Accelerating FLAIR imaging via deep learning reconstruction: potential for evaluating white matter hyperintensities.

IF 2.1 4区 医学 Japanese Journal of Radiology Pub Date : 2024-09-24 DOI:10.1007/s11604-024-01666-5
Noriko Nishioka, Yukie Shimizu, Yukio Kaneko, Toru Shirai, Atsuro Suzuki, Tomoki Amemiya, Hisaaki Ochi, Yoshitaka Bito, Masahiro Takizawa, Yohei Ikebe, Hiroyuki Kameda, Taisuke Harada, Noriyuki Fujima, Kohsuke Kudo
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引用次数: 0

Abstract

Purpose: To evaluate deep learning-reconstructed (DLR)-fluid-attenuated inversion recovery (FLAIR) images generated from undersampled data, compare them with fully sampled and rapidly acquired FLAIR images, and assess their potential for white matter hyperintensity evaluation.

Materials and methods: We examined 30 patients with white matter hyperintensities, obtaining fully sampled FLAIR images (standard FLAIR, std-FLAIR). We created accelerated FLAIR (acc-FLAIR) images using one-third of the fully sampled data and applied deep learning to generate DLR-FLAIR images. Three neuroradiologists assessed the quality (amount of noise and gray/white matter contrast) in all three image types. The reproducibility of hyperintensities was evaluated by comparing a subset of 100 hyperintensities in acc-FLAIR and DLR-FLAIR images with those in the std-FLAIR images. Quantitatively, similarities and errors of the entire image and the focused regions on white matter hyperintensities in acc-FLAIR and DLR-FLAIR images were measured against std-FLAIR images using structural similarity index measure (SSIM), regional SSIM, normalized root mean square error (NRMSE), and regional NRMSE values.

Results: All three neuroradiologists evaluated DLR-FLAIR as having significantly less noise and higher image quality scores compared with std-FLAIR and acc-FLAIR (p < 0.001). All three neuroradiologists assigned significantly higher frontal lobe gray/white matter visibility scores for DLR-FLAIR than for acc-FLAIR (p < 0.001); two neuroradiologists attributed significantly higher scores for DLR-FLAIR than for std-FLAIR (p < 0.05). Regarding white matter hyperintensities, all three neuroradiologists significantly preferred DLR-FLAIR (p < 0.0001). DLR-FLAIR exhibited higher similarity to std-FLAIR in terms of visibility of the hyperintensities, with 97% of the hyperintensities rated as nearly identical or equivalent. Quantitatively, DLR-FLAIR demonstrated significantly higher SSIM and regional SSIM values than acc-FLAIR, with significantly lower NRMSE and regional NRMSE values (p < 0.0001).

Conclusions: DLR-FLAIR can reduce scan time and generate images of similar quality to std-FLAIR in patients with white matter hyperintensities. Therefore, DLR-FLAIR may serve as an effective method in traditional magnetic resonance imaging protocols.

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通过深度学习重建加速 FLAIR 成像:评估白质高密度的潜力。
目的:评估由欠采样数据生成的深度学习-重建(DLR)-流体衰减反转恢复(FLAIR)图像,将其与完全采样和快速获取的FLAIR图像进行比较,并评估其用于白质高密度评估的潜力:我们对 30 名白质高密度患者进行了检查,获得了完全采样的 FLAIR 图像(标准 FLAIR,std-FLAIR)。我们使用三分之一的全采样数据创建了加速 FLAIR(acc-FLAIR)图像,并应用深度学习生成了 DLR-FLAIR 图像。三位神经放射学专家对所有三种图像类型的质量(噪声量和灰质/白质对比度)进行了评估。通过比较 acc-FLAIR 和 DLR-FLAIR 图像中的 100 个高密度子集与 st-FLAIR 图像中的高密度子集,评估了高密度的可重复性。使用结构相似性指数(SSIM)、区域 SSIM、归一化均方根误差(NRMSE)和区域 NRMSE 值,定量测量了 acc-FLAIR 和 DLR-FLAIR 图像中白质高密度的整个图像和聚焦区域与 std-FLAIR 图像的相似性和误差:结果:三位神经放射学专家都认为,与 std-FLAIR 和 acc-FLAIR 相比,DLR-FLAIR 的噪点明显更少,图像质量得分更高(p 结论:DLR-FLAIR 可以减少图像的噪点,提高图像质量:DLR-FLAIR 可以缩短白质高密度患者的扫描时间,并生成与 std-FLAIR 质量相似的图像。因此,DLR-FLAIR 可作为传统磁共振成像方案的一种有效方法。
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来源期刊
Japanese Journal of Radiology
Japanese Journal of Radiology Medicine-Radiology, Nuclear Medicine and Imaging
自引率
4.80%
发文量
133
期刊介绍: Japanese Journal of Radiology is a peer-reviewed journal, officially published by the Japan Radiological Society. The main purpose of the journal is to provide a forum for the publication of papers documenting recent advances and new developments in the field of radiology in medicine and biology. The scope of Japanese Journal of Radiology encompasses but is not restricted to diagnostic radiology, interventional radiology, radiation oncology, nuclear medicine, radiation physics, and radiation biology. Additionally, the journal covers technical and industrial innovations. The journal welcomes original articles, technical notes, review articles, pictorial essays and letters to the editor. The journal also provides announcements from the boards and the committees of the society. Membership in the Japan Radiological Society is not a prerequisite for submission. Contributions are welcomed from all parts of the world.
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