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NIR medical imaging: spatial resolution and discrimination

机译:近红外医学成像:空间分辨率和分辨力

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Abstract: Several concepts have been proposed to improve the spatial resolution of near infrared (NIR) tomography, e.g. CW illumination with spatial collimation, deconvolution, Fourier plane filtering, impulse illumination with temporal discrimination, frequency modulated illumination with amplitude- and phase-sensitive detection,...Another point of major importance is that, for a given technique, the image obtained is due to a specific combination of the local variations of the diffusion and absorption coefficients. This second aspect has been studied much less systematically. Incoherent light transport in tissues can be modeled by the radiative transfer equation. The diffusion approximation is applicable to 'thick enough' tissue and is very useful by the simple analytic solutions it provides. If sources and boundary conditions are treated carefully, the validity of this approximation is already good at modest values of the source-detector distance - except at very early times. We use the diffusion approximation and a perturbation approach. For CW illumination, we quantitatively evaluate the image of a small 'defect' imbedded in a homogeneous tissue, as a function of the characteristics of the defect (position, volume, variations of diffusion, and absorption) and of the geometry (wide or narrow light beam, thickness of the tissue, position of the detector). We show how these results could be used to optimize the discrimination of NIR imaging techniques. !16
机译:摘要:已经提出了一些概念来提高近红外(NIR)层析成像的空间分辨率,例如具有空间准直的CW照明,去卷积,傅立叶平面滤波,具有时间分辨力的脉冲照明,具有幅度和相位敏感检测的调频照明......另一个重要的方面是,对于给定的技术,获得的图像是由于扩散和吸收系数的局部变化的特定组合。这第二方面的研究很少系统地进行。组织中不相干的光传输可以通过辐射传递方程建模。扩散近似适用于“足够厚”的组织,通过其提供的简单分析解决方案非常有用。如果仔细处理放射源和边界条件,则在非常短的放射源-检测器距离值上,这种近似方法的有效性已经很好-除非在很早的时候。我们使用扩散近似和微扰方法。对于连续波照明,我们根据缺陷的特征(位置,体积,扩散和吸收的变化)和几何形状(宽或窄)来定量评估嵌入均匀组织中的小“缺陷”的图像光束,组织的厚度,检测器的位置)。我们展示了如何将这些结果用于优化NIR成像技术的判别能力。 !16

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