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EDA-Net: Dense Aggregation of Deep and Shallow Information Achieves Quantitative Photoacoustic Blood Oxygenation Imaging Deep in Human Breast

机译:EDA-Net:深层和浅层信息的密集聚集实现了人类乳房深处的定量光声血氧充氧成像

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Accurately and quantitatively imaging blood oxygen saturation (sO_2) is a very meaningful application of photoacoustic tomography (PAT), which is an important indicator for measuring physiological diseases and assisting cancer diagnostic and treatment. Yet, due to the complex optical properties of heterogeneous biological tissues, the diffusely scattered light in the tissue faces the unknown wavelength-dependent optical attenuation and causes the uncertain distribution of the fluence, which fundamentally limits the quantification accuracy of PAT for imaging sO_2. To tackle this problem, we propose an architecture, named EDA-Net, with Encoder, Decoder and Aggregator, which can aggregate features for a richer representation. We argue that the dense aggregated information helps to extract the comprehensive context information from the multi-wavelength PA images, then accurately infer the quantitative distribution of sO_2. The numerical experiment is performed by using PA images, which are obtained by Monte Carlo optical preprocessing and k-Wave acoustic preprocessing based on clinically-obtained female breast phantom. We also explore the effect of the combination of different wavelengths on the accuracy of estimating sO_2 to guide the design of PA imaging systems for meeting clinical needs. The experimental results demonstrate the efficacy and robustness of our proposed method, and also compare it with other methods to further prove the reliability of our quantitative sO_2 results.
机译:准确定量地对血氧饱和度(sO_2)进行成像是光声层析成像(PAT)的非常有意义的应用,这是测量生理疾病和协助癌症诊断和治疗的重要指标。然而,由于异质生物组织的复杂光学特性,组织中的漫散射光面临着未知的与波长有关的光衰减,并导致通量的不确定分布,这从根本上限制了用于sO_2成像的PAT的定量精度。为了解决这个问题,我们提出了一种名为EDA-Net的体系结构,该体系结构具有Encoder,Decoder和Aggregator,可以聚合功能以获得更丰富的表示形式。我们认为,密集的聚集信息有助于从多波长PA图像中提取综合上下文信息,然后准确推断sO_2的定量分布。通过使用PA图像进行数值实验,PA图像是通过蒙特卡洛光学预处理和基于临床获得的女性乳房幻影的k-Wave声学预处理获得的。我们还探讨了不同波长的组合对sO_2估计精度的影响,以指导PA成像系统的设计以满足临床需求。实验结果证明了该方法的有效性和鲁棒性,并与其他方法进行了比较,以进一步证明我们的sO_2定量结果的可靠性。

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