周转时间
外显子组测序
全基因组测序
DNA测序
外显子组
人口
计算生物学
医学
生物
基因组
遗传学
生物信息学
基因
突变
计算机科学
环境卫生
操作系统
作者
Bennett Oh Vic Shum,Carel Pretorius,Letitia M. F. Sng,Ilya Henner,Paulette Barahona,E. Basar,Jim McGill,Urs Wilgen,Anna Zournazi,Lilian Downie,Natalie Taylor,Liam Cheney,Sylvania Wu,Natalie A. Twine,Denis C. Bauer,Gerald Francis Watts,Akash Navilebasappa,Kishore Kumar,Jacobus Ungerer,Glenn Bennett
出处
期刊:Clinical Chemistry
[American Association for Clinical Chemistry]
日期:2023-07-14
卷期号:69 (8): 890-900
被引量:3
标识
DOI:10.1093/clinchem/hvad066
摘要
Abstract Background Newborn screening (NBS) is an effective public health intervention that reduces death and disability from treatable genetic diseases, but many conditions are not screened due to a lack of a suitable assay. Whole genome and whole exome sequencing can potentially expand NBS but there remain many technical challenges preventing their use in population NBS. We investigated if targeted gene sequencing (TGS) is a feasible methodology for expanding NBS. Methods We constructed a TGS panel of 164 genes which screens for a broad range of inherited conditions. We designed a high-volume, low-turnaround laboratory and bioinformatics workflow that avoids the technical and data interpretation challenges associated with whole genome and whole exome sequencing. A methods-based analytical validation of the assay was completed and test performance in 2552 newborns examined. We calculated annual birth estimates for each condition to assess cost-effectiveness. Results Assay analytical sensitivity was >99% and specificity was 100%. Of the newborns screened, 1.3% tested positive for a condition. On average, each individual had 225 variants to interpret and 1.8% were variants of uncertain significance (VUS). The turnaround time was 7 to 10 days. Maximum batch size was 1536 samples. Conclusions We demonstrate that a TGS assay could be incorporated into an NBS program soon to increase the number of conditions screened. Additionally, we conclude that NBS using TGS may be cost-effective.
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