λSplit: Self-Supervised Content-Aware Spectral Unmixing for Fluorescence Microscopy

📅 2026-03-24
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📝 Abstract
In fluorescence microscopy, spectral unmixing aims to recover individual fluorophore concentrations from spectral images that capture mixed fluorophore emissions. Since classical methods operate pixel-wise and rely on least-squares fitting, their performance degrades with increasingly overlapping emission spectra and higher levels of noise, suggesting that a data-driven approach that can learn and utilize a structural prior might lead to improved results. Learning-based approaches for spectral imaging do exist, but they are either not optimized for microscopy data or are developed for very specific cases that are not applicable to fluorescence microscopy settings. To address this, we propose λSplit, a physics-informed deep generative model that learns a conditional distribution over concentration maps using a hierarchical Variational Autoencoder. A fully differentiable Spectral Mixer enforces consistency with the image formation process, while the learned structural priors enable state-of-the-art unmixing and implicit noise removal. We demonstrate λSplit on 3 real-world datasets that we synthetically cast into a total of 66 challenging spectral unmixing benchmarks. We compare our results against a total of 10 baseline methods, including classical methods and a range of learning-based methods. Our results consistently show competitive performance and improved robustness in high noise regimes, when spectra overlap considerably, or when the spectral dimensionality is lowered, making λSplit a new state-of-the-art for spectral unmixing of fluorescent microscopy data. Importantly, λSplit is compatible with spectral data produced by standard confocal microscopes, enabling immediate adoption without specialized hardware modifications.
Problem

Research questions and friction points this paper is trying to address.

spectral unmixing
fluorescence microscopy
overlapping spectra
noise robustness
data-driven methods
Innovation

Methods, ideas, or system contributions that make the work stand out.

spectral unmixing
fluorescence microscopy
physics-informed deep learning
variational autoencoder
self-supervised learning
F
Federico Carrara
Fondazione Human Technopole, Milan, Italy Università Campus Bio-Medico, Rome, Italy
T
Talley Lambert
Harvard Medical School, Boston, MA, USA
M
Mehdi Seifi
Fondazione Human Technopole, Milan, Italy
Florian Jug
Florian Jug
Fondazione Human Technopole
Computational MicroscopyComputational BiologyAIMachine LearningComputational Imaging