Kroll Lennard, Nassenstein Kai, Jochims Markus, Koitka Sven, Nensa Felix
Institute of Diagnostic and Interventional Radiology and Neuroradiology, University Hospital Essen, 45147 Essen, Germany.
Institute of Artificial Intelligence in Medicine, University Hospital Essen, 45147 Essen, Germany.
J Clin Med. 2021 Jan 19;10(2):356. doi: 10.3390/jcm10020356.
(1) Background: Epi- and Paracardial Adipose Tissue (EAT, PAT) have been spotlighted as important biomarkers in cardiological assessment in recent years. Since biomarker quantification is an increasingly important method for clinical use, we wanted to examine fully automated EAT and PAT quantification for possible use in cardiovascular risk stratification. (2) Methods: 966 patients with intermediate Framingham risk scores for Coronary Artery Disease referred for coronary calcium scans were included in clinical routine retrospectively. The Coronary Artery Calcium Score (CACS) was extracted and tissue quantification was performed by a deep learning network. (3) Results: The Computed Tomography (CT) segmentations predicted by the network indicated no significant correlation between EAT volume and EAT radiodensity when compared to Agatston score (r = 0.18, r = -0.09). CACS 0 category patients showed significantly lower levels of total EAT and PAT volumes and higher EAT and PAT densities than CACS 1-99 category patients ( < 0.01). Notably, this difference did not reach significance regarding EAT attenuation in male patients. Women older than 50 years, thus more likely to be postmenopausal, were shown to be at higher risk of coronary calcification ( < 0.01, OR = 4.59). CACS 1-99 vs. CACS ≥100 category patients remained below significance level (EAT volume: = 0.087, EAT attenuation: = 0.98). (4) Conclusions: Our study proves the feasibility of a fully automated adipose tissue analysis in clinical cardiac CT and confirms in a large clinical cohort that volume and attenuation of EAT and PAT are not correlated with CACS. Broadly available deep learning based rapid and reliable tissue quantification should thus be discussed as a method to assess this biomarker as a supplementary risk predictor in cardiac CT.
(1)背景:近年来,心外膜和心包旁脂肪组织(EAT,PAT)作为心脏病学评估中的重要生物标志物受到关注。由于生物标志物定量是临床应用中日益重要的方法,我们希望研究全自动EAT和PAT定量在心血管风险分层中的可能应用。(2)方法:回顾性纳入966例因冠状动脉钙化扫描而转诊的冠心病弗雷明汉风险评分中等的患者。提取冠状动脉钙化评分(CACS),并通过深度学习网络进行组织定量。(3)结果:与阿加斯顿评分相比,网络预测的计算机断层扫描(CT)分割显示EAT体积与EAT放射密度之间无显著相关性(r = 0.18,r = -0.09)。CACS 0类患者的总EAT和PAT体积显著低于CACS 1 - 99类患者,而EAT和PAT密度则更高(<0.01)。值得注意的是,男性患者在EAT衰减方面的这种差异未达到显著水平。年龄大于50岁的女性,因此更可能处于绝经后状态,显示出更高的冠状动脉钙化风险(<0.01,OR = 4.59)。CACS 1 - 99类与CACS≥100类患者之间仍低于显著水平(EAT体积: = 0.087,EAT衰减: = 0.98)。(4)结论:我们的研究证明了在临床心脏CT中进行全自动脂肪组织分析的可行性,并在大型临床队列中证实EAT和PAT的体积与衰减与CACS无关。因此,应讨论广泛可用的基于深度学习的快速可靠组织定量方法,作为在心脏CT中评估这种生物标志物作为补充风险预测指标的一种方法。