TY - JOUR
T1 - CDG
T2 - An online server for detecting biologically closest disease-causing genes and its application to primary immunodeficiency
AU - Requena, David
AU - Maffucci, Patrick
AU - Bigio, Benedetta
AU - Shang, Lei
AU - Abhyankar, Avinash
AU - Boisson, Bertrand
AU - Stenson, Peter D.
AU - Cooper, David N.
AU - Cunningham-Rundles, Charlotte
AU - Casanova, Jean Laurent
AU - Abel, Laurent
AU - Itan, Yuval
N1 - Publisher Copyright:
© 2018 Requena, Maffucci, Bigio, Shang, Abhyankar, Boisson, Stenson, Cooper, Cunningham-Rundles, Casanova, Abel and Itan.
PY - 2018/6/27
Y1 - 2018/6/27
N2 - High-throughput genomic technologies yield about 20,000 variants in the protein-coding exome of each individual. A commonly used approach to select candidate disease-causing variants is to test whether the associated gene has been previously reported to be disease-causing. In the absence of known disease-causing genes, it can be challenging to associate candidate genes with specific genetic diseases. To facilitate the discovery of novel gene-disease associations, we determined the putative biologically closest known genes and their associated diseases for 13,005 human genes not currently reported to be disease-associated. We used these data to construct the closest disease-causing genes (CDG) server, which can be used to infer the closest genes with an associated disease for a user-defined list of genes or diseases. We demonstrate the utility of the CDG server in five immunodeficiency patient exomes across different diseases and modes of inheritance, where CDG dramatically reduced the number of candidate genes to be evaluated. This resource will be a considerable asset for ascertaining the potential relevance of genetic variants found in patient exomes to specific diseases of interest. The CDG database and online server are freely available to non-commercial users at: http://lab.rockefeller.edu/casanova/CDG.
AB - High-throughput genomic technologies yield about 20,000 variants in the protein-coding exome of each individual. A commonly used approach to select candidate disease-causing variants is to test whether the associated gene has been previously reported to be disease-causing. In the absence of known disease-causing genes, it can be challenging to associate candidate genes with specific genetic diseases. To facilitate the discovery of novel gene-disease associations, we determined the putative biologically closest known genes and their associated diseases for 13,005 human genes not currently reported to be disease-associated. We used these data to construct the closest disease-causing genes (CDG) server, which can be used to infer the closest genes with an associated disease for a user-defined list of genes or diseases. We demonstrate the utility of the CDG server in five immunodeficiency patient exomes across different diseases and modes of inheritance, where CDG dramatically reduced the number of candidate genes to be evaluated. This resource will be a considerable asset for ascertaining the potential relevance of genetic variants found in patient exomes to specific diseases of interest. The CDG database and online server are freely available to non-commercial users at: http://lab.rockefeller.edu/casanova/CDG.
KW - Disease-causing gene
KW - Gene filtering
KW - Genomics
KW - Human gene connectome
KW - Next-generation sequencing
UR - https://www.scopus.com/pages/publications/85049068470
U2 - 10.3389/fimmu.2018.01340
DO - 10.3389/fimmu.2018.01340
M3 - Article
AN - SCOPUS:85049068470
SN - 1664-3224
VL - 9
JO - Frontiers in Immunology
JF - Frontiers in Immunology
IS - JUN
M1 - 1340
ER -