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author LaHaye, Stephanie
Fitch, James R.
Voytovich, Kyle J.
Herman, Adam C.
Kelly, Benjamin J.
Lammi, Grant E.
Arbesfeld, Jeremy A.
Wijeratne, Saranga
Franklin, Samuel J.
Schieffer, Kathleen M.
Bir, Natalie
McGrath, Sean D.
Miller, Anthony R.
Wetzel, Amy
Miller, Katherine E.
Bedrosian, Tracy A.
Leraas, Kristen
Varga, Elizabeth A.
Lee, Kristy
Gupta, Ajay
Setty, Bhuvana
Boué, Daniel R.
Leonard, Jeffrey R.
Finlay, Jonathan L.
Abdelbaki, Mohamed S.
Osorio, Diana S.
Koo, Selene C.
Koboldt, Daniel C.
Wagner, Alex H.
Eisfeld, Ann-Kathrin
Mrózek, Krzysztof
Magrini, Vincent
Cottrell, Catherine E.
Mardis, Elaine R.
Wilson, Richard K.
White, Peter
author_facet LaHaye, Stephanie
Fitch, James R.
Voytovich, Kyle J.
Herman, Adam C.
Kelly, Benjamin J.
Lammi, Grant E.
Arbesfeld, Jeremy A.
Wijeratne, Saranga
Franklin, Samuel J.
Schieffer, Kathleen M.
Bir, Natalie
McGrath, Sean D.
Miller, Anthony R.
Wetzel, Amy
Miller, Katherine E.
Bedrosian, Tracy A.
Leraas, Kristen
Varga, Elizabeth A.
Lee, Kristy
Gupta, Ajay
Setty, Bhuvana
Boué, Daniel R.
Leonard, Jeffrey R.
Finlay, Jonathan L.
Abdelbaki, Mohamed S.
Osorio, Diana S.
Koo, Selene C.
Koboldt, Daniel C.
Wagner, Alex H.
Eisfeld, Ann-Kathrin
Mrózek, Krzysztof
Magrini, Vincent
Cottrell, Catherine E.
Mardis, Elaine R.
Wilson, Richard K.
White, Peter
author_sort LaHaye, Stephanie
collection PubMed
description BACKGROUND: Pediatric cancers typically have a distinct genomic landscape when compared to adult cancers and frequently carry somatic gene fusion events that alter gene expression and drive tumorigenesis. Sensitive and specific detection of gene fusions through the analysis of next-generation-based RNA sequencing (RNA-Seq) data is computationally challenging and may be confounded by low tumor cellularity or underlying genomic complexity. Furthermore, numerous computational tools are available to identify fusions from supporting RNA-Seq reads, yet each algorithm demonstrates unique variability in sensitivity and precision, and no clearly superior approach currently exists. To overcome these challenges, we have developed an ensemble fusion calling approach to increase the accuracy of identifying fusions. RESULTS: Our Ensemble Fusion (EnFusion) approach utilizes seven fusion calling algorithms: Arriba, CICERO, FusionMap, FusionCatcher, JAFFA, MapSplice, and STAR-Fusion, which are packaged as a fully automated pipeline using Docker and Amazon Web Services (AWS) serverless technology. This method uses paired end RNA-Seq sequence reads as input, and the output from each algorithm is examined to identify fusions detected by a consensus of at least three algorithms. These consensus fusion results are filtered by comparison to an internal database to remove likely artifactual fusions occurring at high frequencies in our internal cohort, while a “known fusion list” prevents failure to report known pathogenic events. We have employed the EnFusion pipeline on RNA-Seq data from 229 patients with pediatric cancer or blood disorders studied under an IRB-approved protocol. The samples consist of 138 central nervous system tumors, 73 solid tumors, and 18 hematologic malignancies or disorders. The combination of an ensemble fusion-calling pipeline and a knowledge-based filtering strategy identified 67 clinically relevant fusions among our cohort (diagnostic yield of 29.3%), including RBPMS-MET, BCAN-NTRK1, and TRIM22-BRAF fusions. Following clinical confirmation and reporting in the patient’s medical record, both known and novel fusions provided medically meaningful information. CONCLUSIONS: The EnFusion pipeline offers a streamlined approach to discover fusions in cancer, at higher levels of sensitivity and accuracy than single algorithm methods. Furthermore, this method accurately identifies driver fusions in pediatric cancer, providing clinical impact by contributing evidence to diagnosis and, when appropriate, indicating targeted therapies. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s12864-021-08094-z.
