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1.
Genome Biol ; 15(3): R53, 2014 Mar 25.
Article in English | MEDLINE | ID: mdl-24667040

ABSTRACT

BACKGROUND: There is tremendous potential for genome sequencing to improve clinical diagnosis and care once it becomes routinely accessible, but this will require formalizing research methods into clinical best practices in the areas of sequence data generation, analysis, interpretation and reporting. The CLARITY Challenge was designed to spur convergence in methods for diagnosing genetic disease starting from clinical case history and genome sequencing data. DNA samples were obtained from three families with heritable genetic disorders and genomic sequence data were donated by sequencing platform vendors. The challenge was to analyze and interpret these data with the goals of identifying disease-causing variants and reporting the findings in a clinically useful format. Participating contestant groups were solicited broadly, and an independent panel of judges evaluated their performance. RESULTS: A total of 30 international groups were engaged. The entries reveal a general convergence of practices on most elements of the analysis and interpretation process. However, even given this commonality of approach, only two groups identified the consensus candidate variants in all disease cases, demonstrating a need for consistent fine-tuning of the generally accepted methods. There was greater diversity of the final clinical report content and in the patient consenting process, demonstrating that these areas require additional exploration and standardization. CONCLUSIONS: The CLARITY Challenge provides a comprehensive assessment of current practices for using genome sequencing to diagnose and report genetic diseases. There is remarkable convergence in bioinformatic techniques, but medical interpretation and reporting are areas that require further development by many groups.


Subject(s)
Databases, Genetic/standards , Genetic Testing/methods , Genomics/methods , Peer Review, Research , Sequence Analysis, DNA/methods , Child , Female , Financing, Organized , Genetic Testing/economics , Genetic Testing/standards , Genomics/economics , Genomics/standards , Heart Defects, Congenital/diagnosis , Heart Defects, Congenital/genetics , Humans , Male , Myopathies, Structural, Congenital/diagnosis , Myopathies, Structural, Congenital/genetics , Sequence Analysis, DNA/economics , Sequence Analysis, DNA/standards
2.
Methods ; 59(1): S24-8, 2013 Jan.
Article in English | MEDLINE | ID: mdl-23036331

ABSTRACT

In recent years, gene fusions have gained significant recognition as biomarkers. They can assist treatment decisions, are seldom found in normal tissue and are detectable through Next-generation sequencing (NGS) of the transcriptome (RNA-seq). To transform the data provided by the sequencer into robust gene fusion detection several analysis steps are needed. Usually the first step is to map the sequenced transcript fragments (RNA-seq) to a reference genome. One standard application of this approach is to estimate expression and detect variants within known genes, e.g. SNPs and indels. In case of gene fusions, however, completely novel gene structures have to be detected. Here, we describe the detection of such gene fusion events based on our comprehensive transcript annotation (ElDorado). To demonstrate the utility of our approach, we extract gene fusion candidates from eight breast cancer cell lines, which we compare to experimentally verified gene fusions. We discuss several gene fusion events, like BCAS3-BCAS4 that was only detected in the breast cancer cell line MCF7. As supporting evidence we show that gene fusions occur more frequently in copy number enriched regions (CNV analysis). In addition, we present the Transcriptome Viewer (TViewer) a tool that allows to interactively visualize gene fusions. Finally, we support detected gene fusions through literature mining based annotations and network analyses. In conclusion, we present a platform that allows detecting gene fusions and supporting them through literature knowledge as well as rich visualization capabilities. This enables scientists to better understand molecular processes, biological functions and disease associations, which will ultimately lead to better biomedical knowledge for the development of biomarkers for diagnostics and therapies.


Subject(s)
Chromosome Mapping/methods , Oncogene Proteins, Fusion/genetics , Biomarkers, Tumor/genetics , Cell Line, Tumor , DNA Copy Number Variations , Gene Expression Profiling , High-Throughput Nucleotide Sequencing , Humans , Molecular Sequence Annotation/methods , Sequence Analysis, DNA
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