Phenotyping Immune Cells in Tumor and Healthy Tissue Using Flow Cytometry Data

Ye Chen, R. D. Calvert, A. Azad, Bartek Rajwa, J. Fleet, Timothy Ratliff, A. Pothen
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引用次数: 1

Abstract

We present an automated pipeline capable of distinguishing the phenotypes of myeloid-derived suppressor cells (MDSC) in healthy and tumor-bearing tissues in mice using flow cytometry data. In contrast to earlier work where samples are analyzed individually, we analyze all samples from each tissue collectively using a representative template for it. We demonstrate with 43 flow cytometry samples collected from three tissues, naive bone-marrow, spleens of tumor-bearing mice, and intra-peritoneal tumor, that a set of templates serves as a better classifier than popular machine learning approaches including support vector machines and neural networks. Our "interpretable machine learning" approach goes beyond classification and identifies distinctive phenotypes associated with each tissue, information that is clinically useful. Hence the pipeline presented here leads to better understanding of the maturation and differentiation of MDSCs using high-throughput data.
利用流式细胞术数据对肿瘤和健康组织中的免疫细胞进行表型分析
我们提出了一个自动化的管道,能够区分骨髓源性抑制细胞(MDSC)的表型在健康和荷瘤小鼠组织中使用流式细胞术数据。与早期单独分析样本的工作相反,我们使用具有代表性的模板集体分析每个组织的所有样本。我们从三种组织(未成熟的骨髓、荷瘤小鼠的脾脏和腹膜内肿瘤)中收集了43个流式细胞术样本,证明了一组模板作为分类器比流行的机器学习方法(包括支持向量机和神经网络)更好。我们的“可解释机器学习”方法超越了分类,并识别与每个组织相关的独特表型,这些信息在临床上是有用的。因此,本文提出的管道可以使用高通量数据更好地理解MDSCs的成熟和分化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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