4.6 Article

Blood RNA analysis can increase clinical diagnostic rate and resolve variants of uncertain significance

Journal

GENETICS IN MEDICINE
Volume 22, Issue 6, Pages 1005-1014

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1038/s41436-020-0766-9

Keywords

RNA splicing; variant interpretation; genetic diagnosis; genomic medicine; RNA-seq

Funding

  1. National Institute for Health Research (NIHR)
  2. NewLife Foundation
  3. NIHR Research Professorship [RP-2016-07-011]
  4. NIHR UK Rare Genetic Disease Consortium

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Purpose Diagnosis of genetic disorders is hampered by large numbers of variants of uncertain significance (VUSs) identified through next-generation sequencing. Many such variants may disrupt normal RNA splicing. We examined effects on splicing of a large cohort of clinically identified variants and compared performance of bioinformatic splicing prediction tools commonly used in diagnostic laboratories. Methods Two hundred fifty-seven variants (coding and noncoding) were referred for analysis across three laboratories. Blood RNA samples underwent targeted reverse transcription polymerase chain reaction (RT-PCR) analysis with Sanger sequencing of PCR products and agarose gel electrophoresis. Seventeen samples also underwent transcriptome-wide RNA sequencing with targeted splicing analysis based on Sashimi plot visualization. Bioinformatic splicing predictions were obtained using Alamut, HSF 3.1, and SpliceAI software. Results Eighty-five variants (33%) were associated with abnormal splicing. The most frequent abnormality was upstream exon skipping (39/85 variants), which was most often associated with splice donor region variants. SpliceAI had greatest accuracy in predicting splicing abnormalities (0.91) and outperformed other tools in sensitivity and specificity. Conclusion Splicing analysis of blood RNA identifies diagnostically important splicing abnormalities and clarifies functional effects of a significant proportion of VUSs. Bioinformatic predictions are improving but still make significant errors. RNA analysis should therefore be routinely considered in genetic disease diagnostics.

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