IEEE J Biomed Health Inform. 2024 Jul;28(7):3860-3871. doi: 10.1109/JBHI.2023.3331278. Epub 2024 Jul 2.
In this study, we propose LDMRes-Net, a lightweight dual-multiscale residual block-based convolutional neural network tailored for medical image segmentation on IoT and edge platforms. Conventional U-Net-based models face challenges in meeting the speed and efficiency demands of real-time clinical applications, such as disease monitoring, radiation therapy, and image-guided surgery. In this study, we present the Lightweight Dual Multiscale Residual Block-based Convolutional Neural Network (LDMRes-Net), which is specifically designed to overcome these difficulties. LDMRes-Net overcomes these limitations with its remarkably low number of learnable parameters (0.072 M), making it highly suitable for resource-constrained devices. The model's key innovation lies in its dual multiscale residual block architecture, which enables the extraction of refined features on multiple scales, enhancing overall segmentation performance. To further optimize efficiency, the number of filters is carefully selected to prevent overlap, reduce training time, and improve computational efficiency. The study includes comprehensive evaluations, focusing on the segmentation of the retinal image of vessels and hard exudates crucial for the diagnosis and treatment of ophthalmology. The results demonstrate the robustness, generalizability, and high segmentation accuracy of LDMRes-Net, positioning it as an efficient tool for accurate and rapid medical image segmentation in diverse clinical applications, particularly on IoT and edge platforms. Such advances hold significant promise for improving healthcare outcomes and enabling real-time medical image analysis in resource-limited settings.
在这项研究中,我们提出了 LDMRes-Net,这是一种针对物联网和边缘平台上的医学图像分割而设计的轻量级双多尺度残差块卷积神经网络。基于传统 U-Net 的模型在满足实时临床应用(如疾病监测、放射治疗和图像引导手术)的速度和效率需求方面面临挑战。在这项研究中,我们提出了轻量级双多尺度残差块卷积神经网络(LDMRes-Net),旨在克服这些困难。LDMRes-Net 通过其数量极少的可学习参数(0.072M)克服了这些限制,非常适合资源受限的设备。该模型的关键创新在于其双多尺度残差块架构,能够在多个尺度上提取精细特征,从而提高整体分割性能。为了进一步优化效率,仔细选择滤波器的数量以防止重叠,减少训练时间,并提高计算效率。该研究包括全面的评估,重点是对血管和硬性渗出物的视网膜图像进行分割,这些对于眼科的诊断和治疗至关重要。结果表明,LDMRes-Net 具有强大的稳健性、通用性和高分割准确性,是一种用于各种临床应用中准确快速医学图像分割的有效工具,特别是在物联网和边缘平台上。这些进展有望改善医疗保健结果,并在资源有限的环境中实现实时医学图像分析。