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CELLCODE: A ROBUST LATENT VARIABLE APPROACH TO DIFFERENTIAL EXPRESSION ANALYSIS FOR HETEROGENEOUS CELL POPULATIONS PRESENTATION BY: BRYAN SHAW MOTIVATION • Alterations in gene expressions need to be studied • Problems with pure cell samples • No method that addresses the heterogeneity of samples without additional proportion info INTRODUCTION • Differential Expression (DE) • The differences in transcript production in aggregate between normal and tumor cells • Current methods • Matrix decomposition • Iterative INTRODUCTION • “A recent R package unifying many of the existent methods lists only two (DSection and csSAM) that can work as differential expression pipelines, and both require independent cell proportion measurements as input (Gaujoux and Seoighe, 2013).” • Allows the assignment of genes when normal statistical elements fail due to the gene regulation being altered by disease • Disease associated expression changes the expected cell type; which is needed for interpreting results RESULTS • “.. Cell-type COmputational Differential Estimation (CellCODE) method is designed for DE analysis and requires no additional dataset-specific knowledge.” • Uses methods for to adjust for mixture variation and improves statistical power • Used on already known datasets and proven to be generally applicable • Uses “… multi-step statistical framework that uses latent variable analysis to analyze [DE] from mixture samples. RESULTS • SPV’s (surrogate proportion variables) • cross-referencing putative marker genes with correlated data correlation structures • Needed to estimate the relative difference in cell proportions • Approach is data dependent due cell type composition varying from dataset to dataset RESULTS Package contains a heatmap for gene correlation RESULTS Compared to the Coulter counter analysis RESULTS RESULTS • CellCODE improves differential expression discovery • “Although our analysis suggests that interaction models are not well suited for improving the power to detect differential expression, they are useful for attributing the DE genes to their cell type of origin.” RESULTS • “The CellCODE SPVs explain a large fraction of the global gene expression changes observed with standard differential analysis by summarizing them as proportion changes.” • Vaccine section (skipped) DISCUSSION • This method does use or require independent proportion measurements • Able to distinguish between t-cells and b-cells with the coulter method could not METHODS • P is a matrix of pure cell expression and C is a matrix of mixture proportions • N genes M samples K cell types METHODS METHODS