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Multi-batch single-cell comparative atlas construction by deep learning disentanglement

Allen W. Lynch, Myles Brown, Clifford A. Meyer

2023Nature Communications12 citationsDOIOpen Access PDF

Abstract

Cell state atlases constructed through single-cell RNA-seq and ATAC-seq analysis are powerful tools for analyzing the effects of genetic and drug treatment-induced perturbations on complex cell systems. Comparative analysis of such atlases can yield new insights into cell state and trajectory alterations. Perturbation experiments often require that single-cell assays be carried out in multiple batches, which can introduce technical distortions that confound the comparison of biological quantities between different batches. Here we propose CODAL, a variational autoencoder-based statistical model which uses a mutual information regularization technique to explicitly disentangle factors related to technical and biological effects. We demonstrate CODAL's capacity for batch-confounded cell type discovery when applied to simulated datasets and embryonic development atlases with gene knockouts. CODAL improves the representation of RNA-seq and ATAC-seq modalities, yields interpretable modules of biological variation, and enables the generalization of other count-based generative models to multi-batched data.

Topics & Concepts

Atlas (anatomy)Computer scienceArtificial intelligenceBiologyPaleontologyImage Processing Techniques and ApplicationsOptical measurement and interference techniquesAdvanced Vision and Imaging
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