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AnnoSpat annotates cell types and quantifies cellular arrangements from spatial proteomics

Author

Listed:
  • Aanchal Mongia

    (University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine)

  • Fatema Tuz Zohora

    (University Health Network
    University of Toronto)

  • Noah G. Burget

    (University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine)

  • Yeqiao Zhou

    (University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine)

  • Diane C. Saunders

    (Vanderbilt University Medical Center)

  • Yue J. Wang

    (University of Pennsylvania Perelman School of Medicine)

  • Marcela Brissova

    (Vanderbilt University Medical Center)

  • Alvin C. Powers

    (Vanderbilt University Medical Center
    Vanderbilt University
    VA Tennessee Valley Healthcare System)

  • Klaus H. Kaestner

    (University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine)

  • Golnaz Vahedi

    (University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine)

  • Ali Naji

    (University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine)

  • Gregory W. Schwartz

    (University Health Network
    University of Toronto
    University of Toronto)

  • Robert B. Faryabi

    (University of Pennsylvania Perelman School of Medicine
    University of Pennsylvania Perelman School of Medicine)

Abstract

Cellular composition and anatomical organization influence normal and aberrant organ functions. Emerging spatial single-cell proteomic assays such as Image Mass Cytometry (IMC) and Co-Detection by Indexing (CODEX) have facilitated the study of cellular composition and organization by enabling high-throughput measurement of cells and their localization directly in intact tissues. However, annotation of cell types and quantification of their relative localization in tissues remain challenging. To address these unmet needs for atlas-scale datasets like Human Pancreas Analysis Program (HPAP), we develop AnnoSpat (Annotator and Spatial Pattern Finder) that uses neural network and point process algorithms to automatically identify cell types and quantify cell-cell proximity relationships. Our study of data from IMC and CODEX shows the higher performance of AnnoSpat in rapid and accurate annotation of cell types compared to alternative approaches. Moreover, the application of AnnoSpat to type 1 diabetic, non-diabetic autoantibody-positive, and non-diabetic organ donor cohorts recapitulates known islet pathobiology and shows differential dynamics of pancreatic polypeptide (PP) cell abundance and CD8+ T cells infiltration in islets during type 1 diabetes progression.

Suggested Citation

  • Aanchal Mongia & Fatema Tuz Zohora & Noah G. Burget & Yeqiao Zhou & Diane C. Saunders & Yue J. Wang & Marcela Brissova & Alvin C. Powers & Klaus H. Kaestner & Golnaz Vahedi & Ali Naji & Gregory W. Sch, 2024. "AnnoSpat annotates cell types and quantifies cellular arrangements from spatial proteomics," Nature Communications, Nature, vol. 15(1), pages 1-19, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-47334-0
    DOI: 10.1038/s41467-024-47334-0
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