2019
DOI: 10.1101/828483
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Sample demultiplexing, multiplet detection, experiment planning and novel cell type verification in single cell sequencing

Abstract: Identifying and removing multiplets from downstream analysis is essential to improve the scalability and reliability of single cell RNA sequencing (scRNA-seq). High multiplet rates create artificial cell types in the dataset. Sample barcoding, including the cell hashing technology and the MULTI-seq technology, enables analytical identification of a fraction of multiplets in a scRNA-seq dataset.We propose a Gaussian-mixture-model-based multiplet identification method, GMM-Demux. GMM-Demux accurately identifies … Show more

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Cited by 2 publications
(14 citation statements)
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“…Each ACT droplet contains multiple cells of different types. Since the ADT counts of an ACT droplet equals to the sum of the ADT counts of its member cells, also because the logarithm dampens small-scale changes in the ADT counts (such as log(2 • ) = log( ) + log (2), with ≫ 2), when individual cells merge into an ACT droplet, in the surface marker space, after CLR, the ACT droplet is positioned as slightly exceeding the highest coordinate in each surface marker dimension, across all of its member cells (Xin, et al, 2019). Mathematically, assuming 8 is the set of cells included in an ACT droplet , then the CLR-transformed surface marker count vector 8 of approximately equals…”
Section: Overlapping Imbalanced Clusters In Cite-seqmentioning
confidence: 99%
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“…Each ACT droplet contains multiple cells of different types. Since the ADT counts of an ACT droplet equals to the sum of the ADT counts of its member cells, also because the logarithm dampens small-scale changes in the ADT counts (such as log(2 • ) = log( ) + log (2), with ≫ 2), when individual cells merge into an ACT droplet, in the surface marker space, after CLR, the ACT droplet is positioned as slightly exceeding the highest coordinate in each surface marker dimension, across all of its member cells (Xin, et al, 2019). Mathematically, assuming 8 is the set of cells included in an ACT droplet , then the CLR-transformed surface marker count vector 8 of approximately equals…”
Section: Overlapping Imbalanced Clusters In Cite-seqmentioning
confidence: 99%
“…Additionally, ACT clusters encompass much fewer cells than BCT clusters; and there could be many more ACT clusters than BCT clusters. According to Xin, et al (Xin, et al, 2019), with a total of BCT clusters, there could be as many as 2 C − − 1 ACT clusters. Altogether, a CITE-seq dataset is likely to share the following properties in the surface marker space: (1) it may contain a large number of clusters;…”
Section: Overlapping Imbalanced Clusters In Cite-seqmentioning
confidence: 99%
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