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Tumor margin assessment of surgical tissue specimen of cancer patients using label-free hyperspectral imaging. | LitMetric

AI Article Synopsis

  • Researchers are developing a label-free hyperspectral imaging (HSI) technique to assess tumor margins during surgeries for head and neck cancer.
  • The method uses high-resolution images taken at different wavelengths to classify cancerous and benign tissues, showing an average accuracy of 90%-94% in identifying tissue types.
  • HSI outperformed other imaging methods like autofluorescence and fluorescence imaging, indicating its strong potential for improving surgical outcomes and warranting further technological development.

Article Abstract

We are developing label-free hyperspectral imaging (HSI) for tumor margin assessment. HSI data, hypercube (x,y,λ), consists of a series of high-resolution images of the same field of view that are acquired at different wavelengths. Every pixel on the HSI image has an optical spectrum. We developed preprocessing and classification methods for HSI data. We used spectral features from HSI data for the classification of cancer and benign tissue. We collected surgical tissue specimens from 16 human patients who underwent head and neck (H&N) cancer surgery. We acquired both HSI, autofluorescence images, and fluorescence images with 2-NBDG and proflavine from the specimens. Digitized histologic slides were examined by an H&N pathologist. The hyperspectral imaging and classification method was able to distinguish between cancer and normal tissue from oral cavity with an average accuracy of 90±8%, sensitivity of 89±9%, and specificity of 91±6%. For tissue specimens from the thyroid, the method achieved an average accuracy of 94±6%, sensitivity of 94±6%, and specificity of 95±6%. Hyperspectral imaging outperformed autofluorescence imaging or fluorescence imaging with vital dye (2-NBDG or proflavine). This study suggests that label-free hyperspectral imaging has great potential for tumor margin assessment in surgical tissue specimens of H&N cancer patients. Further development of the hyperspectral imaging technology is warranted for its application in image-guided surgery.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6169990PMC
http://dx.doi.org/10.1117/12.2249803DOI Listing

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