Lyu Yu, Tian Xiaolin
School of Computer Science and Engineering, Faculty of Innovation Engineering, Macau University of Science and Technology, Taipa, Macau 999078, China.
Bioengineering (Basel). 2023 Sep 18;10(9):1091. doi: 10.3390/bioengineering10091091.
Deep learning technology has achieved breakthrough research results in the fields of medical computer vision and image processing. Generative adversarial networks (GANs) have demonstrated a capacity for image generation and expression ability. This paper proposes a new method called MWG-UNet (multiple tasking Wasserstein generative adversarial network U-shape network) as a lung field and heart segmentation model, which takes advantages of the attention mechanism to enhance the segmentation accuracy of the generator so as to improve the performance. In particular, the Dice similarity, precision, and F1 score of the proposed method outperform other models, reaching 95.28%, 96.41%, and 95.90%, respectively, and the specificity surpasses the sub-optimal models by 0.28%, 0.90%, 0.24%, and 0.90%. However, the value of the IoU is inferior to the optimal model by 0.69%. The results show the proposed method has considerable ability in lung field segmentation. Our multi-organ segmentation results for the heart achieve Dice similarity and IoU values of 71.16% and 74.56%. The segmentation results on lung fields achieve Dice similarity and IoU values of 85.18% and 81.36%.
深度学习技术在医学计算机视觉和图像处理领域取得了突破性的研究成果。生成对抗网络(GAN)已展现出图像生成能力和表达能力。本文提出了一种名为MWG-UNet(多任务瓦瑟斯坦生成对抗网络U形网络)的新方法作为肺野和心脏分割模型,该方法利用注意力机制来提高生成器的分割精度,从而提升性能。特别是,所提方法的骰子相似性、精确率和F1分数分别达到95.28%、96.41%和95.90%,优于其他模型,且特异性分别比次优模型高出0.28%、0.90%、0.24%和0.90%。然而,交并比的值比最优模型低0.69%。结果表明所提方法在肺野分割方面具有相当的能力。我们对心脏的多器官分割结果的骰子相似性和交并比分别为71.16%和74.56%。肺野的分割结果的骰子相似性和交并比分别为85.18%和81.36%。