Brain tumors, particularly gliomas, pose a significant clinical challenge with rising incidence rates and high mortality. artificial intelligence combined with Hyperspectral Imaging (HSI) offers promising tools to improve surgical precision and patients’ outcomes. HSI offers unique advantages, including non-invasive nature and detailed spectral data, for enhanced tumor tissue differentiation. This study tailored the Vision Transformer (ViT) with techniques from remote sensing to segment nineteen spectral images of low- and high-grade gliomas with limited spectral bands. The choice of the ViT was motivated by its attention mechanism, enabling fine-grained distinction of subtle details. Segmentation focused on four classes: healthy tissue, tumor tissue, blood vessels and dura mater. A careful hyperparameter optimization was performed, resulting in the selection of two models based on a defined quality index. These models were evaluated using three experimental methodologies, achieving up to 98.24±2.50% average Overall Accuracy (OACC) and 99.61±0.66% average Area Under the Curve (AUC) in intra-patient classification. For inter-patient classification, the models achieved an average OACC up to 53.56±24.91% and an average AUC score up to 79.27±10.43%, highlighting areas of improvement. Comparable or improved performance was demonstrated versus other deep learning techniques applied to the same dataset, proving effectiveness with few spectral bands. Some results were lower than a similar application with more bands, but they underscore the adaptability and potential of the ViT to handle challenging datasets. Insights from hyperparameter optimization showcase ViT’s promise as a robust tool for tumor identification, paving the way for integration into real-time clinical workflows and advancing precision medicine.

Vision Transformer for Brain Tumor Detection Using Hyperspectral Images with Reduced Spectral Bands

Ragusa, Domenico;Gazzoni, Marco;Torti, Emanuele;Marenzi, Elisa;Leporati, Francesco
2025-01-01

Abstract

Brain tumors, particularly gliomas, pose a significant clinical challenge with rising incidence rates and high mortality. artificial intelligence combined with Hyperspectral Imaging (HSI) offers promising tools to improve surgical precision and patients’ outcomes. HSI offers unique advantages, including non-invasive nature and detailed spectral data, for enhanced tumor tissue differentiation. This study tailored the Vision Transformer (ViT) with techniques from remote sensing to segment nineteen spectral images of low- and high-grade gliomas with limited spectral bands. The choice of the ViT was motivated by its attention mechanism, enabling fine-grained distinction of subtle details. Segmentation focused on four classes: healthy tissue, tumor tissue, blood vessels and dura mater. A careful hyperparameter optimization was performed, resulting in the selection of two models based on a defined quality index. These models were evaluated using three experimental methodologies, achieving up to 98.24±2.50% average Overall Accuracy (OACC) and 99.61±0.66% average Area Under the Curve (AUC) in intra-patient classification. For inter-patient classification, the models achieved an average OACC up to 53.56±24.91% and an average AUC score up to 79.27±10.43%, highlighting areas of improvement. Comparable or improved performance was demonstrated versus other deep learning techniques applied to the same dataset, proving effectiveness with few spectral bands. Some results were lower than a similar application with more bands, but they underscore the adaptability and potential of the ViT to handle challenging datasets. Insights from hyperparameter optimization showcase ViT’s promise as a robust tool for tumor identification, paving the way for integration into real-time clinical workflows and advancing precision medicine.
2025
Esperti anonimi
Inglese
Internazionale
ELETTRONICO
13
121704
121719
15
Vision transformer, hyperspectral imaging, glioblastoma detection, hyperparameter optimization, deep learning, medical image analysis, real-time clinical diagnosis
https://ieeexplore.ieee.org/document/11077150
5
info:eu-repo/semantics/article
262
Ragusa, Domenico; Gazzoni, Marco; Torti, Emanuele; Marenzi, Elisa; Leporati, Francesco
1 Contributo su Rivista::1.1 Articolo in rivista
none
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/1528375
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