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Application of full-genome analysis to diagnose rare monogenic disorders.

Authors :
Shieh, Joseph T
Shieh, Joseph T
Penon-Portmann, Monica
Wong, Karen HY
Levy-Sakin, Michal
Verghese, Michelle
Slavotinek, Anne
Gallagher, Renata C
Mendelsohn, Bryce A
Tenney, Jessica
Beleford, Daniah
Perry, Hazel
Chow, Stephen K
Sharo, Andrew G
Brenner, Steven E
Qi, Zhongxia
Yu, Jingwei
Klein, Ophir D
Martin, David
Kwok, Pui-Yan
Boffelli, Dario
Shieh, Joseph T
Shieh, Joseph T
Penon-Portmann, Monica
Wong, Karen HY
Levy-Sakin, Michal
Verghese, Michelle
Slavotinek, Anne
Gallagher, Renata C
Mendelsohn, Bryce A
Tenney, Jessica
Beleford, Daniah
Perry, Hazel
Chow, Stephen K
Sharo, Andrew G
Brenner, Steven E
Qi, Zhongxia
Yu, Jingwei
Klein, Ophir D
Martin, David
Kwok, Pui-Yan
Boffelli, Dario
Source :
NPJ genomic medicine; vol 6, iss 1, 77; 2056-7944
Publication Year :
2021

Abstract

Current genetic testenhancer and narrows the diagnostic intervals for rare diseases provide a diagnosis in only a modest proportion of cases. The Full-Genome Analysis method, FGA, combines long-range assembly and whole-genome sequencing to detect small variants, structural variants with breakpoint resolution, and phasing. We built a variant prioritization pipeline and tested FGA's utility for diagnosis of rare diseases in a clinical setting. FGA identified structural variants and small variants with an overall diagnostic yield of 40% (20 of 50 cases) and 35% in exome-negative cases (8 of 23 cases), 4 of these were structural variants. FGA detected and mapped structural variants that are missed by short reads, including non-coding duplication, and phased variants across long distances of more than 180 kb. With the prioritization algorithm, longer DNA technologies could replace multiple tests for monogenic disorders and expand the range of variants detected. Our study suggests that genomes produced from technologies like FGA can improve variant detection and provide higher resolution genome maps for future application.

Details

Database :
OAIster
Journal :
NPJ genomic medicine; vol 6, iss 1, 77; 2056-7944
Notes :
application/pdf, NPJ genomic medicine vol 6, iss 1, 77 2056-7944
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287300150
Document Type :
Electronic Resource