使用折叠图像训练策略进行腹部3D T1加权成像的基于模型的深度学习重建。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-10-01 Epub Date: 2022-11-08 DOI:10.2463/mrms.mp.2021-0103
Satoshi Funayama, Utaroh Motosugi, Shintaro Ichikawa, Hiroyuki Morisaka, Yoshie Omiya, Hiroshi Onishi
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引用次数: 0

摘要

目的:评估折叠图像训练策略(FITS)的可行性,以及使用改进的基于模型的深度学习(iMoDL)网络重建腹部MR成像的图像质量。方法:本回顾性研究包括122例患者的腹部三维T1加权图像。在实验分析中,将用FITS iMoDL重建的图像的峰值信噪比(PSNR)和结构相似性指数(SSIM)与以下重建方法进行了比较:传统的基于模型的深度学习(conv MoDL)、用FITS训练的MoDL(FITS MoDL),全变差正则化压缩传感(CS)和并行成像(CG-SENSE)。在临床分析中,在参考、FITS iMoDL和CS图像上测量SNR和图像对比度。结果:FITS iMoDL的PSNR显著高于FITS MoDL、conv MoDL、CS和CG-SENSE(P 结论:与CS图像相比,所提出的FITS iMoDL方法在不增加内存消耗的情况下实现了更深层次的MoDL重建网络,并提高了腹部3D T1加权成像的图像质量。
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Model-based Deep Learning Reconstruction Using a Folded Image Training Strategy for Abdominal 3D T1-weighted Imaging.

Purpose: To evaluate the feasibility of folded image training strategy (FITS) and the quality of images reconstructed using the improved model-based deep learning (iMoDL) network trained with FITS (FITS-iMoDL) for abdominal MR imaging.

Methods: This retrospective study included abdominal 3D T1-weighted images of 122 patients. In the experimental analyses, peak SNR (PSNR) and structure similarity index (SSIM) of images reconstructed with FITS-iMoDL were compared with those with the following reconstruction methods: conventional model-based deep learning (conv-MoDL), MoDL trained with FITS (FITS-MoDL), total variation regularized compressed sensing (CS), and parallel imaging (CG-SENSE). In the clinical analysis, SNR and image contrast were measured on the reference, FITS-iMoDL, and CS images. Three radiologists evaluated the image quality using a 5-point scale to determine the mean opinion score (MOS).

Results: The PSNR of FITS-iMoDL was significantly higher than that of FITS-MoDL, conv-MoDL, CS, and CG-SENSE (P < 0.001). The SSIM of FITS-iMoDL was significantly higher than those of the others (P < 0.001), except for FITS-MoDL (P = 0.056). In the clinical analysis, the SNR of FITS-iMoDL was significantly higher than that of the reference and CS (P < 0.0001). Image contrast was equivalent within an equivalence margin of 10% among these three image sets (P < 0.0001). MOS was significantly improved in FITS-iMoDL (P < 0.001) compared with CS images in terms of liver edge and vessels conspicuity, lesion depiction, artifacts, blurring, and overall image quality.

Conclusion: The proposed method, FITS-iMoDL, allowed a deeper MoDL reconstruction network without increasing memory consumption and improved image quality on abdominal 3D T1-weighted imaging compared with CS images.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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