Abstract

The emerging diversity of single-cell RNA-seq datasets allows for the full transcriptional characterization of cell types across a wide variety of biological and clinical conditions. However, it is challenging to analyze them together, particularly when datasets are assayed with different technologies, because biological and technical differences are interspersed. We present Harmony (https://github.com/immunogenomics/harmony), an algorithm that projects cells into a shared embedding in which cells group by cell type rather than dataset-specific conditions. Harmony simultaneously accounts for multiple experimental and biological factors. In six analyses, we demonstrate the superior performance of Harmony to previously published algorithms while requiring fewer computational resources. Harmony enables the integration of ~106 cells on a personal computer. We apply Harmony to peripheral blood mononuclear cells from datasets with large experimental differences, five studies of pancreatic islet cells, mouse embryogenesis datasets and the integration of scRNA-seq with spatial transcriptomics data. Harmony, for the integration of single-cell transcriptomic data, identifies broad and fine-grained populations, scales to large datasets, and can integrate sequencing- and imaging-based data.

Keywords

Data integrationComputer scienceComputational biologyBiologyData mining

MeSH Terms

AlgorithmsAnimalsBase SequenceDatasets as TopicHEK293 CellsHumansJurkat CellsMiceSingle-Cell Analysis

Affiliated Institutions

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Publication Info

Year
2019
Type
article
Volume
16
Issue
12
Pages
1289-1296
Citations
8827
Access
Closed

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Social media, news, blog, policy document mentions

Citation Metrics

8827
OpenAlex
747
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Cite This

Ilya Korsunsky, Nghia Millard, Jean Fan et al. (2019). Fast, sensitive and accurate integration of single-cell data with Harmony. Nature Methods , 16 (12) , 1289-1296. https://doi.org/10.1038/s41592-019-0619-0

Identifiers

DOI
10.1038/s41592-019-0619-0
PMID
31740819
PMCID
PMC6884693

Data Quality

Data completeness: 90%