IEEE Trans Med Imaging. 2020 Oct;39(10):3250-3255. doi: 10.1109/TMI.2020.2985134. Epub 2020 May 28.
The recently developed optoacoustic tomography systems have attained volumetric frame rates exceeding 100 Hz, thus opening up new venues for studying previously invisible biological dynamics. Further gains in temporal resolution can potentially be achieved via partial data acquisition, though a priori knowledge on the acquired data is essential for rendering accurate reconstructions using compressed sensing approaches. In this work, we suggest a machine learning method based on principal component analysis for high-frame-rate volumetric cardiac imaging using only a few tomographic optoacoustic projections. The method is particularly effective for discerning periodic motion, as demonstrated herein by non-invasive imaging of a beating mouse heart. A training phase enables efficiently compressing the heart motion information, which is subsequently used as prior information for image reconstruction from sparse sampling at a higher frame rate. It is shown that image quality is preserved with a 64-fold reduction in the data flow. We demonstrate that, under certain conditions, the volumetric motion could effectively be captured by relying on time-resolved data from a single optoacoustic detector. Feasibility of capturing transient (non-periodic) events not registered in the training phase is further demonstrated by visualizing perfusion of a contrast agent in vivo. The suggested approach can be used to significantly boost the temporal resolution of optoacoustic imaging and facilitate development of more affordable and data efficient systems.
最近开发的光声断层扫描系统已经实现了超过 100 Hz 的容积帧率,从而为研究以前看不见的生物动力学开辟了新的途径。通过部分数据采集可以进一步提高时间分辨率,但使用压缩感知方法进行准确重建需要先验知识。在这项工作中,我们提出了一种基于主成分分析的机器学习方法,用于使用仅少数几个断层光声投影进行高帧率容积心脏成像。该方法特别适用于辨别周期性运动,本文通过对跳动的小鼠心脏进行非侵入性成像证明了这一点。训练阶段能够有效地压缩心脏运动信息,然后将其用作从更高帧率的稀疏采样进行图像重建的先验信息。结果表明,在数据流量减少 64 倍的情况下可以保持图像质量。我们证明,在某些条件下,可以通过依赖单个光声探测器的时变数据有效地捕获容积运动。通过可视化体内对比剂的灌注进一步证明了在训练阶段未注册的瞬态(非周期性)事件的捕获的可行性。所提出的方法可以显著提高光声成像的时间分辨率,并促进更经济实惠和数据高效系统的开发。