细胞分类中自动生成嵌入指南的分析

Philipp Gräbel, Julian Thull, M. Crysandt, B. Klinkhammer, P. Boor, T. Brümmendorf, D. Merhof
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引用次数: 0

摘要

在人骨髓显微镜图像中的自动细胞分类可能导致更快的采集,因此,用于统计细胞计数分析的细胞数量相当大。作为白血病等造血疾病的诊断依据,这将显著改善临床工作流程。然而,这些细胞的分类是具有挑战性的,部分原因是不同细胞类型之间的依赖性。在2021年,引导表示学习被引入,作为一种方法,通过提供“嵌入指南”作为单个细胞类型的优化目标,将该领域知识纳入训练。在这项工作中,我们提出了通过基于图优化算法自动生成向导来改进引导表示学习。我们结合了视觉相似性和对错误分类诊断的影响的信息。我们表明,这减少了关键的错误预测,并将总体分类f得分提高了2.5个百分点。
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Analysis of automatically generated embedding guides for cell classification
Automated cell classification in human bone marrow microscopy images could lead to faster acquisition and, therefore, to a considerably larger number of cells for the statistical cell count analysis. As basis for the diagnosis of hematopoietic dis-eases such as leukemia, this would be a significant improvement of clinical workflows. The classification of such cells, however, is challenging, partially due to dependencies between different cell types. In 2021, guided representation learning was introduced as an approach to include this domain knowledge into training by providing “embedding guides” as an optimization target for individual cell types. In this work, we propose improvements to guided repre-sentation learning by automatically generating guides based on graph optimization algorithms. We incorporate information about the visual similarity and the impact on diagnosis of mis-classifications. We show that this reduces critical false predictions and improves the overall classification F-score by up to 2.5 percentage points.
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