Khan Zeshan Aslam, Waqar Muhammad, Khan Hashir Ullah, Chaudhary Naveed Ishtiaq, Khan Abeer Tma, Ishtiaq Iqra, Khan Farrukh Aslam, Raja Muhammad Asif Zahoor
Electrical and Computer Engineering, International Islamic University, Islamabad, Pakistan.
International Graduate Institute of Artificial Intelligence, National Yunlin University of Science and Technology, Yunlin, Taiwan.
PeerJ Comput Sci. 2025 Apr 8;11:e2800. doi: 10.7717/peerj-cs.2800. eCollection 2025.
Kidney diseases are becoming an alarming concern around the globe. Premature diagnosis of kidney disease can save precious human lives by taking preventive measures. Deep learning demonstrates a substantial performance in various medical disciplines. Numerous deep learning approaches are suggested in the literature for accurate chronic kidney disease classification by compromising on architectural complexity, classification speed, and resource constraints. In this study, deep transfer learning is exploited by incorporating unexplored yet effective variants of ConvNeXt and EfficientNetV2 for accurate and efficient classification of chronic kidney diseases. The benchmark computed tomography (CT)-based kidney database containing 12,446 CT scans of kidney tumor, stone cysts, and normal patients is utilized to train the designed fine-tuned networks. However, due to the highly imbalanced distribution of images among classes, the operation of data trimming is exploited for balancing the number of CT scans in each class, which is essential for designing an unbiased predictive network. By utilizing fine-tuned pre-trained models for our specific task, the training time is reduced leading to a computationally inexpensive solution. After the comprehensive hyperparameters tuning with respect to changes in learning rates, batch sizes, and optimizers, it is depicted that the designed fine-tuned EfficientNetV2B0 network of 23.8 MB in size with only 6.2 million architectural parameters shows substantial diagnostic performance by achieving a generalized test accuracy of 99.75% on balanced CT kidney database. Furthermore, the designed fine-tuned EfficientNetV2B0 attains high precision, recall, and F1-score of 99.75%, 99.63%, and 99.75%, respectively. Moreover, the final fine-tuned EfficientNetV2B0 ensures its scalability by achieving an impressive diagnostic accuracy of 99.73% on the test set of the original CT kidney dataset as well. Through the extensive evaluation of the proposed transfer learning strategy, it is concluded that the proposed design of fine-tuned EfficientNetV2B0 outperforms its counterparts in terms of accuracy and computational efficiency for chronic kidney disease diagnosis tasks. The final fine-tuned EfficientNetV2B0 serves as an accurate, efficient, and computationally inexpensive solution tailored for real-time deployment on medical or mobile edge devices.
肾脏疾病正成为全球范围内令人担忧的问题。通过采取预防措施,对肾脏疾病进行早期诊断可以挽救宝贵的生命。深度学习在各个医学领域都展现出了卓越的性能。文献中提出了许多深度学习方法,旨在通过权衡架构复杂性、分类速度和资源限制来实现慢性肾脏病的准确分类。在本研究中,通过整合ConvNeXt和EfficientNetV2尚未被探索但有效的变体,利用深度迁移学习实现慢性肾脏病的准确高效分类。基于基准计算机断层扫描(CT)的肾脏数据库包含12446例肾脏肿瘤、结石囊肿及正常患者的CT扫描图像,用于训练设计的微调网络。然而,由于各类别图像分布高度不均衡,因此采用数据修剪操作来平衡每个类别的CT扫描数量,这对于设计无偏差的预测网络至关重要。通过将预训练模型微调用于我们的特定任务,减少了训练时间,从而得到一种计算成本较低的解决方案。在对学习率、批量大小和优化器等超参数进行全面调整后,结果表明,设计的大小为23.8MB、仅有620万个架构参数的微调EfficientNetV2B0网络在平衡的CT肾脏数据库上实现了99.75%的广义测试准确率,展现出了显著的诊断性能。此外,设计的微调EfficientNetV2B0的精度、召回率和F1分数分别达到了99.75%、99.63%和99.75%。此外,最终微调的EfficientNetV2B0在原始CT肾脏数据集的测试集上也实现了99.73%的令人印象深刻的诊断准确率,确保了其可扩展性。通过对所提出的迁移学习策略进行广泛评估,得出结论:所提出的微调EfficientNetV2B0设计在慢性肾脏病诊断任务的准确性和计算效率方面优于同类方法。最终微调的EfficientNetV2B0是一种准确、高效且计算成本低的解决方案,专为在医疗或移动边缘设备上进行实时部署而定制。