Tobit Führes , Marc Saake , Jennifer Lorenz , Hannes Seuss , Sebastian Bickelhaupt , Michael Uder , Frederik Bernd Laun
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Instead of learning “gold-standard” target images, the network was trained to optimize four image features (lesion CNR, vessel darkness, data consistency, and pulsation artifact reduction), which could be assessed quantitatively using manually drawn ROIs. A quality score was calculated from these four features. As an additional quality assessment, three radiologists rated different features of the resulting images.</p></div><div><h3><strong>Results</strong></h3><p>The conventional approach could substantially increase the lesion CNR and reduce the pulsation-induced signal loss. However, the vessel darkness was reduced. The deep learning approach increased the lesion CNR and reduced the signal loss to a slightly lower extent, but it could additionally increase the vessel darkness. According to the image quality score, the quality of the deep-learning images was higher than that of the images obtained using the conventional approach. The radiologist ratings were mostly consistent with the quantitative scores, but the overall quality ratings differed among the readers.</p></div><div><h3><strong>Conclusion</strong></h3><p>Unlike the conventional algorithm, the deep-learning algorithm increased the vessel darkness. Therefore, it may be a viable alternative to conventional algorithms.</p></div>","PeriodicalId":2,"journal":{"name":"ACS Applied Bio Materials","volume":null,"pages":null},"PeriodicalIF":4.6000,"publicationDate":"2024-05-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S0939388923000879/pdfft?md5=b3e5b6c0be696f64222a77e9bdedeec2&pid=1-s2.0-S0939388923000879-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Feature-guided deep learning reduces signal loss and increases lesion CNR in diffusion-weighted imaging of the liver\",\"authors\":\"Tobit Führes , Marc Saake , Jennifer Lorenz , Hannes Seuss , Sebastian Bickelhaupt , Michael Uder , Frederik Bernd Laun\",\"doi\":\"10.1016/j.zemedi.2023.07.005\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><h3><strong>Purpose</strong></h3><p>This research aims to develop a feature-guided deep learning approach and compare it with an optimized conventional post-processing algorithm in order to enhance the image quality of diffusion-weighted liver images and, in particular, to reduce the pulsation-induced signal loss occurring predominantly in the left liver lobe.</p></div><div><h3><strong>Methods</strong></h3><p>Data from 40 patients with liver lesions were used. For the conventional approach, the best-suited out of five examined algorithms was chosen. For the deep learning approach, a U-Net was trained. Instead of learning “gold-standard” target images, the network was trained to optimize four image features (lesion CNR, vessel darkness, data consistency, and pulsation artifact reduction), which could be assessed quantitatively using manually drawn ROIs. A quality score was calculated from these four features. As an additional quality assessment, three radiologists rated different features of the resulting images.</p></div><div><h3><strong>Results</strong></h3><p>The conventional approach could substantially increase the lesion CNR and reduce the pulsation-induced signal loss. However, the vessel darkness was reduced. The deep learning approach increased the lesion CNR and reduced the signal loss to a slightly lower extent, but it could additionally increase the vessel darkness. 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引用次数: 0
摘要
目的 本研究旨在开发一种以特征为导向的深度学习方法,并将其与优化的传统后处理算法进行比较,以提高扩散加权肝脏图像的质量,尤其是减少主要发生在左肝叶的脉动引起的信号损失。在传统方法中,选择了五种已研究过的算法中最合适的一种。对于深度学习方法,则采用 U-Net 进行训练。该网络不是学习 "黄金标准 "目标图像,而是通过训练来优化四个图像特征(病变 CNR、血管暗度、数据一致性和脉动伪影减少),这些特征可通过手动绘制的 ROI 进行定量评估。根据这四个特征计算出质量分数。作为额外的质量评估,三位放射科医生对所得图像的不同特征进行了评分。但是,血管的暗度降低了。深度学习方法提高了病变 CNR,减少了信号损失,但程度略低,而且还增加了血管暗度。根据图像质量评分,深度学习图像的质量高于使用传统方法获得的图像。结论与传统算法不同,深度学习算法增加了血管暗度。因此,它可能是传统算法的可行替代方案。
Feature-guided deep learning reduces signal loss and increases lesion CNR in diffusion-weighted imaging of the liver
Purpose
This research aims to develop a feature-guided deep learning approach and compare it with an optimized conventional post-processing algorithm in order to enhance the image quality of diffusion-weighted liver images and, in particular, to reduce the pulsation-induced signal loss occurring predominantly in the left liver lobe.
Methods
Data from 40 patients with liver lesions were used. For the conventional approach, the best-suited out of five examined algorithms was chosen. For the deep learning approach, a U-Net was trained. Instead of learning “gold-standard” target images, the network was trained to optimize four image features (lesion CNR, vessel darkness, data consistency, and pulsation artifact reduction), which could be assessed quantitatively using manually drawn ROIs. A quality score was calculated from these four features. As an additional quality assessment, three radiologists rated different features of the resulting images.
Results
The conventional approach could substantially increase the lesion CNR and reduce the pulsation-induced signal loss. However, the vessel darkness was reduced. The deep learning approach increased the lesion CNR and reduced the signal loss to a slightly lower extent, but it could additionally increase the vessel darkness. According to the image quality score, the quality of the deep-learning images was higher than that of the images obtained using the conventional approach. The radiologist ratings were mostly consistent with the quantitative scores, but the overall quality ratings differed among the readers.
Conclusion
Unlike the conventional algorithm, the deep-learning algorithm increased the vessel darkness. Therefore, it may be a viable alternative to conventional algorithms.