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CAGI SickKids challenges: Assessment of phenotype and variant predictions derived from clinical and genomic data of children with undiagnosed diseases

Authors :
Zhiqiang Hu
Jesse M. Hunter
Olivier Lichtarge
Sean D. Mooney
Aashish N. Adhikari
Steven E. Brenner
Rita Casadio
Yizhou Yin
Lipika R. Pal
Uma Sunderam
Panagiotis Katsonis
Predrag Radivojac
Thomas Joseph
Giulia Babbi
Naveen Sivadasan
Constantina Bakolitsa
Vangala G. Saipradeep
Laura Kasak
John Moult
Julian Gough
M. Stephen Meyn
Pier Luigi Martelli
Jennifer Poitras
Rupa A Udani
Jan Zaucha
Rafael F. Guerrero
Yuxiang Jiang
Aditya Rao
Sujatha Kotte
Kunal Kundu
Kasak L.
Hunter J.M.
Udani R.
Bakolitsa C.
Hu Z.
Adhikari A.N.
Babbi G.
Casadio R.
Gough J.
Guerrero R.F.
Jiang Y.
Joseph T.
Katsonis P.
Kotte S.
Kundu K.
Lichtarge O.
Martelli P.L.
Mooney S.D.
Moult J.
Pal L.R.
Poitras J.
Radivojac P.
Rao A.
Sivadasan N.
Sunderam U.
Saipradeep V.G.
Yin Y.
Zaucha J.
Brenner S.E.
Meyn M.S.
Source :
Hum Mutat
Publication Year :
2019
Publisher :
Hindawi Limited, 2019.

Abstract

Whole-genome sequencing (WGS) holds great potential as a diagnostic test. However, the majority of patients currently undergoing WGS lack a molecular diagnosis, largely due to the vast number of undiscovered disease genes and our inability to assess the pathogenicity of most genomic variants. The CAGI SickKids challenges attempted to address this knowledge gap by assessing state-of-the-art methods for clinical phenotype prediction from genomes. CAGI4 and CAGI5 participants were provided with WGS data and clinical descriptions of 25 and 24 undiagnosed patients from the SickKids Genome Clinic Project, respectively. Predictors were asked to identify primary and secondary causal variants. In addition, for CAGI5, groups had to match each genome to one of three disorder categories (neurologic, ophthalmologic, and connective), and separately to each patient. The performance of matching genomes to categories was no better than random but two groups performed significantly better than chance in matching genomes to patients. Two of the ten variants proposed by two groups in CAGI4 were deemed to be diagnostic, and several proposed pathogenic variants in CAGI5 are good candidates for phenotype expansion. We discuss implications for improving in silico assessment of genomic variants and identifying new disease genes.

Details

ISSN :
10981004 and 10597794
Volume :
40
Database :
OpenAIRE
Journal :
Human Mutation
Accession number :
edsair.doi.dedup.....d965f4678b430bbf6815058eecb3cdf6
Full Text :
https://doi.org/10.1002/humu.23874