Chen Yifei, Zhu Zhu, Zhu Shenghao, Qiu Linwei, Zou Binfeng, Jia Fan, Zhu Yunpeng, Zhang Chenyan, Fang Zhaojie, Qin Feiwei, Fan Jin, Wang Changmiao, Yu Gang, Gao Yu
IEEE J Biomed Health Inform. 2025 Jan;29(1):558-571. doi: 10.1109/JBHI.2024.3471928. Epub 2025 Jan 7.
The incidence and mortality rates of malignant tumors, such as acute leukemia, have risen significantly. Clinically, hospitals rely on cytological examination of peripheral blood and bone marrow smears to diagnose malignant tumors, with accurate blood cell counting being crucial. Existing automated methods face challenges such as low feature expression capability, poor interpretability, and redundant feature extraction when processing high-dimensional microimage data. We propose a novel fine-grained classification model, SCKansformer, for bone marrow blood cells, which addresses these challenges and enhances classification accuracy and efficiency. The model integrates the Kansformer Encoder, SCConv Encoder, and Global-Local Attention Encoder. The Kansformer Encoder replaces the traditional MLP layer with the KAN, improving nonlinear feature representation and interpretability. The SCConv Encoder, with its Spatial and Channel Reconstruction Units, enhances feature representation and reduces redundancy. The Global-Local Attention Encoder combines Multi-head Self-Attention with a Local Part module to capture both global and local features. We validated our model using the Bone Marrow Blood Cell Fine-Grained Classification Dataset (BMCD-FGCD), comprising over 10,000 samples and nearly 40 classifications, developed with a partner hospital. Comparative experiments on our private dataset, as well as the publicly available PBC and ALL-IDB datasets, demonstrate that SCKansformer outperforms both typical and advanced microcell classification methods across all datasets.
急性白血病等恶性肿瘤的发病率和死亡率显著上升。临床上,医院依靠外周血和骨髓涂片的细胞学检查来诊断恶性肿瘤,准确的血细胞计数至关重要。现有的自动化方法在处理高维微图像数据时面临特征表达能力低、可解释性差和特征提取冗余等挑战。我们提出了一种用于骨髓血细胞的新型细粒度分类模型SCKansformer,该模型解决了这些挑战,提高了分类的准确性和效率。该模型集成了Kansformer编码器、SCConv编码器和全局-局部注意力编码器。Kansformer编码器用KAN取代了传统的MLP层,提高了非线性特征表示和可解释性。SCConv编码器及其空间和通道重建单元增强了特征表示并减少了冗余。全局-局部注意力编码器将多头自注意力与局部部分模块相结合,以捕获全局和局部特征。我们使用与合作医院共同开发的包含超过10000个样本和近40种分类的骨髓血细胞细粒度分类数据集(BMCD-FGCD)对我们的模型进行了验证。在我们的私有数据集以及公开可用的PBC和ALL-IDB数据集上进行的对比实验表明,SCKansformer在所有数据集上均优于典型和先进的微细胞分类方法。