Artificial Intelligence in Glioma Imaging: Challenges and Advances
Weina Jin, Mostafa Fatehi, Kumar Abhishek, Mayur Mallya, Brian Toyota,, and Ghassan Hamarneh

TL;DR
This paper reviews recent advances in AI techniques for glioma imaging, focusing on overcoming data, training, and evaluation challenges to develop clinically useful AI tools.
Contribution
It summarizes innovative methods in data augmentation, training strategies, and evaluation to enhance AI utility in glioma imaging.
Findings
Image imputation and synthesis improve data availability.
Training strategies enhance model performance and generalization.
Standardized evaluation methods increase AI reliability in clinical settings.
Abstract
Primary brain tumors including gliomas continue to pose significant management challenges to clinicians. While the presentation, the pathology, and the clinical course of these lesions are variable, the initial investigations are usually similar. Patients who are suspected to have a brain tumor will be assessed with computed tomography (CT) and magnetic resonance imaging (MRI). The imaging findings are used by neurosurgeons to determine the feasibility of surgical resection and plan such an undertaking. Imaging studies are also an indispensable tool in tracking tumor progression or its response to treatment. As these imaging studies are non-invasive, relatively cheap and accessible to patients, there have been many efforts over the past two decades to increase the amount of clinically-relevant information that can be extracted from brain imaging. Most recently, artificial intelligence…
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Taxonomy
MethodsInterpretability
