how to utilize deep learning to predict (differential) gene expression based on RNAseq, ChIPseq and HiC?
how to utilize deep learning to predict (differential) gene expression based on RNAseq, ChIPseq and HiC?
A very interesting topic IMO. I think there is no easy answer to your question because you would need a lot of multi-dimensional data to say that element A is regulating gene B - and you would need functional validation with wet-lab experiments. However, what came to my mind is ChromHMM (http://compbio.mit.edu/ChromHMM/). This characterizes your genomic elements based on ChIP-seq data - however interpretation of the elements is on you. Another paper which i found is this one: https://bmcgenomics.biomedcentral.com/articles/10.1186/s12864-019-5997-2. Hope it helps & best wishes
This is obviously an interesting topic, but it is not a solved question currently. I would investigate the work of Anshul Kundaje, who's group works in this area. https://sites.google.com/site/anshulkundaje/Home
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Do you mean predict based on covariates? What is your objective?
I want to know which epigenetic features, such as promoter, enhancer, or promoter-enhancer interactions, affect gene expression?
All of the above and more.
yes. But I want to systematically to predict these elements.
No ml tools can do these tasks now. You may develop one by your own..