Finds quartile range of the data (default is IQR = 75th percentile - 25th percentile).
Usage
quan.norm(x, percent=50)
Arguments
x
x is a vector for which quartile range has to be found.
percent
Percentage for which quartile range is needed
Value
Returns a numeric value representing the difference of 75th percentile
and 25th percentile of the vector. It is used for normalization across
the chips - basic assumption is that net differential expression of
the middle half of the genes in microarray experiment is zero, which
is conservative assumption as typically only 5-10 differential expression.
References
J.K. Lee and M.O.Connell(2003). An S-Plus library for the analysis of differential expression. In The Analysis of Gene Expression Data: Methods and Software. Edited by G. Parmigiani, ES Garrett, RA Irizarry ad SL Zegar. Springer, NewYork.
Jain et. al. (2003) Local pooled error test for identifying
differentially expressed genes with a small number of replicated microarrays, Bioinformatics, 1945-1951.
Jain et. al. (2005) Rank-invariant resampling based estimation of false discovery rate for analysis of small sample microarray data, BMC Bioinformatics, Vol 6, 187.