Prediction of six macrophage phenotypes and their IL-10 content based on single-cell morphology using artificial intelligence

Front Immunol. 2024 Jan 4:14:1336393. doi: 10.3389/fimmu.2023.1336393. eCollection 2023.

Abstract

Introduction: The last decade has led to rapid developments and increased usage of computational tools at the single-cell level. However, our knowledge remains limited in how extracellular cues alter quantitative macrophage morphology and how such morphological changes can be used to predict macrophage phenotype as well as cytokine content at the single-cell level.

Methods: Using an artificial intelligence (AI) based approach, this study determined whether (i) accurate macrophage classification and (ii) prediction of intracellular IL-10 at the single-cell level was possible, using only morphological features as predictors for AI. Using a quantitative panel of shape descriptors, our study assessed image-based original and synthetic single-cell data in two different datasets in which CD14+ monocyte-derived macrophages generated from human peripheral blood monocytes were initially primed with GM-CSF or M-CSF followed by polarization with specific stimuli in the presence/absence of continuous GM-CSF or M-CSF. Specifically, M0, M1 (GM-CSF-M1, TNFα/IFNγ-M1, GM-CSF/TNFα/IFNγ-M1) and M2 (M-CSF-M2, IL-4-M2a, M-CSF/IL-4-M2a, IL-10-M2c, M-CSF/IL-10-M2c) macrophages were examined.

Results: Phenotypes were confirmed by ELISA and immunostaining of CD markers. Variations of polarization techniques significantly changed multiple macrophage morphological features, demonstrating that macrophage morphology is a highly sensitive, dynamic marker of phenotype. Using original and synthetic single-cell data, cell morphology alone yielded an accuracy of 93% for the classification of 6 different human macrophage phenotypes (with continuous GM-CSF or M-CSF). A similarly high phenotype classification accuracy of 95% was reached with data generated with different stimuli (discontinuous GM-CSF or M-CSF) and measured at a different time point. These comparably high accuracies clearly validated the here chosen AI-based approach. Quantitative morphology also allowed prediction of intracellular IL-10 with 95% accuracy using only original data.

Discussion: Thus, image-based machine learning using morphology-based features not only (i) classified M0, M1 and M2 macrophages but also (ii) classified M2a and M2c subtypes and (iii) predicted intracellular IL-10 at the single-cell level among six phenotypes. This simple approach can be used as a general strategy not only for macrophage phenotyping but also for prediction of IL-10 content of any IL-10 producing cell, which can help improve our understanding of cytokine biology at the single-cell level.

Keywords: IL-10; artificial intelligence; cell shape; fingerprint; inflammation; macrophage; macrophage phenotype; single-cell morphology.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Artificial Intelligence
  • Cells, Cultured
  • Cytokines
  • Granulocyte-Macrophage Colony-Stimulating Factor*
  • Humans
  • Interleukin-10*
  • Interleukin-4
  • Macrophage Colony-Stimulating Factor
  • Macrophages
  • Phenotype
  • Tumor Necrosis Factor-alpha

Substances

  • Granulocyte-Macrophage Colony-Stimulating Factor
  • Interleukin-10
  • Macrophage Colony-Stimulating Factor
  • Tumor Necrosis Factor-alpha
  • Interleukin-4
  • Cytokines

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This was supported by funding received from the Deutsche Forschungsgemeinschaft (German Research Foundation (B.R.: RO 2511/11-1) and the combined Sino-German Mobility Programme of the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) and National Natural Science Foundation of China (NSFC) (B.R.: M-0332 and M-0263). Part of the article processing charge was funded by the Baden-Württemberg Ministry of Science, Research and Art and the University of Freiburg in the funding program Open Access Publishing.