Department of Medicine, Royal Melbourne Hospital, The University of Melbourne, Parkville, VIC, 3050, Australia.
Melbourne Cytometry Platform, Department of Microbiology and Immunology, The University of Melbourne, at The Peter Doherty Institute of Infection and Immunity, Parkville, VIC, 3010, Australia.
Sci Rep. 2023 Mar 30;13(1):5202. doi: 10.1038/s41598-023-32158-7.
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.
巨噬细胞是异质性的先天免疫细胞,其功能受其周围微环境的影响。不同的巨噬细胞群体在形态、代谢、表达标志物和功能方面存在多方面的差异,其中鉴定不同的表型对于模拟免疫反应至关重要。虽然表达标志物是分类表型最常用的特征,但多项研究表明,巨噬细胞形态和自发荧光也是可用于鉴定过程的有价值线索。在这项工作中,我们研究了巨噬细胞自发荧光作为区分六种不同巨噬细胞表型的特征,分别为:M0、M1、M2a、M2b、M2c 和 M2d。鉴定基于多通道/多波长流式细胞仪提取的信号。为了实现鉴定,我们构建了一个包含 152438 个细胞事件的数据集,每个事件都有一个 45 个光学信号指纹的响应向量。基于该数据集,我们应用了不同的监督机器学习方法从响应向量中检测表型特异性指纹,其中全连接神经网络架构提供了 75.8%的最高分类准确性,同时比较了六种表型。此外,通过在实验中限制表型的数量,所提出的框架产生了更高的分类准确性,对于两种、三种、四种、五种表型的组合,平均分类准确性分别为 92.0%、91.9%、84.2%和 80.4%。这些结果表明了内在自发荧光在分类巨噬细胞表型方面的潜力,所提出的方法是一种快速、简单、经济有效的方法,可以加速对巨噬细胞表型多样性的发现。