Wang Bao, Pan Yongsheng, Xu Shangchen, Zhang Yi, Ming Yang, Chen Ligang, Liu Xuejun, Wang Chengwei, Liu Yingchao, Xia Yong
From the Department of Radiology, Qilu Hospital of Shandong University, Jinan, China (B.W.); School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an, China (Y.P., Y.X.); Departments of Neurosurgery (B.W., S.X., Y.L.) and Radiology (Y.Z.), Provincial Hospital Affiliated to Shandong First Medical University, Jinan 250021, China; Department of Neurosurgery, The Affiliated Hospital of Southwest Medical University, Luzhou, China (Y.M., L.C., Y.L.); Department of Radiology, The Affiliated Hospital of Qingdao University, Qingdao, China (X.L.); Department of Neurosurgery, the Second Hospital of Shandong University, Jinan, China (C.W.); and Shandong Institute of Brain Science and Brain-inspired Research, Shandong First Medical University, Jinan, China (Y.L.).
Radiology. 2023 Aug;308(2):e222471. doi: 10.1148/radiol.222471.
Background Cerebral blood volume (CBV) maps derived from dynamic susceptibility contrast-enhanced (DSC) MRI are useful but not commonly available in clinical scenarios. Purpose To test image-to-image translation techniques for generating CBV maps from standard MRI sequences of brain tumors using the bookend technique DSC MRI as ground-truth references. Materials and Methods A total of 756 MRI examinations, including quantitative CBV maps produced from bookend DSC MRI, were included in this retrospective study. Two algorithms, the feature-consistency generative adversarial network (GAN) and three-dimensional encoder-decoder network with only mean absolute error loss, were trained to synthesize CBV maps. The performance of the two algorithms was evaluated quantitatively using the structural similarity index (SSIM) and qualitatively by two neuroradiologists using a four-point Likert scale. The clinical value of combining synthetic CBV maps and standard MRI scans of brain tumors was assessed in several clinical scenarios (tumor grading, prognosis prediction, differential diagnosis) using multicenter data sets (four external and one internal). Differences in diagnostic and predictive accuracy were tested using the test. Results The three-dimensional encoder-decoder network with T1-weighted images, contrast-enhanced T1-weighted images, and apparent diffusion coefficient maps as the input achieved the highest synthetic performance (SSIM, 86.29% ± 4.30). The mean qualitative score of the synthesized CBV maps by neuroradiologists was 2.63. Combining synthetic CBV with standard MRI improved the accuracy of grading gliomas (standard MRI scans area under the receiver operating characteristic curve [AUC], 0.707; standard MRI scans with CBV maps AUC, 0.857; = 15.17; < .001), prediction of prognosis in gliomas (standard MRI scans AUC, 0.654; standard MRI scans with CBV maps AUC, 0.793; = 9.62; < .001), and differential diagnosis between tumor recurrence and treatment response in gliomas (standard MRI scans AUC, 0.778; standard MRI scans with CBV maps AUC, 0.853; = 4.86; < .001) and brain metastases (standard MRI scans AUC, 0.749; standard MRI scans with CBV maps AUC, 0.857; = 6.13; < .001). Conclusion GAN image-to-image translation techniques produced accurate synthetic CBV maps from standard MRI scans, which could be used for improving the clinical evaluation of brain tumors. Published under a CC BY 4.0 license. See also the editorial by Branstetter in this issue.
源自动态磁敏感对比增强(DSC)磁共振成像(MRI)的脑血容量(CBV)图很有用,但在临床场景中并不常用。目的:使用书挡技术DSC MRI作为真值参考,测试图像到图像的转换技术,以从脑肿瘤的标准MRI序列生成CBV图。材料与方法:本回顾性研究共纳入756例MRI检查,包括由书挡DSC MRI生成的定量CBV图。训练了两种算法,即特征一致性生成对抗网络(GAN)和仅具有平均绝对误差损失的三维编码器-解码器网络,以合成CBV图。使用结构相似性指数(SSIM)对两种算法的性能进行定量评估,并由两名神经放射科医生使用四点李克特量表进行定性评估。使用多中心数据集(四个外部数据集和一个内部数据集)在几种临床场景(肿瘤分级、预后预测、鉴别诊断)中评估合成CBV图与脑肿瘤标准MRI扫描相结合的临床价值。使用检验测试诊断和预测准确性的差异。结果:以T1加权图像、对比增强T1加权图像和表观扩散系数图作为输入的三维编码器-解码器网络实现了最高的合成性能(SSIM,86.29%±4.30)。神经放射科医生对合成CBV图的平均定性评分为2.63。将合成CBV与标准MRI相结合提高了胶质瘤分级的准确性(标准MRI扫描的受试者操作特征曲线下面积[AUC],0.707;标准MRI扫描与CBV图的AUC,0.857;=15.17;<0.001)、胶质瘤预后预测的准确性(标准MRI扫描AUC,0.654;标准MRI扫描与CBV图的AUC,0.793;=9.62;<0.001)以及胶质瘤(标准MRI扫描AUC,0.778;标准MRI扫描与CBV图的AUC,0.853;=4.86;<0.001)和脑转移瘤(标准MRI扫描AUC,0.749;标准MRI扫描与CBV图的AUC,0.857;=6.13;<0.001)中肿瘤复发与治疗反应的鉴别诊断准确性。结论:GAN图像到图像转换技术从标准MRI扫描中生成了准确的合成CBV图,可用于改善脑肿瘤的临床评估。根据知识共享署名4.0许可发布。另见本期Branstetter的社论。