Author:
Ember Katherine,Dallaire Frédérick,Plante Arthur,Sheehy Guillaume,Guiot Marie-Christine,Agarwal Rajeev,Yadav Rajeev,Douet Alice,Selb Juliette,Tremblay Jean Philippe,Dupuis Alex,Marple Eric,Urmey Kirk,Rizea Caroline,Harb Armand,McCarthy Lily,Schupper Alexander,Umphlett Melissa,Tsankova Nadejda,Leblond Frédéric,Hadjipanayis Constantinos,Petrecca Kevin
Abstract
AbstractSafe and effective brain tumor surgery aims to remove tumor tissue, not non-tumoral brain. This is a challenge since tumor cells are often not visually distinguishable from peritumoral brain during surgery. To address this, we conducted a multicenter study testing whether the Sentry System could distinguish the three most common types of brain tumors from brain tissue in a label-free manner. The Sentry System is a new real time, in situ brain tumor detection device that merges Raman spectroscopy with machine learning tissue classifiers. Nine hundred and seventy-six in situ spectroscopy measurements and colocalized tissue specimens were acquired from 67 patients undergoing surgery for glioblastoma, brain metastases, or meningioma to assess tumor classification. The device achieved diagnostic accuracies of 91% for glioblastoma, 97% for brain metastases, and 96% for meningiomas. These data show that the Sentry System discriminated tumor containing tissue from non-tumoral brain in real time and prior to resection.
Funder
TransMedTech Institute
NSERC
Fonds de recherche du Québec – Nature et technologies
Publisher
Springer Science and Business Media LLC
Cited by
2 articles.
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