Deep learning network enhances imaging quality of low-b-value diffusion-weighted imaging and improves lesion detection in prostate cancer.

IF 3.4 2区 医学 Q2 ONCOLOGY
Zheng Liu, Wei-Jie Gu, Fang-Ning Wan, Zhang-Zhe Chen, Yun-Yi Kong, Xiao-Hang Liu, Ding-Wei Ye, Bo Dai
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引用次数: 0

Abstract

Background: Diffusion-weighted imaging with higher b-value improves detection rate for prostate cancer lesions. However, obtaining high b-value DWI requires more advanced hardware and software configuration. Here we use a novel deep learning network, NAFNet, to generate a deep learning reconstructed (DLR1500) images from 800 b-value to mimic 1500 b-value images, and to evaluate its performance and lesion detection improvements based on whole-slide images (WSI).

Methods: We enrolled 303 prostate cancer patients with both 800 and 1500 b-values from Fudan University Shanghai Cancer Centre between 2017 and 2020. We assigned these patients to the training and validation set in a 2:1 ratio. The testing set included 36 prostate cancer patients from an independent institute who had only preoperative DWI at 800 b-value. Two senior radiology doctors and two junior radiology doctors read and delineated cancer lesions on DLR1500, original 800 and 1500 b-values DWI images. WSI were used as the ground truth to assess the lesion detection improvement of DLR1500 images in the testing set.

Results: After training and generating, within junior radiology doctors, the diagnostic AUC based on DLR1500 images is not inferior to that based on 1500 b-value images (0.832 (0.788-0.876) vs. 0.821 (0.747-0.899), P = 0.824). The same phenomenon is also observed in senior radiology doctors. Furthermore, in the testing set, DLR1500 images could significantly enhance junior radiology doctors' diagnostic performance than 800 b-value images (0.848 (0.758-0.938) vs. 0.752 (0.661-0.843), P = 0.043).

Conclusions: DLR1500 DWIs were comparable in quality to original 1500 b-value images within both junior and senior radiology doctors. NAFNet based DWI enhancement can significantly improve the image quality of 800 b-value DWI, and therefore promote the accuracy of prostate cancer lesion detection for junior radiology doctors.

深度学习网络提高了前列腺癌低b值弥散加权成像的成像质量,提高了前列腺癌病变的检出率。
背景:高b值的弥散加权成像可提高前列腺癌病变的检出率。然而,获得高b值DWI需要更高级的硬件和软件配置。在这里,我们使用一种新的深度学习网络NAFNet,从800个b值生成深度学习重建(DLR1500)图像来模拟1500个b值图像,并评估其性能和基于全幻灯片图像(WSI)的病变检测改进。方法:2017年至2020年,我们从复旦大学上海癌症中心招募了303例b值为800和1500的前列腺癌患者。我们将这些患者按2:1的比例分配到训练组和验证组。测试组包括36名来自独立研究所的前列腺癌患者,术前DWI仅为800 b值。两名高级放射科医生和两名初级放射科医生在DLR1500、原始800和1500 b值DWI图像上阅读并划定肿瘤病灶。使用WSI作为ground truth来评估测试集中DLR1500图像的病灶检测改善程度。结果:培训生成后,在初级放射科医生中,基于DLR1500图像的诊断AUC不低于基于1500 b值图像的诊断AUC (0.832 (0.788-0.876) vs. 0.821 (0.747-0.899), P = 0.824)。在资深放射科医生中也观察到同样的现象。此外,在测试集中,DLR1500图像比800张b值图像能显著提高初级放射科医生的诊断效能(0.848 (0.758-0.938)vs. 0.752 (0.661-0.843), P = 0.043)。结论:在初级和高级放射科医生中,DLR1500 dwi的质量与原始1500 b值图像相当。基于NAFNet的DWI增强可以显著提高800 b值DWI的图像质量,从而提高初级放射科医生对前列腺癌病变检测的准确性。
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来源期刊
BMC Cancer
BMC Cancer 医学-肿瘤学
CiteScore
6.00
自引率
2.60%
发文量
1204
审稿时长
6.8 months
期刊介绍: BMC Cancer is an open access, peer-reviewed journal that considers articles on all aspects of cancer research, including the pathophysiology, prevention, diagnosis and treatment of cancers. The journal welcomes submissions concerning molecular and cellular biology, genetics, epidemiology, and clinical trials.
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