DeepSRE: Identification of sterol responsive elements and nuclear transcription factors Y proximity in human DNA by Convolutional Neural Network analysis.
Davide NotoAntonina GiammancoRossella SpinaFrancesca FayerAngelo B CefalùMaurizio Rocco AvernaPublished in: PloS one (2021)
SREBP1 and 2, are cholesterol sensors able to modulate cholesterol-related gene expression responses. SREBPs binding sites are characterized by the presence of multiple target sequences as SRE, NFY and SP1, that can be arranged differently in different genes, so that it is not easy to identify the binding site on the basis of direct DNA sequence analysis. This paper presents a complete workflow based on a one-dimensional Convolutional Neural Network (CNN) model able to detect putative SREBPs binding sites irrespective of target elements arrangements. The strategy is based on the recognition of SRE linked (less than 250 bp) to NFY sequences according to chromosomal localization derived from TF Immunoprecipitation (TF ChIP) experiments. The CNN is trained with several 100 bp sequences containing both SRE and NF-Y. Once trained, the model is used to predict the presence of SRE-NFY in the first 500 bp of all the known gene promoters. Finally, genes are grouped according to biological process and the processes enriched in genes containing SRE-NFY in their promoters are analyzed in details. This workflow allowed to identify biological processes enriched in SRE containing genes not directly linked to cholesterol metabolism and possible novel DNA patterns able to fill in for missing classical SRE sequences.
Keyphrases
- convolutional neural network
- genome wide identification
- genome wide
- bioinformatics analysis
- deep learning
- gene expression
- circulating tumor
- transcription factor
- cell free
- single molecule
- dna methylation
- low density lipoprotein
- genome wide analysis
- copy number
- signaling pathway
- endothelial cells
- high throughput
- nucleic acid
- genetic diversity
- machine learning
- immune response
- inflammatory response
- amino acid
- single cell
- drug induced