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A blended genome and exome sequencing method captures genetic variation in an unbiased, high-quality, and cost effective manner

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dc.contributor.author Boltz, Toni A
dc.contributor.author Chu, Benjamin B
dc.contributor.author Liao, Calwing
dc.contributor.author Sealock, Julia M
dc.contributor.author Ye, Robert
dc.contributor.author Majara, Lerato
dc.contributor.author Fu, Jack M
dc.contributor.author Service, Susan
dc.contributor.author Zhan, Lingyu
dc.contributor.author Medland, Sarah E
dc.contributor.author Chapman, Sinéad B
dc.contributor.author Rubinacci, Simone
dc.contributor.author DeFelice, Matthew
dc.contributor.author Grimsby, Jonna L
dc.contributor.author Abebe, Tamrat
dc.contributor.author Alemayehu, Melkam
dc.contributor.author Ashaba, Fred K
dc.contributor.author Atkinson, Elizabeth G
dc.contributor.author Bigdeli, Tim
dc.contributor.author Bradway, Amanda B
dc.contributor.author Brand, Harrison
dc.contributor.author Chibnik, Lori B
dc.contributor.author Fekadu, Abebaw
dc.contributor.author Gatzen, Michael
dc.contributor.author Gelaye, Bizu
dc.contributor.author Gichuru, Stella
dc.contributor.author Gildea, Marissa L
dc.contributor.author Hill, Toni C
dc.contributor.author Huang, Hailiang
dc.contributor.author Hubbard, Kalyn M
dc.contributor.author Injera, Wilfred E.
dc.contributor.author James, Roxanne
dc.contributor.author Joloba, Moses
dc.contributor.author Kachulis, Christopher
dc.contributor.author Kalmbach, Phillip R
dc.contributor.author Kamulegeya, Rogers
dc.contributor.author Kigen, Gabriel
dc.contributor.author Kim, Soyeon
dc.date.accessioned 2025-06-03T12:31:29Z
dc.date.available 2025-06-03T12:31:29Z
dc.date.issued 2024-09-09
dc.identifier.uri http://41.89.205.12/handle/123456789/2601
dc.description We deployed the Blended Genome Exome (BGE), a DNA library blending approach that generates low pass whole genome (1-4x mean depth) and deep whole exome (30-40x mean depth) data in a single sequencing run. This technology is cost-effective, empowers most genomic discoveries possible with deep whole genome sequencing, and provides an unbiased method to capture the diversity of common SNP variation across the globe. To evaluate this new technology at scale, we applied BGE to sequence >53,000 samples from the Populations Underrepresented in Mental Illness Associations Studies (PUMAS) Project, which included participants across African, African American, and Latin American populations. We evaluated the accuracy of BGE imputed genotypes against raw genotype calls from the Illumina Global Screening Array. All PUMAS cohorts had R2 concordance ≥95% among SNPs with MAF≥1%, and never fell below ≥90% R2 for SNPs with MAF<1%. Furthermore, concordance rates among local ancestries within two recently admixed cohorts were consistent among SNPs with MAF≥1%, with only minor deviations in SNPs with MAF<1%. We also benchmarked the discovery capacity of BGE to access protein-coding copy number variants (CNVs) against deep whole genome data, finding that deletions and duplications spanning at least 3 exons had a positive predicted value of ~90%. Our results demonstrate BGE scalability and efficacy in capturing SNPs, indels, and CNVs in the human genome at 28% of the cost of deep whole-genome sequencing. BGE is poised to enhance access to genomic testing and empower genomic discoveries, particularly in underrepresented populations. en_US
dc.description.abstract We deployed the Blended Genome Exome (BGE), a DNA library blending approach that generates low pass whole genome (1-4x mean depth) and deep whole exome (30-40x mean depth) data in a single sequencing run. This technology is cost-effective, empowers most genomic discoveries possible with deep whole genome sequencing, and provides an unbiased method to capture the diversity of common SNP variation across the globe. To evaluate this new technology at scale, we applied BGE to sequence >53,000 samples from the Populations Underrepresented in Mental Illness Associations Studies (PUMAS) Project, which included participants across African, African American, and Latin American populations. We evaluated the accuracy of BGE imputed genotypes against raw genotype calls from the Illumina Global Screening Array. All PUMAS cohorts had R2 concordance ≥95% among SNPs with MAF≥1%, and never fell below ≥90% R2 for SNPs with MAF<1%. Furthermore, concordance rates among local ancestries within two recently admixed cohorts were consistent among SNPs with MAF≥1%, with only minor deviations in SNPs with MAF<1%. We also benchmarked the discovery capacity of BGE to access protein-coding copy number variants (CNVs) against deep whole genome data, finding that deletions and duplications spanning at least 3 exons had a positive predicted value of ~90%. Our results demonstrate BGE scalability and efficacy in capturing SNPs, indels, and CNVs in the human genome at 28% of the cost of deep whole-genome sequencing. BGE is poised to enhance access to genomic testing and empower genomic discoveries, particularly in underrepresented populations. en_US
dc.description.sponsorship ALUPE UNIVERSITY en_US
dc.language.iso en en_US
dc.subject A blended genome and exome sequencing method captures genetic variation in an unbiased, high-quality, and cost effective manner en_US
dc.title A blended genome and exome sequencing method captures genetic variation in an unbiased, high-quality, and cost effective manner en_US
dc.type Other en_US


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