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Brief Title: HyperSpectral Imaging in Low Grade Glioma
Official Title: Validation of Label-free, Wide-field, Real-time Intra-operative Tissue Discrimination and Tumor Detection of Low Grade Glioma Using a Hyperspectral Imaging (HSI) Sensor/Camera Integrated in the Operative Microscope
Study ID: NCT04859725
Brief Summary: Low grade glioma (LGG) is a slowly evolving, highly invasive intrinsic brain tumor displaying only subtle tissue differences with the normal surrounding brain, hampering the attempts to visually discriminate tumor from normal brain, especially at the border interface. This makes anatomical borders hard to define during early maximal resection, which is the initial treatment strategy. Therefore, innovative, robust and easy-to-use real-time strategies for intra-operative detection and discrimination of (residual) LGG tumor tissue would strongly influence on-site, surgical decision making, enabling a maximal extent of resection. To validate this approach hyperspectral imaging (HSI) - using a SnapScan HSI-Camera (IMEC), stably mounted on an OPMI Pentero 900 microscope (Zeiss) - will be used to generate spectral imaging data patterns that discriminate in vivo low grade glioma tissue from normal brain both on the cortical and subcortical level.
Detailed Description: Included patients will undergo a resection of the low grade glioma as standard-of-care. Before, during and after the resection, HSI data ('datacubes') will be acquired by the SnapScan HSI camera on the microscope of all relevant areas of the exposed cortical surface and subcortical cavity walls. The exact points of which the datacubes will be acquired are defined by unequivocal single points on the neuronavigational system (Brainlab). From the points from which the datacubes have been obtained a corresponding tissue sample will be obtained (labeled biopsy) if tumor tissue is to be expected in that particular point, based on the current standard of care assessments intraoperatively using white light illumination on the microscope, intraoperative navigation and intraoperative ultrasound. As such, normally looking brain in the resection cavity wall, will only be biopsied if tumor free margins should be proven as part of the standard-of-care operative procedure (non-critically eloquent brain regions). The objective of this all is to get an initial high quality in vivo dataset to start exploring the potential of the technology. The project will follow a 'stop and go' design: during the first 9 months, the initially collected spectrally corrected datacubes will be analyzed using machine learning on coded data sets. After this initial phase, an interim analysis will be made from the full list of analyzed datacubes. If a reliable and robust discriminative signal can be detected in low grade glioma tissue, segregating these signals from those in normal tissue (as defined pathologically and/or radiologically), efficacy is demonstrated (proof of concept) and the trial will go on for further collecting of samples in the following 26 months. Within the expanded dataset, the different spectral data patterns will be translated into user's friendly pattern codes for rapid real-time, on-site detection and interpretation through development of dedicated software. If no reliable signal can be retrieved from low grade glioma tissue in vivo during the surgery, further recruitment of patients will be stopped. At that time, the investigators and partners will decide on whether or not relevant amendments to the study will be proposed or not.
Minimum Age: 18 Years
Eligible Ages: ADULT, OLDER_ADULT
Sex: ALL
Healthy Volunteers: No
UZ Leuven, Leuven, Vlaams-Brabant, Belgium
Name: Steven De Vleeschouwer, MD, PhD
Affiliation: UZ Leuven
Role: PRINCIPAL_INVESTIGATOR