Gene expression prediction
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Revision as of 22:09, 1 April 2018 by Fedor Kolpakov (Talk | contribs)
Method, code, references | Input data | Algorithm | Accuracy | Comment |
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INVOKE (R script)[1]
https://github.com/SchulzLab/TEPIC/tree/master/MachineLearningPipelines/INVOKE |
Input:
Output:
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INVOKE offers linear regression with various regularisation techniques (Lasso, Ridge, Elastic net) to infer potentially important transcriptional regulators by predicting gene expression from TEPIC TF-gene scores. |
HepG2 - r=0.68,
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PECA - paired expression and chromatin accessibility (MATLAB)[2] |
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2009 - an approach based on feature extraction of ChIP-Seq signals, principal component analysis, and regression-based component selection [3] | Input:
Output:
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mouse ESCs, r=0.806, R2=0.65, CV-R2=0.64 |
References
Error fetching PMID 27899623:
Error fetching PMID 28576882:
Error fetching PMID 19995984:
Error fetching PMID 28576882:
Error fetching PMID 19995984:
- Error fetching PMID 27899623:
- Error fetching PMID 28576882:
- Error fetching PMID 19995984: