Ph. D. Thesis.Gene regulation is an important mechanism that ensures the correct functioning of a cell and
is generally orchestrated by gene regulatory elements such as transcriptional enhancers.
Identification of these genomic regions are important in understanding a wide range of
phenomena such as evolution, homeostasis and disease. During gene regulation, signals
pertaining to transcriptional activation are transferred across the chromatin regulatory
network from enhancers to genes in the form of transcription factors and cofactors that in
turn, recruit transcriptional machinery such as RNA Polymerase II to increase the rate of
gene transcription. Conceptually, we describe this as a flow of information from enhancers to
genes, mediated by the chromatin conformation. We exploit this relationship in order to
decode the regulatory landscape of genes and identify active enhancers.
This thesis outlines the difficulties associated with identifying pathogenic mutations in the
non-coding genome due to a lack of robust enhancer annotations. We use network theory to
annotate these regions and develop a new method, 3D-SearchE, that serves to predict the
location of novel putative active enhancers. 3D-SearchE achieves this by reverse
engineering the flow of information between enhancers and genes to calculate an imputed
activity score (IAS) at intergenic loci. We show that intergenic loci with a high IAS are also
present for other enhancer associated features including the histone marks H3K27ac,
H3K4me1 and H3K4me2, P300, CAGE-seq, Starr-seq, eQTLs and RNA Polymerase II.
3D-SearchE successfully leverages and summarises the relationship between the 3D
organisation of chromatin and global gene expression and represents a novel enhancer
associated feature that can be used to predict active enhancers
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