stat.Newton {sma} | R Documentation |
Applies Newtons single slide method.
stat.Newton(RG,layout,norm="p", image.id=1,pout=TRUE)
RG |
a list with 4 elements, each represents a matrix with p rows for p
genes and n columns for n slides. The first element "R" contains the raw red intensities from slide i=1,...,n . Similarly, the second element "G" contains the raw green intensities. The third element "Rb" contains the background red intensities and the fourth element "Gb" contains the background green intensities. This list structure can be generated by the interactive function init.data . |
layout |
a list specifying the dimensions of the spot matrix and the grid
matrix. This can be generated by calling init.grid . |
norm |
Character string, one of "n", "m", "l", "p" or "s". This
argument specifies the type of normalization method to be performed:
"n" no normalization between the 2 channels; "m"
median normalization, which sets the median of log
intensity ratios to zero; "l" global lowess
normalization; "p" print-tip group lowess normalization and "s"
scaled print-tip group lowess normalization. The default method is
set to print-tip normalization. |
image.id |
Specifies image to which Chen's method will be applied. |
pout |
if TRUE, an M vs. A plot will be produced with limits due to Newton, Specifically limits at the 1:1, 1:10 and 1:100 log odds ratio. If FALSE, return a list with pertinant information |
List containing the following components:
theta |
parameters estimated by EM algorithm |
lod |
Log odds ratio of being differentially expressed for each gene |
Ben Bolstad, bolstad@stat.berkeley.edu
Newton, M.N., C.M. Kendziorski, C.S. Richmond, F.R. Blattner, and K.W. Tsui . On differential variability of expression ratios: Improving statistical inference about gene expression changes from microarray data. Technical Report 139, Department of Biostatistics and Medical Informatics, UW Madison, 1999. http://www.stat.wisc.edu/~newton/papers/abstracts/btr139a.html
data(MouseArray) ##mouse.setup <- init.grid() ##mouse.data <- init.data() ## see \emph{init.data} stat.Newton(mouse.data,mouse.setup,image.id=3)