QuickTumorNet: Fast Automatic Multi-Class Segmentation of Brain Tumors
Benjamin Maas, Erfan Zabeh, Soroush Arabshahi

TL;DR
QuickTumorNet is an automated deep learning model that rapidly and accurately segments brain tumors in MRI scans, aiding clinicians in diagnosis and treatment planning.
Contribution
The paper introduces QuickTumorNet, a novel end-to-end CNN-based method for fast multi-class brain tumor segmentation from MRI images.
Findings
Demonstrated high accuracy in tumor segmentation.
Achieved faster processing times compared to manual methods.
Validated on a dataset of 233 patient images.
Abstract
Non-invasive techniques such as magnetic resonance imaging (MRI) are widely employed in brain tumor diagnostics. However, manual segmentation of brain tumors from 3D MRI volumes is a time-consuming task that requires trained expert radiologists. Due to the subjectivity of manual segmentation, there is low inter-rater reliability which can result in diagnostic discrepancies. As the success of many brain tumor treatments depends on early intervention, early detection is paramount. In this context, a fully automated segmentation method for brain tumor segmentation is necessary as an efficient and reliable method for brain tumor detection and quantification. In this study, we propose an end-to-end approach for brain tumor segmentation, capitalizing on a modified version of QuickNAT, a brain tissue type segmentation deep convolutional neural network (CNN). Our method was evaluated on a data…
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