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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >A Fully Constrained Optimization Method for Time-Resolved Multispectral Fluorescence Lifetime Imaging Microscopy Data Unmixing
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A Fully Constrained Optimization Method for Time-Resolved Multispectral Fluorescence Lifetime Imaging Microscopy Data Unmixing

机译:时间分辨多光谱荧光寿命成像显微数据分解的完全约束优化方法

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摘要

This paper presents a new unmixing methodology of multispectral fluorescence lifetime imaging microscopy (m-FLIM) data, in which the spectrum is defined as the combination of time-domain fluorescence decays at multiple emission wavelengths. The method is based on a quadratic constrained optimization (CO) algorithm that provides a closed-form solution under equality and inequality restrictions. In this paper, it is assumed that the time-resolved fluorescence spectrum profiles of the constituent components are linearly independent and known a priori. For comparison purposes, the standard least squares (LS) solution and two constrained versions nonnegativity constrained least squares (NCLS) and fully constrained least squares (FCLS) (Heinz and Chang, 2001) are also tested. Their performance was evaluated by using synthetic simulations, as well as imaged samples from fluorescent dyes and ex vivo tissue. In all the synthetic evaluations, the CO obtained the best accuracy in the estimations of the proportional contributions. CO could achieve an improvement ranging between 41% and 59% in the relative error compared to LS, NCLS, and FCLS at different signal-to-noise ratios. A liquid mixture of fluorescent dyes was also prepared and imaged in order to provide a controlled scenario with real data, where CO and FCLS obtained the best performance. The CO and FCLS were also tested with 20 ex vivo samples of human coronary arteries, where the expected concentrations are qualitatively known. A certainty measure was employed to assess the confidence in the estimations made by each algorithm. The experiments confirmed a better performance of CO, since this method is optimal with respect to equality and inequality restrictions in the linear unmixing formulation. Thus, the evaluation showed that CO achieves an accurate characterization of the samples. Furthermore, CO is a computational efficient alternative to estimate the abundance of components in m-FLIM data, since- a global optimal solution is always guaranteed in a closed form.
机译:本文提出了一种多光谱荧光寿命成像显微镜(m-FLIM)数据的新的混合方法,其中光谱被定义为在多个发射波长下时域荧光衰减的组合。该方法基于二次约束优化(CO)算法,该算法在等式和不等式限制下提供了封闭形式的解决方案。在本文中,假设组成成分的时间分辨荧光光谱曲线是线性独立的,并且是先验的。为了进行比较,还测试了标准最小二乘法(LS)和两个约束版本的非负约束最小二乘(NCLS)和完全约束最小二乘(FCLS)(Heinz和Chang,2001)。通过使用合成模拟以及荧光染料和离体组织的成像样品,评估了它们的性能。在所有综合评估中,CO在比例贡献估计中均获得了最佳准确性。与LS,NCLS和FCLS相比,在不同的信噪比下,CO的相对误差可提高41%至59%。还准备了荧光染料的液体混合物并进行成像,以提供具有真实数据的可控方案,其中CO和FCLS获得最佳性能。还使用20种人冠状动脉的离体样品对CO和FCLS进行了测试,其中定性已知了预期浓度。确定性度量用于评估每种算法所作估计的置信度。实验证实了CO的更好性能,因为相对于线性解混配方中的均等和不等式限制,此方法是最佳的。因此,评估表明,CO可实现样品的准确表征。此外,CO是一种计算效率高的替代方案,可用来估计m-FLIM数据中的组件数量,因为始终可以以封闭形式保证全局最优解。

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