Genome sequencing in congenital cataracts improves diagnostic yield

外显子组测序 生物 先证者 遗传学 DNA测序 白内障 基因组 全基因组测序 计算生物学 外显子组 基因 突变
作者
Alan Ma,John Grigg,Maree Flaherty,James E. Smith,André E. Minoche,Mark J. Cowley,Benjamin M. Nash,Gladys Ho,Thet Gayagay,Tiffany Lai,Elizabeth Farnsworth,Emma L. Hackett,Katrina Slater,Karen Wong,Katherine Holman,Gemma Jenkins,Anson Cheng,Frank Martin,Natasha J. Brown,Sarah Leighton
出处
期刊:Human Mutation [Wiley]
卷期号:42 (9): 1173-1183 被引量:15
标识
DOI:10.1002/humu.24240
摘要

Congenital cataracts are one of the major causes of childhood-onset blindness around the world. Genetic diagnosis provides benefits through avoidance of unnecessary tests, surveillance of extraocular features, and genetic family information. In this study, we demonstrate the value of genome sequencing in improving diagnostic yield in congenital cataract patients and families. We applied genome sequencing to investigate 20 probands with congenital cataracts. We examined the added value of genome sequencing across a total cohort of 52 probands, including 14 unable to be diagnosed using previous microarray and exome or panel-based approaches. Although exome or genome sequencing would have detected the variants in 35/52 (67%) of the cases, specific advantages of genome sequencing led to additional diagnoses in 10% (5/52) of the overall cohort, and we achieved an overall diagnostic rate of 77% (40/52). Specific benefits of genome sequencing were due to detection of small copy number variants (2), indels in repetitive regions (2) or single-nucleotide variants (SNVs) in GC-rich regions (1), not detectable on the previous microarray, exome sequencing, or panel-based approaches. In other cases, SNVs were identified in cataract disease genes, including those newly identified since our previous study. This study highlights the additional yield of genome sequencing in congenital cataracts.
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