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Improving mesoscopic fluorescence molecular tomography through data reduction

机译:通过减少数据量来改善介观荧光分子层析成像

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摘要

Mesoscopic fluorescence molecular tomography (MFMT) is a novel imaging technique that aims at obtaining the 3-D distribution of molecular probes inside biological tissues at depths of a few millimeters. To achieve high resolution, around 100-150μm scale in turbid samples, dense spatial sampling strategies are required. However, a large number of optodes leads to sizable forward and inverse problems that can be challenging to compute efficiently. In this work, we propose a two-step data reduction strategy to accelerate the inverse problem and improve robustness. First, data selection is performed via signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR) criteria. Then principal component analysis (PCA) is applied to further reduce the size of the sensitivity matrix. We perform numerical simulations and phantom experiments to validate the effectiveness of the proposed strategy. In both in silico and in vitro cases, we are able to significantly improve the quality of MFMT reconstructions while reducing the computation times by close to a factor of two.
机译:介观荧光分子层析成像(MFMT)是一种新颖的成像技术,旨在获得生物组织内部分子探针在几毫米深度处的3-D分布。为了获得高分辨率,在浑浊的样品中规模约为100-150μm,需要密集的空间采样策略。但是,大量的光电二极管会导致相当大的正向和反向问题,这些问题可能难以有效地进行计算。在这项工作中,我们提出了两步的数据约简策略,以加速反问题并提高鲁棒性。首先,通过信噪比(SNR)和对比噪声比(CNR)标准执行数据选择。然后应用主成分分析(PCA)来进一步减小灵敏度矩阵的大小。我们执行数值模拟和幻像实验以验证所提出策略的有效性。在计算机和体外情况下,我们都可以显着提高MFMT重建的质量,同时将计算时间减少近两倍。

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