The SLiMDisc server: short, linear motif discovery in proteins
The SLiMDisc server: short, linear motif discovery in proteins
Short, linear motifs (SLiMs) play a critical role in many biological processes, particularly in protein-protein interactions. Overrepresentation of convergent occurrences of motifs in proteins with a common attribute (such as similar subcellular location or a shared interaction partner) provides a feasible means to discover novel occurrences computationally. The SLiMDisc (Short, Linear Motif Discovery) web server corrects for common ancestry in describing shared motifs, concentrating on the convergently evolved motifs. The server returns a listing of the most interesting motifs found within unmasked regions, ranked according to an information content-based scoring scheme. It allows interactive input masking, according to various criteria. Scoring allows for evolutionary relationships in the data sets through treatment of BLAST local alignments. Alongside this ranked list, visualizations of the results improve understanding of the context of suggested motifs, helping to identify true motifs of interest. These visualizations include alignments of motif occurrences, alignments of motifs and their homologues and a visual schematic of the top-ranked motifs. Additional options for filtering and/or re-ranking motifs further permit the user to focus on motifs with desired attributes. Returned motifs can also be compared with known SLiMs from the literature. SLiMDisc is available at: http://bioware.ucd.ie/ approximately slimdisc/.
W455-W459
Davey, Norman E.
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Edwards, Richard J.
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Shields, Denis C.
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July 2007
Davey, Norman E.
bdaded6d-ac23-4a43-b347-3113159dfb70
Edwards, Richard J.
9d25e74f-dc0d-455a-832c-5f363d864c43
Shields, Denis C.
57ffee4f-0277-4b3d-9c7a-8c328637d8e6
Davey, Norman E., Edwards, Richard J. and Shields, Denis C.
(2007)
The SLiMDisc server: short, linear motif discovery in proteins.
Nucleic Acids Research, 35 (suppl.2), supplement 2, .
(doi:10.1093/nar/gkm400).
Abstract
Short, linear motifs (SLiMs) play a critical role in many biological processes, particularly in protein-protein interactions. Overrepresentation of convergent occurrences of motifs in proteins with a common attribute (such as similar subcellular location or a shared interaction partner) provides a feasible means to discover novel occurrences computationally. The SLiMDisc (Short, Linear Motif Discovery) web server corrects for common ancestry in describing shared motifs, concentrating on the convergently evolved motifs. The server returns a listing of the most interesting motifs found within unmasked regions, ranked according to an information content-based scoring scheme. It allows interactive input masking, according to various criteria. Scoring allows for evolutionary relationships in the data sets through treatment of BLAST local alignments. Alongside this ranked list, visualizations of the results improve understanding of the context of suggested motifs, helping to identify true motifs of interest. These visualizations include alignments of motif occurrences, alignments of motifs and their homologues and a visual schematic of the top-ranked motifs. Additional options for filtering and/or re-ranking motifs further permit the user to focus on motifs with desired attributes. Returned motifs can also be compared with known SLiMs from the literature. SLiMDisc is available at: http://bioware.ucd.ie/ approximately slimdisc/.
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W455.pdf
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Submitted date: 29 January 2007
Published date: July 2007
Additional Information:
Nucleic Acids Research Advance Access published online on June 18, 2007
Organisations:
Biological Sciences
Identifiers
Local EPrints ID: 143463
URI: http://eprints.soton.ac.uk/id/eprint/143463
ISSN: 0305-1048
PURE UUID: 1a23816d-42d5-4c1d-9ec2-e66feede7051
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Date deposited: 12 Apr 2010 08:13
Last modified: 14 Mar 2024 00:43
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Author:
Norman E. Davey
Author:
Richard J. Edwards
Author:
Denis C. Shields
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