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spelling pubmed-86429732021-12-06 Discovery of clinically relevant fusions in pediatric cancer LaHaye, Stephanie Fitch, James R. Voytovich, Kyle J. Herman, Adam C. Kelly, Benjamin J. Lammi, Grant E. Arbesfeld, Jeremy A. Wijeratne, Saranga Franklin, Samuel J. Schieffer, Kathleen M. Bir, Natalie McGrath, Sean D. Miller, Anthony R. Wetzel, Amy Miller, Katherine E. Bedrosian, Tracy A. Leraas, Kristen Varga, Elizabeth A. Lee, Kristy Gupta, Ajay Setty, Bhuvana Boué, Daniel R. Leonard, Jeffrey R. Finlay, Jonathan L. Abdelbaki, Mohamed S. Osorio, Diana S. Koo, Selene C. Koboldt, Daniel C. Wagner, Alex H. Eisfeld, Ann-Kathrin Mrózek, Krzysztof Magrini, Vincent Cottrell, Catherine E. Mardis, Elaine R. Wilson, Richard K. White, Peter BMC Genomics Methodology Article BACKGROUND: Pediatric cancers typically have a distinct genomic landscape when compared to adult cancers and frequently carry somatic gene fusion events that alter gene expression and drive tumorigenesis. Sensitive and specific detection of gene fusions through the analysis of next-generation-based RNA sequencing (RNA-Seq) data is computationally challenging and may be confounded by low tumor cellularity or underlying genomic complexity. Furthermore, numerous computational tools are available to identify fusions from supporting RNA-Seq reads, yet each algorithm demonstrates unique variability in sensitivity and precision, and no clearly superior approach currently exists. To overcome these challenges, we have developed an ensemble fusion calling approach to increase the accuracy of identifying fusions. RESULTS: Our Ensemble Fusion (EnFusion) approach utilizes seven fusion calling algorithms: Arriba, CICERO, FusionMap, FusionCatcher, JAFFA, MapSplice, and STAR-Fusion, which are packaged as a fully automated pipeline using Docker and Amazon Web Services (AWS) serverless technology. This method uses paired end RNA-Seq sequence reads as input, and the output from each algorithm is examined to identify fusions detected by a consensus of at least three algorithms. These consensus fusion results are filtered by comparison to an internal database to remove likely artifactual fusions occurring at high frequencies in our internal cohort, while a “known fusion list” prevents failure to report known pathogenic events. We have employed the EnFusion pipeline on RNA-Seq data from 229 patients with pediatric cancer or blood disorders studied under an IRB-approved protocol. The samples consist of 138 central nervous system tumors, 73 solid tumors, and 18 hematologic malignancies or disorders. The combination of an ensemble fusion-calling pipeline and a knowledge-based filtering strategy identified 67 clinically relevant fusions among our cohort (diagnostic yield of 29.3%), including RBPMS-MET, BCAN-NTRK1, and TRIM22-BRAF fusions. Following clinical confirmation and reporting in the patient’s medical record, both known and novel fusions provided medically meaningful information. CONCLUSIONS: The EnFusion pipeline offers a streamlined approach to discover fusions in cancer, at higher levels of sensitivity and accuracy than single algorithm methods. Furthermore, this method accurately identifies driver fusions in pediatric cancer, providing clinical impact by contributing evidence to diagnosis and, when appropriate, indicating targeted therapies. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s12864-021-08094-z. BioMed Central 2021-12-04 /pmc/articles/PMC8642973/ /pubmed/34863095 http://dx.doi.org/10.1186/s12864-021-08094-z Text en © The Author(s) 2021 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) . The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/ (https://creativecommons.org/publicdomain/zero/1.0/) ) applies to the data made available in this article, unless otherwise stated in a credit line to the data.
spellingShingle Methodology Article
LaHaye, Stephanie
Fitch, James R.
Voytovich, Kyle J.
Herman, Adam C.
Kelly, Benjamin J.
Lammi, Grant E.
Arbesfeld, Jeremy A.
Wijeratne, Saranga
Franklin, Samuel J.
Schieffer, Kathleen M.
Bir, Natalie
McGrath, Sean D.
Miller, Anthony R.
Wetzel, Amy
Miller, Katherine E.
Bedrosian, Tracy A.
Leraas, Kristen
Varga, Elizabeth A.
Lee, Kristy
Gupta, Ajay
Setty, Bhuvana
Boué, Daniel R.
Leonard, Jeffrey R.
Finlay, Jonathan L.
Abdelbaki, Mohamed S.
Osorio, Diana S.
Koo, Selene C.
Koboldt, Daniel C.
Wagner, Alex H.
Eisfeld, Ann-Kathrin
Mrózek, Krzysztof
Magrini, Vincent
Cottrell, Catherine E.
Mardis, Elaine R.
Wilson, Richard K.
White, Peter
Discovery of clinically relevant fusions in pediatric cancer
title Discovery of clinically relevant fusions in pediatric cancer
title_full Discovery of clinically relevant fusions in pediatric cancer
title_fullStr Discovery of clinically relevant fusions in pediatric cancer
title_full_unstemmed Discovery of clinically relevant fusions in pediatric cancer
title_short Discovery of clinically relevant fusions in pediatric cancer
title_sort discovery of clinically relevant fusions in pediatric cancer
topic Methodology Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8642973/
https://www.ncbi.nlm.nih.gov/pubmed/34863095
http://dx.doi.org/10.1186/s12864-021-08094-z
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