Mei Liye, Peng Haoran, Luo Ping, Jin Shuangtong, Shen Hui, He Jing, Yang Wei, Ye Zhiwei, Sui Haigang, Mei Mengqing, Lei Cheng, Xiong Bei
School of Computer Science, Hubei University of Technology, Wuhan 430068, China.
The Institute of Technological Sciences, Wuhan University, Wuhan 430072, China.
Biomed Opt Express. 2024 Aug 9;15(9):5143-5161. doi: 10.1364/BOE.525119. eCollection 2024 Sep 1.
Reactive lymphocytes may indicate diseases such as viral infections. Identifying these abnormal lymphocytes is crucial for disease diagnosis. Currently, reactive lymphocytes are mainly manually identified by pathological experts with microscopes and morphological knowledge, which is time-consuming and laborious. Some studies have used convolutional neural networks (CNNs) to identify peripheral blood leukocytes, but there are limitations in the small receptive field of the model. Our model introduces a transformer based on CNN, expands the receptive field of the model, and enables it to extract global features more efficiently. We also enhance the generalization ability of the model through virtual adversarial training (VAT) without changing the parameters of the model. Finally, our model achieves an overall accuracy of 93.66% on the test set, and the accuracy of reactive lymphocytes also reaches 88.03%. This work takes another step toward the efficient identification of reactive lymphocytes.
反应性淋巴细胞可能提示诸如病毒感染等疾病。识别这些异常淋巴细胞对疾病诊断至关重要。目前,反应性淋巴细胞主要由病理专家借助显微镜和形态学知识进行人工识别,这既耗时又费力。一些研究已使用卷积神经网络(CNN)来识别外周血白细胞,但该模型的感受野较小存在局限性。我们的模型引入了基于CNN的Transformer,扩大了模型的感受野,并使其能够更高效地提取全局特征。我们还通过虚拟对抗训练(VAT)在不改变模型参数的情况下增强了模型的泛化能力。最后,我们的模型在测试集上的总体准确率达到93.66%,反应性淋巴细胞的准确率也达到88.03%。这项工作朝着高效识别反应性淋巴细胞又迈进了一步。