4.7 Article

Hyperspectral data processing improves PpIX contrast during fluorescence guided surgery of human brain tumors

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SCIENTIFIC REPORTS
卷 7, 期 -, 页码 -

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NATURE PORTFOLIO
DOI: 10.1038/s41598-017-09727-8

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  1. National Institute of Health through the National Institute of Neurological Disorders and Stroke (NINDS) [R01NS052274]
  2. National Cancer Institute (NCI) [K25CA164248-01]
  3. pilot translational award from SYNERGY at Dartmouth Hitchcock Medical Center

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Fluorescence guided surgery (FGS) using aminolevulinic-acid (ALA) induced protoporphyrin IX (PpIX) provides intraoperative visual contrast between normal and malignant tissue during resection of high grade gliomas. However, maps of the PpIX biodistribution within the surgical field based on either visual perception or the raw fluorescence emissions can be masked by background signals or distorted by variations in tissue optical properties. This study evaluates the impact of algorithmic processing of hyperspectral imaging acquisitions on the sensitivity and contrast of PpIX maps. Measurements in tissue-simulating phantoms showed that (I) spectral fitting enhanced PpIX sensitivity compared with visible or integrated fluorescence, (II) confidence-filtering automatically determined the lower limit of detection based on the strength of the PpIX spectral signature in the collected emission spectrum (0.014-0.041 mu g/ml in phantoms), and (III) optical-property corrected PpIX estimates were more highly correlated with independent probe measurements (r = 0.98) than with spectral fitting alone (r = 0.91) or integrated fluorescence (r = 0.82). Application to in vivo case examples from clinical neurosurgeries revealed changes to the localization and contrast of PpIX maps, making concentrations accessible that were not visually apparent. Adoption of these methods has the potential to maintain sensitive and accurate visualization of PpIX contrast over the course of surgery.

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