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Strategies for Accurate Cell Type Identification in CODEX Multiplexed Imaging Data.

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TLDR
In this article, the authors created single-cell multiplexed imaging datasets by performing CODEX on four sections of the human colon (ascending, transverse, descending, and sigmoid) using a panel of 47 oligonucleotide-barcoded antibodies.
Abstract
Multiplexed imaging is a recently developed and powerful single-cell biology research tool. However, it presents new sources of technical noise that are distinct from other types of single-cell data, necessitating new practices for single-cell multiplexed imaging processing and analysis, particularly regarding cell-type identification. Here we created single-cell multiplexed imaging datasets by performing CODEX on four sections of the human colon (ascending, transverse, descending, and sigmoid) using a panel of 47 oligonucleotide-barcoded antibodies. After cell segmentation, we implemented five different normalization techniques crossed with four unsupervised clustering algorithms, resulting in 20 unique cell-type annotations for the same dataset. We generated two standard annotations: hand-gated cell types and cell types produced by over-clustering with spatial verification. We then compared these annotations at four levels of cell-type granularity. First, increasing cell-type granularity led to decreased labeling accuracy; therefore, subtle phenotype annotations should be avoided at the clustering step. Second, accuracy in cell-type identification varied more with normalization choice than with clustering algorithm. Third, unsupervised clustering better accounted for segmentation noise during cell-type annotation than hand-gating. Fourth, Z-score normalization was generally effective in mitigating the effects of noise from single-cell multiplexed imaging. Variation in cell-type identification will lead to significant differential spatial results such as cellular neighborhood analysis; consequently, we also make recommendations for accurately assigning cell-type labels to CODEX multiplexed imaging.

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Posted ContentDOI

Annotation of Spatially Resolved Single-cell Data with STELLAR

TL;DR: In this article, a geometric deep learning method that utilizes spatial and molecular cell information to automatically assign cell types from an annotated reference set as well as discover new cell types and cell states is presented.
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Next-Generation Pathology Using Multiplexed Immunohistochemistry: Mapping Tissue Architecture at Single-Cell Level

TL;DR: This review provides a comprehensive overview of the available technologies for multiplexed immunohistochemistry, their advantages and challenges, and provides the principles on how to interpret high-dimensional data in a spatial context.
Posted ContentDOI

High Resolution Single Cell Maps Reveals Distinct Cell Organization and Function Across Different Regions of the Human Intestine

TL;DR: In this paper, the authors performed CODEX multiplexed imaging, as well as single nuclear RNA and open chromatin assays across eight different intestinal sites of four donors, and found that the same cell types are organized into distinct neighborhoods and communities highlighting distinct immunological niches present in the intestine.
Journal ArticleDOI

Annotation of spatially resolved single-cell data with STELLAR

TL;DR: In this article , a geometric deep learning method for cell type discovery and identification in spatially resolved single-cell datasets is presented, which automatically assigns cells to cell types present in the annotated reference dataset and discovers novel cell types and cell states.
References
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TL;DR: Recently developed single-cell mRNA-sequencing methods enable unbiased, high-throughput, and high-resolution transcriptomic analysis of individual cells, which provides an additional dimension to transcriptomic information relative to traditional methods that profile bulk populations of cells.
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Journal ArticleDOI

Deep Profiling of Mouse Splenic Architecture with CODEX Multiplexed Imaging.

TL;DR: The fidelity of multiplexed spatial cytometry demonstrated here allows for quantitative systemic characterization of tissue architecture in normal and clinically aberrant samples.
Journal ArticleDOI

Critical assessment of automated flow cytometry data analysis techniques

TL;DR: Several methods performed well as compared to manual gating or external variables using statistical performance measures, which suggests that automated methods have reached a sufficient level of maturity and accuracy for reliable use in FCM data analysis.
Journal ArticleDOI

Highly multiplexed immunofluorescence imaging of human tissues and tumors using t-CyCIF and conventional optical microscopes

TL;DR: Tissue-based cyclic immunofluorescence method for highly multiplexed immuno-fluorescence imaging of formalin-fixed, paraffin-embedded specimens mounted on glass slides, the most widely used specimens for histopathological diagnosis of cancer and other diseases is described.
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