Abstract

A highly multiplexed cytometric imaging approach, termed co-detection by indexing (CODEX), is used here to create multiplexed datasets of normal and lupus (MRL/lpr) murine spleens. CODEX iteratively visualizes antibody binding events using DNA barcodes, fluorescent dNTP analogs, and an in situ polymerization-based indexing procedure. An algorithmic pipeline for single-cell antigen quantification in tightly packed tissues was developed and used to overlay well-known morphological features with de novo characterization of lymphoid tissue architecture at a single-cell and cellular neighborhood levels. We observed an unexpected, profound impact of the cellular neighborhood on the expression of protein receptors on immune cells. By comparing normal murine spleen to spleens from animals with systemic autoimmune disease (MRL/lpr), extensive and previously uncharacterized splenic cell-interaction dynamics in the healthy versus diseased state was observed. The fidelity of multiplexed spatial cytometry demonstrated here allows for quantitative systemic characterization of tissue architecture in normal and clinically aberrant samples.

Keywords

BiologyProfiling (computer programming)Computational biologyArchitectureComputer scienceArchaeologyOperating system

MeSH Terms

AnimalsAntibodiesDisease ModelsAnimalFemaleImage ProcessingComputer-AssistedLupus ErythematosusSystemicMaleMass SpectrometryMiceMiceInbred MRL lprOligonucleotide ProbesSpleen

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Publication Info

Year
2018
Type
article
Volume
174
Issue
4
Pages
968-981.e15
Citations
1429
Access
Closed

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Citation Metrics

1429
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57
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1342
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Cite This

Yury Goltsev, Nikolay Samusik, Julia Kennedy‐Darling et al. (2018). Deep Profiling of Mouse Splenic Architecture with CODEX Multiplexed Imaging. Cell , 174 (4) , 968-981.e15. https://doi.org/10.1016/j.cell.2018.07.010

Identifiers

DOI
10.1016/j.cell.2018.07.010
PMID
30078711
PMCID
PMC6086938

Data Quality

Data completeness: 90%