1
0
1
0
1
0
1
0
1
0
1
0
1
1
1
1
1
1
1
1
1
1
1
1
d on this design matrix D, a linear model was formulated as below,
was a vector of gene expressions for one gene, ߚ was a vector of
rs and ߝ was an error vector.
ݔൌܦߚߝ
(6.7)
ormula can be re-written as below, where ݔ
and ݔ
represented
ressions of two experimental conditions.
ۉ
ۈ
ۈ
ۈ
ۈ
ۈ
ۇ
ݔଵ
ݔଶ
⋮
ݔ
ݔଵ
ݔଶ
⋮
ݔ
ی
ۋ
ۋ
ۋ
ۋ
ۋ
ۊ
ൌ
ۉ
ۈ
ۈ
ۈ
ۇ
1
0
1
0
⋮
1
1
1
⋮
1
⋮
0
1
1
⋮
1ی
ۋ
ۋ
ۋ
ۊ
ሺߚଵ
ߚଶሻ௧ ߳
(6.8)
that the above equations are for one gene. In limma, ߚଵ and ߚଶ
ated based on the expressions of all genes in a data set. Therefore,
mation of ߚଵ and ߚଶ using the limma package will be more
uppose ߚመଵ and ߚመଶ are the estimations using a regression analysis
based on all genes. In addition, ߤ̂ and ߤ̂ are assumed to stand
population means of a gene. The estimated ߚመଶ can be re-
ed and is shown below, which is what the fold change is,