作者
Simon J van Heeringen, Gert Jan C Veenstra
发表日期
2011/1/15
期刊
Bioinformatics
卷号
27
期号
2
页码范围
270-271
出版商
Oxford University Press
简介
Summary: Accurate prediction of transcription factor binding motifs that are enriched in a collection of sequences remains a computational challenge. Here we report on GimmeMotifs, a pipeline that incorporates an ensemble of computational tools to predict motifs de novo from ChIP-sequencing (ChIP-seq) data. Similar redundant motifs are compared using the weighted information content (WIC) similarity score and clustered using an iterative procedure. A comprehensive output report is generated with several different evaluation metrics to compare and evaluate the results. Benchmarks show that the method performs well on human and mouse ChIP-seq datasets. GimmeMotifs consists of a suite of command-line scripts that can be easily implemented in a ChIP-seq analysis pipeline.
Availability: GimmeMotifs is implemented in Python and runs on Linux. The source code is freely available for …
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