence. This study investigates whether an alternative approach to filtering, using annotations from recently developed bioinformatics tools, can aid these types of analyses in comparison to conventional approaches.<h4>Methods & results</h4>We conducted a candidate gene analysis using the UK10K sequence and lipids data, filtering according to functional annotations using the resource CADD (Combined Annotation-Dependent Depletion) and contrasting results with 'nonsynonymous' and 'loss of function' consequence analyses. Using CADD allowed the inclusion of potentially deleterious intronic variants, which was not possible when filtering by consequence. Overall, different filtering approaches provided similar evidence of association, although filtering according to CADD identified evidence of association between ANGPTL4 and High Density Lipoproteins (P = 0.02, N = 3,210) which was not observed in the other analyses. We also undertook genome-wide analyses to determine how filtering in this manner compared to conventional approaches for gene regions. Results suggested that filtering by annotations according to CADD, as well as other tools known as FATHMM-MKL and DANN, identified association signals not detected when filtering by variant consequence and vice versa.<h4>Conclusion</h4>Incorporating variant annotations from non-coding bioinformatics tools should prove to be a valuable asset for rare variant analyses in the future. Filtering by variant consequence is only possible in coding regions of the genome, whereas utilising non-coding bioinformatics annotations provides an opportunity to discover unknown causal variants in non-coding regions as well. This should allow studies to uncover a greater number of causal variants for complex traits and help elucidate their functional role in disease.https://doi.org/10.1371/journal.pone.0154181
spellingShingle Tom G Richardson
Colin Campbell
Nicholas J Timpson
Tom R Gaunt
Incorporating Non-Coding Annotations into Rare Variant Analysis.
PLoS ONE
title Incorporating Non-Coding Annotations into Rare Variant Analysis.
title_full Incorporating Non-Coding Annotations into Rare Variant Analysis.
title_fullStr Incorporating Non-Coding Annotations into Rare Variant Analysis.
title_full_unstemmed Incorporating Non-Coding Annotations into Rare Variant Analysis.
title_short Incorporating Non-Coding Annotations into Rare Variant Analysis.
title_sort incorporating non coding annotations into rare variant analysis
url https://doi.org/10.1371/journal.pone.0154181
work_keys_str_mv AT tomgrichardson incorporatingnoncodingannotationsintorarevariantanalysis
AT colincampbell incorporatingnoncodingannotationsintorarevariantanalysis
AT nicholasjtimpson incorporatingnoncodingannotationsintorarevariantanalysis
AT tomrgaunt incorporatingnoncodingannotationsintorarevariantanalysis