Autofluorescence-based tissue characterization enhances clinical prospects of light-sheet-microscopy

Author:

Jacob Alice M.,Lindemann Anna F.,Wagenpfeil Julia,Geiger Sergej,Layer Yannik C.,Salam Babak,Panahabadi Sarah,Kurt Darius,Wintergerst Maximilian W. M.,Schildberg Frank A.,Kuetting Daniel,Attenberger Ulrike I.,Abdullah Zeinab,Böhner Alexander M. C.

Abstract

AbstractLight sheet fluorescence microscopy (LSFM) is a transformative imaging method that enables the visualization of non-dissected specimen in real-time 3D. Optical clearing of tissues is essential for LSFM, typically employing toxic solvents. Here, we test the applicability of a non-hazardous alternative, ethyl cinnamate (ECi). We comprehensively characterized autofluorescence (AF) spectra in diverse murine tissues—ocular globe, knee, and liver—employing LSFM under various excitation wavelengths (405–785 nm) to test the feasibility of unstained samples for diagnostic purposes, in particular regarding percutaneous biopsies, as they constitute to most harvested type of tissue sample in clinical routine. Ocular globe structures were best discerned with 640 nm excitation. Knee tissue showed complex variation in AF spectra variation influenced by tissue depth and structure. Liver exhibited a unique AF pattern, likely linked to vasculature. Hepatic tissue samples were used to demonstrate the compatibility of our protocol for antibody staining. Furthermore, we employed machine learning to augment raw images and segment liver structures based on AF spectra. Radiologists rated representative samples transferred to the clinical assessment software. Learning-generated images scored highest in quality. Additionally, we investigated an actual murine biopsy. Our study pioneers the application of AF spectra for tissue characterization and diagnostic potential of optically cleared unstained percutaneous biopsies, contributing to the clinical translation of LSFM.

Funder

Deutsche Forschungsgemeinschaft

Universitätsklinikum Bonn

Publisher

Springer Science and Business Media LLC

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