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Synthetic single cell RNA sequencing data from small pilot studies using deep generative models.
Treppner, Martin; Salas-Bastos, Adrián; Hess, Moritz; Lenz, Stefan; Vogel, Tanja; Binder, Harald.
Afiliação
  • Treppner M; Institute of Medical Biometry and Statistics, Faculty of Medicine and Medical Center, University of Freiburg, 79104, Freiburg, Germany. treppner@imbi.uni-freiburg.de.
  • Salas-Bastos A; Freiburg Center for Data Analysis and Modeling, University of Freiburg, 79104, Freiburg, Germany. treppner@imbi.uni-freiburg.de.
  • Hess M; Faculty of Biology, University of Freiburg, Freiburg, Germany. treppner@imbi.uni-freiburg.de.
  • Lenz S; Department of Molecular Embryology, Medical Faculty, Institute of Anatomy and Cell Biology, University of Freiburg, 79104, Freiburg, Germany.
  • Vogel T; Faculty of Biology, University of Freiburg, Freiburg, Germany.
  • Binder H; Institute of Medical Biometry and Statistics, Faculty of Medicine and Medical Center, University of Freiburg, 79104, Freiburg, Germany.
Sci Rep ; 11(1): 9403, 2021 04 30.
Article em En | MEDLINE | ID: mdl-33931726
Deep generative models, such as variational autoencoders (VAEs) or deep Boltzmann machines (DBMs), can generate an arbitrary number of synthetic observations after being trained on an initial set of samples. This has mainly been investigated for imaging data but could also be useful for single-cell transcriptomics (scRNA-seq). A small pilot study could be used for planning a full-scale experiment by investigating planned analysis strategies on synthetic data with different sample sizes. It is unclear whether synthetic observations generated based on a small scRNA-seq dataset reflect the properties relevant for subsequent data analysis steps. We specifically investigated two deep generative modeling approaches, VAEs and DBMs. First, we considered single-cell variational inference (scVI) in two variants, generating samples from the posterior distribution, the standard approach, or the prior distribution. Second, we propose single-cell deep Boltzmann machines (scDBMs). When considering the similarity of clustering results on synthetic data to ground-truth clustering, we find that the [Formula: see text] variant resulted in high variability, most likely due to amplifying artifacts of small datasets. All approaches showed mixed results for cell types with different abundance by overrepresenting highly abundant cell types and missing less abundant cell types. With increasing pilot dataset sizes, the proportions of the cells in each cluster became more similar to that of ground-truth data. We also showed that all approaches learn the univariate distribution of most genes, but problems occurred with bimodality. Across all analyses, in comparing 10[Formula: see text] Genomics and Smart-seq2 technologies, we could show that for 10[Formula: see text] datasets, which have higher sparsity, it is more challenging to make inference from small to larger datasets. Overall, the results show that generative deep learning approaches might be valuable for supporting the design of scRNA-seq experiments.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Análise de Sequência de RNA / Análise de Célula Única / Aprendizado Profundo Tipo de estudo: Evaluation_studies Idioma: En Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Análise de Sequência de RNA / Análise de Célula Única / Aprendizado Profundo Tipo de estudo: Evaluation_studies Idioma: En Ano de publicação: 2021 Tipo de documento: Article