Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE data

Abstract Cap Analysis of Gene Expression (CAGE) has emerged as a powerful experimental technique for assisting in the identification of transcription start sites (TSSs). There is strong evidence that CAGE also identifies capping sites along various other locations of transcribed loci such as splicin...

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Main Authors: Georgios K. Georgakilas, Nikos Perdikopanis, Artemis Hatzigeorgiou
Format: Article
Language:English
Published: Nature Publishing Group 2020-01-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-020-57811-3
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spelling doaj-3ea25c0969444078827e4deb02a461192021-01-24T12:37:06ZengNature Publishing GroupScientific Reports2045-23222020-01-0110111210.1038/s41598-020-57811-3Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE dataGeorgios K. Georgakilas0Nikos Perdikopanis1Artemis Hatzigeorgiou2Hellenic Pasteur InstituteHellenic Pasteur InstituteHellenic Pasteur InstituteAbstract Cap Analysis of Gene Expression (CAGE) has emerged as a powerful experimental technique for assisting in the identification of transcription start sites (TSSs). There is strong evidence that CAGE also identifies capping sites along various other locations of transcribed loci such as splicing byproducts, alternative isoforms and capped molecules overlapping introns and exons. We present ADAPT-CAGE, a Machine Learning framework which is trained to distinguish between CAGE signal derived from TSSs and transcriptional noise. ADAPT-CAGE provides highly accurate experimentally derived TSSs on a genome-wide scale. It has been specifically designed for flexibility and ease-of-use by only requiring aligned CAGE data and the underlying genomic sequence. When compared to existing algorithms, ADAPT-CAGE exhibits improved performance on every benchmark that we designed based on both annotation- and experimentally-driven strategies. This performance boost brings ADAPT-CAGE in the spotlight as a computational framework that is able to assist in the refinement of gene regulatory networks, the incorporation of accurate information of gene expression regulators and alternative promoter usage in both physiological and pathological conditions.https://doi.org/10.1038/s41598-020-57811-3
collection DOAJ
language English
format Article
sources DOAJ
author Georgios K. Georgakilas
Nikos Perdikopanis
Artemis Hatzigeorgiou
spellingShingle Georgios K. Georgakilas
Nikos Perdikopanis
Artemis Hatzigeorgiou
Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE data
Scientific Reports
author_facet Georgios K. Georgakilas
Nikos Perdikopanis
Artemis Hatzigeorgiou
author_sort Georgios K. Georgakilas
title Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE data
title_short Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE data
title_full Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE data
title_fullStr Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE data
title_full_unstemmed Solving the transcription start site identification problem with ADAPT-CAGE: a Machine Learning algorithm for the analysis of CAGE data
title_sort solving the transcription start site identification problem with adapt-cage: a machine learning algorithm for the analysis of cage data
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2020-01-01
description Abstract Cap Analysis of Gene Expression (CAGE) has emerged as a powerful experimental technique for assisting in the identification of transcription start sites (TSSs). There is strong evidence that CAGE also identifies capping sites along various other locations of transcribed loci such as splicing byproducts, alternative isoforms and capped molecules overlapping introns and exons. We present ADAPT-CAGE, a Machine Learning framework which is trained to distinguish between CAGE signal derived from TSSs and transcriptional noise. ADAPT-CAGE provides highly accurate experimentally derived TSSs on a genome-wide scale. It has been specifically designed for flexibility and ease-of-use by only requiring aligned CAGE data and the underlying genomic sequence. When compared to existing algorithms, ADAPT-CAGE exhibits improved performance on every benchmark that we designed based on both annotation- and experimentally-driven strategies. This performance boost brings ADAPT-CAGE in the spotlight as a computational framework that is able to assist in the refinement of gene regulatory networks, the incorporation of accurate information of gene expression regulators and alternative promoter usage in both physiological and pathological conditions.
url https://doi.org/10.1038/s41598-020-57811-3
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