Washington University in St. Louis, Optical and Ultrasound Imaging Lab, Department of Biomedical Engineering, St. Louis, Missouri, United States, United States.
Washington University in St. Louis, Optical and Ultrasound Imaging Lab, Department of Electrical and Systems Engineering, St. Louis, Missouri, United States, United States.
J Biomed Opt. 2022 Aug;27(8). doi: 10.1117/1.JBO.27.8.086003.
"Difference imaging," which reconstructs target optical properties using measurements with and without target information, is often used in diffuse optical tomography (DOT) in vivo imaging. However, taking additional reference measurements is time consuming, and mismatches between the target medium and the reference medium can cause inaccurate reconstruction.
We aim to streamline the data acquisition and mitigate the mismatch problems in DOT difference imaging using a deep learning-based approach to generate data from target measurements only.
We train an artificial neural network to output data for difference imaging from target measurements only. The model is trained and validated on simulation data and tested with simulations, phantom experiments, and clinical data from 56 patients with breast lesions.
The proposed method has comparable performance to the traditional approach using measurements without mismatch between the target side and the reference side, and it outperforms the traditional approach using measurements when there is a mismatch. It also improves the target-to-artifact ratio and lesion localization in patient data.
The proposed method can simplify the data acquisition procedure, mitigate mismatch problems, and improve reconstructed image quality in DOT difference imaging.
“差分成像”使用有和没有目标信息的测量值来重建目标光学特性,常用于体内扩散光学断层成像(DOT)。然而,额外的参考测量是耗时的,并且目标介质和参考介质之间的不匹配会导致重建不准确。
我们旨在通过基于深度学习的方法从仅目标测量值生成数据,从而简化 DOT 差分成像的数据采集并减轻不匹配问题。
我们训练一个人工神经网络,仅从目标测量值输出差分成像数据。该模型在模拟数据上进行训练和验证,并在模拟、体模实验和 56 名患有乳房病变的患者的临床数据中进行了测试。
该方法在目标侧和参考侧之间没有不匹配的测量值时,与传统方法的性能相当,而在存在不匹配的测量值时,它的性能优于传统方法。它还提高了患者数据中的目标与伪影的比值和病变定位。
该方法可以简化数据采集过程,减轻不匹配问题,并提高 DOT 差分成像中的重建图像质量。