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基于模型与基于深度学习的薄切片 T2 加权自旋回波前列腺 MRI 图像重建的比较。

Comparison of model-based versus deep learning-based image reconstruction for thin-slice T2-weighted spin-echo prostate MRI.

机构信息

Department of Radiology, Mayo Clinic, Rochester, MN, 55905, USA.

Department of Radiology, Mayo Clinic, Phoenix, AZ, USA.

出版信息

Abdom Radiol (NY). 2024 Aug;49(8):2921-2931. doi: 10.1007/s00261-024-04256-1. Epub 2024 Mar 23.

Abstract

PURPOSE

To compare a previous model-based image reconstruction (MBIR) with a newly developed deep learning (DL)-based image reconstruction for providing improved signal-to-noise ratio (SNR) in high through-plane resolution (1 mm) T2-weighted spin-echo (T2SE) prostate MRI.

METHODS

Large-area contrast and high-contrast spatial resolution of the reconstruction methods were assessed quantitatively in experimental phantom studies. The methods were next evaluated radiologically in 17 subjects at 3.0 Tesla for whom prostate MRI was clinically indicated. For each subject, the axial T2SE raw data were directed to MBIR and to the DL reconstruction at three vendor-provided levels: (L)ow, (M)edium, and (H)igh. Thin-slice images from the four reconstructions were compared using evaluation criteria related to SNR, sharpness, contrast fidelity, and reviewer preference. Results were compared using the Wilcoxon signed-rank test using Bonferroni correction, and inter-reader comparisons were done using the Cohen and Krippendorf tests.

RESULTS

Baseline contrast and resolution in phantom studies were equivalent for all four reconstruction pathways as desired. In vivo, all three DL levels (L, M, H) provided improved SNR versus MBIR. For virtually, all other evaluation criteria DL L and M were superior to MBIR. DL L and M were evaluated as superior to DL H in fidelity of contrast. For 44 of the 51 evaluations, the DL M reconstruction was preferred.

CONCLUSION

The deep learning reconstruction method provides significant SNR improvement in thin-slice (1 mm) T2SE images of the prostate while retaining image contrast. However, if taken to too high a level (DL High), both radiological sharpness and fidelity of contrast diminish.

摘要

目的

比较基于模型的图像重建(MBIR)和新开发的基于深度学习(DL)的图像重建,以在高穿透分辨率(1mm)T2 加权自旋回波(T2SE)前列腺 MRI 中提供更高的信噪比(SNR)。

方法

在实验性体模研究中,定量评估了大对比度和高对比度空间分辨率的重建方法。接下来,在 3.0T 对 17 名临床需要前列腺 MRI 的受试者进行了放射学评估。对于每个受试者,将轴向 T2SE 原始数据定向到 MBIR 和三个供应商提供的三个级别(L)ow、(M)edium 和(H)igh 的 DL 重建。使用与 SNR、锐度、对比度保真度和审阅者偏好相关的评估标准,比较来自四种重建的薄切片图像。使用 Wilcoxon 符号秩检验(Bonferroni 校正)比较结果,并使用 Cohen 和 Krippendorf 检验进行读者间比较。

结果

在体模研究中,所有四种重建途径的基线对比度和分辨率均达到预期的相同。在体内,所有三个 DL 级别(L、M、H)均比 MBIR 提供了更高的 SNR。对于几乎所有其他评估标准,DL L 和 M 都优于 MBIR。在对比度保真度方面,DL L 和 M 均优于 DL H。在 51 次评估中的 44 次中,DL M 重建被认为是首选。

结论

深度学习重建方法在保持图像对比度的同时,在前列腺的薄切片(1mm)T2SE 图像中提供了显著的 SNR 提高。但是,如果将其提高到过高的水平(DL High),则会降低影像学锐利度和对比度保真度。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e951/11300170/8ac80c67a866/nihms-1984395-f0001.jpg

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