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      Three tissue resident macrophage subsets coexist across organs with conserved origins and life cycles

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          Comprehensive Integration of Single-Cell Data

          Single-cell transcriptomics has transformed our ability to characterize cell states, but deep biological understanding requires more than a taxonomic listing of clusters. As new methods arise to measure distinct cellular modalities, a key analytical challenge is to integrate these datasets to better understand cellular identity and function. Here, we develop a strategy to "anchor" diverse datasets together, enabling us to integrate single-cell measurements not only across scRNA-seq technologies, but also across different modalities. After demonstrating improvement over existing methods for integrating scRNA-seq data, we anchor scRNA-seq experiments with scATAC-seq to explore chromatin differences in closely related interneuron subsets and project protein expression measurements onto a bone marrow atlas to characterize lymphocyte populations. Lastly, we harmonize in situ gene expression and scRNA-seq datasets, allowing transcriptome-wide imputation of spatial gene expression patterns. Our work presents a strategy for the assembly of harmonized references and transfer of information across datasets.
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            Integrating single-cell transcriptomic data across different conditions, technologies, and species

            Computational single-cell RNA-seq (scRNA-seq) methods have been successfully applied to experiments representing a single condition, technology, or species to discover and define cellular phenotypes. However, identifying subpopulations of cells that are present across multiple data sets remains challenging. Here, we introduce an analytical strategy for integrating scRNA-seq data sets based on common sources of variation, enabling the identification of shared populations across data sets and downstream comparative analysis. We apply this approach, implemented in our R toolkit Seurat (http://satijalab.org/seurat/), to align scRNA-seq data sets of peripheral blood mononuclear cells under resting and stimulated conditions, hematopoietic progenitors sequenced using two profiling technologies, and pancreatic cell 'atlases' generated from human and mouse islets. In each case, we learn distinct or transitional cell states jointly across data sets, while boosting statistical power through integrated analysis. Our approach facilitates general comparisons of scRNA-seq data sets, potentially deepening our understanding of how distinct cell states respond to perturbation, disease, and evolution.
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              Fast, sensitive, and accurate integration of single cell data with Harmony

              The emerging diversity of single cell RNAseq datasets allows for the full transcriptional characterization of cell types across a wide variety of biological and clinical conditions. However, it is challenging to analyze them together, particularly when datasets are assayed with different technologies. Here, real biological differences are interspersed with technical differences. We present Harmony, an algorithm that projects cells into a shared embedding in which cells group by cell type rather than dataset-specific conditions. Harmony simultaneously accounts for multiple experimental and biological factors. In six analyses, we demonstrate the superior performance of Harmony to previously published algorithms. We show that Harmony requires dramatically fewer computational resources. It is the only currently available algorithm that makes the integration of ~106 cells feasible on a personal computer. We apply Harmony to PBMCs from datasets with large experimental differences, 5 studies of pancreatic islet cells, mouse embryogenesis datasets, and cross-modality spatial integration.
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                Journal
                Science Immunology
                Sci. Immunol.
                American Association for the Advancement of Science (AAAS)
                2470-9468
                January 07 2022
                January 07 2022
                : 7
                : 67
                Affiliations
                [1 ]Toronto General Hospital Research Institute, University Health Network (UHN), Toronto, ON, Canada.
                [2 ]Ted Rogers Centre for Heart Research, Translational Biology and Engineering Program, Toronto, ON, Canada.
                [3 ]Department of Immunology, University of Toronto, Toronto, ON, Canada.
                [4 ]Princess Margaret Cancer Centre, University Health Network (UHN), Toronto, ON, Canada.
                [5 ]Peter Munk Cardiac Centre, UHN, Toronto, ON, Canada.
                [6 ]Department of Laboratory Medicine and Pathobiology, University of Toronto, Toronto, ON, Canada.
                [7 ]Institute of Experimental Immunology, University of Zürich, Zürich 8057, Switzerland.
                [8 ]Department of Medical Biophysics, University of Toronto, Toronto, ON, Canada.
                [9 ]Depatment of Pathology, University of Hong Kong, Pok Fu Lam, Hong Kong.
                [10 ]Toronto Lung Transplant Program, UHN Department of Surgery, University of Toronto, Toronto, ON, Canada.
                [11 ]Division of Cardiology, Department of Pediatrics, Hospital for Sick Children, University of Toronto, Toronto, ON, Canada.
                Article
                10.1126/sciimmunol.abf7777
                34995099
                94b4af39-fa54-42b6-8015-43603800bd2e
                © 2022
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