Robust Automatic Whole Brain Extraction on Magnetic Resonance Imaging of Brain Tumor Patients using Dense-Vnet
Sara Ranjbar (1), Kyle W. Singleton (1), Lee Curtin (1), Cassandra R., Rickertsen (1), Lisa E. Paulson (1), Leland S. Hu (1,2), J. Ross Mitchell, (3), Kristin R. Swanson (1) ((1) Mathematical NeuroOncology Lab, Precision, Neurotherapeutics Innovation Program

TL;DR
This paper introduces DeepBrain, a deep learning model that accurately performs whole brain extraction on MRI scans of brain tumor patients, even with limited training data, significantly aiding neuroimaging analysis.
Contribution
The study presents a novel deep learning approach trained on automatically generated labels for robust skull stripping in tumor-affected MRIs, achieving high accuracy with minimal data.
Findings
DeepBrain achieved 94.5% dice score on tumor MRIs.
Model performance improved to 96.2% dice score on healthy brains.
Comparable accuracy was achieved with as few as 50 training samples.
Abstract
Whole brain extraction, also known as skull stripping, is a process in neuroimaging in which non-brain tissue such as skull, eyeballs, skin, etc. are removed from neuroimages. Skull striping is a preliminary step in presurgical planning, cortical reconstruction, and automatic tumor segmentation. Despite a plethora of skull stripping approaches in the literature, few are sufficiently accurate for processing pathology-presenting MRIs, especially MRIs with brain tumors. In this work we propose a deep learning approach for skull striping common MRI sequences in oncology such as T1-weighted with gadolinium contrast (T1Gd) and T2-weighted fluid attenuated inversion recovery (FLAIR) in patients with brain tumors. We automatically created gray matter, white matter, and CSF probability masks using SPM12 software and merged the masks into one for a final whole-brain mask for model training. Dice…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Advanced MRI Techniques and Applications · Advanced Neural Network Applications
