GiniClust: Detecting rare cell types from single-cell gene expression data with Gini index

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Abstract

High-throughput single-cell technologies have great potential to discover new cell types; however, it remains challenging to detect rare cell types that are distinct from a large population. We present a novel computational method, called GiniClust, to overcome this challenge. Validation against a benchmark dataset indicates that GiniClust achieves high sensitivity and specificity. Application of GiniClust to public single-cell RNA-seq datasets uncovers previously unrecognized rare cell types, including Zscan4-expressing cells within mouse embryonic stem cells and hemoglobin-expressing cells in the mouse cortex and hippocampus. GiniClust also correctly detects a small number of normal cells that are mixed in a cancer cell population.

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Jiang, L., Chen, H., Pinello, L., & Yuan, G. C. (2016). GiniClust: Detecting rare cell types from single-cell gene expression data with Gini index. Genome Biology, 17(1). https://doi.org/10.1186/s13059-016-1010-4

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