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deMULTIplex2: robust sample demultiplexing for scRNA-seq.

Qin ZhuDaniel N ConradZev J Gartner
Published in: Genome biology (2024)
Sample multiplexing enables pooled analysis during single-cell RNA sequencing workflows, thereby increasing throughput and reducing batch effects. A challenge for all multiplexing techniques is to link sample-specific barcodes with cell-specific barcodes, then demultiplex sample identity post-sequencing. However, existing demultiplexing tools fail under many real-world conditions where barcode cross-contamination is an issue. We therefore developed deMULTIplex2, an algorithm inspired by a mechanistic model of barcode cross-contamination. deMULTIplex2 employs generalized linear models and expectation-maximization to probabilistically determine the sample identity of each cell. Benchmarking reveals superior performance across various experimental conditions, particularly on large or noisy datasets with unbalanced sample compositions.
Keyphrases
  • single cell
  • rna seq
  • high throughput
  • risk assessment
  • cell therapy
  • machine learning
  • deep learning
  • health risk
  • human health
  • mesenchymal stem cells