Fine-grained classification and counting of bone marrow erythroid cells are vital for evaluating the health status and formulating therapeutic schedules for leukemia or hematopathy. Due to the subtle visual differences between different types of erythroid cells, it is challenging to apply existing image-based deep learning models for fine-grained erythroid cell classification. Moreover, there is no large open-source datasets on erythroid cells to support the model training. In this paper, we introduce BMEC (Bone Morrow Erythroid Cells), the first large fine-grained image dataset of erythroid cells, to facilitate more deep learning research on erythroid cells. BMEC contains 5,666 images of individual erythroid cells, each of which is extracted from the bone marrow erythroid cell smears and professionally annotated to one of the four types of erythroid cells. To distinguish the erythroid cells, one key indicator is the cell shape which is closely related to the cell growth and maturation. Therefore, we design a novel shape-aware image classification network for fine-grained erythroid cell classification. The shape feature is extracted from the shape mask image and aggregated to the raw image feature with a shape attention module. With the shape-attended image feature, our network achieved superior classification performance (81.12\% top-1 accuracy) on the BMEC dataset comparing to the baseline methods. Ablation studies also demonstrate the effectiveness of incorporating the shape information for the fine-grained cell classification. To further verify the generalizability of our method, we tested our network on two additional public white blood cells (WBC) datasets and the results show our shape-aware method can generally outperform recent state-of-the-art works on classifying the WBC. The code and BMEC dataset can be found on https://github.com/wangye8899/BMEC.
翻译:精密的骨髓红细胞分类和计数对于评估健康状况和制定治疗白血病或血友病的治疗计划至关重要。 由于不同类型红细胞之间微妙的视觉差异, 应用基于图像的现有深学习模型以细细磨红细胞分类是具有挑战性的。 此外, 在红细胞上没有大型的开放源数据集来支持模型培训。 在本文中, 我们引入了BMEC (Bone Morow Erythroid Celles), 这是红细胞的第一个精细的精密图像数据集, 以便利对红细胞细胞进行更深的学习研究。 BMEC 含有5 666个基于图像的个体红细胞深层学习模型, 每一种都是从骨髓红细胞细胞细胞的涂抹中提取的, 专业上对四种红细胞之一进行说明。 为了区分红细胞的细胞, 一个关键指标是细胞的分类, 与细胞的生长和成熟细胞细胞的精细有关。 因此, 我们设计了一个更高级的血浆模型模型模型, 将模型的精度数据化成像模型 。