Solo: Doublet Identification in Single-Cell RNA-Seq via Semi-Supervised Deep Learning

Cell Syst. 2020 Jul 22;11(1):95-101.e5. doi: 10.1016/j.cels.2020.05.010. Epub 2020 Jun 26.

Abstract

Single-cell RNA sequencing (scRNA-seq) measurements of gene expression enable an unprecedented high-resolution view into cellular state. However, current methods often result in two or more cells that share the same cell-identifying barcode; these "doublets" violate the fundamental premise of single-cell technology and can lead to incorrect inferences. Here, we describe Solo, a semi-supervised deep learning approach that identifies doublets with greater accuracy than existing methods. Solo embeds cells unsupervised using a variational autoencoder and then appends a feed-forward neural network layer to the encoder to form a supervised classifier. We train this classifier to distinguish simulated doublets from the observed data. Solo can be applied in combination with experimental doublet detection methods to further purify scRNA-seq data to true single cells. It is freely available from https://github.com/calico/solo. A record of this paper's transparent peer review process is included in the Supplemental Information.

Keywords: deep learning; doublet; semi-supervised learning; single-cell RNA-seq.

MeSH terms

  • Deep Learning / standards*
  • Humans
  • RNA-Seq / methods*
  • Single-Cell Analysis / methods*