Meng Zhang, Chunchao Xia, Jing Tang, Li Yao, Na Hu, Jiaqi Li, Wanlin Peng, Sixian Hu, Zheng Ye, Xiaoyong Zhang, Jin Huang, Zhenlin Li
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Four image groups were derived from single-scan DCE MRI, which included 1.5-mm slice thickness images using DLCS-SR (1.5-mm DLCS-SR images), 1.5-mm slice thickness images with deep learning-based compressed sensing reconstruction (1.5-mm DLCS images), 1.5-mm routine images, and 3-mm slice thickness images using DLCS-SR (3-mm DLCS-SR images). Diagnostic criteria were established by incorporating laboratory findings, clinical symptoms, medical histories, previous imaging, and certain pathologic reports. Two readers assessed the diagnostic performance in identifying pituitary abnormalities and microadenomas. 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Additionally, the performance of 1.5-mm DLCS-SR images in identifying microadenomas [area under the receiver operating characteristic curve (AUC), 0.89-0.94] surpassed that of 1.5-mm DLCS (AUC, 0.83-0.87; p = 0.042 and 0.011, respectively), 1.5-mm routine (AUC, 0.76-0.78; p < 0.001), and 3-mm DLCS-SR images (AUC, 0.72-0.74; p < 0.001).</p><p><strong>Conclusion: </strong>The findings revealed superior diagnostic performance of 1.5-mm DLCS-SR images in identifying pituitary abnormalities and microadenomas, indicating the clinical-potential of high-resolution DCE MRI.</p><p><strong>Key points: </strong>Question What strategies can overcome the resolution limitations of conventional dynamic contrast-enhanced (DCE) MRI, and which contribute to a high false-negative rate in diagnosing pituitary microadenomas? Findings Deep learning-based compressed sensing and super-resolution reconstruction applied to DCE MRI achieved high resolution while improving image quality and diagnostic efficacy. 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引用次数: 0
摘要
目的:本研究旨在评估基于深度学习的压缩感知和超分辨率(DLCS-SR)重建的高分辨率动态对比增强(DCE) MRI对微腺瘤的诊断性能。材料和方法:这项前瞻性研究包括126名疑似垂体微腺瘤的参与者,他们在2023年6月至2024年1月期间接受了DCE MRI检查。从单次扫描DCE MRI中获得四个图像组,包括使用dlc - sr的1.5 mm切片厚度图像(1.5 mm dlc - sr图像),基于深度学习的压缩感知重建的1.5 mm切片厚度图像(1.5 mm dlc图像),1.5 mm常规图像和使用dlc - sr的3 mm切片厚度图像(3 mm dlc - sr图像)。通过结合实验室结果、临床症状、病史、既往影像学和某些病理报告,建立诊断标准。两位读者评估了在识别垂体异常和微腺瘤的诊断性能。采用κ统计评估诊断一致性,采用DeLong和McNemar试验进行微腺瘤检测的组间比较。结果:1.5 mm dlc - sr图像(κ = 0.746 ~ 0.848)的诊断一致性优于1.5 mm dlc - sr图像(κ = 0.585 ~ 0.687)、1.5 mm dlc - sr常规图像(κ = 0.449 ~ 0.487)和3 mm dlc - sr图像(κ = 0.347 ~ 0.369) (p)。结论:1.5 mm dlc - sr图像对垂体异常和微腺瘤的诊断效果较好,显示了高分辨率DCE MRI的临床应用潜力。什么策略可以克服常规动态对比增强(DCE) MRI的分辨率限制,以及导致垂体微腺瘤诊断假阴性率高的因素?结果基于深度学习的压缩感知和超分辨率重建应用于DCE MRI,在提高图像质量和诊断效能的同时,获得了较高的分辨率。应用基于深度学习的压缩感知和超分辨率重建技术,采用1.5 mm层厚、高面内分辨率的DCE MRI,可显著提高垂体异常和微腺瘤的诊断准确性,实现及时有效的患者管理。
Evaluation of high-resolution pituitary dynamic contrast-enhanced MRI using deep learning-based compressed sensing and super-resolution reconstruction.
Objective: This study aims to assess diagnostic performance of high-resolution dynamic contrast-enhanced (DCE) MRI with deep learning-based compressed sensing and super-resolution (DLCS-SR) reconstruction for identifying microadenomas.
Materials and methods: This prospective study included 126 participants with suspected pituitary microadenomas who underwent DCE MRI between June 2023 and January 2024. Four image groups were derived from single-scan DCE MRI, which included 1.5-mm slice thickness images using DLCS-SR (1.5-mm DLCS-SR images), 1.5-mm slice thickness images with deep learning-based compressed sensing reconstruction (1.5-mm DLCS images), 1.5-mm routine images, and 3-mm slice thickness images using DLCS-SR (3-mm DLCS-SR images). Diagnostic criteria were established by incorporating laboratory findings, clinical symptoms, medical histories, previous imaging, and certain pathologic reports. Two readers assessed the diagnostic performance in identifying pituitary abnormalities and microadenomas. Diagnostic agreements were assessed using κ statistics, and intergroup comparisons for microadenoma detection were performed using the DeLong and McNemar tests.
Results: The 1.5-mm DLCS-SR images (κ = 0.746-0.848) exhibited superior diagnostic agreement, outperforming 1.5-mm DLCS (κ = 0.585-0.687), 1.5-mm routine (κ = 0.449-0.487), and 3-mm DLCS-SR images (κ = 0.347-0.369) (p < 0.001 for all). Additionally, the performance of 1.5-mm DLCS-SR images in identifying microadenomas [area under the receiver operating characteristic curve (AUC), 0.89-0.94] surpassed that of 1.5-mm DLCS (AUC, 0.83-0.87; p = 0.042 and 0.011, respectively), 1.5-mm routine (AUC, 0.76-0.78; p < 0.001), and 3-mm DLCS-SR images (AUC, 0.72-0.74; p < 0.001).
Conclusion: The findings revealed superior diagnostic performance of 1.5-mm DLCS-SR images in identifying pituitary abnormalities and microadenomas, indicating the clinical-potential of high-resolution DCE MRI.
Key points: Question What strategies can overcome the resolution limitations of conventional dynamic contrast-enhanced (DCE) MRI, and which contribute to a high false-negative rate in diagnosing pituitary microadenomas? Findings Deep learning-based compressed sensing and super-resolution reconstruction applied to DCE MRI achieved high resolution while improving image quality and diagnostic efficacy. Clinical relevance DCE MRI with a 1.5-mm slice thickness and high in-plane resolution, utilizing deep learning-based compressed sensing and super-resolution reconstruction, significantly enhances diagnostic accuracy for pituitary abnormalities and microadenomas, enabling timely and effective patient management.
期刊介绍:
European Radiology (ER) continuously updates scientific knowledge in radiology by publication of strong original articles and state-of-the-art reviews written by leading radiologists. A well balanced combination of review articles, original papers, short communications from European radiological congresses and information on society matters makes ER an indispensable source for current information in this field.
This is the Journal of the European Society of Radiology, and the official journal of a number of societies.
From 2004-2008 supplements to European Radiology were published under its companion, European Radiology Supplements, ISSN 1613-3749.