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基于 PROPELLER 采集的深度学习重建技术改善 T2 加权妇科盆腔磁共振成像图像质量的可行性研究。

A Feasibility Study on Deep Learning Reconstruction to Improve Image Quality With PROPELLER Acquisition in the Setting of T2-Weighted Gynecologic Pelvic Magnetic Resonance Imaging.

机构信息

From the Department of Internal Medicine, University of Texas health Science Center at Houston, Houston, TX.

Department of Diagnostic Radiology, University of Florida College of Medicine, Jacksonville, FL.

出版信息

J Comput Assist Tomogr. 2023;47(5):721-728. doi: 10.1097/RCT.0000000000001491. Epub 2023 Jun 9.

Abstract

OBJECTIVES

Evaluate deep learning (DL) to improve the image quality of the PROPELLER (Periodically Rotated Overlapping Parallel Lines with Enhanced Reconstruction technique) for 3 T magnetic resonance imaging of the female pelvis.

METHODS

Three radiologists prospectively and independently compared non-DL and DL PROPELLER sequences from 20 patients with a history of gynecologic malignancy. Sequences with different noise reduction factors (DL 25%, DL 50%, and DL 75%) were blindly reviewed and scored based on artifacts, noise, relative sharpness, and overall image quality. The generalized estimating equation method was used to assess the effect of methods on the Likert scales. Quantitatively, the contrast-to-noise ratio and signal-to-noise ratio (SNR) of the iliac muscle were calculated, and pairwise comparisons were performed based on a linear mixed model. P values were adjusted using the Dunnett method. Interobserver agreement was assessed using the κ statistic. P value was considered statistically significant at less than 0.05.

RESULTS

Qualitatively, DL 50 and DL 75 were ranked as the best sequences in 86% of cases. Images generated by the DL method were significantly better than non-DL images ( P < 0.0001). Iliacus muscle SNR on DL 50 and DL 75 was significantly better than non-DL images ( P < 0.0001). There was no difference in contrast-to-noise ratio between the DL and non-DL techniques in the iliac muscle. There was a high percent agreement (97.1%) in terms of DL sequences' superior image quality (97.1%) and sharpness (100%) relative to non-DL images.

CONCLUSION

The utilization of DL reconstruction improves the image quality of PROPELLER sequences with improved SNR quantitatively.

摘要

目的

评估深度学习(DL)在提高 3T 磁共振成像女性骨盆 PROPELLER(带增强重建技术的周期性旋转重叠平行线)图像质量方面的作用。

方法

三位放射科医生前瞻性且独立地比较了 20 例有妇科恶性肿瘤病史的患者的非 DL 和 DL PROPELLER 序列。对不同降噪因子(DL 25%、DL 50%和 DL 75%)的序列进行盲法回顾和评分,根据伪影、噪声、相对锐度和整体图像质量进行评估。使用广义估计方程法评估方法对李克特量表的影响。定量计算髂肌的对比噪声比和信噪比(SNR),并基于线性混合模型进行两两比较。使用 Dunnett 方法调整 P 值。使用κ统计量评估观察者间的一致性。P 值小于 0.05 被认为具有统计学意义。

结果

定性地,86%的病例中,DL 50 和 DL 75 被评为最佳序列。DL 方法生成的图像明显优于非 DL 图像(P<0.0001)。DL 50 和 DL 75 的髂肌 SNR 明显优于非 DL 图像(P<0.0001)。在髂肌的对比噪声比方面,DL 和非 DL 技术之间没有差异。在 DL 序列的卓越图像质量(97.1%)和锐度(100%)方面,观察者间有很高的一致性(97.1%)。

结论

DL 重建的应用可提高 PROPELLER 序列的图像质量,在定量方面提高 SNR。

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