Fazel Mohamadreza, Jazani Sina, Scipioni Lorenzo, Vallmitjana Alexander, Zhu Songning, Gratton Enrico, Digman Michelle A, Pressé Steve
Center for Biological Physics and Department of Physics, Arizona State University, Tempe, Arizona 85287, United States.
Department of Biomedical Engineering, University of California Irvine, Irvine, California 92697, United States; Laboratory of Fluorescence Dynamics, The Henry Samueli School of Engineering, University of California, Irvine, California 92697, United States.
ACS Photonics. 2023 Oct 18;10(10):3558-3569. doi: 10.1021/acsphotonics.3c00595. Epub 2023 Sep 21.
Fluorescence lifetime imaging microscopy (FLIM) has become a standard tool in the quantitative characterization of subcellular environments. However, quantitative FLIM analyses face several challenges. First, spatial correlations between pixels are often ignored as signal from individual pixels is analyzed independently thereby limiting spatial resolution. Second, existing methods deduce photon ratios instead of absolute lifetime maps. Next, the number of fluorophore species contributing to the signal is unknown, while excited state lifetimes with <1 ns difference are difficult to discriminate. Finally, existing analyses require high photon budgets and often cannot rigorously propagate experimental uncertainty into values over lifetime maps and number of species involved. To overcome all of these challenges simultaneously and self-consistently at once, we propose the first doubly nonparametric framework. That is, we learn the number of species (using Beta-Bernoulli process priors) and absolute maps of these fluorophore species (using Gaussian process priors) by leveraging information from pulses not leading to observed photon. We benchmark our framework using a broad range of synthetic and experimental data and demonstrate its robustness across a number of scenarios including cases where we recover lifetime differences between species as small as 0.3 ns with merely 1000 photons.
荧光寿命成像显微镜(FLIM)已成为亚细胞环境定量表征的标准工具。然而,定量FLIM分析面临若干挑战。首先,由于对各个像素的信号进行独立分析,常常忽略像素之间的空间相关性,从而限制了空间分辨率。其次,现有方法推导的是光子比率而非绝对寿命图。此外,对信号有贡献的荧光团种类数量未知,而相差小于1 ns的激发态寿命难以区分。最后,现有分析需要高光子预算,且往往无法将实验不确定性严格传播到寿命图和所涉及的种类数量的数值中。为了同时且自洽地克服所有这些挑战,我们提出了首个双重非参数框架。也就是说,我们通过利用未产生观测光子的脉冲信息来学习种类数量(使用贝塔 - 伯努利过程先验)以及这些荧光团种类的绝对图(使用高斯过程先验)。我们使用广泛的合成数据和实验数据对我们的框架进行基准测试,并证明其在多种情况下的稳健性,包括在仅用1000个光子就能恢复小至0.3 ns的种类间寿命差异的情况。