Optoacoustic (OA) imaging is based on excitation of biological tissues with nanosecond-duration laser pulses followed by subsequent detection of ultrasound waves generated via light-absorption-mediated thermoelastic expansion. OA imaging features a powerful combination between rich optical contrast and high resolution in deep tissues. This enabled the exploration of a number of attractive new applications both in clinical and laboratory settings. However, no standardized datasets generated with different types of experimental set-up and associated processing methods are available to facilitate advances in broader applications of OA in clinical settings. This complicates an objective comparison between new and established data processing methods, often leading to qualitative results and arbitrary interpretations of the data. In this paper, we provide both experimental and synthetic OA raw signals and reconstructed image domain datasets rendered with different experimental parameters and tomographic acquisition geometries. We further provide trained neural networks to tackle three important challenges related to OA image processing, namely accurate reconstruction under limited view tomographic conditions, removal of spatial undersampling artifacts and anatomical segmentation for improved image reconstruction. Specifically, we define 18 experiments corresponding to the aforementioned challenges as benchmarks to be used as a reference for the development of more advanced processing methods.
翻译:光学对比和深组织中高分辨率之间的强大结合,使得在临床和实验室环境中能够探索一些有吸引力的新应用;然而,没有利用不同种类实验设置和相关处理方法产生的标准化数据集来促进在临床环境中更广泛地应用OA。这使得新的和既定的数据处理方法之间的客观比较变得复杂,往往导致质量结果和对数据的任意解释。在本文件中,我们提供了实验和合成OA原始信号,并重建了带有不同实验参数的图像域数据集和获得图象的地理图谱。我们还提供了经过培训的神经网络,以应对与OA图像处理有关的三大挑战,即在有限的观察地理条件下进行准确的重建,去除空间下层的文物和用于改进图像重建的解剖分解。具体地说,我们用18项实验作为先进的基准,用来应对上述各项发展的挑战。