School of Physics and Microelectronics, Zhengzhou University, No. 100 Science Avenue, Zhengzhou, China.
Medicine (Baltimore). 2021 Oct 8;100(40):e27491. doi: 10.1097/MD.0000000000027491.
Since lung nodules on computed tomography images can have different shapes, contours, textures or locations and may be attached to neighboring blood vessels or pleural surfaces, accurate segmentation is still challenging. In this study, we propose an accurate segmentation method based on an improved U-Net convolutional network for different types of lung nodules on computed tomography images.The first phase is to segment lung parenchyma and correct the lung contour by applying α-hull algorithm. The second phase is to extract image pairs of patches containing lung nodules in the center and the corresponding ground truth and build an improved U-Net network with introduction of batch normalization.A large number of experiments manifest that segmentation performance of Dice loss has superior results than mean square error and Binary_crossentropy loss. The α-hull algorithm and batch normalization can improve the segmentation performance effectively. Our best result for Dice similar coefficient (0.8623) is also more competitive than other state-of-the-art segmentation algorithms.In order to segment different types of lung nodules accurately, we propose an improved U-Net network, which can improve the segmentation accuracy effectively. Moreover, this work also has practical value in helping radiologists segment lung nodules and diagnose lung cancer.
由于 CT 图像上的肺结节具有不同的形状、轮廓、纹理或位置,并且可能附着在相邻的血管或胸膜表面,因此准确的分割仍然具有挑战性。在这项研究中,我们提出了一种基于改进的 U-Net 卷积网络的准确分割方法,用于对 CT 图像上不同类型的肺结节进行分割。第一阶段是通过应用α-壳算法分割肺实质并校正肺轮廓。第二阶段是提取包含肺结节中心和相应地面真实的图像对,并引入批量归一化构建改进的 U-Net 网络。大量实验表明,Dice 损失的分割性能优于均方误差和二进制交叉熵损失。α-壳算法和批量归一化可以有效提高分割性能。我们的 Dice 相似系数(0.8623)的最佳结果也比其他最先进的分割算法更具竞争力。为了准确分割不同类型的肺结节,我们提出了一种改进的 U-Net 网络,它可以有效地提高分割精度。此外,这项工作在帮助放射科医生分割肺结节和诊断肺癌方面也具有实际价值。