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1.
Proc Natl Acad Sci U S A ; 118(32)2021 08 10.
Article in English | MEDLINE | ID: mdl-34362843

ABSTRACT

Multicellular organisms rely on spatial signaling among cells to drive their organization, development, and response to stimuli. Several models have been proposed to capture the behavior of spatial signaling in multicellular systems, but existing approaches fail to capture both the autonomous behavior of single cells and the interactions of a cell with its neighbors simultaneously. We propose a spatiotemporal model of dynamic cell signaling based on Hawkes processes-self-exciting point processes-that model the signaling processes within a cell and spatial couplings between cells. With this cellular point process (CPP), we capture both the single-cell pathway activation rate and the magnitude and duration of signaling between cells relative to their spatial location. Furthermore, our model captures tissues composed of heterogeneous cell types with different bursting rates and signaling behaviors across multiple signaling proteins. We apply our model to epithelial cell systems that exhibit a range of autonomous and spatial signaling behaviors basally and under pharmacological exposure. Our model identifies known drug-induced signaling deficits, characterizes signaling changes across a wound front, and generalizes to multichannel observations.


Subject(s)
Keratinocytes/metabolism , Models, Biological , Signal Transduction , Animals , Dipeptides/pharmacology , Dogs , Epithelial Cells , Hydroxamic Acids/pharmacology , Keratinocytes/cytology , Keratinocytes/drug effects , MAP Kinase Signaling System/drug effects , Madin Darby Canine Kidney Cells , Mice, Inbred Strains , Mice, Transgenic , Models, Statistical , Protein Kinase Inhibitors/pharmacology , Signal Transduction/drug effects , Spatio-Temporal Analysis
2.
BMC Bioinformatics ; 21(1): 324, 2020 Jul 21.
Article in English | MEDLINE | ID: mdl-32693778

ABSTRACT

BACKGROUND: Modern developments in single-cell sequencing technologies enable broad insights into cellular state. Single-cell RNA sequencing (scRNA-seq) can be used to explore cell types, states, and developmental trajectories to broaden our understanding of cellular heterogeneity in tissues and organs. Analysis of these sparse, high-dimensional experimental results requires dimension reduction. Several methods have been developed to estimate low-dimensional embeddings for filtered and normalized single-cell data. However, methods have yet to be developed for unfiltered and unnormalized count data that estimate uncertainty in the low-dimensional space. We present a nonlinear latent variable model with robust, heavy-tailed error and adaptive kernel learning to estimate low-dimensional nonlinear structure in scRNA-seq data. RESULTS: Gene expression in a single cell is modeled as a noisy draw from a Gaussian process in high dimensions from low-dimensional latent positions. This model is called the Gaussian process latent variable model (GPLVM). We model residual errors with a heavy-tailed Student's t-distribution to estimate a manifold that is robust to technical and biological noise found in normalized scRNA-seq data. We compare our approach to common dimension reduction tools across a diverse set of scRNA-seq data sets to highlight our model's ability to enable important downstream tasks such as clustering, inferring cell developmental trajectories, and visualizing high throughput experiments on available experimental data. CONCLUSION: We show that our adaptive robust statistical approach to estimate a nonlinear manifold is well suited for raw, unfiltered gene counts from high-throughput sequencing technologies for visualization, exploration, and uncertainty estimation of cell states.


Subject(s)
Nonlinear Dynamics , RNA-Seq , Single-Cell Analysis/methods , Blood Cells/metabolism , Gene Expression Regulation , Humans , Models, Genetic , Neurons/metabolism , Normal Distribution , Principal Component Analysis , Time Factors
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