| Literature DB >> 34092890 |
Joshua Deal1,2,3, Bradley Harris4, Will Martin4, Malvika Lall5, Carmen Lopez4, Paul Rider6, Carole Boudreaux7, Thomas Rich2,3, Silas J Leavesley1,2,3.
Abstract
Autofluorescence has historically been considered a nuisance in medical imaging. Many endogenous fluorophores, specifically, collagen, elastin, NADH, and FAD, are found throughout the human body. Diagnostically, these signals can be prohibitive since they can outcompete signals introduced for diagnostic purposes. Recent advances in hyperspectral imaging have allowed the acquisition of significantly more data in a shorter time period by scanning the excitation spectra of fluorophores. The reduced acquisition time and increased signal-to-noise ratio allow for separation of significantly more fluorophores than previously possible. Here, we propose to utilize excitation-scanning of autofluorescence to examine tissues and diagnose pathologies. Spectra of autofluorescent molecules were obtained using a custom inverted microscope (TE-2000, Nikon Instruments) with a Xe arc lamp and thin film tunable filter array (VersaChrome, Semrock, Inc.) Scans utilized excitation wavelengths from 360 nm to 550 nm in 5 nm increments. The resultant spectra were used to examine hyperspectral image stacks from various collaborative studies, including an atherosclerotic rat model and a colon cancer study. Hyperspectral images were analyzed with ENVI and custom Matlab scripts including linear spectral unmixing (LSU) and principal component analysis (PCA). Initial results suggest the ability to separate the signals of endogenous fluorophores and measure the relative concentrations of fluorophores among healthy and diseased states of similar tissues. These results suggest pathology-specific changes to endogenous fluorophores can be detected using excitation-scanning hyperspectral imaging. Future work will expand the library of pure molecules and will examine more defined disease states.Entities:
Keywords: Autofluorescence; Fluorescence; Hyperspectral; Linear Spectral Unmixing; Microscopy; Spectroscopy
Year: 2018 PMID: 34092890 PMCID: PMC8176565 DOI: 10.1117/12.2290818
Source DB: PubMed Journal: Proc SPIE Int Soc Opt Eng ISSN: 0277-786X