Alhajim Dhafer, Ansari-Asl Karim, Akbarizadeh Gholamreza, Soorki Mehdi Naderi
Department of Electrical Engineering, Faculty of Engineering, Shahid Chamran University of Ahvaz, Ahvaz, Iran.
Sci Rep. 2025 Jan 30;15(1):3770. doi: 10.1038/s41598-025-85199-5.
The diverse types and sizes, proximity to non-nodule structures, identical shape characteristics, and varying sizes of nodules make them challenging for segmentation methods. Although many efforts have been made in automatic lung nodule segmentation, most of them have not sufficiently addressed the challenges related to the type and size of nodules, such as juxta-pleural and juxta-vascular nodules. The current research introduces a Squeeze-Excitation Dilated Attention-based Residual U-Net (SEDARU-Net) with a robust intensity normalization technique to address the challenges related to different types and sizes of lung nodules and to achieve an improved lung nodule segmentation. After preprocessing the images with the intensity normalization method and extracting the Regions of Interest by YOLOv3, they are fed into the SEDARU-Net with dilated convolutions in the encoder part. Then, the extracted features are given to the decoder part, which involves transposed convolutions, Squeeze-Excitation Dilated Residual blocks, and skip connections equipped with an Attention Gate, to decode the feature maps and construct the segmentation mask. The proposed model was evaluated using the publicly available Lung Nodule Analysis 2016 (LUNA16) dataset, achieving a Dice Similarity Coefficient of 97.86%, IoU of 96.40%, sensitivity of 96.54%, and precision of 98.84%. Finally, it was shown that each added component to the U-Net's structure and the intensity normalization technique increased the Dice Similarity Coefficient by more than 2%. The proposed method suggests a potential clinical tool to address challenges related to the segmentation of lung nodules with different types located in the proximity of non-nodule structures.
结节的多样类型和大小、与非结节结构的接近程度、相同的形状特征以及大小各异,使得它们对于分割方法而言具有挑战性。尽管在自动肺结节分割方面已经做出了许多努力,但大多数方法都未能充分应对与结节类型和大小相关的挑战,例如胸膜旁和血管旁结节。当前的研究引入了一种基于挤压激励扩张注意力的残差U型网络(SEDARU-Net)以及一种强大的强度归一化技术,以应对与不同类型和大小的肺结节相关的挑战,并实现改进的肺结节分割。在用强度归一化方法对图像进行预处理并通过YOLOv3提取感兴趣区域后,将它们输入到编码器部分具有扩张卷积的SEDARU-Net中。然后,将提取的特征输入到解码器部分,该部分包括转置卷积、挤压激励扩张残差块以及配备注意力门的跳跃连接,以解码特征图并构建分割掩码。使用公开可用的2016年肺结节分析(LUNA16)数据集对所提出的模型进行评估,其骰子相似系数达到97.86%,交并比为96.40%,灵敏度为96.54%,精度为98.84%。最后,结果表明,U型网络结构中添加的每个组件以及强度归一化技术使骰子相似系数提高了2%以上。所提出的方法为解决与位于非结节结构附近的不同类型肺结节分割相关的挑战提供了一种潜在的临床工具。