A biology-driven deep generative model for cell-type annotation in cytometry

Brief Bioinform. 2023 Sep 20;24(5):bbad260. doi: 10.1093/bib/bbad260.

Abstract

Cytometry enables precise single-cell phenotyping within heterogeneous populations. These cell types are traditionally annotated via manual gating, but this method lacks reproducibility and sensitivity to batch effect. Also, the most recent cytometers-spectral flow or mass cytometers-create rich and high-dimensional data whose analysis via manual gating becomes challenging and time-consuming. To tackle these limitations, we introduce Scyan https://github.com/MICS-Lab/scyan, a Single-cell Cytometry Annotation Network that automatically annotates cell types using only prior expert knowledge about the cytometry panel. For this, it uses a normalizing flow-a type of deep generative model-that maps protein expressions into a biologically relevant latent space. We demonstrate that Scyan significantly outperforms the related state-of-the-art models on multiple public datasets while being faster and interpretable. In addition, Scyan overcomes several complementary tasks, such as batch-effect correction, debarcoding and population discovery. Overall, this model accelerates and eases cell population characterization, quantification and discovery in cytometry.

Keywords: Batch-effect correction; Cell-type annotation; Cytometry; Deep Learning; Normalizing Flows.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Biology*
  • Flow Cytometry / methods
  • Reproducibility of Results