Fazel Mohamadreza, Hoseini Reza, Saurabh Ayush, Xu Lance W Q, Scipioni Lorenzo, Tedeschi Giulia, Gratton Enrico, Digman Michelle A, Pressé Steve
Center for Biological Physics, Arizona State University, Tempe, AZ 85287, USA.
Department of Physics, Arizona State University, Tempe, AZ 85287, USA.
bioRxiv. 2025 Aug 12:2025.08.04.668462. doi: 10.1101/2025.08.04.668462.
Spectral fluorescence lifetime imaging (S-FLIM) allows for the simultaneous deconvolution of signal from multiple fluorophore species by leveraging both spectral and lifetime information. However, existing analyses still face multiple difficulties in decoding information collected from typical S-FLIM experiments. These include: using information from pre-calibrated spectra in environments that may differ from the cellular context in which S-FLIM experiments are performed; limitations in the ability to deconvolute species due to overlapping spectra; high photon budget requirements, typically about a hundred photons per pixel per species. Yet information on the spectra themselves are already encoded in the data and do not require pre-calibration. What is more, efficient photon-by-photon analyses are possible reducing both the required photon budget and making it possible to use larger budgets in order to discriminate small differences in spectra to resolve spatially co-localized fluorophore species. To achieve this, we propose a Bayesian S-FLIM framework capable of simultaneously learning spectra and lifetimes photon-by-photon ultimately using limited photon counts and being highly data efficient. We demonstrate the proposed framework using a range of synthetic and experimental data and show that it can deconvolve up to 9 species with heavily overlapped spectra.
光谱荧光寿命成像(S-FLIM)通过利用光谱和寿命信息,能够对来自多种荧光团的信号进行同时解卷积。然而,现有的分析方法在解读典型S-FLIM实验收集到的信息时仍面临诸多困难。这些困难包括:在可能与进行S-FLIM实验的细胞环境不同的环境中使用预先校准光谱的信息;由于光谱重叠导致解卷积荧光团种类的能力受限;光子预算要求高,通常每种荧光团每个像素约需一百个光子。然而,光谱本身的信息已经编码在数据中,不需要预先校准。此外,逐光子的高效分析是可行的,这既能减少所需的光子预算,又能使用更大的预算来区分光谱中的微小差异,以分辨空间共定位的荧光团种类。为实现这一目标,我们提出了一种贝叶斯S-FLIM框架,该框架能够逐光子地同时学习光谱和寿命,最终使用有限的光子计数并具有高度的数据效率。我们使用一系列合成数据和实验数据对所提出的框架进行了演示,结果表明它能够对光谱严重重叠的多达9种荧光团进行解卷积。