Quantitative, Comparable Coherent Anti-Stokes Raman Scattering (CARS) Spectroscopy: Correcting Errors in Phase Retrieval
Charles H. Camp Jr., Young Jong Lee, Marcus T. Cicerone

TL;DR
This paper introduces a new method for more accurate phase retrieval in CARS spectroscopy, reducing errors caused by nonresonant background estimation, thereby enabling more reliable quantitative spectral analysis.
Contribution
The authors develop a novel phase correction technique for CARS spectroscopy that improves sample-to-sample comparability and reduces errors from background estimation.
Findings
Significant error reduction in phase retrieval using the new method.
Enhanced consistency of spectra across different samples and instruments.
Demonstrated applicability to biological tissue imaging.
Abstract
Coherent anti-Stokes Raman scattering (CARS) microspectroscopy has demonstrated significant potential for biological and materials imaging. To date, however, the primary mechanism of disseminating CARS spectroscopic information is through pseudocolor imagery, which explicitly neglects a vast majority of the hyperspectral data. Furthermore, current paradigms in CARS spectral processing do not lend themselves to quantitative sample-to-sample comparability. The primary limitation stems from the need to accurately measure the so-called nonresonant background (NRB) that is used to extract the chemically-sensitive Raman information from the raw spectra. Measurement of the NRB on a pixel-by-pixel basis is a nontrivial task; thus, reference NRB from glass or water are typically utilized, resulting in error between the actual and estimated amplitude and phase. In this manuscript, we present a…
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