IEEE Trans Med Imaging. 2024 Mar;43(3):1214-1224. doi: 10.1109/TMI.2023.3331198. Epub 2024 Mar 5.
Accurate measurement of optical absorption coefficients from photoacoustic imaging (PAI) data would enable direct mapping of molecular concentrations, providing vital clinical insight. The ill-posed nature of the problem of absorption coefficient recovery has prohibited PAI from achieving this goal in living systems due to the domain gap between simulation and experiment. To bridge this gap, we introduce a collection of experimentally well-characterised imaging phantoms and their digital twins. This first-of-a-kind phantom data set enables supervised training of a U-Net on experimental data for pixel-wise estimation of absorption coefficients. We show that training on simulated data results in artefacts and biases in the estimates, reinforcing the existence of a domain gap between simulation and experiment. Training on experimentally acquired data, however, yielded more accurate and robust estimates of optical absorption coefficients. We compare the results to fluence correction with a Monte Carlo model from reference optical properties of the materials, which yields a quantification error of approximately 20%. Application of the trained U-Nets to a blood flow phantom demonstrated spectral biases when training on simulated data, while application to a mouse model highlighted the ability of both learning-based approaches to recover the depth-dependent loss of signal intensity. We demonstrate that training on experimental phantoms can restore the correlation of signal amplitudes measured in depth. While the absolute quantification error remains high and further improvements are needed, our results highlight the promise of deep learning to advance quantitative PAI.
从光声成像 (PAI) 数据中准确测量光吸收系数,可以直接绘制分子浓度图,为临床提供重要信息。由于模拟和实验之间的域间隙,吸收系数恢复问题的不适定性使得 PAI 无法在活体系统中实现这一目标。为了弥合这一差距,我们引入了一系列经过良好实验表征的成像体模及其数字双胞胎。这个首创的体模数据集使我们能够在实验数据上对 U-Net 进行有监督训练,以实现像素级吸收系数的估计。我们表明,在模拟数据上进行训练会导致估计中出现伪影和偏差,这进一步证实了模拟和实验之间存在域间隙。然而,在实际采集的数据上进行训练,可以得到更准确和稳健的光吸收系数估计。我们将结果与基于材料参考光学特性的蒙特卡罗模型进行的荧光校正进行了比较,该模型的量化误差约为 20%。将训练有素的 U-Net 应用于血流体模,当在模拟数据上进行训练时,显示出光谱偏差,而将其应用于小鼠模型则突出了这两种基于学习的方法恢复信号强度随深度衰减的能力。我们证明,在实验体模上进行训练可以恢复深度测量的信号幅度的相关性。虽然绝对定量误差仍然很高,需要进一步改进,但我们的结果突出了深度学习在推进定量 PAI 方面的潜力。