normSPAWN: Normalization by SPAWN method

View source: R/normSPAWN.R

normSPAWNR Documentation

Normalization by SPAWN method

Description

Apply trimmed mean polish to data

Usage

normSPAWN(dataMatrix, plateRows, plateCols, dataRows = NULL,
  dataCols = NULL, trimFactor = 0.2, wellCorrection = FALSE,
  biasMatrix = NULL, biasCols = NULL)

Arguments

dataMatrix

Data frame or numeric matrix. Columns are plates, and rows are plate wells.

plateRows, plateCols

Number of rows/columns in plate.

dataRows, dataCols

Optional integer vector. Indicate which row/column numbers from the dataMatrix should be normalized. If NULL then all rows/columns from the dataMatrix are used.

trimFactor

Optional trim value to be used in trimmed polish. It should be between 0 and 0.5. Default is 0.2.

wellCorrection

Optional logical. If TRUE then individual wells are corrected based on spatial bias.

biasMatrix

Optional data frame or numeric matrix, in the same format as dataMatrix and with the same plateRows and plateCols specifications. If NULL then normalized data is used as bias template.

biasCols

Optional integer vector. Indicate which column numbers from biasMatrix or normalized dataMatrix (subset of dataCols) should be used to calculate bias template. Control plates or selection of dataMatrix plates to be used for well correction. If NULL then all plates of biasMatrix or normalized dataMatrix are used.

Details

Spatial Polish And Well Normalization (SPAWN) uses a trimmed mean polish on individual plates to remove row and column effects. Data from each well location on each plate are initially fitted to the same model as the R score. Model parameters are estimated with an iterative polish technique but with a trimmed mean, rather than a median, as a measure of central tendency for row and column effects. The residuals are rescaled by dividing by the median average deviation of their respective plates. Well correction uses a bias template, which can either be the normalized plates themselves or be supplied externally (and SPAWN normalized before application). At each well location of this bias template, a median of all plates is calculated and subtracted from the normalized plates, thus correcting for well location bias.

Value

Numeric matrix of normalized data in the same format as dataMatrix

Note

For information on how to arrange your dataset for dataMatrix, please see (ex_dataMatrix)

References

SPAWN: Murie et al. (2015). Improving detection of rare biological events in high-throughput screens. Journal of Biomolecular Screening, 20(2), 230-241.

R score: Wu et al. (2008). Quantitative Assessment of Hit Detection and Confirmation in Single and Duplicate High-Throughput Screenings. Journal of Biomolecular Screening, 13(2), 159-167.

Trimmed Mean: Malo et al. (2010). Experimental design and statistical methods for improved hit detection in high-throughput screening. Journal of Biomolecular Screening, 15(8), 990-1000.

See Also

Other normalization methods: normLoess, normMedFil, normRobZ, normR, normZ

Examples

## load dataset
data(ex_dataMatrix)

## apply SPAWN method with default trim factor and without well correction
ex_normMatrix <- normSPAWN(dataMatrix = ex_dataMatrix, dataCols = 5:10,
plateRows = 8, plateCols = 10, trimFactor = 0.2)
## apply SPAWN method with default trim factor and with well correction
ex_normMatrix <- normSPAWN(dataMatrix = ex_dataMatrix, dataCols = 5:10,
plateRows = 8, plateCols = 10, trimFactor = 0.2, wellCorrection = TRUE)


eg-r/sights documentation built on Jan. 28, 2023, 12:17 a.m.