npj Precision Oncology (Nov 2023)

Hyperspectral imaging benchmark based on machine learning for intraoperative brain tumour detection

  • Raquel Leon,
  • Himar Fabelo,
  • Samuel Ortega,
  • Ines A. Cruz-Guerrero,
  • Daniel Ulises Campos-Delgado,
  • Adam Szolna,
  • Juan F. Piñeiro,
  • Carlos Espino,
  • Aruma J. O’Shanahan,
  • Maria Hernandez,
  • David Carrera,
  • Sara Bisshopp,
  • Coralia Sosa,
  • Francisco J. Balea-Fernandez,
  • Jesus Morera,
  • Bernardino Clavo,
  • Gustavo M. Callico

DOI
https://doi.org/10.1038/s41698-023-00475-9
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 17

Abstract

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Abstract Brain surgery is one of the most common and effective treatments for brain tumour. However, neurosurgeons face the challenge of determining the boundaries of the tumour to achieve maximum resection, while avoiding damage to normal tissue that may cause neurological sequelae to patients. Hyperspectral (HS) imaging (HSI) has shown remarkable results as a diagnostic tool for tumour detection in different medical applications. In this work, we demonstrate, with a robust k-fold cross-validation approach, that HSI combined with the proposed processing framework is a promising intraoperative tool for in-vivo identification and delineation of brain tumours, including both primary (high-grade and low-grade) and secondary tumours. Analysis of the in-vivo brain database, consisting of 61 HS images from 34 different patients, achieve a highest median macro F1-Score result of 70.2 ± 7.9% on the test set using both spectral and spatial information. Here, we provide a benchmark based on machine learning for further developments in the field of in-vivo brain tumour detection and delineation using hyperspectral imaging to be used as a real-time decision support tool during neurosurgical workflows.