Department of Mathematics and Statistics, University at Albany, SUNY, Albany, NY 12222, United States.
Department of Biology, University at Albany, SUNY, Albany, NY 12222, United States.
Bioinformatics. 2023 Apr 3;39(4). doi: 10.1093/bioinformatics/btad159.
Multispectral biological fluorescence microscopy has enabled the identification of multiple targets in complex samples. The accuracy in the unmixing result degrades (i) as the number of fluorophores used in any experiment increases and (ii) as the signal-to-noise ratio in the recorded images decreases. Further, the availability of prior knowledge regarding the expected spatial distributions of fluorophores in images of labeled cells provides an opportunity to improve the accuracy of fluorophore identification and abundance.
We propose a regularized sparse and low-rank Poisson regression unmixing approach (SL-PRU) to deconvolve spectral images labeled with highly overlapping fluorophores which are recorded in low signal-to-noise regimes. First, SL-PRU implements multipenalty terms when pursuing sparseness and spatial correlation of the resulting abundances in small neighborhoods simultaneously. Second, SL-PRU makes use of Poisson regression for unmixing instead of least squares regression to better estimate photon abundance. Third, we propose a method to tune the SL-PRU parameters involved in the unmixing procedure in the absence of knowledge of the ground truth abundance information in a recorded image. By validating on simulated and real-world images, we show that our proposed method leads to improved accuracy in unmixing fluorophores with highly overlapping spectra.
The source code used for this article was written in MATLAB and is available with the test data at https://github.com/WANGRUOGU/SL-PRU.
多光谱生物荧光显微镜使人们能够在复杂样本中识别多个目标。在任何实验中使用的荧光团数量增加时,解混结果的准确性会降低(i),以及记录图像中的信噪比降低时,准确性也会降低(ii)。此外,在标记细胞的图像中,有关荧光团预期空间分布的先验知识的可用性为提高荧光团识别和丰度的准确性提供了机会。
我们提出了一种正则化稀疏和低秩泊松回归解混方法(SL-PRU),用于解卷积具有高度重叠荧光团的光谱图像,这些荧光团在低信噪比条件下记录。首先,SL-PRU 在追求小邻域中生成的丰度的稀疏性和空间相关性时,实现了多惩罚项。其次,SL-PRU 利用泊松回归进行解混,而不是最小二乘回归,以更好地估计光子丰度。第三,我们提出了一种在没有记录图像中真实丰度信息的情况下,调整解混过程中涉及的 SL-PRU 参数的方法。通过对模拟和真实世界图像的验证,我们表明我们提出的方法可以提高具有高度重叠光谱的荧光团解混的准确性。
本文使用的源代码是用 MATLAB 编写的,测试数据可在 https://github.com/WANGRUOGU/SL-PRU 上获得。