From the Guerbet Research, Villepinte.
Imaging Department, Gustave Roussy Cancer Campus, Université Paris-Saclay, Villejuif.
Invest Radiol. 2022 Aug 1;57(8):527-535. doi: 10.1097/RLI.0000000000000867. Epub 2022 Apr 20.
The aim of this study was to evaluate a deep learning method designed to increase the contrast-to-noise ratio in contrast-enhanced gradient echo T1-weighted brain magnetic resonance imaging (MRI) acquisitions. The processed images are quantitatively evaluated in terms of lesion detection performance.
A total of 250 multiparametric brain MRIs, acquired between November 2019 and March 2021 at Gustave Roussy Cancer Campus (Villejuif, France), were considered for inclusion in this retrospective monocentric study. Independent training (107 cases; age, 55 ± 14 years; 58 women) and test (79 cases; age, 59 ± 14 years; 41 women) samples were defined. Patients had glioma, brain metastasis, meningioma, or no enhancing lesion. Gradient echo and turbo spin echo with variable flip angles postcontrast T1 sequences were acquired in all cases. For the cases that formed the training sample, "low-dose" postcontrast gradient echo T1 images using 0.025 mmol/kg injections of contrast agent were also acquired. A deep neural network was trained to synthetically enhance the low-dose T1 acquisitions, taking standard-dose T1 MRI as reference. Once trained, the contrast enhancement network was used to process the test gradient echo T1 images. A read was then performed by 2 experienced neuroradiologists to evaluate the original and processed T1 MRI sequences in terms of contrast enhancement and lesion detection performance, taking the turbo spin echo sequences as reference.
The processed images were superior to the original gradient echo and reference turbo spin echo T1 sequences in terms of contrast-to-noise ratio (44.5 vs 9.1 and 16.8; P < 0.001), lesion-to-brain ratio (1.66 vs 1.31 and 1.44; P < 0.001), and contrast enhancement percentage (112.4% vs 85.6% and 92.2%; P < 0.001) for cases with enhancing lesions. The overall image quality of processed T1 was preferred by both readers (graded 3.4/4 on average vs 2.7/4; P < 0.001). Finally, the proposed processing improved the average sensitivity of gradient echo T1 MRI from 88% to 96% for lesions larger than 10 mm ( P = 0.008), whereas no difference was found in terms of the false detection rate (0.02 per case in both cases; P > 0.99). The same effect was observed when considering all lesions larger than 5 mm: sensitivity increased from 70% to 85% ( P < 0.001), whereas false detection rates remained similar (0.04 vs 0.06 per case; P = 0.48). With all lesions included regardless of their size, sensitivities were 59% and 75% for original and processed T1 images, respectively ( P < 0.001), and the corresponding false detection rates were 0.05 and 0.14 per case, respectively ( P = 0.06).
The proposed deep learning method successfully amplified the beneficial effects of contrast agent injection on gradient echo T1 image quality, contrast level, and lesion detection performance. In particular, the sensitivity of the MRI sequence was improved by up to 16%, whereas the false detection rate remained similar.
本研究旨在评估一种深度学习方法,旨在提高对比增强梯度回波 T1 加权脑磁共振成像(MRI)采集的对比噪声比。通过定量评估病变检测性能来评估处理后的图像。
共纳入 250 例 2019 年 11 月至 2021 年 3 月在 Gustave Roussy 癌症中心(Villejuif,法国)采集的多参数脑 MRI,进行回顾性单中心研究。定义了独立的训练(107 例;年龄 55 ± 14 岁;58 名女性)和测试(79 例;年龄 59 ± 14 岁;41 名女性)样本。患者患有胶质瘤、脑转移瘤、脑膜瘤或无增强病变。所有病例均采集梯度回波和可变翻转角后对比 T1 序列的涡轮自旋回波。对于形成训练样本的病例,还采集了使用 0.025 mmol/kg 造影剂注射的“低剂量”后对比梯度回波 T1 图像。使用标准剂量 T1 MRI 作为参考,训练一个深度神经网络以合成增强低剂量 T1 采集。训练完成后,使用对比度增强网络处理测试梯度回波 T1 图像。然后由 2 名有经验的神经放射科医生阅读原始和处理后的 T1 MRI 序列,以评估对比增强和病变检测性能,以涡轮自旋回波序列为参考。
对于有增强病变的病例,处理后的图像在信噪比(44.5 比 9.1 和 16.8;P <0.001)、病变与脑比(1.66 比 1.31 和 1.44;P <0.001)和对比度增强百分比(112.4%比 85.6%和 92.2%;P <0.001)方面优于原始梯度回波和参考涡轮自旋回波 T1 序列。处理后的 T1 图像的总体图像质量也得到了两位读者的好评(平均评分为 3.4/4 比 2.7/4;P <0.001)。最后,该方法提高了梯度回波 T1 MRI 的平均敏感性,对于大于 10mm 的病变,敏感性从 88%提高到 96%(P = 0.008),而假阳性率没有差异(每个病例均为 0.02;P >0.99)。当考虑所有大于 5mm 的病变时,同样观察到相同的效果:敏感性从 70%提高到 85%(P <0.001),而假阳性率保持相似(每个病例分别为 0.04 和 0.06;P = 0.48)。对于所有大小的病变,原始 T1 图像和处理后的 T1 图像的敏感性分别为 59%和 75%(P <0.001),相应的假阳性率分别为 0.05 和 0.14 个病例(P = 0.06)。
本研究提出的深度学习方法成功地放大了造影剂注射对梯度回波 T1 图像质量、对比度和病变检测性能的有益影响。特别是,MRI 序列的敏感性提高了 16%,而假阳性率保持相似。