Transparent single-cell set classification with kernel mean embeddings

Siyuan Shan, Vishal Baskaran, Haidong Yi, Jolene S Ranek, N. Stanley, Junier B. Oliva
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引用次数: 6

Abstract

Modern single-cell flow and mass cytometry technologies measure the expression of several proteins of the individual cells within a blood or tissue sample. Each profiled biological sample is thus represented by a set of hundreds of thousands of multidimensional cell feature vectors, which incurs a high computational cost to predict each biological sample's associated phenotype with machine learning models. Such a large set cardinality also limits the interpretability of machine learning models due to the difficulty in tracking how each individual cell influences the ultimate prediction. We propose using Kernel Mean Embedding to encode the cellular landscape of each profiled biological sample. Although our foremost goal is to make a more transparent model, we find that our method achieves comparable or better accuracies than the state-of-the-art gating-free methods through a simple linear classifier. As a result, our model contains few parameters but still performs similarly to deep learning models with millions of parameters. In contrast with deep learning approaches, the linearity and sub-selection step of our model makes it easy to interpret classification results. Analysis further shows that our method admits rich biological interpretability for linking cellular heterogeneity to clinical phenotype.
基于核均值嵌入的透明单细胞集分类
现代单细胞流式和大量细胞术技术测量血液或组织样本中单个细胞中几种蛋白质的表达。因此,每个生物样本都由一组数十万个多维细胞特征向量表示,这导致使用机器学习模型预测每个生物样本的相关表型需要很高的计算成本。如此大的集合基数也限制了机器学习模型的可解释性,因为很难跟踪每个单个细胞如何影响最终预测。我们建议使用核均值嵌入对每个生物样本的细胞景观进行编码。虽然我们的首要目标是建立一个更透明的模型,但我们发现,通过简单的线性分类器,我们的方法实现了与最先进的无门控方法相当或更好的准确性。因此,我们的模型包含很少的参数,但仍然与具有数百万参数的深度学习模型相似。与深度学习方法相比,我们的模型的线性和子选择步骤使其易于解释分类结果。分析进一步表明,我们的方法承认丰富的生物学解释性,将细胞异质性与临床表型联系起来。
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