Regulatory element detection using correlation with expression (REDUCE) Literature search WANG Chao Sept 14, 2004.

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Presentation transcript:

Regulatory element detection using correlation with expression (REDUCE) Literature search WANG Chao Sept 14, 2004

Harmen J. Bussemaker, Hao Li & Eric D. Siggia, Regulatory Element Detection Using Correlation with Expression, Nature Genetics vol 27, 167 (2001)

Some points A new method for discovering cis-regulatory elements A single genome-wide set of expression ratios, The upstream sequence for each gene, Outputs statistically significant motifs. ● Extract biologically meaningful information

One method for discovering them groups genes into disjoint clusters based on similarity in expression profile over a large number of different conditions. The new method selects the most statisticaly significant motifs from the set of all oligomers up to a sepecified length, dimers(two oligomers with a fixed spacing) and groups thereof based on sequence alignment.

Result four aspects of this algorithm: the iterative selection of motifs to optimize their independence the construction of weight matrices from groups of significant dimers following the fitting parameters as a function of time to infer function analyzing the modulation of a consensus motif by variable positions and flanking bases

Definitions and Method

Finding motifs relevant to cell cycle

Time courses for cell cycle and sporulation motifs

Modulation of the MSE motif in sporulation

Some points to discussion reduces experimental noise and is well suited for uncovering groups of genes a quantitative expression of the widespread notion18 that transcription initiation occurs through the recruitment of the polymerase by reversible binding to transcription factors and hence to the regulatory sequences reconfirm almost all motifs found by clustering methods, at least to the extent of finding a related sequence motif that captures the same experimental signal the importance of simultaneously fitting as many genes as possible

The end