| Literature DB >> 33669700 |
Ghausia Begum1, Ammar Albanna1,2, Asma Bankapur1, Nasna Nassir1, Richa Tambi1, Bakhrom K Berdiev1, Hosneara Akter3,4, Noushad Karuvantevida1,5, Barbara Kellam6, Deena Alhashmi1, Wilson W L Sung6, Bhooma Thiruvahindrapuram6, Alawi Alsheikh-Ali1, Stephen W Scherer6,7,8, Mohammed Uddin1.
Abstract
The advent of long-read sequencing offers a new assessment method of detecting genomic structural variation (SV) in numerous rare genetic diseases. For autism spectrum disorders (ASD) cases where pathogenic variants fail to be found in the protein-coding genic regions along chromosomes, we proposed a scalable workflow to characterize the risk factor of SVs impacting non-coding elements of the genome. We applied whole-genome sequencing on an Emirati family having three children with ASD using long and short-read sequencing technology. A series of analytical pipelines were established to identify a set of SVs with high sensitivity and specificity. At 15-fold coverage, we observed that long-read sequencing technology (987 variants) detected a significantly higher number of SVs when compared to variants detected using short-read technology (509 variants) (p-value < 1.1020 × 10-57). Further comparison showed 97.9% of long-read sequencing variants were spanning within the 1-100 kb size range (p-value < 9.080 × 10-67) and impacting over 5000 genes. Moreover, long-read variants detected 604 non-coding RNAs (p-value < 9.02 × 10-9), comprising 58% microRNA, 31.9% lncRNA, and 9.1% snoRNA. Even at low coverage, long-read sequencing has shown to be a reliable technology in detecting SVs impacting complex elements of the genome.Entities:
Keywords: Oxford Nanopore Technology (ONT); long-read sequencing; non-coding RNA; structural variation; whole-genome sequencing (WGS)
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Year: 2021 PMID: 33669700 PMCID: PMC7923155 DOI: 10.3390/ijms22042060
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923