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A Linear Correction for Principal Component Analysis of Dynamic Fluorescence Diffuse Optical Tomography Images

机译:动态荧光扩散光学层析成像图像主成分分析的线性校正

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The analysis of dynamic fluorescence diffuse optical tomography (D-FDOT) is important both for drug delivery research and for medical diagnosis and treatment. The low spatial resolution and complex kinetics, however, limit the ability of FDOT in resolving drug distributions within small animals. Principal component analysis (PCA) provides the capability of detecting and visualizing functional structures with different kinetic patterns from D-FDOT images. A particular challenge in using PCA is to reduce the level of noise in D-FDOT images. This is particularly relevant in drug study, where the time-varying fluorophore concentration (drug concentration) will result in the reconstructed images containing more noise and, therefore, affect the performance of PCA. In this paper, a new linear corrected method is proposed for modeling these time-varying fluorescence measurements before performing PCA. To evaluate the performance of the new method in resolving drug biodistribution, the metabolic processes of indocyanine green within mouse is dynamically simulated and used as the input data of PCA. Simulation results suggest that the principal component (PC) images generated using the new method improve SNR and discrimination capability, compared to the PC images generated using the uncorrected D-FDOT images.
机译:动态荧光漫射光学层析成像(D-FDOT)的分析对于药物输送研究以及医学诊断和治疗都非常重要。但是,低空间分辨率和复杂的动力学限制了FDOT解决小动物体内药物分布的能力。主成分分析(PCA)提供了从D-FDOT图像检测和可视化具有不同动力学模式的功能结构的能力。使用PCA的一个特殊挑战是降低D-FDOT图像中的噪声水平。这在药物研究中尤其重要,在该研究中,随时间变化的荧光团浓度(药物浓度)将导致重建的图像包含更多的噪声,因此影响PCA的性能。在本文中,提出了一种新的线性校正方法,用于在执行PCA之前对这些随时间变化的荧光测量建模。为了评估新方法解决药物生物分布的性能,动态模拟了小鼠体内吲哚菁绿的代谢过程,并将其用作PCA的输入数据。仿真结果表明,与使用未经校正的D-FDOT图像生成的PC图像相比,使用新方法生成的主成分(PC)图像可提高SNR和判别能力。

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