Okolie Augustine, Dirrichs Timm, Huck Luisa Charlotte, Nebelung Sven, Arasteh Soroosh Tayebi, Nolte Teresa, Han Tianyu, Kuhl Christiane Katharina, Truhn Daniel
Department of Radiology, University Hospital RWTH Aachen, Aachen, Germany.
Eur Radiol. 2025 Feb;35(2):1092-1100. doi: 10.1007/s00330-024-10853-x. Epub 2024 Aug 1.
To investigate the use of the score-based diffusion model to accelerate breast MRI reconstruction.
We trained a score-based model on 9549 MRI examinations of the female breast and employed it to reconstruct undersampled MRI images with undersampling factors of 2, 5, and 20. Images were evaluated by two experienced radiologists who rated the images based on their overall quality and diagnostic value on an independent test set of 100 additional MRI examinations.
The score-based model produces MRI images of high quality and diagnostic value. Both T1- and T2-weighted MRI images could be reconstructed to a high degree of accuracy. Two radiologists rated the images as almost indistinguishable from the original images (rating 4 or 5 on a scale of 5) in 100% (radiologist 1) and 99% (radiologist 2) of cases when the acceleration factor was 2. This fraction dropped to 88% and 70% for an acceleration factor of 5 and to 5% and 21% with an extreme acceleration factor of 20.
Score-based models can reconstruct MRI images at high fidelity, even at comparatively high acceleration factors, but further work on a larger scale of images is needed to ensure that diagnostic quality holds.
The number of MRI examinations of the breast is expected to rise with MRI screening recommended for women with dense breasts. Accelerated image acquisition methods can help in making this examination more accessible.
Accelerating breast MRI reconstruction remains a significant challenge in clinical settings. Score-based diffusion models can achieve near-perfect reconstruction for moderate undersampling factors. Faster breast MRI scans with maintained image quality could revolutionize clinic workflows and patient experience.
研究基于分数的扩散模型在加速乳腺MRI重建中的应用。
我们在9549例女性乳腺MRI检查数据上训练了一个基于分数的模型,并使用该模型重建欠采样因子分别为2、5和20的欠采样MRI图像。由两名经验丰富的放射科医生对图像进行评估,他们在另外100例MRI检查的独立测试集上,根据图像的整体质量和诊断价值对图像进行评分。
基于分数的模型生成的MRI图像具有高质量和诊断价值。T1加权和T2加权MRI图像均可高精度重建。当加速因子为2时,两名放射科医生在100%(放射科医生1)和99%(放射科医生2)的病例中将图像评为与原始图像几乎无法区分(在5分制中评分为4或5分)。当加速因子为5时,这一比例降至88%和70%;当加速因子为20时,这一比例降至5%和21%。
基于分数的模型即使在相对较高的加速因子下也能以高保真度重建MRI图像,但需要在更大规模的图像上进行进一步研究,以确保诊断质量。
随着对乳腺致密的女性推荐进行MRI筛查,预计乳腺MRI检查的数量将会增加。加速图像采集方法有助于使这种检查更容易获得。
在临床环境中,加速乳腺MRI重建仍然是一项重大挑战。基于分数的扩散模型对于中等欠采样因子可以实现近乎完美的重建。更快的乳腺MRI扫描且保持图像质量可能会彻底改变临床工作流程和患者体验。