Abstract
Microarray data is often utilized in inferring regulatory networks. Quantile normalization (QN) is a popular method to reduce array-to-array variation. We show that in the context of time series measurements QN may not be the best choice for this task, especially not if the inference is based on continuous time ODE model. We propose an alternative normalization method that is better suited for network inference from time series data.
Cite
CITATION STYLE
Astola, L., & Molenaar, J. (2014). A New Modified Histogram Matching Normalization for Time Series Microarray Analysis. Microarrays, 3(3), 203–211. https://doi.org/10.3390/microarrays3030203
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