DNA methylation is essential in the regulation of gene expression and its misregulation has been implicated in a vast array of cancer types. The causal relationships between DNA methylation, transcription factor binding, chromatin structure, and gene expression are not well elucidated. Regardless, recent research has shown DNA methylation to be a key component in these regulatory modules, suggesting that dissecting the mechanisms underlying the formation of DNA methylation patterns can provide insight into cancer regulomes. In addition, DNA methylation information can potentially serve as novel biomarkers that indicate cancer type, predict patient prognosis, or be used to identify drug targets. Because transcription factors are key players in transcriptional regulation, there is reason to suspect they infl uence or are affected by genome-wide alterations in DNA methylation. This, coupled with the recent accumulation of large-scale genomic data, has allowed for high-resolution in silico dissection of transcription factor-DNA methylation relationships. In this chapter, we present an integrative analysis of ENCODE (Encyclopedia of DNA Elements) ChIP-seq and DNase I hypersensitivity data, coupled with TCGA (The Cancer Genome Atlas) breast cancer DNA methylation and gene expression data to study the interconnection between TFs with DNA methylation. Our results suggest that identifying DNA methylation patterning within transcription factor binding sites reveals information regarding transcription factor binding activity in breast cancer patients. From this, we discuss the translational potential of these novel fi ndings and the power and fl exibility of in silico analysis.