Fatemeh Nassajian Mojarrad, Lorenzo Bini, Thomas Matthes, Stéphane Marchand-Maillet
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引用次数: 0
摘要
在外周血或骨髓等血液样本的复杂环境中,细胞分类、将不同种群划分为层次结构等工作面临着巨大挑战。本研究介绍了LeukoGraph,它是最近开发的一个框架,专门为此目的而设计,采用图注意网络(GAT)来驾驭分层分类(HC)的复杂性。值得注意的是,LeukoGraph 是一项开创性的工作,它标志着图神经网络(GNN)在图层次推断中的应用,可容纳多达一百万个节点和数百万条边,所有这些都来自流式细胞仪数据。LeukoGraph复杂地处理了一个分类范例,例如,四个不同的细胞群进行平面分类,而第五个细胞群则分化为两个不同的子分支,体现了复杂数据集中固有的细微层次结构。LeukoGraph 的一个标志性成就是它的 F 分数高达 98%,大大超过了目前最先进的方法。最重要的是,LeukoGraph 的优势不仅限于理论创新,它在预测来自 30 位不同患者的流式细胞仪数据集中的扁平和分层细胞类型方面都表现出了非凡的精确性。LeukoGraph 还能保持正确的标记比例,这进一步突出了它的精确性,尽管分层分类本身就存在挑战。
Why Attention Graphs Are All We Need: Pioneering Hierarchical Classification of Hematologic Cell Populations with LeukoGraph
In the complex landscape of hematologic samples such as peripheral blood or
bone marrow, cell classification, delineating diverse populations into a
hierarchical structure, presents profound challenges. This study presents
LeukoGraph, a recently developed framework designed explicitly for this purpose
employing graph attention networks (GATs) to navigate hierarchical
classification (HC) complexities. Notably, LeukoGraph stands as a pioneering
effort, marking the application of graph neural networks (GNNs) for
hierarchical inference on graphs, accommodating up to one million nodes and
millions of edges, all derived from flow cytometry data. LeukoGraph intricately
addresses a classification paradigm where for example four different cell
populations undergo flat categorization, while a fifth diverges into two
distinct child branches, exemplifying the nuanced hierarchical structure
inherent in complex datasets. The technique is more general than this example.
A hallmark achievement of LeukoGraph is its F-score of 98%, significantly
outclassing prevailing state-of-the-art methodologies. Crucially, LeukoGraph's
prowess extends beyond theoretical innovation, showcasing remarkable precision
in predicting both flat and hierarchical cell types across flow cytometry
datasets from 30 distinct patients. This precision is further underscored by
LeukoGraph's ability to maintain a correct label ratio, despite the inherent
challenges posed by hierarchical classifications.