Multispectral photoacoustic imaging (PAI) is an emerging imaging modality which enables the recovery of functional tissue parameters such as blood oxygenation. However, the underlying inverse problems are potentially ill-posed, meaning that radically different tissue properties may - in theory - yield comparable measurements. In this work, we present a new approach for handling this specific type of uncertainty by leveraging the concept of conditional invertible neural networks (cINNs). Specifically, we propose going beyond commonly used point estimates for tissue oxygenation and converting single-pixel initial pressure spectra to the full posterior probability density. This way, the inherent ambiguity of a problem can be encoded with multiple modes in the output. Based on the presented architecture, we demonstrate two use cases which leverage this information to not only detect and quantify but also to compensate for uncertainties: (1) photoacoustic device design and (2) optimization of photoacoustic image acquisition. Our in silico studies demonstrate the potential of the proposed methodology to become an important building block for uncertainty-aware reconstruction of physiological parameters with PAI.
翻译:多光谱光声成像(PAI)是一种新兴的成像模式,能够恢复血液氧化等功能组织参数,但是,潜在的反面问题可能存在潜在的错误,这意味着在理论上,根本不同的组织特性可能会产生可比较的测量结果。在这项工作中,我们提出了一种新的方法,通过利用有条件的可视神经网络概念来处理这种具体类型的不确定性。具体地说,我们提议超越组织氧化的常用点估计,并将单像素初始压力光谱转换成完整的后方概率密度。这样,一个问题的内在模糊性可以用多种模式对输出进行编码。我们根据所提出的结构,展示了两种利用这一信息不仅探测和量化,而且补偿不确定性的案例:(1)光声设备设计和(2)光声波图像获取的优化。我们在硅研究中表明,拟议方法有可能成为与PAI一起对生理参数进行不确定性重建的重要建筑块。