论文标题

深度学习引导的加权平均肝扩散加权成像中的信号辍学补偿

Deep learning-guided weighted averaging for signal dropout compensation in diffusion-weighted imaging of the liver

论文作者

Gadjimuradov, Fasil, Benkert, Thomas, Nickel, Marcel Dominik, Führes, Tobit, Saake, Marc, Maier, Andreas

论文摘要

目的:开发一种用于回顾性校正心脏运动引起的腹部扩散加权成像(DWI)中信号脱落伪像的算法。 方法:给定一组切片的图像重复,提出了局部自适应加权平均,该平均旨在抑制信号撤离影响的图像区域的贡献。通过滑动窗口算法估算相应的重量图,该算法分析了与斑块参考的信号偏差。为了确保计算可靠的参考,重复是通过经过训练以检测信号辍学损坏的图像的分类器过滤的。根据辍学能力,明显扩散系数(ADC)的偏置降低和噪声特征,评估了所提出的方法,称为深度学习引导的自适应加权平均(DLAWA)。 结果:在平均,与运动相关的辍学的情况下,肝脏的一部分会导致信号衰减和ADC高估,左叶特别受影响。由于局部信号抑制,Dlawa可以大大减轻两种影响,同时防止对信噪比(SNR)的全局惩罚。对患者数据进行评估,也证明了通过信号辍学掩盖的病变的能力。此外,Dlawa允许通过一些超参数透明地控制SNR和信号脱落抑制之间的权衡。 结论:这项工作提出了一种有效而灵活的方法,用于局部对运动和脉动产生的信号辍学的补偿。由于Dlawa遵循一种回顾性方法,因此不需要更改收购。

Purpose: To develop an algorithm for the retrospective correction of signal dropout artifacts in abdominal diffusion-weighted imaging (DWI) resulting from cardiac motion. Methods: Given a set of image repetitions for a slice, a locally adaptive weighted averaging is proposed which aims to suppress the contribution of image regions affected by signal dropouts. Corresponding weight maps were estimated by a sliding-window algorithm which analyzed signal deviations from a patch-wise reference. In order to ensure the computation of a robust reference, repetitions were filtered by a classifier that was trained to detect images corrupted by signal dropouts. The proposed method, termed Deep Learning-guided Adaptive Weighted Averaging (DLAWA), was evaluated in terms of dropout suppression capability, bias reduction in the Apparent Diffusion Coefficient (ADC) and noise characteristics. Results: In the case of uniform averaging, motion-related dropouts caused signal attenuation and ADC overestimation in parts of the liver with the left lobe being affected particularly. Both effects could be substantially mitigated by DLAWA while preventing global penalties with respect to signal-to-noise ratio (SNR) due to local signal suppression. Performing evaluations on patient data, the capability to recover lesions concealed by signal dropouts was demonstrated as well. Further, DLAWA allowed for transparent control of the trade-off between SNR and signal dropout suppression by means of a few hyperparameters. Conclusion: This work presents an effective and flexible method for the local compensation of signal dropouts resulting from motion and pulsation. Since DLAWA follows a retrospective approach, no changes to the acquisition are required.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源