Literature DB >> 33840138

Integration, exploration, and analysis of high-dimensional single-cell cytometry data using Spectre.

Thomas Myles Ashhurst1,2,3, Felix Marsh-Wakefield3,4,5, Givanna Haryono Putri3,6, Alanna Gabrielle Spiteri3,7, Diana Shinko1,3, Mark Norman Read3,6,8, Adrian Lloyd Smith1,3, Nicholas Jonathan Cole King1,2,3,7,9.   

Abstract

As the size and complexity of high-dimensional (HD) cytometry data continue to expand, comprehensive, scalable, and methodical computational analysis approaches are essential. Yet, contemporary clustering and dimensionality reduction tools alone are insufficient to analyze or reproduce analyses across large numbers of samples, batches, or experiments. Moreover, approaches that allow for the integration of data across batches or experiments are not well incorporated into computational toolkits to allow for streamlined workflows. Here we present Spectre, an R package that enables comprehensive end-to-end integration and analysis of HD cytometry data from different batches or experiments. Spectre streamlines the analytical stages of raw data pre-processing, batch alignment, data integration, clustering, dimensionality reduction, visualization, and population labelling, as well as quantitative and statistical analysis. Critically, the fundamental data structures used within Spectre, along with the implementation of machine learning classifiers, allow for the scalable analysis of very large HD datasets, generated by flow cytometry, mass cytometry, or spectral cytometry. Using open and flexible data structures, Spectre can also be used to analyze data generated by single-cell RNA sequencing or HD imaging technologies, such as Imaging Mass Cytometry. The simple, clear, and modular design of analysis workflows allow these tools to be used by bioinformaticians and laboratory scientists alike. Spectre is available as an R package or Docker container. R code is available on Github (https://github.com/immunedynamics/spectre).
© 2021 International Society for Advancement of Cytometry.

Entities:  

Keywords:  FlowSOM; UMAP; clustering; computational analysis; dimensionality reduction; high-dimensional cytometry; mass cytometry; spectral cytometry; t-SNE

Mesh:

Year:  2021        PMID: 33840138     DOI: 10.1002/cyto.a.24350

Source DB:  PubMed          Journal:  Cytometry A        ISSN: 1552-4922            Impact factor:   4.355


  13 in total

1.  Immune dynamics in SARS-CoV-2 experienced immunosuppressed rheumatoid arthritis or multiple sclerosis patients vaccinated with mRNA-1273.

Authors:  Ruth R Hagen; Jet van den Dijssel; Lisan H Kuijper; Christine Kreher; Thomas Ashhurst; S Marieke van Ham; Anja Ten Brinke; Carolien E van de Sandt; Niels J M Verstegen; Laura Y L Kummer; Maurice Steenhuis; Mariel Duurland; Rivka de Jongh; Nina de Jong; C Ellen van der Schoot; Amélie V Bos; Erik Mul; Katherine Kedzierska; Koos P J van Dam; Eileen W Stalman; Laura Boekel; Gertjan Wolbink; Sander W Tas; Joep Killestein; Zoé L E van Kempen; Luuk Wieske; Taco W Kuijpers; Filip Eftimov; Theo Rispens
Journal:  Elife       Date:  2022-07-15       Impact factor: 8.713

2.  Deconvolution of the hematopoietic stem cell microenvironment reveals a high degree of specialization and conservation.

Authors:  Jin Ye; Isabel A Calvo; Itziar Cenzano; Amaia Vilas; Xabier Martinez-de-Morentin; Miren Lasaga; Diego Alignani; Bruno Paiva; Ana C Viñado; Patxi San Martin-Uriz; Juan P Romero; Delia Quilez Agreda; Marta Miñana Barrios; Ignacio Sancho-González; Gabriele Todisco; Luca Malcovati; Nuria Planell; Borja Saez; Jesper N Tegner; Felipe Prosper; David Gomez-Cabrero
Journal:  iScience       Date:  2022-04-08

3.  How to Prepare Spectral Flow Cytometry Datasets for High Dimensional Data Analysis: A Practical Workflow.

Authors:  Hannah den Braanker; Margot Bongenaar; Erik Lubberts
Journal:  Front Immunol       Date:  2021-11-19       Impact factor: 7.561

