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Label-free macrophage phenotype classification using machine learning methods

journal contribution
posted on 2024-11-02, 23:20 authored by Tetiana Hourani, Alexis Perez‑Gonzalez, Khashayar Khoshmanesh, Rodney Luwor, Adrian Achuthan, Sara BaratchiSara Baratchi, Neil O'Brien-Simpson, Akram HouraniAkram Hourani
Macrophages are heterogeneous innate immune cells that are functionally shaped by their surrounding microenvironment. Diverse macrophage populations have multifaceted differences related to their morphology, metabolism, expressed markers, and functions, where the identification of the different phenotypes is of an utmost importance in modelling immune response. While expressed markers are the most used signature to classify phenotypes, multiple reports indicate that macrophage morphology and autofluorescence are also valuable clues that can be used in the identification process. In this work, we investigated macrophage autofluorescence as a distinct feature for classifying six different macrophage phenotypes, namely: M0, M1, M2a, M2b, M2c, and M2d. The identification was based on extracted signals from multi-channel/multi-wavelength flow cytometer. To achieve the identification, we constructed a dataset containing 152,438 cell events each having a response vector of 45 optical signals fingerprint. Based on this dataset, we applied different supervised machine learning methods to detect phenotype specific fingerprint from the response vector, where the fully connected neural network architecture provided the highest classification accuracy of 75.8% for the six phenotypes compared simultaneously. Furthermore, by restricting the number of phenotypes in the experiment, the proposed framework produces higher classification accuracies, averaging 92.0%, 91.9%, 84.2%, and 80.4% for a pool of two, three, four, five phenotypes, respectively. These results indicate the potential of the intrinsic autofluorescence for classifying macrophage phenotypes, with the proposed method being quick, simple, and cost-effective way to accelerate the discovery of macrophage phenotypical diversity.

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  1. 1.
    DOI - Is published in 10.1038/s41598-023-32158-7
  2. 2.
    ISSN - Is published in 20452322

Journal

Scientific Reports

Volume

13

Number

5202

Issue

1

Start page

1

End page

14

Total pages

14

Publisher

Nature Publishing Group

Place published

United Kingdom

Language

English

Copyright

© The Author(s) 2023. This article is licensed under a Creative Commons Attribution 4.0 International License

Former Identifier

2006122944

Esploro creation date

2023-06-22

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