scde-package | Single-cell Differential Expression (with Pathway And Gene set Overdispersion Analysis) |
bwpca | Determine principal components of a matrix using per-observation/per-variable weights |
clean.counts | Filter counts matrix |
clean.gos | Filter GOs list |
es.mef.small | Sample data |
knn | Sample error model |
knn.error.models | Build error models for heterogeneous cell populations, based on K-nearest neighbor cells. |
make.pagoda.app | Make the PAGODA app |
o.ifm | Sample error model |
pagoda.cluster.cells | Determine optimal cell clustering based on the genes driving the significant aspects |
pagoda.effective.cells | Estimate effective number of cells based on lambda1 of random gene sets |
pagoda.gene.clusters | Determine de-novo gene clusters and associated overdispersion info |
pagoda.pathway.wPCA | Run weighted PCA analysis on pre-annotated gene sets |
pagoda.reduce.loading.redundancy | Collapse aspects driven by the same combinations of genes |
pagoda.reduce.redundancy | Collapse aspects driven by similar patterns (i.e. separate the same sets of cells) |
pagoda.show.pathways | View pathway or gene weighted PCA |
pagoda.subtract.aspect | Control for a particular aspect of expression heterogeneity in a given population |
pagoda.top.aspects | Score statistical significance of gene set and cluster overdispersion |
pagoda.varnorm | Normalize gene expression variance relative to transcriptome-wide expectations |
pagoda.view.aspects | View PAGODA output |
papply | wrapper around different mclapply mechanisms |
pollen | Sample data |
scde | Single-cell Differential Expression (with Pathway And Gene set Overdispersion Analysis) |
scde.browse.diffexp | View differential expression results in a browser |
scde.edff | Internal model data |
scde.error.models | Fit single-cell error/regression models |
scde.expression.difference | Test for expression differences between two sets of cells |
scde.expression.magnitude | Return scaled expression magnitude estimates |
scde.expression.prior | Estimate prior distribution for gene expression magnitudes |
scde.failure.probability | Calculate drop-out probabilities given a set of counts or expression magnitudes |
scde.fit.models.to.reference | Fit scde models relative to provided set of expression magnitudes |
scde.posteriors | Calculate joint expression magnitude posteriors across a set of cells |
scde.test.gene.expression.difference | Test differential expression and plot posteriors for a particular gene |
show.app | View PAGODA application |
view.aspects | View heatmap |
ViewPagodaApp | A Reference Class to represent the PAGODA application |
ViewPagodaApp-class | A Reference Class to represent the PAGODA application |
winsorize.matrix | Winsorize matrix |