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基于光子计数探测器CT的冠状动脉CT血管造影术中通过对抗学习进行对比剂引导的虚拟单能图像合成

Contrast-guided Virtual Monoenergetic Image Synthesis via Adversarial Learning for Coronary CT Angiography using Photon Counting Detector CT.

作者信息

Chang Shaojie, Wilson Madeleine, Koons Emily K, Gong Hao, Hsieh Scott S, Yu Lifeng, McCollough Cynthia H, Leng Shuai

机构信息

Department of Radiology, Mayo Clinic, Rochester, MN, USA 55905.

出版信息

Proc SPIE Int Soc Opt Eng. 2025 Feb;13405. doi: 10.1117/12.3047277. Epub 2025 Apr 8.

Abstract

Coronary CT angiography (cCTA) is a non-invasive diagnostic test for coronary artery disease (CAD) that often faces challenges with dense calcifications and stents due to blooming artifacts, leading to stenosis overestimation. Virtual monoenergetic images (VMIs) from photon counting detector CT (PCD-CT) provide distinct clinical benefits. Lower keV VMIs enhance iodine and bone contrasts but struggle with blooming artifacts, while higher keV VMIs effectively reduce beam hardening, blooming, and metal artifacts but diminish contrast, presenting a trade-off among different keV levels. To address this, we introduce a contrast-guided virtual monoenergetic image synthesis framework (CITRINE) utilizing adversarial learning to synthesize images by integrating beneficial spectral characteristics from various keV levels. In this study, CITRINE is trained and validated with cardiac PCD-CT images using 100 keV and 70 keV VMIs as examples, showcasing its ability to synthesize images that combine the reduced blooming artifacts of 100 keV VMIs with the high contrast-to-noise features of 70 keV VMIs. CITRINE's performance was evaluated on three patient cCTA cases quantitatively and qualitatively in terms of image quality and assessments of percent diameter luminal stenosis. The synthesized images showed reduced blooming artifacts, similar to those observed at 100 keV VMI, and exhibited high iodine contrast in the coronary lumen, comparable to that of 70 keV VMI. Notably, compared to the original 70 keV VMI, CITRINE images achieved approximately 25% reduction in percent diameter stenosis while maintaining consistent contrast levels. These results confirm CITRINE's effectiveness in improving diagnostic accuracy and efficiency in cCTA by leveraging the full potential of multi-energy and PCD-CT technologies.

摘要

冠状动脉CT血管造影(cCTA)是一种用于诊断冠状动脉疾病(CAD)的非侵入性检查方法,但由于存在线束硬化伪影,该方法在面对高密度钙化和支架时常常面临挑战,会导致狭窄程度的高估。光子计数探测器CT(PCD-CT)生成的虚拟单能量图像(VMI)具有显著的临床优势。较低keV的VMI增强了碘和骨骼的对比度,但对线束硬化伪影处理效果不佳;而较高keV的VMI能有效减少线束硬化、伪影和金属伪影,但会降低对比度,这在不同keV水平之间形成了一种权衡。为了解决这个问题,我们引入了一种对比引导的虚拟单能量图像合成框架(CITRINE),该框架利用对抗学习,通过整合不同keV水平的有益光谱特征来合成图像。在本研究中,以100 keV和70 keV的VMI为例,使用心脏PCD-CT图像对CITRINE进行了训练和验证,展示了其合成图像的能力,这些合成图像结合了100 keV VMI减少的伪影和70 keV VMI的高对比噪声特征。在三个患者的cCTA病例中,从图像质量和管腔直径狭窄百分比评估两方面对CITRINE的性能进行了定量和定性评估。合成图像显示出减少的伪影,类似于在100 keV VMI中观察到的情况,并且在冠状动脉腔内表现出高碘对比度,与70 keV VMI相当。值得注意的是,与原始的70 keV VMI相比,CITRINE图像在保持一致对比度水平的同时,管腔直径狭窄百分比降低了约25%。这些结果证实了CITRINE通过充分利用多能量和PCD-CT技术的潜力,在提高cCTA诊断准确性和效率方面是有效的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ea20/12076251/a369e68c1d2d/nihms-2075811-f0001.jpg

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