Difference between revisions of "Computational Regulatory Genomics"
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<h3>Research Interests: </h3> The ultimate goal of our research is to understand how genomic DNA sequence specifies gene regulation. | <h3>Research Interests: </h3> The ultimate goal of our research is to understand how genomic DNA sequence specifies gene regulation. | ||
− | We have recently made significant progress in understanding | + | We have recently made significant progress in understanding how DNA sequence features control cell-type specific mammalian enhancer activity by using kmer-based SVM machine learning approaches. For details, see: |
* '''[http://www.horizonpress.com/genomeanalysis Mammalian Enhancer Prediction.]''' Lee D, Beer MA. 2014. Genome Analysis: Current Procedures and Applications. Horizon Press (in press) | * '''[http://www.horizonpress.com/genomeanalysis Mammalian Enhancer Prediction.]''' Lee D, Beer MA. 2014. Genome Analysis: Current Procedures and Applications. Horizon Press (in press) | ||
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* systematically determining regulatory elements from ENCODE human and mouse data | * systematically determining regulatory elements from ENCODE human and mouse data | ||
* using the inferred regulatory code to assess common modes of regulatory element evolution and variation | * using the inferred regulatory code to assess common modes of regulatory element evolution and variation | ||
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<h3>[[Lab Members]]</h3> | <h3>[[Lab Members]]</h3> | ||
<h3>[[Publications]]</h3> | <h3>[[Publications]]</h3> |
Revision as of 23:49, 1 December 2013
Welcome to the Beer Lab!
Research Interests:
The ultimate goal of our research is to understand how genomic DNA sequence specifies gene regulation.
We have recently made significant progress in understanding how DNA sequence features control cell-type specific mammalian enhancer activity by using kmer-based SVM machine learning approaches. For details, see:
- Mammalian Enhancer Prediction. Lee D, Beer MA. 2014. Genome Analysis: Current Procedures and Applications. Horizon Press (in press)
- Robust k-mer Frequency Estimation Using Gapped k-mers. Ghandi M, Mohammad-Noori M, and Beer MA. 2013. Journal of Mathematical Biology. (Epub ahead of print)
- kmer-SVM: a web server for identifying predictive regulatory sequence features in genomic datasets. Fletez-Brant C*, Lee D*, McCallion AS and Beer MA. 2013. Nucleic Acids Research 41: W544–W556.
- Integration of ChIP-seq and Machine Learning Reveals Enhancers and a Predictive Regulatory Sequence Vocabulary in Melanocytes. Gorkin DU, Lee D, Reed X, Fletez-Brant C, Blessling SL, Loftus SK, Beer MA, Pavan WJ, and McCallion AS. 2012. Genome Research 22:2290-2301.
- Discriminative prediction of mammalian enhancers from DNA sequence. Lee D, Karchin R, and Beer MA. 2011. Genome Research 21:2167-2180.
This work uses functional genomics DNase-seq, ChIP-seq, RNA-seq, and chromatin state data to computationally identify combinations of transcription factor binding sites which operate to define the activity of a set of cell-type specific enhancers. We are currently focused on:
- improving this methodology by including more diverse constraints and features
- predicting the impact of SNPs on enhancer activity (delta-SVM) and GWAS disease association
- experimentally characterizing the predicted impact of regulatory element mutation in mammalian cells
- systematically determining regulatory elements from ENCODE human and mouse data
- using the inferred regulatory code to assess common modes of regulatory element evolution and variation