Ali Md Shahin, Hossain Md Maruf, Ahmed Md Mahfuz, Nowrin Kazi Rubaya, Mahim S M, Hasan Shakib Al, Kona Moutushi Akter, Islam Md Shafiqul, Ahmed Kazi Mowdud, Rahman Md Mahbubur, Islam Md Khairul
Department of Biomedical Engineering Islamic University Kushtia Bangladesh.
Bio-Imaging Research Laboratory, BME Islamic University Kushtia Bangladesh.
Health Sci Rep. 2025 Jun 11;8(6):e70859. doi: 10.1002/hsr2.70859. eCollection 2025 Jun.
White Blood Cells (WBCs) are essential for immune defense against infections. Automated WBC identification from microscopic images aids in diagnosing diseases like leukemia and AIDS. However, the complexity of WBC morphology due to varying maturation stages and staining techniques complicates classification. This study aims to enhance WBC detection and classification using a hybrid VGG16-Vision Transformer (VGG16-ViT) model.
To enhance the efficiency of the classification process, preprocessing techniques such as data normalization, categorical variable encoding, feature extraction, and data augmentation were employed in conjunction with the proposed model before the training phase. The VGG16-ViT model was trained and evaluated on two datasets to measure its performance.
The overall success rate for classifying WBCs was 98.12% for Dataset 1% and 99.60% for Dataset 2. The measured average precision, recall, and F1-score values were 98.59%, 98.23%, and 98.35% for Dataset 1; similarly, 98.95%, 99.98%, and 99.48% for Dataset 2. The experimental results indicated that the classification success was strengthened when the proposed model was combined with specific preprocessing procedures, outperforming existing research.
The hybrid VGG16-ViT model, combined with effective preprocessing techniques, significantly improved the detection and classification of WBCs. Additionally, the training approach of the proposed model is less time-consuming than existing transfer learning models, making it a valuable tool for assisting medical professionals in diagnosing diseases related to WBCs.
白细胞(WBC)对于抵抗感染的免疫防御至关重要。从显微图像中自动识别白细胞有助于诊断白血病和艾滋病等疾病。然而,由于成熟阶段和染色技术的不同,白细胞形态的复杂性使得分类变得复杂。本研究旨在使用混合VGG16-视觉Transformer(VGG16-ViT)模型提高白细胞的检测和分类能力。
为提高分类过程的效率,在训练阶段之前,将数据归一化、分类变量编码、特征提取和数据增强等预处理技术与所提出的模型结合使用。在两个数据集上对VGG16-ViT模型进行训练和评估以衡量其性能。
数据集1对白细胞分类的总体成功率为98.12%,数据集2为99.60%。数据集1测得的平均精度、召回率和F1分数值分别为98.59%、98.23%和98.35%;类似地,数据集2分别为98.95%、99.98%和99.48%。实验结果表明,当所提出的模型与特定的预处理程序相结合时,分类成功率得到提高,优于现有研究。
混合VGG16-ViT模型与有效的预处理技术相结合,显著提高了白细胞的检测和分类能力。此外,所提出模型的训练方法比现有的迁移学习模型耗时更少,使其成为协助医学专业人员诊断与白细胞相关疾病的有价值工具。