Deep learning-accelerated image reconstruction in MRI of the orbit to shorten acquisition time and enhance image quality

IF 2.3 4区 医学 Q3 CLINICAL NEUROLOGY Journal of Neuroimaging Pub Date : 2024-01-09 DOI:10.1111/jon.13187
Arne Estler, Leonie Zerweck, Merle Brunnée, Bent Estler, Vivien Richter, Anja Örgel, Eva Bürkle, Hannes Becker, Helene Hurth, Stéphane Stahl, Eva-Maria Konrad, Carina Kelbsch, Ulrike Ernemann, Till-Karsten Hauser, Georg Gohla
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Abstract

Background and Purpose

This study explores the use of deep learning (DL) techniques in MRI of the orbit to enhance imaging. Standard protocols, although detailed, have lengthy acquisition times. We investigate DL-based methods for T2-weighted and T1-weighted, fat-saturated, contrast-enhanced turbo spin echo (TSE) sequences, aiming to improve image quality, reduce acquisition time, minimize artifacts, and enhance diagnostic confidence in orbital imaging.

Methods

In a 3-Tesla MRI study of 50 patients evaluating orbital diseases from March to July 2023, conventional (TSES) and DL TSE sequences (TSEDL) were used. Two neuroradiologists independently assessed the image datasets for image quality, diagnostic confidence, noise levels, artifacts, and image sharpness using a randomized and blinded 4-point Likert scale.

Results

TSEDL significantly reduced image noise and artifacts, enhanced image sharpness, and decreased scan time, outperforming TSES (p < .05). TSEDL showed superior overall image quality and diagnostic confidence, with relevant findings effectively detected in both DL-based and conventional images. In 94% of cases, readers preferred accelerated imaging.

Conclusion

The study proved that using DL for MRI image reconstruction in orbital scans significantly cut acquisition time by 69%. This approach also enhanced image quality, reduced image noise, sharpened images, and boosted diagnostic confidence.

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深度学习加速轨道核磁共振图像重建,缩短采集时间并提高图像质量。
背景和目的:本研究探讨了深度学习(DL)技术在轨道核磁共振成像中的应用,以增强成像效果。标准方案虽然详细,但采集时间较长。我们研究了基于深度学习的 T2 加权和 T1 加权、脂肪饱和、对比度增强的涡轮自旋回波(TSE)序列方法,旨在提高图像质量、缩短采集时间、减少伪影并增强眼眶成像的诊断信心:在 2023 年 3 月至 7 月对 50 名评估眼眶疾病的患者进行的 3 特斯拉磁共振成像研究中,使用了常规(TSES)和 DL TSE 序列(TSEDL)。两名神经放射科医生采用随机和盲法的 4 点李克特量表独立评估图像数据集的图像质量、诊断信心、噪声水平、伪影和图像清晰度:TSEDL明显减少了图像噪音和伪影,提高了图像清晰度,缩短了扫描时间,优于TSES(p DL显示出更优越的整体图像质量和诊断信心,基于DL的图像和传统图像都能有效检测出相关结果。在 94% 的病例中,读者更倾向于加速成像:研究证明,在眼眶扫描中使用 DL 进行核磁共振成像图像重建可将采集时间大幅缩短 69%。这种方法还能提高图像质量、减少图像噪音、锐化图像并增强诊断信心。
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来源期刊
Journal of Neuroimaging
Journal of Neuroimaging 医学-核医学
CiteScore
4.70
自引率
0.00%
发文量
117
审稿时长
6-12 weeks
期刊介绍: Start reading the Journal of Neuroimaging to learn the latest neurological imaging techniques. The peer-reviewed research is written in a practical clinical context, giving you the information you need on: MRI CT Carotid Ultrasound and TCD SPECT PET Endovascular Surgical Neuroradiology Functional MRI Xenon CT and other new and upcoming neuroscientific modalities.The Journal of Neuroimaging addresses the full spectrum of human nervous system disease, including stroke, neoplasia, degenerating and demyelinating disease, epilepsy, tumors, lesions, infectious disease, cerebral vascular arterial diseases, toxic-metabolic disease, psychoses, dementias, heredo-familial disease, and trauma.Offering original research, review articles, case reports, neuroimaging CPCs, and evaluations of instruments and technology relevant to the nervous system, the Journal of Neuroimaging focuses on useful clinical developments and applications, tested techniques and interpretations, patient care, diagnostics, and therapeutics. Start reading today!
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