利用图像到图像条件生成对抗网络绘制血管通透性动态对比增强磁共振成像图,评估乳腺癌新辅助化疗反应

Chad A. Arledge, Alan H. Zhao, Umit Topaloglu, Dawen Zhao
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摘要

动态对比增强(DCE)磁共振成像是一种无创成像技术,已成为评估肿瘤微血管通透性的定量标准。通过将药代动力学(PK)模型应用于注射造影剂后获得的一系列 T1 称重 MR 图像,可以定量估算出几个血管通透性参数。这些参数(包括衡量毛细血管通透性的 Ktrans)已被广泛用于评估肿瘤血管功能和肿瘤治疗反应。然而,将 DCE MRI 转化为 PK 血管通透性参数图的传统 PK 建模对于每幅图像有数千像素的动态扫描来说既复杂又耗时。近年来,图像到图像条件生成对抗网络(cGAN)正在成为计算机视觉领域用于复杂跨域转换任务的一种稳健方法。通过两个神经网络之间复杂的对抗训练过程,图像到图像 cGAN 学会了有效地将图像从一个域翻译到另一个域,生成的图像与目标域的图像无异。在本研究中,我们开发了一种新颖的图像到图像 cGAN 方法,用于将 DCE MRI 数据映射到 PK 血管通透性参数图。DCE 到 PK cGAN 不仅能生成与地面实况非常相似的高质量参数图,还能将计算时间大大缩短 1000 倍以上。利用癌症成像档案(TCIA)提供的开源乳腺癌患者 DCE MRI 数据,验证了 cGAN 方法绘制血管通透性图的实用性。这些数据包括乳腺癌患者在第一周期新辅助化疗(NACT)前后获得的图像和病理分析。重要的是,与之前利用该数据集进行的研究一致,从DCE-to-PK cGAN得出的血管通透性Ktrans百分比变化可以早期预测对NACT的反应者。
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Dynamic Contrast Enhanced MRI Mapping of Vascular Permeability for Evaluation of Breast Cancer Neoadjuvant Chemotherapy Response Using Image-to-Image Conditional Generative Adversarial Networks
Dynamic contrast enhanced (DCE) MRI is a non-invasive imaging technique that has become a quantitative standard for assessing tumor microvascular permeability. Through the application of a pharmacokinetic (PK) model to a series of T1-weighed MR images acquired after an injection of a contrast agent, several vascular permeability parameters can be quantitatively estimated. These parameters, including Ktrans, a measure of capillary permeability, have been widely implemented for assessing tumor vascular function as well as tumor therapeutic response. However, conventional PK modeling for translation of DCE MRI to PK vascular permeability parameter maps is complex and time-consuming for dynamic scans with thousands of pixels per image. In recent years, image-to-image conditional generative adversarial network (cGAN) is emerging as a robust approach in computer vision for complex cross-domain translation tasks. Through a sophisticated adversarial training process between two neural networks, image-to-image cGANs learn to effectively translate images from one domain to another, producing images that are indistinguishable from those in the target domain. In the present study, we have developed a novel image-to-image cGAN approach for mapping DCE MRI data to PK vascular permeability parameter maps. The DCE-to-PK cGAN not only generates high-quality parameter maps that closely resemble the ground truth, but also significantly reduces computation time over 1000-fold. The utility of the cGAN approach to map vascular permeability is validated using open-source breast cancer patient DCE MRI data provided by The Cancer Imaging Archive (TCIA). This data collection includes images and pathological analyses of breast cancer patients acquired before and after the first cycle of neoadjuvant chemotherapy (NACT). Importantly, in good agreement with previous studies leveraging this dataset, the percentage change of vascular permeability Ktrans derived from the DCE-to-PK cGAN enables early prediction of responders to NACT.
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