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MichiGAN: sampling from disentangled representations of single-cell data using generative adversarial networks

Hengshi Yu, Joshua D. Welch

2021Genome biology37 citationsDOIOpen Access PDF

Abstract

Deep generative models such as variational autoencoders (VAEs) and generative adversarial networks (GANs) generate and manipulate high-dimensional images. We systematically assess the complementary strengths and weaknesses of these models on single-cell gene expression data. We also develop MichiGAN, a novel neural network that combines the strengths of VAEs and GANs to sample from disentangled representations without sacrificing data generation quality. We learn disentangled representations of three large single-cell RNA-seq datasets and use MichiGAN to sample from these representations. MichiGAN allows us to manipulate semantically distinct aspects of cellular identity and predict single-cell gene expression response to drug treatment.

Topics & Concepts

Generative grammarArtificial intelligenceExpression (computer science)Generative adversarial networkComputer scienceStrengths and weaknessesSample (material)Generative modelSampling (signal processing)Machine learningArtificial neural networkAdversarial systemPattern recognition (psychology)Deep learningComputational biologyBiologyData miningFilter (signal processing)PhilosophyChemistryProgramming languageChromatographyComputer visionEpistemologyCell Image Analysis TechniquesSingle-cell and spatial transcriptomicsGenerative Adversarial Networks and Image Synthesis