4.  Immune responses in COVID-19 respiratory tract and blood reveal mechanisms of disease severity.

Authors:  Wuji Zhang; Brendon Chua; Kevin Selva; Lukasz Kedzierski; Thomas Ashhurst; Ebene Haycroft; Suzanne Shoffner; Luca Hensen; David Boyd; Fiona James; Effie Mouhtouris; Jason Kwong; Kyra Chua; George Drewett; Ana Copaescu; Julie Dobson; Louise Rowntree; Jennifer Habel; Lilith Allen; Hui-Fern Koay; Jessica Neil; Matthew Gartner; Christina Lee; Patiyan Andersson; Torsten Seemann; Norelle Sherry; Fatima Amanat; Florian Krammer; Sarah Londrigan; Linda Wakim; Nicholas King; Dale Godfrey; Laura Mackay; Paul Thomas; Suellen Nicholson; Kelly Arnold; Amy Chung; Natasha Holmes; Olivia Smibert; Jason Trubiano; Claire Gordon; Thi Nguyen; Katherine Kedzierska
Journal:  Res Sq       Date:  2021-08-26

5.  Evidence for an Adult-Like Type 1-Immunity Phenotype of Vδ1, Vδ2 and Vδ3 T Cells in Ghanaian Children With Repeated Exposure to Malaria.

Authors:  Ximena León-Lara; Tao Yang; Alina Suzann Fichtner; Elena Bruni; Constantin von Kaisenberg; Britta Eiz-Vesper; Daniel Dodoo; Bright Adu; Sarina Ravens
Journal:  Front Immunol       Date:  2022-02-17       Impact factor: 7.561

6.  PLX5622 Reduces Disease Severity in Lethal CNS Infection by Off-Target Inhibition of Peripheral Inflammatory Monocyte Production.

Authors:  Alanna G Spiteri; Duan Ni; Zheng Lung Ling; Laurence Macia; Iain L Campbell; Markus J Hofer; Nicholas J C King
Journal:  Front Immunol       Date:  2022-03-25       Impact factor: 7.561

7.  SARS-CoV-2-specific T cells in unexposed adults display broad trafficking potential and cross-react with commensal antigens.

Authors:  Laurent Bartolo; Sumbul Afroz; Yi-Gen Pan; Ruozhang Xu; Lea Williams; Chin-Fang Lin; Elliot S Friedman; Phyllis A Gimotty; Gary D Wu; Laura F Su
Journal:  bioRxiv       Date:  2021-11-30

8.  In-Depth Immunophenotyping With Mass Cytometry During TB Treatment Reveals New T-Cell Subsets Associated With Culture Conversion.

Authors:  Carole Chedid; Thibault Andrieu; Eka Kokhreidze; Nestani Tukvadze; Samanta Biswas; Md Fahim Ather; Mohammad Khaja Mafij Uddin; Sayera Banu; Flavio De Maio; Giovanni Delogu; Hubert Endtz; Delia Goletti; Marc Vocanson; Oana Dumitrescu; Jonathan Hoffmann; Florence Ader
Journal:  Front Immunol       Date:  2022-03-22       Impact factor: 8.786

9.  The cytokines interleukin-6 and interferon-α induce distinct microglia phenotypes.

Authors:  Phillip K West; Andrew N McCorkindale; Boris Guennewig; Thomas M Ashhurst; Barney Viengkhou; Emina Hayashida; So Ri Jung; Oleg Butovsky; Iain L Campbell; Markus J Hofer
Journal:  J Neuroinflammation       Date:  2022-04-16       Impact factor: 9.587

10.  FlowCT for the analysis of large immunophenotypic data sets and biomarker discovery in cancer immunology.

Authors:  Cirino Botta; Catarina Maia; Juan-José Garcés; Rosalinda Termini; Cristina Perez; Irene Manrique; Leire Burgos; Aintzane Zabaleta; Diego Alignani; Sarai Sarvide; Juana Merino; Noemi Puig; María-Teresa Cedena; Marco Rossi; Pierfrancesco Tassone; Massimo Gentile; Pierpaolo Correale; Ivan Borrello; Evangelos Terpos; Tomas Jelinek; Artur Paiva; Aldo Roccaro; Hartmut Goldschmidt; Hervé Avet-Loiseau; Laura Rosinol; Maria-Victoria Mateos; Joaquin Martinez-Lopez; Juan-José Lahuerta; Joan Bladé; Jesús F San-Miguel; Bruno Paiva
Journal:  Blood Adv       Date:  2022-01-25
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