Das Pradeep Kumar, Meher Sukadev, Rath Adyasha, Panda Ganapati
Department of Electronics and Communication Engineering, National Institute of Technology Warangal, Warangal 506004, Telangana, India; School of Electronics Engineering (SENSE), VIT Vellore, Tamil Nadu 632014, India.
Department of Electronics and Communication Engineering, National Institute of Technology Rourkela, Odisha 769008, India.
ISA Trans. 2025 Mar;158:488-496. doi: 10.1016/j.isatra.2024.12.043. Epub 2025 Jan 8.
Early and highly accurate detection of rapidly damaging deadly disease like Acute Lymphoblastic Leukemia (ALL) is essential for providing appropriate treatment to save valuable lives. Recent development in deep learning, particularly transfer learning, is gaining a preferred trend of research in medical image processing because of their admirable performance, even with small datasets. It inspires us to develop a novel deep learning-based leukemia detection system in which an efficient and lightweight MobileNetV2 is used in conjunction with ShuffleNet to boost discrimination ability and enhance the receptive field via convolution layer succession. More importantly, the suggested weight factor and an optimal threshold value (which is experimentally selected) is responsible for maintaining a healthy balance between computational efficiency and classification performance. Hence, the benefits of inverted residual bottleneck structure, depthwise separable convolution, tunable hyperparameters, pointwise group convolution, and channel shuffling are integrated to improve the feature discrimination ability and make the proposed system faster and more accurate. The experimental results convey that the proposed framework outperforms others with the best detection performances. It achieves superior performance to its competitors with the best accuracy (99.07%), precision(98.00%), sensitivity (100%), specificity (98.31%), and F1 score (0.9899) in ALLIDB1 dataset. Similarly, it outperforms others with 98.46% accuracy, 98.46% precision, 98.46% specificity, 98.46% sensitivity, and 0.9846 F1 Score in ALLIDB2 dataset.
早期并高度准确地检测出像急性淋巴细胞白血病(ALL)这样迅速损害生命的致命疾病,对于提供恰当治疗以挽救宝贵生命至关重要。深度学习的最新进展,尤其是迁移学习,因其即便在小数据集上也表现出色,在医学图像处理领域正成为备受青睐的研究趋势。这启发我们开发一种基于深度学习的新型白血病检测系统,其中高效轻量级的MobileNetV2与ShuffleNet结合使用,通过连续卷积层来增强辨别能力并扩大感受野。更重要的是,所建议的权重因子和一个通过实验选择的最优阈值负责在计算效率和分类性能之间保持良好平衡。因此,融合了倒置残差瓶颈结构、深度可分离卷积、可调超参数、逐点分组卷积和通道混洗的优点,以提高特征辨别能力,并使所提出的系统更快、更准确。实验结果表明,所提出的框架在检测性能方面优于其他框架。在ALLIDB1数据集中,它以最佳的准确率(99.07%)、精确率(98.00%)、灵敏度(100%)、特异性(98.31%)和F1分数(0.9899)超越了竞争对手。同样,在ALLIDB2数据集中,它以98.46%的准确率、98.46%的精确率、98.46%的特异性、98.46%的灵敏度和0.9846的F1分数优于其他框架。