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Improving the diagnostic yield of exome-sequencing by predicting gene-phenotype associations using large-scale gene expression analysis

Authors :
Richard J. Sinke
Lude Franke
Patrick Deelen
Sipko van Dam
Edgar T. Hoorntje
Jan D. H. Jongbloed
Roan Kanninga
Juha Karjalainen
Kristin M. Abbott
Wouter P. te Rijdt
Evelien Zonneveld-Huijssoon
Sabrina Z. Jan
Wilhelmina S. Kerstjens-Frederikse
Erica H. Gerkes
Pytrik Folkertsma
Morris A. Swertz
Harm Brugge
Yvonne J. Vos
Johanna C. Herkert
Jelkje J Boer-Bergsma
Peter C. van den Akker
Tessa Gillett
Birgit Sikkema-Raddatz
Conny M. A. van Ravenswaaij-Arts
Cleo C. van Diemen
Paul A. van der Zwaag
K. Joeri van der Velde
Translational Immunology Groningen (TRIGR)
Cardiovascular Centre (CVC)
Clinical Cognitive Neuropsychiatry Research Program (CCNP)
Groningen Institute for Gastro Intestinal Genetics and Immunology (3GI)
Stem Cell Aging Leukemia and Lymphoma (SALL)
Source :
Nature Communications, 10(1):2837. Nature Publishing Group, Nature Communications, Vol 10, Iss 1, Pp 1-13 (2019), Nature Communications
Publication Year :
2019
Publisher :
Nature Publishing Group, 2019.

Abstract

The diagnostic yield of exome and genome sequencing remains low (8–70%), due to incomplete knowledge on the genes that cause disease. To improve this, we use RNA-seq data from 31,499 samples to predict which genes cause specific disease phenotypes, and develop GeneNetwork Assisted Diagnostic Optimization (GADO). We show that this unbiased method, which does not rely upon specific knowledge on individual genes, is effective in both identifying previously unknown disease gene associations, and flagging genes that have previously been incorrectly implicated in disease. GADO can be run on www.genenetwork.nl by supplying HPO-terms and a list of genes that contain candidate variants. Finally, applying GADO to a cohort of 61 patients for whom exome-sequencing analysis had not resulted in a genetic diagnosis, yields likely causative genes for ten cases.<br />A genetic diagnosis remains unattainable for many individuals with a rare disease because of incomplete knowledge about the genetic basis of many diseases. Here, the authors present the web-based tool GADO (GeneNetwork Assisted Diagnostic Optimization) that uses public RNA-seq data for prioritization of candidate genes.

Details

Language :
English
ISSN :
20411723
Volume :
10
Issue :
1
Database :
OpenAIRE
Journal :
Nature Communications
Accession number :
edsair.doi.dedup.....ca9882af7f8c6e86a31be6a0d16d8cf7
Full Text :
https://doi.org/10.1038/s41467-019-10649-4