TY - JOUR
T1 - Mobile element insertions in rare diseases
T2 - a comparative benchmark and reanalysis of 60,000 exome samples
AU - Wijngaard, Robin
AU - Demidov, German
AU - O’Gorman, Luke
AU - Corominas-Galbany, Jordi
AU - Yaldiz, Burcu
AU - Steyaert, Wouter
AU - de Boer, Elke
AU - Vissers, Lisenka E. L. M.
AU - Kamsteeg, Erik-Jan
AU - Pfundt, Rolph
AU - Swinkels, Hilde
AU - den Ouden, Amber
AU - te Paske, Iris B. A. W.
AU - de Voer, Richarda M.
AU - Faivre, Laurence
AU - Denommé-Pichon, Anne-Sophie
AU - Duffourd, Yannis
AU - Vitobello, Antonio
AU - Chevarin, Martin
AU - Straub, Volker
AU - Töpf, Ana
AU - van der Kooi, Anneke J.
AU - Magrinelli, Francesca
AU - Rocca, Clarissa
AU - Hanna, Michael G.
AU - Vandrovcova, Jana
AU - Ossowski, Stephan
AU - Solve-RD consortium
AU - Laurie, Steven
AU - Gilissen, Christian
N1 - Funding Information: Funding The Solve-RD project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No. 779257. RW received an international fellowship from the José Luis Castaño-SEQC Foundation. FM is supported by the Edmond J. Safra Foundation through the Edmond J. Safra Fellowship in Movement Disorders. Publisher Copyright: © 2023, The Author(s).
PY - 2023
Y1 - 2023
N2 - Mobile element insertions (MEIs) are a known cause of genetic disease but have been underexplored due to technical limitations of genetic testing methods. Various bioinformatic tools have been developed to identify MEIs in Next Generation Sequencing data. However, most tools have been developed specifically for genome sequencing (GS) data rather than exome sequencing (ES) data, which remains more widely used for routine diagnostic testing. In this study, we benchmarked six MEI detection tools (ERVcaller, MELT, Mobster, SCRAMble, TEMP2 and xTea) on ES data and on GS data from publicly available genomic samples (HG002, NA12878). For all the tools we evaluated sensitivity and precision of different filtering strategies. Results show that there were substantial differences in tool performance between ES and GS data. MELT performed best with ES data and its combination with SCRAMble increased substantially the detection rate of MEIs. By applying both tools to 10,890 ES samples from Solve-RD and 52,624 samples from Radboudumc we were able to diagnose 10 patients who had remained undiagnosed by conventional ES analysis until now. Our study shows that MELT and SCRAMble can be used reliably to identify clinically relevant MEIs in ES data. This may lead to an additional diagnosis for 1 in 3000 to 4000 patients in routine clinical ES.
AB - Mobile element insertions (MEIs) are a known cause of genetic disease but have been underexplored due to technical limitations of genetic testing methods. Various bioinformatic tools have been developed to identify MEIs in Next Generation Sequencing data. However, most tools have been developed specifically for genome sequencing (GS) data rather than exome sequencing (ES) data, which remains more widely used for routine diagnostic testing. In this study, we benchmarked six MEI detection tools (ERVcaller, MELT, Mobster, SCRAMble, TEMP2 and xTea) on ES data and on GS data from publicly available genomic samples (HG002, NA12878). For all the tools we evaluated sensitivity and precision of different filtering strategies. Results show that there were substantial differences in tool performance between ES and GS data. MELT performed best with ES data and its combination with SCRAMble increased substantially the detection rate of MEIs. By applying both tools to 10,890 ES samples from Solve-RD and 52,624 samples from Radboudumc we were able to diagnose 10 patients who had remained undiagnosed by conventional ES analysis until now. Our study shows that MELT and SCRAMble can be used reliably to identify clinically relevant MEIs in ES data. This may lead to an additional diagnosis for 1 in 3000 to 4000 patients in routine clinical ES.
UR - http://www.scopus.com/inward/record.url?scp=85174626301&partnerID=8YFLogxK
U2 - https://doi.org/10.1038/s41431-023-01478-7
DO - https://doi.org/10.1038/s41431-023-01478-7
M3 - Article
C2 - 37853102
SN - 1018-4813
JO - European journal of human genetics
JF - European journal of human genetics
ER -