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scDesign3 generates realistic in silico data for multimodal single-cell and spatial omics.

Dongyuan SongQingyang WangGuanao YanTianyang LiuTianyi SunJingyi Jessica Li
Published in: Nature biotechnology (2023)
We present a statistical simulator, scDesign3, to generate realistic single-cell and spatial omics data, including various cell states, experimental designs and feature modalities, by learning interpretable parameters from real data. Using a unified probabilistic model for single-cell and spatial omics data, scDesign3 infers biologically meaningful parameters; assesses the goodness-of-fit of inferred cell clusters, trajectories and spatial locations; and generates in silico negative and positive controls for benchmarking computational tools.
Keyphrases
  • single cell
  • rna seq
  • electronic health record
  • high throughput
  • big data
  • machine learning
  • data analysis
  • depressive symptoms
  • cell therapy
  • bone marrow
  • pain management
  • neural network