Lozenski Luke, Wang Hanchen, Li Fu, Anastasio Mark, Wohlberg Brendt, Lin Youzuo, Villa Umberto
Department of Electrical and Systems Engineering, Washington University in St. Louis, St. Louis, MO 63130, USA and the Energy and Natural Resources Security Group, Los Alamos National Laboratory, Los Alamos, NM 87545, USA.
Energy and Natural Resources Security Group, Los Alamos National Laboratory, Los Alamos, NM 87545, USA.
IEEE Trans Comput Imaging. 2024;10:69-82. doi: 10.1109/tci.2024.3351529. Epub 2024 Jan 9.
Ultrasound computed tomography (USCT) is an emerging imaging modality that holds great promise for breast imaging. Full-waveform inversion (FWI)-based image reconstruction methods incorporate accurate wave physics to produce high spatial resolution quantitative images of speed of sound or other acoustic properties of the breast tissues from USCT measurement data. However, the high computational cost of FWI reconstruction represents a significant burden for its widespread application in a clinical setting. The research reported here investigates the use of a convolutional neural network (CNN) to learn a mapping from USCT waveform data to speed of sound estimates. The CNN was trained using a supervised approach with a task-informed loss function aiming at preserving features of the image that are relevant to the detection of lesions. A large set of anatomically and physiologically realistic numerical breast phantoms (NBPs) and corresponding simulated USCT measurements was employed during training. Once trained, the CNN can perform real-time FWI image reconstruction from USCT waveform data. The performance of the proposed method was assessed and compared against FWI using a hold-out sample of 41 NBPs and corresponding USCT data. Accuracy was measured using relative mean square error (RMSE), structural self-similarity index measure (SSIM), and lesion detection performance (DICE score). This numerical experiment demonstrates that a supervised learning model can achieve accuracy comparable to FWI in terms of RMSE and SSIM, and better performance in terms of task performance, while significantly reducing computational time.
超声计算机断层扫描(USCT)是一种新兴的成像方式,在乳腺成像方面具有巨大潜力。基于全波形反演(FWI)的图像重建方法纳入了精确的波动物理学原理,以便从USCT测量数据中生成乳腺组织声速或其他声学特性的高空间分辨率定量图像。然而,FWI重建的高计算成本对其在临床环境中的广泛应用构成了重大负担。本文报道的研究探讨了使用卷积神经网络(CNN)来学习从USCT波形数据到声速估计值的映射。该CNN使用一种监督方法进行训练,采用任务告知损失函数,旨在保留与病变检测相关的图像特征。在训练过程中使用了大量解剖学和生理学上逼真的数值乳腺模型(NBP)以及相应的模拟USCT测量数据。一旦训练完成,该CNN就可以从USCT波形数据中进行实时FWI图像重建。使用41个NBP和相应USCT数据的留出样本对所提出方法的性能进行了评估,并与FWI进行了比较。使用相对均方误差(RMSE)、结构自相似性指数测量(SSIM)和病变检测性能(DICE分数)来衡量准确性。这个数值实验表明,一个监督学习模型在RMSE和SSIM方面可以达到与FWI相当的准确性,在任务性能方面表现更好,同时显著减少计算时间。