Motivation: Tissue microarrays (TMAs) quantify tissue-specific protein
expression of cancer biomarkers via high-density immuno-histochemical staining assays. Standard
analysis approach estimates a sample mean expression in the tumor, ignoring the complex
tissue-specific staining patterns observed on tissue arrays.
Methods: In this article, a cell mixture model (CMM) is proposed to reconstruct
tumor expression patterns in TMA experiments. The concept is to assemble the whole-tumor
expression pattern by aggregating over the subpopulation of tissue specimens sampled by needle
biopsies. The expression pattern in each individual tissue element is assumed to be a
zero-augmented Gamma distribution to assimilate the non-staining areas and the staining areas. A
hierarchical Bayes model is imposed to borrow strength across tissue specimens and across tumors.
A joint model is presented to link the CMM expression model with a survival model for censored
failure time observations. The implementation involves imputation steps within each Markov chain
Monte Carlo iteration and Monte Carlo integration technique.
Results: The model-based approach provides estimates for various tumor
expression characteristics including the percentage of staining, mean intensity of staining and a
composite meanstaining to associate with patient survival outcome.
Availability: R package to fit CMM model is available at
http://www.mskcc.org/mskcc/html/85130.cfm
Contact: shenr@mskcc.org
Supplementary information: Supplementary data are available at
Bioinformatics online.