使用条件生成对抗网络的图像输入捕获计算机断层扫描上的临床相关成像特征。

IF 7.7
PLOS digital health Pub Date : 2025-08-13 eCollection Date: 2025-08-01 DOI:10.1371/journal.pdig.0000970
Joseph Rich, Jonathan Le, Ragheb Raad, Tapas Tejura, Ali Rastegarpour, Inderbir Gill, Vinay Duddalwar, Assad Oberai
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引用次数: 0

摘要

肾癌是成人中十大最常见的恶性肿瘤之一,通常通过四期计算机断层扫描(CT)成像进行评估。然而,缺失或损坏图像的存在仍然是医学成像中的一个重要问题,它损害了肾癌的检测、诊断和治疗计划。通过条件生成对抗网络(cgan)的深度学习方法最近在从这些四阶段研究中输入缺失的成像数据的任务中显示出技术前景。在这项研究中,我们探讨了这些输入图像的临床应用。我们使用了对333名患者进行训练的cGAN, cGAN的任务是在给定其他三个阶段的情况下,对任意阶段的图像进行估算。我们通过手动提取21个临床相关的成像特征,并将其与基础真值相比较,对测试集中37名患者的输入图像进行了临床效用测试。所有13个分类临床特征在真实图像和他们的估算对应物之间的符合率大于85%。在成像阶段分层时保持这种高精度。在平均强度和增强等放射学特征的选择上,计算得到的图像与真实图像具有较好的一致性。输入的图像以与真实图像相同的比率具有良性或恶性诊断的特征。总之,来自cgan的输入图像具有很大的临床应用潜力,因为它们能够保留临床相关的定性和定量特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Imputation with conditional generative adversarial networks captures clinically relevant imaging features on computed tomography.

Kidney cancer is among the top 10 most common malignancies in adults, and is commonly evaluated with four-phase computed tomography (CT) imaging. However, the presence of missing or corrupted images remains a significant problem in medical imaging that impairs the detection, diagnosis, and treatment planning of kidney cancer. Deep learning approaches through conditional generative adversarial networks (cGANs) have recently shown technical promise in the task of imputing missing imaging data from these four-phase studies. In this study, we explored the clinical utility of these imputed images. We utilized a cGAN trained on 333 patients, with the task of the cGAN being to impute the image of any phase given the other three phases. We tested the clinical utility on the imputed images of the 37 patients in the test set by manually extracting 21 clinically relevant imaging features and comparing them to their ground truth counterpart. All 13 categorical clinical features had greater than 85% agreement rate between true images and their imputed counterparts. This high accuracy is maintained when stratifying across imaging phases. Imputed images also show good agreement with true images in select radiomic features including mean intensity and enhancement. Imputed images possess the features characteristic of benign or malignant diagnosis at an equivalent rate to true images. In conclusion, imputed images from cGANs have large potential for clinical use due to their ability to retain clinically relevant qualitative and quantitative features.

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