SEMplMe: A tool for integrating DNA methylation effects in transcription factor binding affinity predictions

BMC bioinformatics(2021)

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摘要
Motivation Aberrant DNA methylation in transcription factor binding sites has been shown to lead to anomalous gene regulation that is strongly associated with human disease. However, the majority of methylation-sensitive positions within transcription factor binding sites remain unknown. Here we introduce SEMplMe, a computational tool to generate predictions of the effect of methylation on transcription factor binding strength in every position within a transcription factor’s motif. Results SEMplMe uses ChIP-seq and whole genome bisulfite sequencing to predict effects of methylation within binding sites. SEMplMe validates known methylation sensitive and insensitive positions within a binding motif, identifies cell type specific transcription factor binding driven by methylation, and outperforms SELEX-based predictions for CTCF. These predictions can be used to identify aberrant sites of DNA methylation contributing to human disease. Availability and Implementation SEMplMe is available from . Contact apboyle{at}umich.edu Supplementary Information Supplementary data are available at Bioinformatics online. ### Competing Interest Statement The authors have declared no competing interest.
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关键词
DNA methylation,Transcription factor,TFBS,Gene regulation,Noncoding variation,Software,Open-source
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