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CellVGAE: an unsupervised scRNA-seq analysis workflow with graph attention networks.
Buterez, David; Bica, Ioana; Tariq, Ifrah; Andrés-Terré, Helena; Liò, Pietro.
  • Buterez D; Department of Computer Science and Technology, University of Cambridge, Cambridge CB3 0FD, UK.
  • Bica I; Department of Engineering Science, University of Oxford, Oxford OX1 3PJ, UK.
  • Tariq I; The Alan Turing Institute, London NW1 2DB, UK.
  • Andrés-Terré H; Computational and Systems Biology Program, Department of Biological Engineering, Massachusetts Institute of Technology, Cambridge, MA 02142, USA.
  • Liò P; Department of Computer Science and Technology, University of Cambridge, Cambridge CB3 0FD, UK.
Bioinformatics ; 38(5): 1277-1286, 2022 02 07.
Article en En | MEDLINE | ID: mdl-34864884
ABSTRACT
MOTIVATION Single-cell RNA sequencing allows high-resolution views of individual cells for libraries of up to millions of samples, thus motivating the use of deep learning for analysis. In this study, we introduce the use of graph neural networks for the unsupervised exploration of scRNA-seq data by developing a variational graph autoencoder architecture with graph attention layers that operates directly on the connectivity between cells, focusing on dimensionality reduction and clustering. With the help of several case studies, we show that our model, named CellVGAE, can be effectively used for exploratory analysis even on challenging datasets, by extracting meaningful features from the data and providing the means to visualize and interpret different aspects of the model.

RESULTS:

We show that CellVGAE is more interpretable than existing scRNA-seq variational architectures by analysing the graph attention coefficients. By drawing parallels with other scRNA-seq studies on interpretability, we assess the validity of the relationships modelled by attention, and furthermore, we show that CellVGAE can intrinsically capture information such as pseudotime and NF-ĸB activation dynamics, the latter being a property that is not generally shared by existing neural alternatives. We then evaluate the dimensionality reduction and clustering performance on 9 difficult and well-annotated datasets by comparing with three leading neural and non-neural techniques, concluding that CellVGAE outperforms competing methods. Finally, we report a decrease in training times of up to × 20 on a dataset of 1.3 million cells compared to existing deep learning architectures. AVAILABILITYAND IMPLEMENTATION The CellVGAE code is available at https//github.com/davidbuterez/CellVGAE. SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.
Asunto(s)

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Perfilación de la Expresión Génica / Análisis de Expresión Génica de una Sola Célula Idioma: En Año: 2022 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Perfilación de la Expresión Génica / Análisis de Expresión Génica de una Sola Célula Idioma: En Año: 2022 Tipo del documento: Article