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Three-dimensional Bayesian image reconstruction from sparse and noisy data sets: Near-infrared fluorescence tomography

机译:稀疏和嘈杂数据集的三维贝叶斯图像重建:近红外荧光层析成像

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摘要

A method for inverting measurements made on the surfaces of tissues for recovery of interior optical property maps is demonstrated for sparse near-infrared (NIR) fluorescence measurement sets on large tissue-simulating volumes with highly variable signal-to-noise ratio. A Bayesian minimum-variance reconstruction algorithm compensates for the spatial variability in signal-to-noise ratio that must be expected to occur in actual NIR contrast-enhanced diagnostic medical imaging. Image reconstruction is demonstrated by using frequency-domain photon migration measurements on 256-cm3 tissue-mimicking phantoms containing none, one, or two 1-cm3 heterogeneities with 50- to 100-fold greater concentration of Indocyanine Green dye over background levels. The spatial parameter estimate of absorption owing to the dye was reconstructed from only 160 to 296 surface measurements of emission light at 830 nm in response to incident 785-nm excitation light modulated at 100 MHz. Measurement error of acquired fluence at fluorescent emission wavelengths is shown to be highly variable. Convergence and quality of image reconstructions are improved by Bayesian conditioning incorporating (i) experimentally determined measurement error variance, (ii) recursively updated estimates of parameter uncertainty, and (iii) dynamic zonation. The results demonstrate that, to employ NIR fluorescence-enhanced optical imaging for large volumes, reconstruction approaches must account for the large range of signal-to-noise ratio associated with the measurements.
机译:证明了一种用于反转组织表面上的测量结果以恢复内部光学特性图的方法,该方法适用于在具有高度可变信噪比的大型组织模拟体积上的稀疏近红外(NIR)荧光测量集。贝叶斯最小方差重建算法可补偿信噪比中的空间变异性,而信噪比中的空间变异性必须在实际的NIR对比度增强型诊断医学成像中预期发生。通过频域光子迁移测量对256-cm 3 组织模仿体模进行频域迁移证明,该体模中没有,一个或两个1-cm 3 异质性为50-浓度比背景水平高100倍响应于以100 MHz调制的入射785 nm入射光,仅从830 nm处的发射光的160至296个表面测量值重建了由于染料引起的吸收的空间参数估计。荧光发射波长下获得的注量的测量误差显示为高度可变的。通过结合(i)实验确定的测量误差方差,(ii)递归更新的参数不确定性估计和(iii)动态分区,贝叶斯条件提高了图像重建的收敛性和质量。结果表明,要对体积进行NIR荧光增强光学成像,重建方法必须考虑与测量相关的大范围信噪比。

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