Raman Spectroscopy for Rapid Evaluation of Surgical Margins during Breast Cancer Lumpectomy

Willie C. Zúñiga(Harvey Mudd College), Veronica Jones(Harvey Mudd College), Sarah M. Anderson(Harvey Mudd College), Alex Echevarria(Harvey Mudd College), Nathaniel L. Miller(Harvey Mudd College), Connor Stashko(Harvey Mudd College), Daniel Schmolze(City Of Hope National Medical Center), Philip D. Cha(Harvey Mudd College), Ragini Kothari(City Of Hope National Medical Center), Yuman Fong(City Of Hope National Medical Center), Michael C. Storrie‐Lombardi(Harvey Mudd College)
Scientific Reports
October 10, 2019
Cited by 98Open Access
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Abstract

Failure to precisely distinguish malignant from healthy tissue has severe implications for breast cancer surgical outcomes. Clinical prognoses depend on precisely distinguishing healthy from malignant tissue during surgery. Laser Raman spectroscopy (LRS) has been previously shown to differentiate benign from malignant tissue in real time. However, the cost, assembly effort, and technical expertise needed for construction and implementation of the technique have prohibited widespread adoption. Recently, Raman spectrometers have been developed for non-medical uses and have become commercially available and affordable. Here we demonstrate that this current generation of Raman spectrometers can readily identify cancer in breast surgical specimens. We evaluated two commercially available, portable, near-infrared Raman systems operating at excitation wavelengths of either 785 nm or 1064 nm, collecting a total of 164 Raman spectra from cancerous, benign, and transitional regions of resected breast tissue from six patients undergoing mastectomy. The spectra were classified using standard multivariate statistical techniques. We identified a minimal set of spectral bands sufficient to reliably distinguish between healthy and malignant tissue using either the 1064 nm or 785 nm system. Our results indicate that current generation Raman spectrometers can be used as a rapid diagnostic technique distinguishing benign from malignant tissue during surgery.


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