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专注于胰腺形态评估的MRI序列:基于深度学习重建的三激发快速自旋回波序列。

MRI sequence focused on pancreatic morphology evaluation: three-shot turbo spin-echo with deep learning-based reconstruction.

作者信息

Kadoya Yoshisuke, Mochizuki Kentaro, Asano Akihiro, Miyakawa Kosuke, Kanatani Mao, Saito Junko, Abo Hitoshi

机构信息

Department of Diagnostic Radiology, Toyama Prefectural Central Hospital, Toyama, Japan.

Department of Diagnostic Radiology, Ishikawa Prefectural Central Hospital, Kanazawa, Japan.

出版信息

Acta Radiol. 2025 Jul 10:2841851251355844. doi: 10.1177/02841851251355844.

DOI:10.1177/02841851251355844
PMID:40641210
Abstract

BackgroundHigher-resolution magnetic resonance imaging sequences are needed for the early detection of pancreatic cancer.PurposeTo compare the quality of our novel T2-weighted, high-contrast, thin-slice imaging sequence, with an improved spatial resolution and deep learning-based reconstruction (three-shot turbo spin-echo with deep learning-based reconstruction [3S-TSE-DLR]), for imaging the pancreas with imaging using three conventional sequences (half-Fourier acquisition single-shot turbo spin-echo [HASTE], fat-suppressed 3D T1-weighted [FS-3D-T1W] imaging, and magnetic resonance cholangiopancreatography [MRCP]).Material and MethodsPancreatic images of 50 healthy volunteers acquired with 3S-TSE-DLR, HASTE, FS-3D-T1W imaging, and MRCP were compared by two diagnostic radiologists. A 5-point scale was used for assessing motion artifacts, pancreatic margin sharpness, and the ability to identify the main pancreatic duct (MPD) on 3S-TSE-DLR, HASTE, and FS-3D-T1W imaging, respectively. The ability to identify MPD via MRCP was also evaluated.ResultsArtifact scores (the higher the score, the fewer the artifacts) were significantly higher for 3S-TSE-DLR than for HASTE, and significantly lower for 3S-TSE-DLR than for FS-3D-T1W imaging, for both radiologists. Sharpness scores were significantly higher for 3S-TSE-DLR than for HASTE and FS-3D-T1W imaging, for both radiologists. The rate of identification of MPD was significantly higher for 3S-TSE-DLR than for FS-3D-T1W imaging, for both radiologists, and significantly higher for 3S-TSE-DLR than for HASTE for one radiologist. The rate of identification of MPD was not significantly different between 3S-TSE-DLR and MRCP.Conclusion3S-TSE-DLR provides better image sharpness than conventional sequences, can identify MPD equally as well or better than HASTE, and shows identification performance comparable to that of MRCP.

摘要

背景

早期检测胰腺癌需要更高分辨率的磁共振成像序列。

目的

比较我们新的T2加权、高对比度、薄层成像序列(具有改进的空间分辨率和基于深度学习的重建,即基于深度学习重建的三激发快速自旋回波序列[3S-TSE-DLR])与使用三种传统序列(半傅里叶采集单次激发快速自旋回波序列[HASTE]、脂肪抑制三维T1加权[FS-3D-T1W]成像和磁共振胰胆管造影[MRCP])对胰腺成像的质量。

材料与方法

由两位诊断放射科医生比较50名健康志愿者用3S-TSE-DLR、HASTE、FS-3D-T1W成像和MRCP获取的胰腺图像。分别使用5分制评估3S-TSE-DLR、HASTE和FS-3D-T1W成像上的运动伪影、胰腺边缘清晰度以及识别主胰管(MPD)的能力。还评估了通过MRCP识别MPD的能力。

结果

对于两位放射科医生而言,3S-TSE-DLR的伪影评分(分数越高,伪影越少)均显著高于HASTE,且显著低于FS-3D-T1W成像。对于两位放射科医生,3S-TSE-DLR 的清晰度评分均显著高于HASTE和FS-3D-T1W成像。对于两位放射科医生,3S-TSE-DLR识别MPD的比率均显著高于FS-3D-T1W成像,对于一位放射科医生,3S-TSE-DLR识别MPD的比率显著高于HASTE。3S-TSE-DLR与MRCP之间识别MPD的比率无显著差异。

结论

3S-TSE-DLR比传统序列提供更好的图像清晰度,识别MPD的能力与HASTE相当或更好,并且显示出与MRCP相当的识别性能。

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