A robust nonlinear low-dimensional manifold for single cell RNA-seq data.

BMC Bioinformatics

Computer Science, Center for Statistics and Machine Learning, 35 Olden Street, Princeton, 08540, NJ, USA.

Published: July 2020

AI Article Synopsis

  • Modern single-cell RNA sequencing (scRNA-seq) technologies help scientists understand cellular differences by exploring various cell types and states, but analyzing the resulting high-dimensional data requires dimension reduction techniques.
  • The authors introduce a new model called the Gaussian process latent variable model (GPLVM), which uses a heavy-tailed Student's t-distribution to account for noise in raw, unfiltered gene count data and effectively estimates the underlying structure in scRNA-seq datasets.
  • Their method shows advantages over existing techniques by enabling better clustering, inferring cell development paths, and enhancing visualization of experimental data, making it useful for exploring and estimating uncertainty in cellular states.

Article 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.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7374962PMC
http://dx.doi.org/10.1186/s12859-020-03625-zDOI Listing

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