Wang Pingping, Nie Pin, Dang Yanli, Wang Lifang, Zhu Kaiguo, Wang Hongyu, Wang Jiawei, Liu Rumei, Ren Jialiang, Feng Jun, Fan Haiming, Yu Jun, Chen Baoying
Clinical Experimental Centre, Xi'an International Medical Center Hospital, Xi'an, China.
Imaging Diagnosis and Treatment Center, Xi'an International Medical Center Hospital, Xi'an, China.
Front Oncol. 2021 Dec 7;11:792516. doi: 10.3389/fonc.2021.792516. eCollection 2021.
To develop a deep learning model for synthesizing the first phases of dynamic (FP-Dyn) sequences to supplement the lack of information in unenhanced breast MRI examinations.
In total, 97 patients with breast MRI images were collected as the training set (n = 45), the validation set (n = 31), and the test set (n = 21), respectively. An enhance border lifelike synthesize (EDLS) model was developed in the training set and used to synthesize the FP-Dyn images from the T1WI images in the validation set. The peak signal-to-noise ratio (PSNR), structural similarity (SSIM), mean square error (MSE) and mean absolute error (MAE) of the synthesized images were measured. Moreover, three radiologists subjectively assessed image quality, respectively. The diagnostic value of the synthesized FP-Dyn sequences was further evaluated in the test set.
The image synthesis performance in the EDLS model was superior to that in conventional models from the results of PSNR, SSIM, MSE, and MAE. Subjective results displayed a remarkable visual consistency between the synthesized and original FP-Dyn images. Moreover, by using a combination of synthesized FP-Dyn sequence and an unenhanced protocol, the sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) of MRI were 100%, 72.73%, 76.92%, and 100%, respectively, which had a similar diagnostic value to full MRI protocols.
The EDLS model could synthesize the realistic FP-Dyn sequence to supplement the lack of enhanced images. Compared with full MRI examinations, it thus provides a new approach for reducing examination time and cost, and avoids the use of contrast agents without influencing diagnostic accuracy.
开发一种深度学习模型,用于合成动态(FP-Dyn)序列的第一期图像,以补充未增强乳腺MRI检查中信息的不足。
共收集97例有乳腺MRI图像的患者,分别作为训练集(n = 45)、验证集(n = 31)和测试集(n = 21)。在训练集中开发了一种增强边界逼真合成(EDLS)模型,并用于从验证集的T1WI图像合成FP-Dyn图像。测量合成图像的峰值信噪比(PSNR)、结构相似性(SSIM)、均方误差(MSE)和平均绝对误差(MAE)。此外,三名放射科医生分别对图像质量进行主观评估。在测试集中进一步评估合成的FP-Dyn序列的诊断价值。
从PSNR、SSIM、MSE和MAE的结果来看,EDLS模型中的图像合成性能优于传统模型。主观结果显示合成的和原始的FP-Dyn图像之间具有显著的视觉一致性。此外,通过使用合成的FP-Dyn序列和未增强方案的组合,MRI的敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)分别为100%、72.73%、76.92%和100%,其诊断价值与完整的MRI方案相似。
EDLS模型可以合成逼真的FP-Dyn序列,以补充增强图像的不足。因此,与完整的MRI检查相比,它提供了一种减少检查时间和成本的新方法,并且在不影响诊断准确性的情况下避免了使用造影剂。