2020
DOI: 10.1101/2020.08.28.272559
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CyAnno: A semi-automated approach for cell type annotation of mass cytometry datasets

Abstract: For immune system monitoring in large-scale studies at the single-cell resolution using CyTOF, (semi-)automated computational methods are applied for annotating live cells of mixed cell types. Here, we show that the live cell pool can be highly enriched with undefined heterogeneous cells, i.e. ‘ungated’ cells, and that current (semi-)automated approaches ignore their modeling resulting in misclassified annotations. Therefore, we introduce ‘CyAnno’, a novel semi-automated approach for deconvoluting the unlabele… Show more

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Cited by 4 publications
(7 citation statements)
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“…To motivate the design choices of Cytomulate, we have explored prominent characteristics of CyTOF using various public datasets and in-house datasets from UTSWMC (e.g., Finck (5), Levine_13dim (27), Levine_32dim (27), CytoNorm (7), CyAnno (28), Covid (14)). In this section, we mainly used the protein expressions associated with the first patient in the dataset Levine_13dim which is publicly available via the R package HDCytoData (29) for the purpose of demonstration.…”
Section: Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…To motivate the design choices of Cytomulate, we have explored prominent characteristics of CyTOF using various public datasets and in-house datasets from UTSWMC (e.g., Finck (5), Levine_13dim (27), Levine_32dim (27), CytoNorm (7), CyAnno (28), Covid (14)). In this section, we mainly used the protein expressions associated with the first patient in the dataset Levine_13dim which is publicly available via the R package HDCytoData (29) for the purpose of demonstration.…”
Section: Resultsmentioning
confidence: 99%
“…To demonstrate the versatility of Cytomulate, six publicly available datasets from different species and diverse anatomic sites are collected: Levine_32dim (27), Levine_13dim (27), Samusik (39), CyAnno (28), Covid (14), and LG (40). If multiple samples exist for one dataset, the first sample is used.…”
Section: Resultsmentioning
confidence: 99%
“…Table 2 ). These include the TuPro cohort(9), the Oetjen cohort(22), the CyAnno cohort(33), the LG cohort(34), the Brain cohort(35), the BC cohort(36), the Levine32 cohort(37), the Levine13 cohort(37), the Samusik cohort(38), the Lung cancer cohort(39), and the Covid cohort. For all datasets, we either obtained their cell typing results from the original publications, or performed cell typing ourselves based on clustering of the cells according to their proteomics features followed by manual assignment according to expression of marker genes.…”
Section: Methodsmentioning
confidence: 99%
“…This is in part due to the number of gates required to fully parse the dataset. As such, a variety of computational approaches have been adopted by the cytometry community to help analyze HD datasets, including automated gating [6], clustering (such as PhenoGraph [7], FlowSOM [8], X‐Shift [9]), dimensionality reduction (such as t‐SNE [10, 11], UMAP [12]), trajectory inference (such as Wanderlust [1], Wishbone [13]), and automated cell classification [14–16]. Many of these tools have been brought together into ‘toolboxes’, providing either code‐ or GUI‐based analysis workflows, such as Cytofkit [17], CITRUS [18], CATALYST [19], Cytofworkflow [20], or diffcyt [21].…”
Section: Introductionmentioning
confidence: 99%
“…FlowSOM [8], X-Shift [9]), dimensionality reduction (such as t-SNE [10,11], UMAP [12]), trajectory inference (such as Wanderlust [1], Wishbone [13]), and automated cell classification [14][15][16]. Many of these tools have been brought together into 'toolboxes', providing either code-or GUI-based analysis workflows, such as Cytofkit [17], CITRUS [18], CATALYST [19], Cytofworkflow [20], or diffcyt [21].…”
Section: Introduction 1| High-dimensional Analysis Toolsmentioning
confidence: 99%