the epigenetic signatures and the genetic signatures separately
by a consistency validation about how the discovered
ally expressed genes and the discovered differentially methylated
correlated in the relationship with a disease. For instance, this
was used to discover aberrant genes in association with breast
hari, et al., 2010]. The cluster analysis algorithms have also been
examine whether the epigenetic signatures and the genetic
s show similar abundance pattern in relation with diseases
et al., 2012].
econd type of approach models the epigenetic-genetic interplay
For instance, the correlation analysis was used to examine how
copy number and the methylation ratio interact with the gene
n based on the deep sequencing profiling transcript expression
a breast cancer study [Sun, et al., 2011]. When studying the low
otility, a mixture model has been constructed based on the pooled
on data and the gene expression data [Pacheco, et al., 2011]. The
on between the methylation and sperm motility was examined
gression models, where the positive regression coefficient was
o a hypo-methylated site and the negative one a hyper-methylated
ths, 2004]. In one study, 62 primary fibroblast samples were used
e how the epigenetic signatures influence the genetic signatures
species, where the gene expressions were regressed on the
ring methylation sites or SNP [Wagner, et al., 2014]. Another
o employed only local and few epigenetic signatures to examine
tributions to the regulation of genes [Ping, et al., 2015].
ession analysis
hod of regression analysis has been researched since the 19th
Galton, 1986] and has been continuously researched till today
et al., 2000; Bishop, 2006; Chatterjee and Hadi, 2015;
mery, et al., 2021]. Regression analysis can be the best candidate
e how two sets of experiments interact and correlate. The main
of regression analysis is to establish a quantitative model to