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State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?

BACKGROUND: RNA-seq has the potential to discover genes created by chromosomal rearrangements. Fusion genes, also known as "chimeras", are formed by the breakage and re-joining of two different chromosomes. It is known that chimeras have been implicated in the development of cancer. Few pu...

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Autores principales: Carrara, Matteo, Beccuti, Marco, Cavallo, Federica, Donatelli, Susanna, Lazzarato, Fulvio, Cordero, Francesca, Calogero, Raffaele A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3633050/
https://www.ncbi.nlm.nih.gov/pubmed/23815381
http://dx.doi.org/10.1186/1471-2105-14-S7-S2
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author Carrara, Matteo
Beccuti, Marco
Cavallo, Federica
Donatelli, Susanna
Lazzarato, Fulvio
Cordero, Francesca
Calogero, Raffaele A
author_facet Carrara, Matteo
Beccuti, Marco
Cavallo, Federica
Donatelli, Susanna
Lazzarato, Fulvio
Cordero, Francesca
Calogero, Raffaele A
author_sort Carrara, Matteo
collection PubMed
description BACKGROUND: RNA-seq has the potential to discover genes created by chromosomal rearrangements. Fusion genes, also known as "chimeras", are formed by the breakage and re-joining of two different chromosomes. It is known that chimeras have been implicated in the development of cancer. Few publications in the past showed the presence of fusion events also in normal tissue, but with very limited overlaps between their results. More recently, two fusion genes in normal tissues were detected using both RNA-seq and protein data. Due to heterogeneous results in identifying chimeras in normal tissue, we decided to evaluate the efficacy of state of the art fusion finders in detecting chimeras in RNA-seq data from normal tissues. RESULTS: We compared the performance of six fusion-finder tools: FusionHunter, FusionMap, FusionFinder, MapSplice, deFuse and TopHat-fusion. To evaluate the sensitivity we used a synthetic dataset of fusion-products, called positive dataset; in these experiments FusionMap, FusionFinder, MapSplice, and TopHat-fusion are able to detect more than 78% of fusion genes. All tools were error prone with high variability among the tools, identifying some fusion genes not present in the synthetic dataset. To better investigate the false discovery chimera detection rate, synthetic datasets free of fusion-products, called negative datasets, were used. The negative datasets have different read lengths and quality scores, which allow detecting dependency of the tools on both these features. FusionMap, FusionFinder, mapSplice, deFuse and TopHat-fusion were error-prone. Only FusionHunter results were free of false positive. FusionMap gave the best compromise in terms of specificity in the negative dataset and of sensitivity in the positive dataset. CONCLUSIONS: We have observed a dependency of the tools on read length, quality score and on the number of reads supporting each chimera. Thus, it is important to carefully select the software on the basis of the structure of the RNA-seq data under analysis. Furthermore, the sensitivity of chimera detection tools does not seem to be sufficient to provide results consistent with those obtained in normal tissues on the basis of fusion events extracted from published data.
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spelling pubmed-36330502013-04-25 State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues? Carrara, Matteo Beccuti, Marco Cavallo, Federica Donatelli, Susanna Lazzarato, Fulvio Cordero, Francesca Calogero, Raffaele A BMC Bioinformatics Research BACKGROUND: RNA-seq has the potential to discover genes created by chromosomal rearrangements. Fusion genes, also known as "chimeras", are formed by the breakage and re-joining of two different chromosomes. It is known that chimeras have been implicated in the development of cancer. Few publications in the past showed the presence of fusion events also in normal tissue, but with very limited overlaps between their results. More recently, two fusion genes in normal tissues were detected using both RNA-seq and protein data. Due to heterogeneous results in identifying chimeras in normal tissue, we decided to evaluate the efficacy of state of the art fusion finders in detecting chimeras in RNA-seq data from normal tissues. RESULTS: We compared the performance of six fusion-finder tools: FusionHunter, FusionMap, FusionFinder, MapSplice, deFuse and TopHat-fusion. To evaluate the sensitivity we used a synthetic dataset of fusion-products, called positive dataset; in these experiments FusionMap, FusionFinder, MapSplice, and TopHat-fusion are able to detect more than 78% of fusion genes. All tools were error prone with high variability among the tools, identifying some fusion genes not present in the synthetic dataset. To better investigate the false discovery chimera detection rate, synthetic datasets free of fusion-products, called negative datasets, were used. The negative datasets have different read lengths and quality scores, which allow detecting dependency of the tools on both these features. FusionMap, FusionFinder, mapSplice, deFuse and TopHat-fusion were error-prone. Only FusionHunter results were free of false positive. FusionMap gave the best compromise in terms of specificity in the negative dataset and of sensitivity in the positive dataset. CONCLUSIONS: We have observed a dependency of the tools on read length, quality score and on the number of reads supporting each chimera. Thus, it is important to carefully select the software on the basis of the structure of the RNA-seq data under analysis. Furthermore, the sensitivity of chimera detection tools does not seem to be sufficient to provide results consistent with those obtained in normal tissues on the basis of fusion events extracted from published data. BioMed Central 2013-04-22 /pmc/articles/PMC3633050/ /pubmed/23815381 http://dx.doi.org/10.1186/1471-2105-14-S7-S2 Text en Copyright © 2013 Calogero et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Carrara, Matteo
Beccuti, Marco
Cavallo, Federica
Donatelli, Susanna
Lazzarato, Fulvio
Cordero, Francesca
Calogero, Raffaele A
State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?
title State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?
title_full State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?
title_fullStr State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?
title_full_unstemmed State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?
title_short State of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?
title_sort state of art fusion-finder algorithms are suitable to detect transcription-induced chimeras in normal tissues?
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3633050/
https://www.ncbi.nlm.nih.gov/pubmed/23815381
http://dx.doi.org/10.1186/1471-2105-14-S7-S2
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