Department of Cardiac Surgery, Quanzhou First Hospital Affiliated to Fujian Medical University Quanzhou, Fujian, 362000, China.
Department of Cardiac Surgery, Quanzhou First Hospital Affiliated to Fujian Medical University Quanzhou, Fujian, 362000, China.
Comput Methods Programs Biomed. 2022 Nov;226:107130. doi: 10.1016/j.cmpb.2022.107130. Epub 2022 Sep 15.
Currently, Computed Tomography Angiography (CTA) is the most commonly used clinical method for the diagnosis of aortic dissection, which is much better than plain CT. However, CTA examination has some disadvantages such as time-consuming image processing, complicated procedure and injection of developer. CT plain scanning is widely used in the early diagnosis of arterial dissection because of its convenience, speed and popularity. In order not to delay the optimal diagnosis and treatment time of patients, we use deep learning technology and network model to synthesize plain CT images into CTA images. Patients can be timely professional related departments of clinical diagnosis and treatment, and reduce the rate of missed diagnosis. In this paper, we propose a CTA image synthesis technique for cardiac aortic dissection based on the cascaded generative adjunctive network model.
Firstly, we registered CT images, and then used nnU-Net segmentation network model to obtain CT and CTA paired images containing only the aorta. Then we proposed a CTA image synthesis method for aortic dissection based on cascaded generative adversarial. The core idea is to build a cascade generator and double discriminator network based on DCT channel attention mechanism to further enhance the synthesis effect of CTA.
The model is trained and tested on CT plain scan and CTA image data set of aortic dissection. The results show that the proposed model achieves good results in CTA image synthesis. In the CT data set, the nnU-Net model improves 8.63% and reduces 10.87mm errors in the key index DSC and HD, respectively, compared with the benchmark model U-Net. In CTA data set, nnU-Net model improves 10.27% and reduces 6.56mm error in key index DSC and HD, respectively, compared with benchmark model U-Net. In the synthesis task, the cascaded generative adm network is superior to Pix2pix and Pix2pixHD network models in both PSNR and SSIM, which proves that our proposed model has significant advantages.
This study provides new possibilities for CTA image synthesis of aortic dissection, and improves the accuracy and efficiency of diagnosis, and hopes to provide substantial help for the diagnosis of aortic dissection.
目前,计算机断层血管造影(CTA)是诊断主动脉夹层最常用的临床方法,优于普通 CT。但是,CTA 检查存在图像处理耗时、操作复杂、需要注射造影剂等缺点。CT 平扫因其方便、快速、普及,在动脉夹层的早期诊断中得到广泛应用。为了不延误患者最佳的诊断和治疗时间,我们使用深度学习技术和网络模型将平扫 CT 图像合成 CTA 图像。使患者能够及时到相关专业临床科室进行诊断和治疗,并降低漏诊率。本文提出了一种基于级联生成式附加网络模型的心脏主动脉夹层 CTA 图像合成技术。
首先对 CT 图像进行配准,然后使用 nnU-Net 分割网络模型获取仅包含主动脉的 CT 和 CTA 配对图像。然后,我们提出了一种基于级联生成对抗的主动脉夹层 CTA 图像合成方法。核心思想是基于 DCT 通道注意力机制构建级联生成器和双鉴别器网络,进一步增强 CTA 的合成效果。
在主动脉夹层 CT 平扫和 CTA 图像数据集上对模型进行训练和测试。结果表明,所提出的模型在 CTA 图像合成方面取得了良好的效果。在 CT 数据集上,与基准模型 U-Net 相比,nnU-Net 模型在关键指标 DSC 和 HD 上分别提高了 8.63%和降低了 10.87mm 的误差。在 CTA 数据集上,nnU-Net 模型在关键指标 DSC 和 HD 上分别提高了 10.27%和降低了 6.56mm 的误差。在合成任务中,级联生成式 adm 网络在 PSNR 和 SSIM 方面均优于 Pix2pix 和 Pix2pixHD 网络模型,证明了所提出的模型具有显著优势。
本研究为主动脉夹层的 CTA 图像合成提供了新的可能性,提高了诊断的准确性和效率,希望为主动脉夹层的诊断提供实质性帮助。