Fervers Philipp, Zaeske Charlotte, Rauen Philip, Iuga Andra-Iza, Kottlors Jonathan, Persigehl Thorsten, Sonnabend Kristina, Weiss Kilian, Bratke Grischa
Institute for Diagnostic and Interventional Radiology, Faculty of Medicine and University Hospital Cologne, 50937 Cologne, Germany.
Philips GmbH Market DACH, 22335 Hamburg, Germany.
Diagnostics (Basel). 2023 Jan 23;13(3):418. doi: 10.3390/diagnostics13030418.
Compressed sensing accelerates magnetic resonance imaging (MRI) acquisition by undersampling of the k-space. Yet, excessive undersampling impairs image quality when using conventional reconstruction techniques. Deep-learning-based reconstruction methods might allow for stronger undersampling and thus faster MRI scans without loss of crucial image quality. We compared imaging approaches using parallel imaging (SENSE), a combination of parallel imaging and compressed sensing (COMPRESSED SENSE, CS), and a combination of CS and a deep-learning-based reconstruction (CS AI) on raw k-space data acquired at different undersampling factors. 3D T2-weighted images of the lumbar spine were obtained from 20 volunteers, including a 3D sequence (standard SENSE), as provided by the manufacturer, as well as accelerated 3D sequences (undersampling factors 4.5, 8, and 11) reconstructed with CS and CS AI. Subjective rating was performed using a 5-point Likert scale to evaluate anatomical structures and overall image impression. Objective rating was performed using apparent signal-to-noise and contrast-to-noise ratio (aSNR and aCNR) as well as root mean square error (RMSE) and structural-similarity index (SSIM). The CS AI 4.5 sequence was subjectively rated better than the standard in several categories and deep-learning-based reconstructions were subjectively rated better than conventional reconstructions in several categories for acceleration factors 8 and 11. In the objective rating, only aSNR of the bone showed a significant tendency towards better results of the deep-learning-based reconstructions. We conclude that CS in combination with deep-learning-based image reconstruction allows for stronger undersampling of k-space data without loss of image quality, and thus has potential for further scan time reduction.
压缩感知通过对 k 空间进行欠采样来加速磁共振成像(MRI)采集。然而,使用传统重建技术时,过度欠采样会损害图像质量。基于深度学习的重建方法可能允许更强的欠采样,从而实现更快的 MRI 扫描,同时不损失关键图像质量。我们在不同欠采样因子下采集的原始 k 空间数据上,比较了使用并行成像(SENSE)、并行成像与压缩感知相结合(COMPRESSED SENSE,CS)以及 CS 与基于深度学习的重建相结合(CS AI)的成像方法。从 20 名志愿者获取了腰椎的 3D T2 加权图像,包括制造商提供的 3D 序列(标准 SENSE)以及用 CS 和 CS AI 重建的加速 3D 序列(欠采样因子分别为 4.5、8 和 11)。使用 5 点李克特量表进行主观评分,以评估解剖结构和整体图像印象。使用表观信噪比和对比噪声比(aSNR 和 aCNR)以及均方根误差(RMSE)和结构相似性指数(SSIM)进行客观评分。CS AI 4.5 序列在几个类别中的主观评分优于标准序列,对于加速因子 8 和 11,基于深度学习的重建在几个类别中的主观评分优于传统重建。在客观评分中,仅骨骼的 aSNR 显示出基于深度学习的重建有显著更好结果的趋势。我们得出结论,CS 与基于深度学习的图像重建相结合允许对 k 空间数据进行更强的欠采样,而不损失图像质量,因此有进一步减少扫描时间的潜力。