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Multiple Integration and Data Annotation Study (MIDAS): improving next-generation sequencing data analysis by genotype-phenotype correlations.

Authors :
Dincer, Yasemin
Schulz, Julian
Wilson, Sandra
Marschall, Christoph
Cohen, Monika Y.
Mall, Volker
Klein, Hanns-Georg
Eck, Sebastian H.
Source :
Journal of Laboratory Medicine; Feb2018, Vol. 42 Issue 1/2, p1-8, 8p
Publication Year :
2018

Abstract

Next-generation sequencing (NGS) technologies in clinical diagnostics open vast opportunities through the ability to sequence all genes simultaneously at a cost and speed that is superior to traditional sequencing approaches. On the other hand, the practical implementation of NGS in routine diagnostics involves a variety of challenges, which need to be overcome. Among these are the generation, analysis and storage of large amounts of data, strict control of sequencing performance, validation of results, interpretation of detected variants and reporting. Here, we outline the Multiple Integration and Data Annotation Study, an approach for data integration in clinical diagnostics based on genotype-phenotype correlations. MIDAS aims to accelerate NGS data analysis and to enhance the validity of the results by computer-based variant prioritization using the clinical data of the patient. In this context, we present the MIDAS case reports of one patient with intellectual disability caused by a novel de novo loss-of-function variant in the GATAD2B gene [NM_020699.3: c.1426G>T (p.Glu476*)] identified by trio whole-exome sequencing, as well as two cardiac disease patients with severe phenotype and multiple variants in genes linked to cardiac arrhythmogenic disorders analyzed with multi-gene panel sequencing. Based on the data collected in the MIDAS cohort, the MIDAS software will be tested and optimized. Moreover, the MIDAS software concept can be extended modularly to include further data resources for improved data handling and interpretation in the broad field of diagnostics. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
25679430
Volume :
42
Issue :
1/2
Database :
Complementary Index
Journal :
Journal of Laboratory Medicine
Publication Type :
Academic Journal
Accession number :
128911435
Full Text :
https://doi.org/10.1515/labmed-2017-0072