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Spatial Normalization of Reverse Phase Protein Array Data
Authors:Poorvi Kaushik  Evan J Molinelli  Martin L Miller  Weiqing Wang  Anil Korkut  Wenbin Liu  Zhenlin Ju  Yiling Lu  Gordon Mills  Chris Sander
Institution:1. Computational Biology Center, Memorial Sloan-Kettering Cancer Center, New York, New York, United States of America.; 2. Department of Systems Biology, The University of Texas M. D. Anderson Cancer Center, Houston, Texas, United States of America.; 3. Division of Quantitative Sciences, The University of Texas M. D. Anderson Cancer Center, Houston, Texas, United States of America.; Rice University, United States of America,
Abstract:Reverse phase protein arrays (RPPA) are an efficient, high-throughput, cost-effective method for the quantification of specific proteins in complex biological samples. The quality of RPPA data may be affected by various sources of error. One of these, spatial variation, is caused by uneven exposure of different parts of an RPPA slide to the reagents used in protein detection. We present a method for the determination and correction of systematic spatial variation in RPPA slides using positive control spots printed on each slide. The method uses a simple bi-linear interpolation technique to obtain a surface representing the spatial variation occurring across the dimensions of a slide. This surface is used to calculate correction factors that can normalize the relative protein concentrations of the samples on each slide. The adoption of the method results in increased agreement between technical and biological replicates of various tumor and cell-line derived samples. Further, in data from a study of the melanoma cell-line SKMEL-133, several slides that had previously been rejected because they had a coefficient of variation (CV) greater than 15%, are rescued by reduction of CV below this threshold in each case. The method is implemented in the R statistical programing language. It is compatible with MicroVigene and SuperCurve, packages commonly used in RPPA data analysis. The method is made available, along with suggestions for implementation, at http://bitbucket.org/rppa_preprocess/rppa_preprocess/src.
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