Construction of transcript regulation mechanism prediction models based on binding motif environment of transcription factor AoXlnR in Aspergillus oryzae .
Hiroya OkaTakaaki KojimaRyuji KatoKunio IharaHideo NakanoPublished in: Journal of bioinformatics and computational biology (2024)
DNA-binding transcription factors (TFs) play a central role in transcriptional regulation mechanisms, mainly through their specific binding to target sites on the genome and regulation of the expression of downstream genes. Therefore, a comprehensive analysis of the function of these TFs will lead to the understanding of various biological mechanisms. However, the functions of TFs in vivo are diverse and complicated, and the identified binding sites on the genome are not necessarily involved in the regulation of downstream gene expression. In this study, we investigated whether DNA structural information around the binding site of TFs can be used to predict the involvement of the binding site in the regulation of the expression of genes located downstream of the binding site. Specifically, we calculated the structural parameters based on the DNA shape around the DNA binding motif located upstream of the gene whose expression is directly regulated by one TF AoXlnR from Aspergillus oryzae , and showed that the presence or absence of expression regulation can be predicted from the sequence information with high accuracy ([Formula: see text]-1.0) by machine learning incorporating these parameters.
Keyphrases
- dna binding
- transcription factor
- poor prognosis
- genome wide identification
- genome wide
- gene expression
- machine learning
- binding protein
- dna methylation
- long non coding rna
- circulating tumor
- mass spectrometry
- artificial intelligence
- deep learning
- copy number
- health information
- single cell
- human milk
- genome wide analysis