Chen Jin, Fu Liangzun, Wei Maoyu, Zheng Sikai, Zheng Jingwen, Lyu Zefei, Huang Xiwei, Sun Lingling
Ministry of Education Key Laboratory of RF Circuits and Systems, Hangzhou Dianzi University, Hangzhou, 310018, Zhejiang, China.
Heliyon. 2024 May 18;10(11):e31496. doi: 10.1016/j.heliyon.2024.e31496. eCollection 2024 Jun 15.
White blood cell (WBC) classification is a valuable diagnostic approach for identifying diseases. However, conventional methods for WBC detection, such as flow cytometers, have limitations in terms of their high cost, large system size, and laborious staining procedures. As a result, deep learning-based label-free WBC image analysis methods are gaining popularity. Nevertheless, most existing deep learning WBC classification techniques fail to effectively utilize the subtle differences in the internal structures of WBCs observed under a microscope. To address this issue, we propose a neural network with feature fusion in this study, which enables the detection of label-free WBCs. Unlike conventional convolutional neural networks (CNNs), our approach combines low-level features extracted by shallow layers with high-level features extracted by deep layers, generating fused features for accurate bright-field WBC identification. Our method achieves an accuracy of 80.3 % on the testing set, demonstrating a potential solution for deep-learning-based biomedical diagnoses. Considering the proposed method simplifies the cell detection process and eliminates the need for complex operations like fluorescent staining, we anticipate that this automatic and label-free WBC classification network could facilitate more precise and effective analysis, and it could contribute to the future adoption of miniatured flow cytometers for point-of-care (POC) diagnostics applications.
白细胞(WBC)分类是一种用于识别疾病的重要诊断方法。然而,传统的白细胞检测方法,如流式细胞仪,在成本高、系统体积大以及染色过程繁琐等方面存在局限性。因此,基于深度学习的无标记白细胞图像分析方法越来越受到欢迎。尽管如此,大多数现有的深度学习白细胞分类技术未能有效利用在显微镜下观察到的白细胞内部结构的细微差异。为了解决这个问题,我们在本研究中提出了一种具有特征融合的神经网络,它能够检测无标记的白细胞。与传统的卷积神经网络(CNN)不同,我们的方法将浅层提取的低级特征与深层提取的高级特征相结合,生成融合特征以准确识别明场白细胞。我们的方法在测试集上达到了80.3%的准确率,为基于深度学习的生物医学诊断提供了一种潜在的解决方案。考虑到所提出的方法简化了细胞检测过程,并且无需像荧光染色这样的复杂操作,我们预计这种自动且无标记的白细胞分类网络能够促进更精确有效的分析,并且有助于未来将微型流式细胞仪用于即时护理(POC)诊断应用。