Intraoperative Tumor Identification with Hyperspectral Imaging

Our group has substantially contributed to the advancement of hyperspectral imaging (HSI) applied to neurosurgery, pushing this technology from initial methodological development to the establishment of clinical pipelines and public datasets. Below is a structured and up-to-date overview of all our main scientific works, with a concise note on what each paper introduces or validates.

Motivations & Objectives

  • Bringing HSI into the clinic to intelligently support the recognition of tumor margins during brain surgery.
  • Overcoming the challenges of high dimensionality and lack of public data through innovative pipelines, open-access databases, and optimized reduction/segmentation methods.
  • Accelerating the transition from lab prototypes to systems tested on real patients.

Methods and Results

  • Development of automatic spatio-spectral classification solutions for HSI images, enhancing safe intraoperative detection (PLOS ONE 2018).
  • Creation and release of the first public database of hyperspectral images from patients (IEEE Access 2019), enabling global benchmarking and open development.
  • Design of intraoperative visualization systems with HSI to highlight and delineate tumor margins in the operating room (Sensors 2018).
  • Introduction of new algorithms for manifold embedding and semantic segmentation: segmenting hyperspectral data efficiently and ensuring consistency with real morphology (IEEE TMI 2017).
  • Synthesis of the first clinical cohorts and real results from the HELICoiD project for introducing HSI in the operating room (IJS 2016).

 

Related Scientific Articles (with short description)

 

Resource & Team

  • Open-access HSI Human Brain dataset: IEEE Access 2019
  • Code/tools available upon request from the authors.
  • Daniele Ravì (segmentation, project design, supervision)
  • H.Fabelo, G.M. Callicó, S.Ortega, G-Z Yang, D. Bulters, J.F. Piñeiro, R. Lazcano, E. Juárez, S. Kabwama, BR Kiran, C. Sosa, A. Szolna, etc.

Multidisciplinary collaboration and sharing of public datasets to accelerate international research into intelligent imaging and surgery.