Evaluating gene expression dynamics using pairwise RNA FISH data. Author Matthieu Wyart, David Botstein, Ned Wingreen Publication Year 2010 Type Journal Article Abstract Recently, a novel approach has been developed to study gene expression in single cells with high time resolution using RNA Fluorescent In Situ Hybridization (FISH). The technique allows individual mRNAs to be counted with high accuracy in wild-type cells, but requires cells to be fixed; thus, each cell provides only a "snapshot" of gene expression. Here we show how and when RNA FISH data on pairs of genes can be used to reconstruct real-time dynamics from a collection of such snapshots. Using maximum-likelihood parameter estimation on synthetically generated, noisy FISH data, we show that dynamical programs of gene expression, such as cycles (e.g., the cell cycle) or switches between discrete states, can be accurately reconstructed. In the limit that mRNAs are produced in short-lived bursts, binary thresholding of the FISH data provides a robust way of reconstructing dynamics. In this regime, prior knowledge of the type of dynamics--cycle versus switch--is generally required and additional constraints, e.g., from triplet FISH measurements, may also be needed to fully constrain all parameters. As a demonstration, we apply the thresholding method to RNA FISH data obtained from single, unsynchronized cells of Saccharomyces cerevisiae. Our results support the existence of metabolic cycles and provide an estimate of global gene-expression noise. The approach to FISH data presented here can be applied in general to reconstruct dynamics from snapshots of pairs of correlated quantities including, for example, protein concentrations obtained from immunofluorescence assays. Keywords In Situ Hybridization, Fluorescence, Gene Expression Profiling, Gene Expression Regulation, Fungal, Saccharomyces cerevisiae, Cluster Analysis, Computational Biology, Algorithms, RNA, Messenger, Principal Component Analysis, RNA, Fungal, Computer Simulation, Saccharomyces cerevisiae Proteins Journal PLoS Comput Biol Volume 6 Issue 11 Pages e1000979 Alternate Journal PLoS Comput. Biol. Google ScholarBibTeXEndNote X3 XML