AI Article Synopsis

  • ChIP-Seq is a common method for identifying transcription factor binding sites, but its data can be noisy and hard to analyze accurately.
  • A new algorithm, Triform, improves peak detection in ChIP-Seq data by using model-free statistics to better define peak-like distributions.
  • Triform has shown superior performance in recognizing significant peak profiles and can uncover binding information in challenging regions, with the algorithm available for use in R.

Article Abstract

Background: Chromatin immunoprecipitation combined with high-throughput sequencing (ChIP-Seq) is the most frequently used method to identify the binding sites of transcription factors. Active binding sites can be seen as peaks in enrichment profiles when the sequencing reads are mapped to a reference genome. However, the profiles are normally noisy, making it challenging to identify all significantly enriched regions in a reliable way and with an acceptable false discovery rate.

Results: We present the Triform algorithm, an improved approach to automatic peak finding in ChIP-Seq enrichment profiles for transcription factors. The method uses model-free statistics to identify peak-like distributions of sequencing reads, taking advantage of improved peak definition in combination with known characteristics of ChIP-Seq data.

Conclusions: Triform outperforms several existing methods in the identification of representative peak profiles in curated benchmark data sets. We also show that Triform in many cases is able to identify peaks that are more consistent with biological function, compared with other methods. Finally, we show that Triform can be used to generate novel information on transcription factor binding in repeat regions, which represents a particular challenge in many ChIP-Seq experiments. The Triform algorithm has been implemented in R, and is available via http://tare.medisin.ntnu.no/triform.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3480842PMC
http://dx.doi.org/10.1186/1471-2105-13-176DOI Listing

Publication Analysis

Top Keywords

triform algorithm
12
algorithm improved
8
peak finding
8
binding sites
8
transcription factors
8
enrichment profiles
8
sequencing reads
8
triform
6
chip-seq
5
improved sensitivity
4

Similar Publications

Assessment and understanding of changes in particle size of active pharmaceutical ingredients (API) and excipients as a function of solid dosage form processing is an important but under-investigated area that can impact drug product quality. In this study, X-ray microscopy (XRM) was investigated as a method for determining the in situ particle size distribution of API agglomerates and an excipient at different processing stages in tablet manufacturing. An artificial intelligence (AI)-facilitated XRM image analysis tool was applied for quantitative analysis of thousands of individual particles, both of the API and the major filler component of the formulation, microcrystalline cellulose (MCC).

View Article and Find Full Text PDF
Article Synopsis
  • ChIP-Seq is a common method for identifying transcription factor binding sites, but its data can be noisy and hard to analyze accurately.
  • A new algorithm, Triform, improves peak detection in ChIP-Seq data by using model-free statistics to better define peak-like distributions.
  • Triform has shown superior performance in recognizing significant peak profiles and can uncover binding information in challenging regions, with the algorithm available for use in R.
View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!