Almansour Haidara, Herrmann Judith, Gassenmaier Sebastian, Lingg Andreas, Nickel Marcel Dominik, Kannengiesser Stephan, Arberet Simon, Othman Ahmed E, Afat Saif
Department of Diagnostic and Interventional Radiology, Eberhard Karls University, Tuebingen University Hospital, Tuebingen, Germany.
MR Application Predevelopment, Siemens Healthcare GmbH, Erlangen, Germany.
Acad Radiol. 2023 May;30(5):863-872. doi: 10.1016/j.acra.2022.06.003. Epub 2022 Jul 6.
To investigate the impact of a prototypical deep learning-based super-resolution reconstruction algorithm tailored to partial Fourier acquisitions on acquisition time and image quality for abdominal T1-weighted volume-interpolated breath-hold examination (VIBE) at 3 Tesla. The standard T1-weighted images were used as the reference standard (VIBE).
Patients with diverse abdominal pathologies, who underwent a clinically indicated contrast-enhanced abdominal VIBE magnetic resonance imaging at 3T between March and June 2021 were retrospectively included. Following the acquisition of the standard VIBE sequences, additional images for the non-contrast, dynamic contrast-enhanced and post-contrast T1-weighted VIBE acquisition were retrospectively reconstructed using the same raw data and employing a prototypical deep learning-based super-resolution reconstruction algorithm. The algorithm was designed to enhance edge sharpness by avoiding conventional k-space filtering and to perform a partial Fourier reconstruction in the slice phase-encoding direction for a predefined asymmetric sampling ratio. In the retrospective reconstruction, the asymmetric sampling was realized by omitting acquired samples at the end of the acquisition and therefore corresponding to a shorter acquisition. Four radiologists independently analyzed the image datasets (VIBE and VIBE) in a blinded manner. Outcome measures were: sharpness of abdominal organs, sharpness of vessels, image contrast, noise, hepatic lesion conspicuity and size, overall image quality and diagnostic confidence. These parameters were statistically compared and interrater reliability was computed using Fleiss' Kappa and intraclass correlation coefficient (ICC). Finally, the rate of detection of hepatic lesions was documented and was statistically compared using the paired Wilcoxon test.
A total of 32 patients aged 59 ± 16 years (23 men (72%), 9 women (28%)) were included. For VIBE, breath-hold time was significantly reduced by approximately 13.6% (VIBE 11.9 ± 1.2 seconds vs. VIBE: 13.9 ± 1.4 seconds, p < 0.001). All readers rated sharpness of abdominal organs, sharpness of vessels to be superior in images with VIBE (p values ranged between p = 0.005 and p < 0.001). Despite reduction of acquisition time, image contrast, noise, overall image quality and diagnostic confidence were not compromised, as there was no evidence of a difference between VIBE and VIBE (p > 0.05). The inter-reader agreement was substantial with a Fleiss' Kappa of >0.7 in all contrast phases. A total of 13 hepatic lesions were analyzed. The four readers observed a superior lesion conspicuity in VIBE than in VIBE (p values ranged between p = 0.046 and p < 0.001). In terms of lesion size, there was no significant difference between VIBE and VIBE for all readers. Finally, there was an excellent inter-reader agreement regarding lesion size (ICC > 0.9). For all readers, no statistically significant difference was observed regarding detection of hepatic lesions between VIBE and VIBE.
The deep learning-based super-resolution reconstruction with partial Fourier in the slice phase-encoding direction enabled a reduction of breath-hold time and improved image sharpness and lesion conspicuity in T1-weighted gradient echo sequences in abdominal magnetic resonance imaging at 3 Tesla. Faster acquisition time without compromising image quality or diagnostic confidence was possible by using this deep learning-based reconstruction technique.
研究一种专门针对部分傅里叶采集的基于深度学习的超分辨率重建算法对3特斯拉腹部T1加权容积内插屏气检查(VIBE)的采集时间和图像质量的影响。将标准T1加权图像用作参考标准(VIBE)。
回顾性纳入2021年3月至6月期间在3T进行临床指征的腹部增强VIBE磁共振成像的患有各种腹部疾病的患者。在采集标准VIBE序列后,使用相同的原始数据并采用基于深度学习的原型超分辨率重建算法,对非增强、动态增强和增强后T1加权VIBE采集的额外图像进行回顾性重建。该算法旨在通过避免传统的k空间滤波来提高边缘清晰度,并针对预定义的非对称采样率在层面相位编码方向上进行部分傅里叶重建。在回顾性重建中,通过在采集结束时省略采集的样本实现非对称采样,因此对应于更短的采集时间。四名放射科医生以盲法独立分析图像数据集(VIBE和VIBE)。结果指标包括:腹部器官的清晰度、血管的清晰度、图像对比度、噪声、肝脏病变的可见性和大小、整体图像质量和诊断置信度。对这些参数进行统计学比较,并使用Fleiss' Kappa和组内相关系数(ICC)计算阅片者间的可靠性。最后,记录肝脏病变的检出率,并使用配对Wilcoxon检验进行统计学比较。
共纳入32例年龄为59±16岁的患者(23例男性(72%),9例女性(28%))。对于VIBE,屏气时间显著缩短约13.6%(VIBE为ll.9±1.2秒,而VIBE为13.9±1.4秒,p<0.001)。所有阅片者均认为VIBE图像中腹部器官清晰度、血管清晰度更高(p值介于p = 0.005和p<0.001之间)。尽管采集时间缩短,但图像对比度、噪声、整体图像质量和诊断置信度并未受到影响,因为没有证据表明VIBE和VIBE之间存在差异(p>0.05)。在所有对比期,阅片者间的一致性很高,Fleiss' Kappa>0.7。共分析了13个肝脏病变。四名阅片者均观察到VIBE中病变的可见性优于VIBE(p值介于p = 0.046和p<0.001之间)。在病变大小方面,所有阅片者认为VIBE和VIBE之间无显著差异。最后,在病变大小方面阅片者间一致性极佳(ICC>0.9)。对于所有阅片者,VIBE和VIBE在肝脏病变检测方面未观察到统计学上的显著差异。
在层面相位编码方向上采用部分傅里叶的基于深度学习的超分辨率重建能够缩短3特斯拉腹部磁共振成像T1加权梯度回波序列的屏气时间,并提高图像清晰度和病变可见性。使用这种基于深度学习的重建技术可以在不影响图像质量或诊断置信度的情况下实现更快的采集时间。