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Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes

SCOPE is an ensemble motif finder that uses three component algorithms in parallel to identify potential regulatory motifs by over-representation and motif position preference(1). Each component algorithm is optimized to find a different kind of motif. By taking the best of these three approaches, S...

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Autores principales: Martyanov, Viktor, Gross, Robert H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MyJove Corporation 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3197115/
https://www.ncbi.nlm.nih.gov/pubmed/21673638
http://dx.doi.org/10.3791/2703
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author Martyanov, Viktor
Gross, Robert H.
author_facet Martyanov, Viktor
Gross, Robert H.
author_sort Martyanov, Viktor
collection PubMed
description SCOPE is an ensemble motif finder that uses three component algorithms in parallel to identify potential regulatory motifs by over-representation and motif position preference(1). Each component algorithm is optimized to find a different kind of motif. By taking the best of these three approaches, SCOPE performs better than any single algorithm, even in the presence of noisy data(1). In this article, we utilize a web version of SCOPE(2) to examine genes that are involved in telomere maintenance. SCOPE has been incorporated into at least two other motif finding programs(3,4) and has been used in other studies(5-8). The three algorithms that comprise SCOPE are BEAM(9), which finds non-degenerate motifs (ACCGGT), PRISM(10), which finds degenerate motifs (ASCGWT), and SPACER(11), which finds longer bipartite motifs (ACCnnnnnnnnGGT). These three algorithms have been optimized to find their corresponding type of motif. Together, they allow SCOPE to perform extremely well. Once a gene set has been analyzed and candidate motifs identified, SCOPE can look for other genes that contain the motif which, when added to the original set, will improve the motif score. This can occur through over-representation or motif position preference. Working with partial gene sets that have biologically verified transcription factor binding sites, SCOPE was able to identify most of the rest of the genes also regulated by the given transcription factor. Output from SCOPE shows candidate motifs, their significance, and other information both as a table and as a graphical motif map. FAQs and video tutorials are available at the SCOPE web site which also includes a "Sample Search" button that allows the user to perform a trial run. Scope has a very friendly user interface that enables novice users to access the algorithm's full power without having to become an expert in the bioinformatics of motif finding. As input, SCOPE can take a list of genes, or FASTA sequences. These can be entered in browser text fields, or read from a file. The output from SCOPE contains a list of all identified motifs with their scores, number of occurrences, fraction of genes containing the motif, and the algorithm used to identify the motif. For each motif, result details include a consensus representation of the motif, a sequence logo, a position weight matrix, and a list of instances for every motif occurrence (with exact positions and "strand" indicated). Results are returned in a browser window and also optionally by email. Previous papers describe the SCOPE algorithms in detail(1,2,9-11).
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spelling pubmed-31971152011-10-26 Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes Martyanov, Viktor Gross, Robert H. J Vis Exp Genetics SCOPE is an ensemble motif finder that uses three component algorithms in parallel to identify potential regulatory motifs by over-representation and motif position preference(1). Each component algorithm is optimized to find a different kind of motif. By taking the best of these three approaches, SCOPE performs better than any single algorithm, even in the presence of noisy data(1). In this article, we utilize a web version of SCOPE(2) to examine genes that are involved in telomere maintenance. SCOPE has been incorporated into at least two other motif finding programs(3,4) and has been used in other studies(5-8). The three algorithms that comprise SCOPE are BEAM(9), which finds non-degenerate motifs (ACCGGT), PRISM(10), which finds degenerate motifs (ASCGWT), and SPACER(11), which finds longer bipartite motifs (ACCnnnnnnnnGGT). These three algorithms have been optimized to find their corresponding type of motif. Together, they allow SCOPE to perform extremely well. Once a gene set has been analyzed and candidate motifs identified, SCOPE can look for other genes that contain the motif which, when added to the original set, will improve the motif score. This can occur through over-representation or motif position preference. Working with partial gene sets that have biologically verified transcription factor binding sites, SCOPE was able to identify most of the rest of the genes also regulated by the given transcription factor. Output from SCOPE shows candidate motifs, their significance, and other information both as a table and as a graphical motif map. FAQs and video tutorials are available at the SCOPE web site which also includes a "Sample Search" button that allows the user to perform a trial run. Scope has a very friendly user interface that enables novice users to access the algorithm's full power without having to become an expert in the bioinformatics of motif finding. As input, SCOPE can take a list of genes, or FASTA sequences. These can be entered in browser text fields, or read from a file. The output from SCOPE contains a list of all identified motifs with their scores, number of occurrences, fraction of genes containing the motif, and the algorithm used to identify the motif. For each motif, result details include a consensus representation of the motif, a sequence logo, a position weight matrix, and a list of instances for every motif occurrence (with exact positions and "strand" indicated). Results are returned in a browser window and also optionally by email. Previous papers describe the SCOPE algorithms in detail(1,2,9-11). MyJove Corporation 2011-05-31 /pmc/articles/PMC3197115/ /pubmed/21673638 http://dx.doi.org/10.3791/2703 Text en Copyright © 2011, Journal of Visualized Experiments http://creativecommons.org/licenses/by-nc-nd/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs 3.0 Unported License. To view a copy of this license, visithttp://creativecommons.org/licenses/by-nc-nd/3.0/
spellingShingle Genetics
Martyanov, Viktor
Gross, Robert H.
Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes
title Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes
title_full Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes
title_fullStr Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes
title_full_unstemmed Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes
title_short Using SCOPE to Identify Potential Regulatory Motifs in Coregulated Genes
title_sort using scope to identify potential regulatory motifs in coregulated genes
topic Genetics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3197115/
https://www.ncbi.nlm.nih.gov/pubmed/21673638
http://dx.doi.org/10.3791/2703
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