Outputs from function SpaTopic_inference.
A list contains the following members:
$Perplexity. The perplexity is for the training data. Let N be the total number of cells across all images. \(Perplexity = exp(-loglikelihood/N)\)$Deviance. \(Deviance = -2loglikelihood\).$loglikelihood. The model log-likelihood.$loglike.trace. The log-likelihood for every collected posterior sample. NULL iftrace= FALSE.$DIC. Deviance Information Criterion. NULL iftrace= FALSE.$Beta. Topic content matrix with rows as celltypes and columns as topics$Theta. Topic prevalent matrix with rows as regions and columns as topics$Ndk. Number of cells per topic (col) per region (row).$Nwk. Number of cells per topic (col) per celltype (row).$Z.trace. Number of times cell being assigned to each topic across all posterior samples. We can further compute the posterior distributions ofZ(topic assignment) for individual cells.$doc.trace.Ndkfor every collected posterior sample. NULL iftrace= FALSE.$word.trace.Nwkfor every collected posterior sample. NULL iftrace= FALSE.$cell_topics. Final topic assignments Z for individual cells.$parameters. Model parameters used in the analysis.