Enhanced-Quality Gan (EQ-GAN) on Lung CT Scans: Toward Truth and Potential Hallucinations

Martin Jammes-Floreani, A. Laine, E. Angelini
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Abstract

Lung Computed Tomography (CT) scans are extensively used to screen lung diseases. Strategies such as large slice spacing and low-dose CT scans are often preferred to reduce radiation exposure and therefore the risk for patients’ health. The counterpart is a significant degradation of image quality and/or resolution. In this work we investigate a generative adversarial network (GAN) for lung CT image enhanced-quality (EQ). Our EQ-GAN is trained on a high-quality lung CT cohort to recover the visual quality of scans degraded by blur and noise. The capability of our trained GAN to generate EQ CT scans is further illustrated on two test cohorts. Results confirm gains in visual quality metrics, remarkable visual enhancement of vessels, airways and lung parenchyma, as well as other enhancement patterns that require further investigation. We also compared automatic lung lobe segmentation on original versus EQ scans. Average Dice scores vary between lobes, can be as low as 0.3 and EQ scans enable segmentation of some lobes missed in the original scans. This paves the way to using EQ as pre-processing for lung lobe segmentation, further research to evaluate the impact of EQ to add robustness to airway and vessel segmentation, and to investigate anatomical details revealed in EQ scans.
增强质量氮化镓(EQ-GAN)在肺部CT扫描:走向真实和潜在的幻觉
肺部计算机断层扫描(CT)被广泛用于筛查肺部疾病。诸如大断层间隔和低剂量CT扫描之类的策略通常是首选的,以减少辐射暴露,从而减少对患者健康的风险。对应的是图像质量和/或分辨率的显著下降。在这项工作中,我们研究了一种用于肺部CT图像增强质量(EQ)的生成对抗网络(GAN)。我们的EQ-GAN在高质量的肺部CT队列上进行训练,以恢复因模糊和噪声而下降的扫描视觉质量。我们训练的GAN生成EQ CT扫描的能力在两个测试队列中得到了进一步的说明。结果证实了视觉质量指标的改善,血管、气道和肺实质的显著视觉增强,以及其他需要进一步研究的增强模式。我们还比较了原始扫描和EQ扫描的自动肺叶分割。平均骰子分数在不同的叶之间变化,可以低至0.3,EQ扫描可以分割原始扫描中遗漏的一些叶。这为使用EQ作为肺叶分割的预处理,进一步研究EQ对增加气道和血管分割的鲁棒性的影响,以及研究EQ扫描显示的解剖细节铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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