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基于深度学习的三维重T2加权脂肪抑制磁共振(MR)脊髓造影在硬膜外液检测中的重建:图像质量与诊断性能

Deep learning-based reconstruction for 3-dimensional heavily T2-weighted fat-saturated magnetic resonance (MR) myelography in epidural fluid detection: image quality and diagnostic performance.

作者信息

Kim Mingyu, Yi Jisook, Lee Ho-Joon, Hahn Seok, Lee Yedaun, Lee Joonsung

机构信息

Department of Radiology, Inje University College of Medicine, Haeundae Paik Hospital, Busan, Republic of Korea.

GE HealthCare Korea, Seoul, Republic of Korea.

出版信息

Quant Imaging Med Surg. 2024 Sep 1;14(9):6531-6542. doi: 10.21037/qims-24-455. Epub 2024 Aug 7.

Abstract

BACKGROUND

Heavily T2-weighted fat-saturated (HT2W-FS) magnetic resonance myelography (MRM) is useful for diagnosing the cause of intracranial hypotension. Recently, deep learning-based reconstruction (DLR) has been utilized to improve image signal-to-noise ratios and sharpness while reducing artifacts, all without lengthening acquisition times. This study aimed to compare the diagnostic performance and image quality of conventional reconstruction (CR) and DLR of 3-dimensional (3D) HT2W-FS MRM applied to detecting epidural fluid in patients with clinically suspected intracranial hypotension.

METHODS

This retrospective study included 21 magnetic resonance myelography examinations using both CR and DLR in 21 patients who experienced orthostatic headache between April 2021 and September 2022. Quantitative image quality evaluation was performed by comparing signal-to-noise ratios at the lower thoracic levels. The image quality and artifacts were graded by three readers. The presence of epidural fluid was reported with a confidence score by two readers, and the area under the receiver operating curve, interobserver agreement, and inter-image-set agreement were evaluated. The conspicuity of the dura mater where the epidural fluid was detected was also investigated.

RESULTS

Quantitative and subjective image quality, and artifacts significantly improved with DLR (all P<0.001). Diagnostic performance of DLR was higher for both readers [reader 1: area under the curve (AUC) of CR =0.929; 95% confidence interval (CI): 0.902-0.950, AUC of DLR =0.965 (95% CI: 0.944-0.979), P=0.007; reader 2: AUC of CR =0.834 (95% CI: 0.798-0.866), AUC of DLR =0.877 (0.844-0.905), P=0.040]. Correlation with standard care of MRM in CR and DLR were both strong in reader 1 (rho =0.868-0.919, P<0.001), but was respectively strong and moderate in reader 2 (rho =0.734-0.805, P<0.001). Interobserver agreement was substantial (κ=0.708-0.762). The inter-image-set agreement was almost perfect for reader 1 (κ=0.907) and was substantial for reader 2 (κ=0.750). Dura mater conspicuity significantly improved with DLR (P<0.014, reader 1; P<0.001, readers 2 and 3).

CONCLUSIONS

HT2W-FS magnetic resonance myelography with DLR demonstrates substantial improvements in image quality and may improve confidence in detecting epidural fluid.

摘要

背景

重T2加权脂肪抑制(HT2W-FS)磁共振脊髓造影(MRM)有助于诊断颅内低压的病因。最近,基于深度学习的重建(DLR)已被用于提高图像信噪比和清晰度,同时减少伪影,且无需延长采集时间。本研究旨在比较传统重建(CR)和DLR对三维(3D)HT2W-FS MRM在临床疑似颅内低压患者中检测硬膜外积液的诊断性能和图像质量。

方法

本回顾性研究纳入了2021年4月至2022年9月期间21例经历体位性头痛的患者,对其进行了21次同时使用CR和DLR的磁共振脊髓造影检查。通过比较下胸段水平的信噪比进行定量图像质量评估。由三位阅片者对图像质量和伪影进行分级。由两位阅片者以置信度评分报告硬膜外积液的存在情况,并评估受试者工作特征曲线下面积、观察者间一致性和图像集间一致性。还研究了检测到硬膜外积液处硬脑膜的清晰度。

结果

DLR显著改善了定量和主观图像质量及伪影(所有P<0.001)。两位阅片者对DLR的诊断性能均更高[阅片者1:CR的曲线下面积(AUC)=0.929;95%置信区间(CI):0.902-0.950,DLR的AUC=0.965(95%CI:0.944-0.979),P=0.007;阅片者2:CR的AUC=0.834(95%CI:0.798-0.866),DLR的AUC=0.877(0.844-0.905),P=0.040]。阅片者1中CR和DLR与MRM标准护理的相关性均很强(rho=0.868-0.919,P<0.001),但阅片者2中分别为强和中等(rho=0.734-0.805,P<0.001)。观察者间一致性较高(κ=0.708-0.762)。图像集间一致性对于阅片者1几乎完美(κ=0.907),对于阅片者2较高(κ=0.750)。DLR显著提高了硬脑膜清晰度(阅片者1,P<0.014;阅片者2和3,P<0.001)。

结论

采用DLR的HT2W-FS磁共振脊髓造影在图像质量方面有显著改善,可能会提高检测硬膜外积液的可信度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aeec/11400679/fcec4c0ec7f1/qims-14-09-6531-f1.jpg

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