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用于加速头颈磁共振成像的双网络深度学习:提高图像质量并缩短扫描时间。

Dual-Network Deep Learning for Accelerated Head and Neck MRI: Enhanced Image Quality and Reduced Scan Time.

作者信息

Li Shuang, Yan Weijie, Zhang Xiaoyong, Hu Wei, Ji Lin, Yue Qiang

机构信息

Department of Radiology, West China Hospital of Sichuan University, Chengdu, China.

Philips Healthcare, Wuhan, China.

出版信息

Head Neck. 2025 Jul 22. doi: 10.1002/hed.28255.

Abstract

BACKGROUND

Head-and-neck MRI faces inherent challenges, including motion artifacts and trade-offs between spatial resolution and acquisition time. We aimed to evaluate a dual-network deep learning (DL) super-resolution method for improving image quality and reducing scan time in T1- and T2-weighted head-and-neck MRI.

METHODS

In this prospective study, 97 patients with head-and-neck masses were enrolled at xx from August 2023 to August 2024. After exclusions, 58 participants underwent paired conventional and accelerated T1WI and T2WI MRI sequences, with the accelerated sequences being reconstructed using a dual-network DL framework for super-resolution. Image quality was assessed both quantitatively (signal-to-noise ratio [SNR], contrast-to-noise ratio [CNR], contrast ratio [CR]) and qualitatively by two blinded radiologists using a 5-point Likert scale for image sharpness, lesion conspicuity, structure delineation, and artifacts. Wilcoxon signed-rank tests were used to compare paired outcomes.

RESULTS

Among 58 participants (34 men, 24 women; mean age 51.37 ± 13.24 years), DL reconstruction reduced scan times by 46.3% (T1WI) and 26.9% (T2WI). Quantitative analysis showed significant improvements in SNR (T1WI: 26.33 vs. 20.65; T2WI: 14.14 vs. 11.26) and CR (T1WI: 0.20 vs. 0.18; T2WI: 0.34 vs. 0.30; all p < 0.001), with comparable CNR (p > 0.05). Qualitatively, image sharpness, lesion conspicuity, and structure delineation improved significantly (p < 0.05), while artifact scores remained similar (all p > 0.05).

CONCLUSIONS

The dual-network DL method significantly enhanced image quality and reduced scan times in head-and-neck MRI while maintaining diagnostic performance comparable to conventional methods. This approach offers potential for improved workflow efficiency and patient comfort.

摘要

背景

头颈部磁共振成像(MRI)面临着诸多固有挑战,包括运动伪影以及空间分辨率与采集时间之间的权衡。我们旨在评估一种双网络深度学习(DL)超分辨率方法,以改善T1加权和T2加权头颈部MRI的图像质量并缩短扫描时间。

方法

在这项前瞻性研究中,2023年8月至2024年8月期间,xx纳入了97名头颈部肿块患者。排除相关病例后,58名参与者接受了配对的传统和加速T1加权成像(T1WI)及T2加权成像(T2WI)MRI序列检查,其中加速序列使用双网络DL框架进行超分辨率重建。由两名不知情的放射科医生使用5分量表对图像质量进行定量(信噪比[SNR]、对比噪声比[CNR]、对比度[CR])和定性评估,包括图像清晰度、病变清晰度、结构描绘和伪影情况。采用Wilcoxon符号秩检验比较配对结果。

结果

58名参与者(34名男性,24名女性;平均年龄51.37±13.24岁)中,DL重建使T1WI扫描时间减少了46.3%,T2WI扫描时间减少了26.9%。定量分析显示,SNR(T1WI:26.33对20.65;T2WI:14.14对11.26)和CR(T1WI:0.20对0.18;T2WI:0.34对0.30;所有p<0.001)有显著改善,CNR相当(p>0.05)。定性评估方面,图像清晰度、病变清晰度和结构描绘有显著改善(p<0.05),而伪影评分保持相似(所有p>0.05)。

结论

双网络DL方法在头颈部MRI中显著提高了图像质量并缩短了扫描时间,同时保持了与传统方法相当的诊断性能。这种方法为提高工作流程效率和患者舒适度提供了潜力。

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