Literature DB >> 26188071

Algorithmic Tools for Mining High-Dimensional Cytometry Data.

Cariad Chester1, Holden T Maecker2.   

Abstract

The advent of mass cytometry has led to an unprecedented increase in the number of analytes measured in individual cells, thereby increasing the complexity and information content of cytometric data. Although this technology is ideally suited to the detailed examination of the immune system, the applicability of the different methods for analyzing such complex data is less clear. Conventional data analysis by manual gating of cells in biaxial dot plots is often subjective, time consuming, and neglectful of much of the information contained in a highly dimensional cytometric dataset. Algorithmic data mining has the promise to eliminate these concerns, and several such tools have been applied recently to mass cytometry data. We review computational data mining tools that have been used to analyze mass cytometry data, outline their differences, and comment on their strengths and limitations. This review will help immunologists to identify suitable algorithmic tools for their particular projects.
Copyright © 2015 by The American Association of Immunologists, Inc.

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Year:  2015        PMID: 26188071      PMCID: PMC4507289          DOI: 10.4049/jimmunol.1500633

Source DB:  PubMed          Journal:  J Immunol        ISSN: 0022-1767            Impact factor:   5.422


  25 in total

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2.  Single-cell trajectory detection uncovers progression and regulatory coordination in human B cell development.

Authors:  Sean C Bendall; Kara L Davis; El-Ad David Amir; Michelle D Tadmor; Erin F Simonds; Tiffany J Chen; Daniel K Shenfeld; Garry P Nolan; Dana Pe'er
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3.  Mass cytometry: protocol for daily tuning and running cell samples on a CyTOF mass cytometer.

Authors:  Michael D Leipold; Holden T Maecker
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4.  Cytometry by time-of-flight shows combinatorial cytokine expression and virus-specific cell niches within a continuum of CD8+ T cell phenotypes.

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Journal:  Immunity       Date:  2012-01-27       Impact factor: 31.745

5.  SPICE: exploration and analysis of post-cytometric complex multivariate datasets.

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7.  Barcoding of live human peripheral blood mononuclear cells for multiplexed mass cytometry.

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9.  Normalization of mass cytometry data with bead standards.

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Review 3.  A Cancer Biologist's Primer on Machine Learning Applications in High-Dimensional Cytometry.

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4.  Sample Preparation for Mass Cytometry Analysis.

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Review 5.  Computational flow cytometry: helping to make sense of high-dimensional immunology data.

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Review 6.  Single-cell technologies in reproductive immunology.

Authors:  Jessica Vazquez; Irene M Ong; Aleksandar K Stanic
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7.  PhenoGraph and viSNE facilitate the identification of abnormal T-cell populations in routine clinical flow cytometric data.

Authors:  Joseph A DiGiuseppe; Jolene L Cardinali; William N Rezuke; Dana Pe'er
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Review 8.  Mass Cytometry: Single Cells, Many Features.

Authors:  Matthew H Spitzer; Garry P Nolan
Journal:  Cell       Date:  2016-05-05       Impact factor: 41.582

9.  DAFi: A directed recursive data filtering and clustering approach for improving and interpreting data clustering identification of cell populations from polychromatic flow cytometry data.

Authors:  Alexandra J Lee; Ivan Chang; Julie G Burel; Cecilia S Lindestam Arlehamn; Aishwarya Mandava; Daniela Weiskopf; Bjoern Peters; Alessandro Sette; Richard H Scheuermann; Yu Qian
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10.  Using Visualization of t-Distributed Stochastic Neighbor Embedding To Identify Immune Cell Subsets in Mouse Tumors.

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Journal:  J Immunol       Date:  2017-05-03       Impact factor: 5.422

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