Cargando…

The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases

Modifier genes are believed to account for the clinical variability observed in many Mendelian disorders, but their identification remains challenging due to the limited availability of genomics data from large patient cohorts. Here, we present GENDULF (GENetic moDULators identiFication), one of the...

Descripción completa

Detalles Bibliográficos
Autores principales: Auslander, Noam, Ramos, Daniel M, Zelaya, Ivette, Karathia, Hiren, Crawford, Thomas O., Schäffer, Alejandro A, Sumner, Charlotte J, Ruppin, Eytan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7754056/
https://www.ncbi.nlm.nih.gov/pubmed/33438800
http://dx.doi.org/10.15252/msb.20209701
_version_ 1783626117156962304
author Auslander, Noam
Ramos, Daniel M
Zelaya, Ivette
Karathia, Hiren
Crawford, Thomas O.
Schäffer, Alejandro A
Sumner, Charlotte J
Ruppin, Eytan
author_facet Auslander, Noam
Ramos, Daniel M
Zelaya, Ivette
Karathia, Hiren
Crawford, Thomas O.
Schäffer, Alejandro A
Sumner, Charlotte J
Ruppin, Eytan
author_sort Auslander, Noam
collection PubMed
description Modifier genes are believed to account for the clinical variability observed in many Mendelian disorders, but their identification remains challenging due to the limited availability of genomics data from large patient cohorts. Here, we present GENDULF (GENetic moDULators identiFication), one of the first methods to facilitate prediction of disease modifiers using healthy and diseased tissue gene expression data. GENDULF is designed for monogenic diseases in which the mechanism is loss of function leading to reduced expression of the mutated gene. When applied to cystic fibrosis, GENDULF successfully identifies multiple, previously established disease modifiers, including EHF, SLC6A14, and CLCA1. It is then utilized in spinal muscular atrophy (SMA) and predicts U2AF1 as a modifier whose low expression correlates with higher SMN2 pre‐mRNA exon 7 retention. Indeed, knockdown of U2AF1 in SMA patient‐derived cells leads to increased full‐length SMN2 transcript and SMN protein expression. Taking advantage of the increasing availability of transcriptomic data, GENDULF is a novel addition to existing strategies for prediction of genetic disease modifiers, providing insights into disease pathogenesis and uncovering novel therapeutic targets.
format Online
Article
Text
id pubmed-7754056
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-77540562020-12-23 The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases Auslander, Noam Ramos, Daniel M Zelaya, Ivette Karathia, Hiren Crawford, Thomas O. Schäffer, Alejandro A Sumner, Charlotte J Ruppin, Eytan Mol Syst Biol Methods Modifier genes are believed to account for the clinical variability observed in many Mendelian disorders, but their identification remains challenging due to the limited availability of genomics data from large patient cohorts. Here, we present GENDULF (GENetic moDULators identiFication), one of the first methods to facilitate prediction of disease modifiers using healthy and diseased tissue gene expression data. GENDULF is designed for monogenic diseases in which the mechanism is loss of function leading to reduced expression of the mutated gene. When applied to cystic fibrosis, GENDULF successfully identifies multiple, previously established disease modifiers, including EHF, SLC6A14, and CLCA1. It is then utilized in spinal muscular atrophy (SMA) and predicts U2AF1 as a modifier whose low expression correlates with higher SMN2 pre‐mRNA exon 7 retention. Indeed, knockdown of U2AF1 in SMA patient‐derived cells leads to increased full‐length SMN2 transcript and SMN protein expression. Taking advantage of the increasing availability of transcriptomic data, GENDULF is a novel addition to existing strategies for prediction of genetic disease modifiers, providing insights into disease pathogenesis and uncovering novel therapeutic targets. John Wiley and Sons Inc. 2020-12-08 /pmc/articles/PMC7754056/ /pubmed/33438800 http://dx.doi.org/10.15252/msb.20209701 Text en © 2020 The Authors. Published under the terms of the CC BY 4.0 license This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Methods
Auslander, Noam
Ramos, Daniel M
Zelaya, Ivette
Karathia, Hiren
Crawford, Thomas O.
Schäffer, Alejandro A
Sumner, Charlotte J
Ruppin, Eytan
The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases
title The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases
title_full The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases
title_fullStr The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases
title_full_unstemmed The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases
title_short The GENDULF algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases
title_sort gendulf algorithm: mining transcriptomics to uncover modifier genes for monogenic diseases
topic Methods
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7754056/
https://www.ncbi.nlm.nih.gov/pubmed/33438800
http://dx.doi.org/10.15252/msb.20209701
work_keys_str_mv AT auslandernoam thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT ramosdanielm thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT zelayaivette thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT karathiahiren thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT crawfordthomaso thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT schafferalejandroa thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT sumnercharlottej thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT ruppineytan thegendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT auslandernoam gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT ramosdanielm gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT zelayaivette gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT karathiahiren gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT crawfordthomaso gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT schafferalejandroa gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT sumnercharlottej gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases
AT ruppineytan gendulfalgorithmminingtranscriptomicstouncovermodifiergenesformonogenicdiseases