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A tailored approach to fusion transcript identification increases diagnosis of rare inherited disease
- Source :
- PLoS ONE, PLoS ONE, Vol 14, Iss 10, p e0223337 (2019)
- Publication Year :
- 2019
- Publisher :
- Public Library of Science (PLoS), 2019.
-
Abstract
- BackgroundRNA sequencing has been proposed as a means of increasing diagnostic rates in studies of undiagnosed rare inherited disease. Recent studies have reported diagnostic improvements in the range of 7.5-35% by profiling splicing, gene expression quantification and allele specific expression. To-date however, no study has systematically assessed the presence of gene-fusion transcripts in cases of germline disease. Fusion transcripts are routinely identified in cancer studies and are increasingly recognized as having diagnostic, prognostic or therapeutic relevance. Isolated reports exist of fusion transcripts being detected in cases of developmental and neurological phenotypes, and thus, systematic application of fusion detection to germline conditions may further increase diagnostic rates. However, current fusion detection methods are unsuited to the investigation of germline disease due to performance biases arising from their development using tumor, cell-line or in-silico data.MethodsWe describe a tailored approach to fusion candidate identification and prioritization in a cohort of 47 undiagnosed, suspected inherited disease patients. We modify an existing fusion transcript detection algorithm by eliminating its cell line-derived filtering steps, and instead, prioritize candidates using a custom workflow that integrates genomic and transcriptomic sequence alignment, biological and technical annotations, customized categorization logic, and phenotypic prioritization.ResultsWe demonstrate that our approach to fusion transcript identification and prioritization detects genuine fusion events excluded by standard analyses and efficiently removes phenotypically unimportant candidates and false positive events, resulting in a reduced candidate list enriched for events with potential phenotypic relevance. We describe the successful genetic resolution of two previously undiagnosed disease cases through the detection of pathogenic fusion transcripts. Furthermore, we report the experimental validation of five additional cases of fusion transcripts with potential phenotypic relevance.ConclusionsThe approach we describe can be implemented to enable the detection of phenotypically relevant fusion transcripts in studies of rare inherited disease. Fusion transcript detection has the potential to increase diagnostic rates in rare inherited disease and should be included in RNA-based analytical pipelines aimed at genetic diagnosis.
- Subjects :
- Male
0301 basic medicine
Molecular biology
Physiology
Inheritance Patterns
Mutant Chimeric Proteins
Artificial Gene Amplification and Extension
Disease
Polymerase Chain Reaction
Germline
Workflow
law.invention
Cell Fusion
Transcriptome
Database and Informatics Methods
Sequencing techniques
0302 clinical medicine
law
Medicine and Health Sciences
Child
Polymerase chain reaction
Multidisciplinary
Cell fusion
RNA sequencing
Middle Aged
Phenotype
Body Fluids
3. Good health
Blood
Child, Preschool
RNA splicing
Medicine
Female
Anatomy
Sequence Analysis
Research Article
Adult
Genetic Markers
Multiple Alignment Calculation
Cell Physiology
Adolescent
Bioinformatics
Science
Computational biology
Biology
Research and Analysis Methods
Young Adult
03 medical and health sciences
Rare Diseases
Diagnostic Medicine
Computational Techniques
Genetics
Humans
Genetic Predisposition to Disease
Genetic Association Studies
Aged
Biology and life sciences
Genetic Diseases, Inborn
Infant
Cell Biology
Split-Decomposition Method
Molecular biology techniques
030104 developmental biology
Fusion transcript
Genetics of Disease
Sequence Alignment
030217 neurology & neurosurgery
Subjects
Details
- ISSN :
- 19326203
- Volume :
- 14
- Database :
- OpenAIRE
- Journal :
- PLOS ONE
- Accession number :
- edsair.doi.dedup.....31472e7e1c1ffb447e5f526adcdbbf1f