Please use this identifier to cite or link to this item: http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31916
Title: Physics-informed UNETR: A Brain Tumor Segmentation Combining UNETR Architecture and Physics Constraints Using Brats2021 Dataset and Insights for Molecular Imaging
Authors: Dada, Michael
Awojoyogbe, Bamidele
Lawal, Samuel
Udeme, Iniobong
Sanni, Henry
Olasehinde, Emmanuel
Iorumbur, Moses
Akinyemi, Oluwatobi
Keywords: Brain Tumor Segmentation
Magnetic Resonance Imaging (MRI)
Physics-Informed UNETR
Reaction–Diffusion Equation
Deep Learning;
Artificial Intelligence
Physics-Informed Machine Learning (PIML)
Vision Transformer
Issue Date: 20-Apr-2026
Publisher: Springer
Citation: Michael O. Dada, Bamidele O. Awojoyogbe, Samuel O. Lawal, Iniobong N. Udeme, Henry A. Sanni, Emmanuel O. Olasehinde, Moses A. Iorumbur, Oluwatobi Akinyemi. (2025). Physics-informed UNETR: A Brain Tumor Segmentation Combining UNETR Architecture and Physics Constraints Using Brats2021 Dataset and Insights for Molecular Imaging. Molecular Imaging and Biology 28 (Suppl 2), 224-225.
Series/Report no.: Curriculum Vitae;37
Abstract: This Physics-Informed UNETR model incorporates both learned features from MRI scans and the physical constraints of tumor dynamics, offering a more holistic and accurate segmentation. By integrating reaction-diffusion equations, which govern tumor expansion, the model aims to provide more accurate segmentation results, especially in complex cases with irregular tumor boundaries. The problem, therefore, lies in how to effectively combine state-of-the-art deep learning techniques with well-established biological models to improve the accuracy and reliability of brain tumor segmentation. This study seeks to address this gap by developing a novel approach that leverages both data and physics, providing a more informed and robust solution to the brain tumor segmentation problem. The physics models incorporated could allow us gain molecular insights into brain tumors especially cell metastatic processes via diffusion and cell transport.
Description: None
URI: http://irepo.futminna.edu.ng:8080/jspui/handle/123456789/31916
Appears in Collections:Physics

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