ulation of data through maximising the difference between two
of an empirical distribution [Hartigan, 1985; Hartigan and
1985]. Its null hypothesis is the unimodality.
udy the subpopulation formation problem in biomedical practices,
xpression bimodality pattern discovery project can be based on a
ject approach or a dual-object approach. The dual-object
es address the cooperation between two genes such as an
e and a suppression gene in relationship to a disease development
, et al., 2016]. The single-object approaches take one gene for the
his chapter mainly focuses on the single-object approaches for
pression bimodality pattern discovery. Most single-object
es assume that the expressions of a gene follow a mixture of two
ons [Hellwig, et al., 2010].
measure used by the PACK algorithm is similar to the Kurtosis
chendroff, et al., 2006], where the bimodality of a gene is tested
tosis profile, which is either negative or positive. A positive
stands for a super-Gaussian and a negative measure represents a
sian. The bimodality index approach, on the other hand, assumes
xpressions of a bimodal gene follow a mixture of two Gaussians
t al., 2009]. The algorithm was enhanced by the Markov chain
arlo simulation. The relative discrepancy measure is also based
sumption of a Gaussian mixture [Bessarabova, et al., 2010]. By
ng a ratio between a bimodal distribution and a unimodal
on, the likelihood ratio between them is used for the bimodality
iscovery [Hu, 2008]. In addition to the use of a measure, cluster
has also been used to discover a bimodal distribution [Gormley
ren, 2008].
e likelihood ratio test approach
ihood ratio test (LR) assumes that gene expressions follow a
distribution and the bimodality only occurs in the case
n [Hu, 2008]. Suppose a gene expression vector is denoted by z.
nt vector of a control expression vector x and a case expression