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Targeted long-read sequencing identifies missing disease-causing variation.


ABSTRACT: Despite widespread clinical genetic testing, many individuals with suspected genetic conditions lack a precise diagnosis, limiting their opportunity to take advantage of state-of-the-art treatments. In some cases, testing reveals difficult-to-evaluate structural differences, candidate variants that do not fully explain the phenotype, single pathogenic variants in recessive disorders, or no variants in genes of interest. Thus, there is a need for better tools to identify a precise genetic diagnosis in individuals when conventional testing approaches have been exhausted. We performed targeted long-read sequencing (T-LRS) using adaptive sampling on the Oxford Nanopore platform on 40 individuals, 10 of whom lacked a complete molecular diagnosis. We computationally targeted up to 151 Mbp of sequence per individual and searched for pathogenic substitutions, structural variants, and methylation differences using a single data source. We detected all genomic aberrations-including single-nucleotide variants, copy number changes, repeat expansions, and methylation differences-identified by prior clinical testing. In 8/8 individuals with complex structural rearrangements, T-LRS enabled more precise resolution of the mutation, leading to changes in clinical management in one case. In ten individuals with suspected Mendelian conditions lacking a precise genetic diagnosis, T-LRS identified pathogenic or likely pathogenic variants in six and variants of uncertain significance in two others. T-LRS accurately identifies pathogenic structural variants, resolves complex rearrangements, and identifies Mendelian variants not detected by other technologies. T-LRS represents an efficient and cost-effective strategy to evaluate high-priority genes and regions or complex clinical testing results.

SUBMITTER: Miller DE 

PROVIDER: S-EPMC8387463 | biostudies-literature | 2021 Aug

REPOSITORIES: biostudies-literature

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Targeted long-read sequencing identifies missing disease-causing variation.

Miller Danny E DE   Sulovari Arvis A   Wang Tianyun T   Loucks Hailey H   Hoekzema Kendra K   Munson Katherine M KM   Lewis Alexandra P AP   Fuerte Edith P Almanza EPA   Paschal Catherine R CR   Walsh Tom T   Thies Jenny J   Bennett James T JT   Glass Ian I   Dipple Katrina M KM   Patterson Karynne K   Bonkowski Emily S ES   Nelson Zoe Z   Squire Audrey A   Sikes Megan M   Beckman Erika E   Bennett Robin L RL   Earl Dawn D   Lee Winston W   Allikmets Rando R   Perlman Seth J SJ   Chow Penny P   Hing Anne V AV   Wenger Tara L TL   Adam Margaret P MP   Sun Angela A   Lam Christina C   Chang Irene I   Zou Xue X   Austin Stephanie L SL   Huggins Erin E   Safi Alexias A   Iyengar Apoorva K AK   Reddy Timothy E TE   Majoros William H WH   Allen Andrew S AS   Crawford Gregory E GE   Kishnani Priya S PS   King Mary-Claire MC   Cherry Tim T   Chong Jessica X JX   Bamshad Michael J MJ   Nickerson Deborah A DA   Mefford Heather C HC   Doherty Dan D   Eichler Evan E EE  

American journal of human genetics 20210702 8


Despite widespread clinical genetic testing, many individuals with suspected genetic conditions lack a precise diagnosis, limiting their opportunity to take advantage of state-of-the-art treatments. In some cases, testing reveals difficult-to-evaluate structural differences, candidate variants that do not fully explain the phenotype, single pathogenic variants in recessive disorders, or no variants in genes of interest. Thus, there is a need for better tools to identify a precise genetic diagnos  ...[more]

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