normalizeWithinArrays(object, layout, method="printtiploess", weights=object$weights, span=0.3, iterations=4, controlspots=NULL, df=5, robust="M", bc.method="subtract", offset=0)
MA.RG(object, bc.method="subtract", offset=0)
RG.MA(object)list, RGList or MAList containing red and green intensities constituting two-color microarray data.PrintLayout-class."none", "median", "loess", "printtiploess", "composite", "control" and "robustspline".
A partial string sufficient to uniquely identify the choice is permitted.object containing spot quality weights.loess fitmethod="composite" or method="control".method="robustspline".method="robustspline". Choices are "M" or "MM".backgroundCorrect for options.backgroundCorrect.MAList.
Any components found in object will preserved except for R, G, Rb, Gb and other.
This function normalizes M-values (log-ratios) for dye-bias within each array.
Apart from method="none" and method="median", all the normalization methods make use of the relationship between dye-bias and intensity.
Method "none" computes M-values and A-values but does no normalization.
Method "median" subtracts the weighted median from the M-values for each array.
The loess normalization methods ("loess", "printtiploess" and "composite") were proposed by Yang et al (2001, 2002).
Smyth and Speed (2003) review these methods and describe how the methods are implemented in the limma package, including choices of tuning parameters.
More information on the loess control parameters span and iterations can be found under loessFit.
The default values used here are equivalent to those for the older function stat.ma in the sma package.
Oshlack et al (2004) consider the special issues that arise when a large proportion of probes are differentially expressed.
They propose an improved version of composite loess normalization, which is implemented in the "control" method.
This fits a global loess curve through a set of control spots, such as a whole-library titration series, and applies that curve to all the other spots.
The "robustspline" method calls normalizeRobustSpline.
See that function for more documentation.
MA.RG converts an unlogged RGList object into an MAList object.
MA.RG(object) is equivalent to normalizeWithinArrays(object,method="none").
RG.MA(object) converts back from an MAList object to a RGList object with unlogged intensities.
weights is normally a matrix giving a quality weight for every spot on every array.
If weights is instead a vector or a matrix with only one column, then the weights will be assumed to be the same for every array, i.e., the weights will be probe-specific rather than spot-specific.
Smyth, G. K., and Speed, T. P. (2003). Normalization of cDNA microarray data. Methods 31, 265-273.
Yang, Y. H., Dudoit, S., Luu, P., and Speed, T. P. (2001). Normalization for cDNA microarray data. In Microarrays: Optical Technologies and Informatics, M. L. Bittner, Y. Chen, A. N. Dorsel, and E. R. Dougherty (eds), Proceedings of SPIE, Vol. 4266, pp. 141-152.
Yang, Y. H., Dudoit, S., Luu, P., Lin, D. M., Peng, V., Ngai, J., and Speed, T. P. (2002). Normalization for cDNA microarray data: a robust composite method addressing single and multiple slide systematic variation. Nucleic Acids Research 30(4):e15.
normalizeBetweenArrays for between-array normalization.The original loess normalization function was the statma funtion in the sma package.
normalizeWithinArrays is a direct generalization of that function, with more options and with support for quantitative spot quality weights.
A different implementation of loess normalization methods, with potentially different behavior, is provided by the maNorm in the marray package.