Lee Ming-Chan, Wang Shao-Yu, Pan Cheng-Tang, Chien Ming-Yi, Li Wei-Ming, Xu Jin-Hao, Luo Chi-Hung, Shiue Yow-Ling
Department of Mechanical and Electro-Mechanical Engineering, National Sun Yat-sen University, Kaohsiung 804, Taiwan.
Department of Mechanical Engineering, National United University, Miaoli 360, Taiwan.
Cancers (Basel). 2023 Feb 20;15(4):1343. doi: 10.3390/cancers15041343.
In today's high-order health examination, imaging examination accounts for a large proportion. Computed tomography (CT), which can detect the whole body, uses X-rays to penetrate the human body to obtain images. Its presentation is a high-resolution black-and-white image composed of gray scales. It is expected to assist doctors in making judgments through deep learning based on the image recognition technology of artificial intelligence. It used CT images to identify the bladder and lesions and then segmented them in the images. The images can achieve high accuracy without using a developer. In this study, the U-Net neural network, commonly used in the medical field, was used to extend the encoder position in combination with the ResBlock in ResNet and the Dense Block in DenseNet, so that the training could maintain the training parameters while reducing the overall identification operation time. The decoder could be used in combination with Attention Gates to suppress the irrelevant areas of the image while paying attention to significant features. Combined with the above algorithm, we proposed a Residual-Dense Attention (RDA) U-Net model, which was used to identify organs and lesions from CT images of abdominal scans. The accuracy () of using this model for the bladder and its lesions was 96% and 93%, respectively. The values of Intersection over Union () were 0.9505 and 0.8024, respectively. Average Hausdorff distance () was as low as 0.02 and 0.12, respectively, and the overall training time was reduced by up to 44% compared with other convolution neural networks.
在当今的高阶健康检查中,影像检查占比很大。计算机断层扫描(CT)能够检测全身,它利用X射线穿透人体以获取图像。其呈现的是由灰度构成的高分辨率黑白图像。期望通过基于人工智能图像识别技术的深度学习来辅助医生进行判断。它利用CT图像识别膀胱和病变,然后在图像中对它们进行分割。这些图像无需使用显影剂就能实现高精度。在本研究中,医学领域常用的U-Net神经网络与ResNet中的ResBlock和DenseNet中的Dense Block相结合来扩展编码器位置,以便在训练时能够保持训练参数,同时减少整体识别操作时间。解码器可与注意力门控相结合,在关注显著特征的同时抑制图像的无关区域。结合上述算法,我们提出了一种残差-密集注意力(RDA)U-Net模型,用于从腹部扫描的CT图像中识别器官和病变。使用该模型对膀胱及其病变的准确率分别为96%和93%。交并比(IoU)值分别为0.9505和0.8024。平均豪斯多夫距离(HD)分别低至0.02和0.12,与其他卷积神经网络相比,整体训练时间最多减少了44%。