Abstract
AbstractSample 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.
Funder
National Cancer Institute
National Institute of General Medical Sciences
National Institute of Diabetes and Digestive and Kidney Diseases
National Science Foundation
Chan Zuckerberg Initiative
Cancer Research Institute
Publisher
Springer Science and Business Media LLC
Cited by
4 articles.
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