High-dimensional cytometry is an innovative tool for immune monitoring in health and disease, and it has provided novel insight into the underlying biology as well as biomarkers for a variety of diseases. However, the analysis of large multiparametric datasets usually requires specialist computational knowledge. Here, we describe ImmunoCluster (https://github.com/ kordastilab/ImmunoCluster), an R package for immune profiling cellular heterogeneity in highdimensional liquid and imaging mass cytometry, and flow cytometry data, designed to facilitate computational analysis by a nonspecialist. The analysis framework implemented within ImmunoCluster is readily scalable to millions of cells and provides a variety of visualization and analytical approaches, as well as a rich array of plotting tools that can be tailored to users’ needs. The protocol consists of three core computational stages: (1) data import and quality control; (2) dimensionality reduction and unsupervised clustering; and (3) annotation and differential testing, all contained within an R-based open-source framework.
Immunocluster provides a computational framework for the nonspecialist to profile high-dimensional cytometry data / J.W. Opzoomer, J.A. Timms, K. Blighe, T.P. Mourikis, N. Chapuis, R. Bekoe, S. Kareemaghay, P. Nocerino, B. Apollonio, A.G. Ramsay, M. Tavassoli, C. Harrison, F. Ciccarelli, P. Parker, M. Fontenay, P.R. Barber, J.N. Arnold, S. Kordasti. - In: ELIFE. - ISSN 2050-084X. - 10:(2021), pp. e62915.1-e62915.28. [10.7554/ELIFE.62915]
Immunocluster provides a computational framework for the nonspecialist to profile high-dimensional cytometry data
F. Ciccarelli;
2021
Abstract
High-dimensional cytometry is an innovative tool for immune monitoring in health and disease, and it has provided novel insight into the underlying biology as well as biomarkers for a variety of diseases. However, the analysis of large multiparametric datasets usually requires specialist computational knowledge. Here, we describe ImmunoCluster (https://github.com/ kordastilab/ImmunoCluster), an R package for immune profiling cellular heterogeneity in highdimensional liquid and imaging mass cytometry, and flow cytometry data, designed to facilitate computational analysis by a nonspecialist. The analysis framework implemented within ImmunoCluster is readily scalable to millions of cells and provides a variety of visualization and analytical approaches, as well as a rich array of plotting tools that can be tailored to users’ needs. The protocol consists of three core computational stages: (1) data import and quality control; (2) dimensionality reduction and unsupervised clustering; and (3) annotation and differential testing, all contained within an R-based open-source framework.File | Dimensione | Formato | |
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