pramod-zillella/Brain-Tumor-Segmentation
Fully automatic brain tumor segmentation using the Modified 3DUNet architecture for Brats 2020 Challenge.
This project offers an automated solution for identifying and outlining brain tumors from MRI scans. You input brain MRI images, and it precisely segments different tumor sub-regions (enhancing tumor, whole tumor, and tumor core), providing a visual and quantitative breakdown. This tool is designed for radiologists and medical practitioners to enhance diagnostic accuracy and assist in treatment planning.
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Use this if you need a fast, accurate, and automated way to segment brain tumors from MRI images to aid in diagnosis and treatment planning.
Not ideal if you require manual control over every step of the segmentation process or are working with non-MRI imaging modalities.
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Jun 29, 2021
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